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Implementation of Automated Guided Vehicles for the Automation of Selected Processes and Elimination of Collisions between Handling Equipment and Humans in the Warehouse

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This article deals with the implementation of automated guided vehicles (AGVs) in a selected company. The aim is to analyse the use of AGVs in our country and abroad and to provide information about the use of AGVs in other countries and operations other than ours. The result of the analysis was a literature review, which points out the individual advantages and disadvantages of the use of AGVs in companies. Within the review we also address the issue of AMR vehicles, due to the modernization of existing AGVs in the company, or the replacement of AMRs with AGVs in general. Our aim is to show why AGVs can replace human work. This is mainly because of the continuous increase in the wages of employees, because of safety, but also because of the modernization of the selected company. The company has positive experience of AGVs in other sites. We wanted to point out a higher form of automation, and how it would be possible to use AMR vehicles for the same work as AGVs. In the company, we have identified jobs where we would like to introduce AGVs or AMR vehicles. Consequently, we chose the AGV from CEIT operated by magnetic tape and the AMR from SEER as an example. Based on studies, the demand for AGVs is expected to increase by up to 17% in 2019–2024. Therefore, the company is looking into the issue of the implementation of AGVs at multiple sites. The question which remains is the economic return and the possibility of investing in the automation of processes in the company, which we discuss in more detail in the conclusion of the article and in the research. The article describes the exact processes for AGVs, their workload, and also the routes for AGVs, such as loading/unloading points, stopping points, checkpoints, junctions with other AGVs, charging stations, and field elements, as well as their speed, frequency and the possibility of collision with other AGVs. Our research shows that by applying the new technology, the company will save a large amount of money on employee wages. The purchase of two AGVs will cost the company EUR 49,000, while the original technology used in the company cost EUR 79,200 annually. The payback period for such an investment is 8 months. The benefits of implementing AGVs are evaluated in the last section of this paper, where both the economic and time requirements of the different proposals are included. This section also includes recommendations for improving specific parts of the enterprise.
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Citation: Kubasakova, I.; Kubanova,
J.; Benco, D.; Kadlecová, D.
Implementation of Automated
Guided Vehicles for the Automation
of Selected Processes and Elimination
of Collisions between Handling
Equipment and Humans in the
Warehouse. Sensors 2024,24, 1029.
https://doi.org/10.3390/s24031029
Academic Editor: Enrico Meli
Received: 10 January 2024
Revised: 24 January 2024
Accepted: 1 February 2024
Published: 5 February 2024
Copyright: © 2024 by the authors.
Licensee MDPI, Basel, Switzerland.
This article is an open access article
distributed under the terms and
conditions of the Creative Commons
Attribution (CC BY) license (https://
creativecommons.org/licenses/by/
4.0/).
sensors
Article
Implementation of Automated Guided Vehicles for the
Automation of Selected Processes and Elimination of Collisions
between Handling Equipment and Humans in the Warehouse
Iveta Kubasakova, Jaroslava Kubanova *, Dominik Benco and Dominika Kadlecová
Department of Road and Urban Transport, Faculty of Operation and Economics of Transport and
Communication, University of Zilina, Univerzitna 8215/1, 01026 Zilina, Slovakia;
iveta.kubasakova@uniza.sk (I.K.); dominik.benco@stud.uniza.sk (D.B.); kadlecovadominika502@gmail.com (D.K.)
*Correspondence: jaroslava.kubanova@uniza.sk
Abstract: This article deals with the implementation of automated guided vehicles (AGVs) in a
selected company. The aim is to analyse the use of AGVs in our country and abroad and to provide
information about the use of AGVs in other countries and operations other than ours. The result of the
analysis was a literature review, which points out the individual advantages and disadvantages of the
use of AGVs in companies. Within the review we also address the issue of AMR vehicles, due to the
modernization of existing AGVs in the company, or the replacement of AMRs with AGVs in general.
Our aim is to show why AGVs can replace human work. This is mainly because of the continuous
increase in the wages of employees, because of safety, but also because of the modernization of the
selected company. The company has positive experience of AGVs in other sites. We wanted to point
out a higher form of automation, and how it would be possible to use AMR vehicles for the same
work as AGVs. In the company, we have identified jobs where we would like to introduce AGVs or
AMR vehicles. Consequently, we chose the AGV from CEIT operated by magnetic tape and the AMR
from SEER as an example. Based on studies, the demand for AGVs is expected to increase by up to
17% in 2019–2024. Therefore, the company is looking into the issue of the implementation of AGVs at
multiple sites. The question which remains is the economic return and the possibility of investing in
the automation of processes in the company, which we discuss in more detail in the conclusion of the
article and in the research. The article describes the exact processes for AGVs, their workload, and
also the routes for AGVs, such as loading/unloading points, stopping points, checkpoints, junctions
with other AGVs, charging stations, and field elements, as well as their speed, frequency and the
possibility of collision with other AGVs. Our research shows that by applying the new technology,
the company will save a large amount of money on employee wages. The purchase of two AGVs will
cost the company EUR 49,000, while the original technology used in the company cost EUR 79,200
annually. The payback period for such an investment is 8 months. The benefits of implementing
AGVs are evaluated in the last section of this paper, where both the economic and time requirements
of the different proposals are included. This section also includes recommendations for improving
specific parts of the enterprise.
Keywords: AGV; AMR; automation; optimization; analysis
1. Introduction
Many companies in Slovakia are implementing AGVs in their warehouses, as one of
the conditions of technological innovation within Logistics 4.0. is the implementation of
AGV in the warehouse. We can thus eliminate errors in material handling, and we can
eliminate safety risks in the event of a collision between material handling equipment and
a human being.
The reason why AGVs are the right choice is that AGVs are flexible and able to
rotate 360
. In the company, a small sized AGV is used to transport the load placed on top
Sensors 2024,24, 1029. https://doi.org/10.3390/s24031029 https://www.mdpi.com/journal/sensors
Sensors 2024,24, 1029 2 of 19
of the AGV or to transport the trolleys in the towing set (there can be only one). The AGV
is constructed using a rigid steel structure which allows a fixed structure to be mounted on
top. Because of this possibility, the AGV can be turned into a workstation in the assembly
line. This type can also move by suddenly turning and thus change direction 360
around
its own axis. Furthermore, other active systems can optionally be added as required, e.g., a
roller conveyor or a lifting platform. The remaining parameters of the AGV can be found
in Table 1below.
Table 1. The remaining parameters of the AGV.
Parameter Reported Value
Max. load on top surface with towing trolley 450 kg
1000 kg
Max. speed with or without load 2.7 km/h
Width, Length, Height 800 mm, 800 mm, 280 mm
AGV weight 215 kg
The entire picking up process starts from the moving of the goods into the warehouse
from the truck, where a worker uses a forklift to unload the frames, headrests, and foams
(backrests and seating sections). Two other workers then place the goods in the warehouse
and pick up the material for the specific line from the trolleys. These workers distribute
the material they are picking up. The goods are then transported with the help of other
workers to the production line. So, the four operators take turns with each other to carry
out the given work activities. The workers transport the goods using three types of trolleys
and one AGV. The assembly line is composed of four stations, to which different kinds of
transport lead. At the assembly line, the material trolleys are unloaded and at the same
time empty trolleys are picked up and transported back to the warehouse. This process is
repeated throughout the operation. The diagram is shown in Figure 1.
Sensors 2024, 24, x FOR PEER REVIEW 2 of 20
The reason why AGVs are the right choice is that AGVs are exible and able to rotate
36. In the company, a small sized AGV is used to transport the load placed on top of the
AGV or to transport the trolleys in the towing set (there can be only one). The AGV is
constructed using a rigid steel structure which allows a xed structure to be mounted on
top. Because of this possibility, the AGV can be turned into a workstation in the assembly
line. This type can also move by suddenly turning and thus change direction 360° around
its own axis. Furthermore, other active systems can optionally be added as required, e.g.,
a roller conveyor or a lifting platform. The remaining parameters of the AGV can be found
in Table 1 below.
Table 1. The remaining parameters of the AGV.
Parameter Reported Value
Max. load on top surface with towing trol-
ley
450 kg
1000 kg
Max. speed with or without load 2.7 km/h
Width, Length, Height 800 mm, 800 mm, 280 mm
AGV weight 215 kg
The entire picking up process starts from the moving of the goods into the warehouse
from the truck, where a worker uses a forklift to unload the frames, headrests, and foams
(backrests and seating sections). Two other workers then place the goods in the warehouse
and pick up the material for the specic line from the trolleys. These workers distribute
the material they are picking up. The goods are then transported with the help of other
workers to the production line. So, the four operators take turns with each other to carry
out the given work activities. The workers transport the goods using three types of trolleys
and one AGV. The assembly line is composed of four stations, to which dierent kinds of
transport lead. At the assembly line, the material trolleys are unloaded and at the same
time empty trolleys are picked up and transported back to the warehouse. This process is
repeated throughout the operation. The diagram is shown in Figure 1.
Figure 1. Schematic diagram of material transport from to the warehouse to the assembly line.
Figure 1. Schematic diagram of material transport from to the warehouse to the assembly line.
Automation took place on the trolley routes where manual transport was carried out
using hand-pulled trolleys and operators, which are indicated in the red circles.
Sensors 2024,24, 1029 3 of 19
Basic Information on the Material Transported
The focus is on a part of the production hall only; this part focuses on the production
of seats. Seats are made in three colour variants (black, red and beige).
Weight data of transported materials:
Back foam, approximately 2.2 kg;
Foam intended for seating; this may vary depending on where the foam will be placed:
#First row of seats of approximately 1.6 kg;
#Second row: 40% of approximately 1.5 kg;
#Second row: 60% of approximately 2.4 kg.
Head restraints of approximately 0.7 kg.
The vehicle’s capabilities are pre-set to monitor the route ahead, accounting for people,
other machinery and other AGVs. There are other types of AGVs operating in society
that can only move in a two-way operation (back and forth), with no turning of these
devices. Therefore, there is a requirement for necessary communication afterward with
other types of AGVs to avoid collision. A safety system must be built into the AGV to
perform this task, by means of which order and intersection control is performed. There
are also collisions between employees and AGVs in the workplace, which evokes a further
requirement in terms of upgrading the system in terms of safety. For this, the AGV uses
sensors, and as soon as a “pre-obstacle” comes into its path the AGV automatically stops
its operation and waits for its removal. There is a scanner embedded in the system which
is equipped with four safety zones that can be configured in its superimposed circuit by
means of RFID tags. Furthermore, it can be connected to control systems, which have
an even higher level of maintenance, and process systems. The AGV has an integrated
display with diagnostics on the front. The display informs people about the status of the
device, possible warnings, battery status, and its operation target. The AGV can also be
operated without the aid of a central control, using a simple operator panel located next to
the information display. The AGV can operate continuously, providing complete autonomy
24 h a day. This capability is made possible by two 200 W batteries, with a 90 Ah battery
life. It incorporates a differential drive unit which is used to carry out specified tasks in
conjunction with the tilting system. The type of AGV used can move on a pre-prepared
infrastructure, in which magnetic guidance needs to be incorporated and an integrated
charging system, located in a loop, needs to be built into the floor.
The installation can only be implemented indoors or outdoors, in which case it must
be covered because the vehicle cannot operate in rain, fog or direct sunlight. In terms of
surface maintenance, the surface on which the AGV runs along its route must be in good
condition, smooth, clean, free of damaged parts, and must not be made of slippery or
metallic surfaces.
2. Literature Review
In terms of the current and recent world situation, the period of the COVID-19 pan-
demic has played a significant part in the shift towards automation. This has had a major
impact on world trade levels, which have been disrupted by a shortfall in human labour.
In this context, the demand for alternative storage systems has suddenly increased. This
led to a search for ways to resolve the “outages”, which had to be minimized. One of
the main solutions that increases the efficiency of labour productivity in a company is
automation. Based on the period mentioned above, it is significant that companies have
started to introduce different types of AGVs in most of the manufacturing, warehousing,
packaging stations [
1
] and various other parts of the companies. AVGs not only minimize
the transportation time of goods but also minimize the cost of company operation, to a
considerable extent. If we look at automation from a foreign perspective, specifically in
China, JD.com was a pioneer in business-to-consumer e-commerce in 2010. The company
has built integrated warehouses to maintain its market position, address the urgent need
to meet growing demand and maintain high quality logistics services. The mentioned
Sensors 2024,24, 1029 4 of 19
technology has helped the company to reduce its cost-to-fill ratio to a world-leading 6.5%.
Other benefits have led to savings of hundreds of millions of dollars. During 2020, the
company delivered its retail orders on the same day or the next day at the latest. Meeting
the first- or next-day delivery criterion accounted for up to 90% of deliveries [2].
The field of AGV design research is not exhausted, as new applications and products
are constantly emerging. Despite the increasing investment in developing smarter busi-
nesses and improving manufacturing competitiveness, AGV R&D in important areas such
as SMEs is still lacking. So the problem of AGV position is still open. It can be defined as a
control system that seeks a control input that minimizes the measured error compared to a
trajectory used as a reference, considering the operational requirements and constraints
of the vehicle and the environment. The first step of AGV operation is the correct path.
Accurate positioning is a key factor in AGV control. Increasing AGV positioning accuracy
improves the accuracy of AGV route tracking and localization, reduces the possibility of
accidents during operation, and reduces the cost of building complicated infrastructure [
3
].
The manufacturing environment is steadily increasing the impact of systems which
offer the possibility of dynamic adjustment to the AGV [
4
]. Dynamic AGV planning is based
on a “digital twin” system. The digital twin is built in a virtual space in which a framework
for real-time interchange and real-time control based on dynamic data is established. It
consists of real-time data exchange and dynamic task-list generation, determining the
number and speed of AGVs in different working conditions and effectively improving
the efficiency of the logistics system. The traditional logistics operation planning strategy
is unable to meet the requirements that are currently focused on higher transportation
efficiency [5].
The control of the position of the lower level AGV is based on a well-defined guide.
Such guides include a coloured strip or magnetic tape attached to the ground, or even
virtual paths. Virtual paths are not physical. They can be planned based on environmental
mapping, for example, using laser sensors, or based on physical tags (such as RFID, QR
code tags, or laser reflectors) that do not reveal the planned trajectory. The purpose
of the control is to keep the vehicle on the trajectory and meet the requirements of the
control theory, such as steady-state error, overshoot value, and adaptation time. One of
the navigation modules is the vehicle motion control. Hybrid architectures also combine
higher- and lower-level controls operating at different time intervals and different targets.
Thus, navigation techniques and lower-level control are not mutually exclusive. Hence,
this paper considers navigation techniques as a higher level of deliberative control [6].
Automated guided vehicles in the factory, called AGVs, were also developed. Many
countries are investing a lot of energy and resources in developing smarter factories and
increasing the competitiveness of manufacturing. The AGV is one of the essential pieces of
equipment for replacing labour and reducing the delay in the whole production process.
Route planning and AGV movement should be based on image detection of the
surrounding environment. Current AGVs are mostly guided by a magnetic line on the
floor or a rail on the ceiling, which leads to a significant increase in construction costs if
the plant layout is changed. AGVs should learn how to avoid obstacles and move to the
target systematically, through image detection and deep learning. Precise positioning is
also important for AGV driving. Currently, the position of an AGV is calculated from
its velocity and movement time, and its position error is more than a few meters, due to
external factors such as the frictional force of the floor or rail [7].
Recently, scheduling and operation issues have been considered as some of the most
important issues in manufacturing and logistics systems. In particular, transportation
planning using automated guided vehicles (AGVs) in steel production, semiconductor
manufacturing and warehouse systems has been widely studied from both theoretical and
practical perspectives [8].
The location and the map are the basis of the journey planning. The AGV located
in the local pro centre is implemented based on SLAM, which means simultaneous lo-
calization and map generation. Under the condition that no prior information about the
Sensors 2024,24, 1029 5 of 19
best environment is available, the AGV can determine its position in the environment and
estimate the location for the best motion using a mounted sensor. In a global situation, its
position on the environment map can be determined by obtaining external steady-state
information. The SLAM localization model and the characteristics of different maps lay the
foundation for AGV path-planning research. Visual SLAM realizes the construction of the
environment map using the process of movement by camera, and the specific structure is
shown in figure in Section 3.2.1, including the following: sensor information reading (using
sensors to read image information and preprocessing); a visual odometer (calculating
camera motion and position and obtaining the appearance of the local map through the
relationship between neighbouring images); nonlinear optimalization of image processing
(processing camera position information and loop-detection information accumulated by
the visual odometer at different times and optimizing this information to obtain the motion
trace); loop detection (assessing whether the loop was in a previous position); and mapping
(creating a map of the environment by estimating the trajectory of the camera motion).
The main principle is to use the difference between neighbouring frames to evaluate the
camera’s own motion and then obtain information on the local position of the AGV. An
efficient ad hoc request-answering method based on an autonomous decentralized method
is proposed for the AGV routing problem. First, each AGV as an agent finds the shortest
path that satisfies the requests assigned to it. If potential collisions (predicted collisions
that will occur if no precautionary action is taken) are detected, one of the two AGVs, as
selected based on the bargaining rule, adjusts its route. A set of negotiation rules shall be
used for each collision-avoidance action. These rules consist of a condition part and an
action part. The rule that corresponds to the conditions of the two agents involved in the
following collision is selected from the rule set [9,10].
AGVs with path constraints such as a well-designed path layout (good infrastructure,
i.e., a network path structure with short distances and efficiently used paths with little
blocking (congestion), and good-sized input and output buffers with minimum waiting
times at stations, are very important. Although the routing of a free AGV is more flexible,
even for this type of vehicle in most cases a route layout will be defined to limit the number
of possible routes, thus facilitating operational control.
The number of AGVs required is the sum of the total loaded- and empty-trip time and
waiting time (due to congestion, among other things) of the AGV in the busy time period,
divided by the time an AGV is available during that period. Since this is a design problem,
the computation can be rough, e.g., in [
6
], no waiting time is considered. Preventing AGV
collision is a common problem. Current solutions such as inertial and laser guidance
have low flexibility and high environmental requirements. Other disadvantages are, for
example, hardware requirements, poor flexibility, and difficulties with complex working
environments [11].
In a traffic system with multiple automated guided vehicles, AGV-path conflicts
directly affect the efficiency and coordination of the entire system. At the same time,
uncertainty in the number and speed of AGVs will lead to excessive costs. To solve these
problems, the AGV Multi-Objective Dynamic Scheduling (AMODS) method, which is
based on the digital twin of the workshop, is proposed. The digital twin of the workshop
is built in a virtual space, and a real-time bidirectional exchange-and-control framework
based on dynamic data is established. The digital twin system is adopted to exchange
real-time data, create an updated real-time dynamic task list, determine the number of
AGVs and the speed of AGVs in different working conditions, and effectively improve the
efficiency of the logistics system. The architecture of the dynamic-scheduling workshop
logistics system based on the digital twin is composed of the physical world, the virtual
world, the digital twin, and the service management system [12].
To improve the safety and flexibility of AGVs, a collision-avoidance system based on
INS (Inertial Navigation System)-UWB (ultra-wideband) is being introduced. Compared
with traditional inertial and laser guidance systems, the proposed method is more flexible
and cheaper, with good accuracy and stability. For accurate positioning, an electronic
Sensors 2024,24, 1029 6 of 19
warehouse map is created where the UWB anchor nodes are deployed. The localization
coordinate of the AGV is obtained by three nearby UWB anchor nodes on the map. To
improve the positioning accuracy, the EKF method, which integrates INS and UWB data,
is used. To avoid collisions, the current position of the AGV and its motion data are
used to predict its next position, to reduce the effect of AGV steering delay. Experimental
results from other studies show that the proposed method achieves accurate position
estimation and that the AGV effectively detects obstacles and avoids potential collisions.
The positioning technology is an important technological feature of the AGV [13,14].
The world’s advanced organizations also use machine determination to select strate-
gies for planning AGV technology in production. Among such technologies, we can include
one timeless technology we call artificial intelligence. The development of intelligent manu-
facturing environments, which include AGVs, will drive the future. In this case, AGVs play
an important role in manufacturing systems, as they have the potential to improve internal
logistics. Improvements in internal logistics are about increasing production flexibility
and, consequently, the productivity of the whole system. However, this depends on a
good-quality schedule, which, if properly set up, can be used to minimize production costs
and minimize the overall production time [15].
To achieve the maximum satisfaction with the technology, feedback from the devices
already in place needs to be monitored. AGVs need also to be monitored and checked to
ensure that they are performing correctly and adhering strictly to their trajectory. As many
companies have implemented AGVs, they form an integral part of their logistics processes.
When performing dynamic activities, a so-called “estimator” is needed, where, for example,
the ensemble Kalman filter algorithm can be used. This algorithm consists of a simulation
in which states are observed. These states are composed of two activities:
Observation of the speed;
AGV system diversion rate [16].
Before implementing AGVs in the company, it is necessary to consider all important
aspects concerning the layout of the production part of the company, the location of the
warehouse, the handling aisles, the parameters of the future goods to be transported, and
whether it will be appropriate to introduce AGVs in the company in general. The actual
selection of AGVs and the eventual redevelopment of the hall in favour of the use of AGVs
will depend on this. The return on the equipment in question, if it is set up correctly, is
always almost instantaneous, whether in terms of time or money, compared to manpower.
Looking at the system from the point of view of the actual planning of the introduction of
AGVs into the enterprise, it is necessary to specify the planning activities, which consist of
the following:
Task scheduling;
Path planning;
Traffic control management.
These activities are essential, as they are the basis for the optimization of travel
times associated with the minimization of system costs. In a proper scheduling solution,
the shortest route is assigned to the AGV. Achieving conflict-free scheduling of AGVs,
with multiple cargo types, represents a challenging process in production logistics and
transportation [17].
The continuous development of production systems in the field of internal logis-
tics has brought new challenges, for which innovative automation solutions have been
developed [18]
. Innovative solutions are also emerging due to growing material supply
chains with the requirement for rapidly changing logistics structures. These require flexible
material flow solutions, and these in turn increase the use of autonomous mobile robots [
19
].
AMRs are used in developed organizations that are constantly moving forward with the
trends in development. Industry 4.0 includes innovative technologies that include au-
tonomous mobile robots and collaborative robots. These robots are specified to have higher
Sensors 2024,24, 1029 7 of 19
cost-effectiveness and flexibility. Hence, they are more suitable for automated internal
logistics systems in a company [20].
Nowadays, autonomous mobile robots are the latest to be introduced into enterprises
instead of AGVs, due to their practical use in the “modern” world of logistics [
21
]. AMRs
and AGVs are suitable for deployment in hazardous parts of work areas [
22
], where there is
a high probability of worker accidents. In this case, for example, the handling of material of
too large dimensions or with too high a weight may be involved. During implementation,
the company determines which auxiliary elements the automated system can work with.
For example, lasers can be used to sense the necessary information, or radio frequency
identification (RFID) technology can be applied in a logistics information system. The
technology can also be used in transport and warehousing. The introduction of RFID
significantly increases the efficiency of logistics processes [23].
With the increasing competition in the automotive industry, technical developments
in various sectors are also increasing. This impact makes it imperative for manufacturing
logistics companies to improve production efficiency while reducing costs and increasing
economic benefits to the society, at the same time. Flexible automation clearly contributes
to this [
24
]. Automation is increasingly coming to the fore in meeting these objectives. The
adoption of this technology increases flexibility, accuracy, productivity, and rapid return on
investment in its implementation. However, companies often ask questions related to the
implementation of the above-mentioned devices [25].
Today’s smart manufacturing facilities are becoming more modular day by day and
must be constantly reconfigured, as this is required by logistics processes [26].
AGVs belong to the Industrial Revolution 4.0 (Industry 4.0) [
27
]. The industrial
revolution mentioned above is being pushed forward by the Industrial Internet of Things
and physical computational systems; these are creating intelligent information technologies
that are transforming supply chain analysis, monitoring, and automation [28].
Because AGVs have become an essential part of flexible manufacturing systems,
automated data aggregation in the Industrial Revolution 4.0. is very beneficial from the
data clustering point of view [
29
]. The Fourth Industrial Revolution can be classified as
very helpful in the COVID-19 era, where this Industry 4.0 has made the work in factories
easier and simpler when dealing with employees. Failure to adopt this technology can
leave the company behind in operations [30].
According to these authors, simulation models provide a more detailed and under-
standable representation of order-picking processes and operations compared to analytical
models. This is a very important issue for warehouse managers, who can use simulation
models as decision support tools to design efficient logistics facilities such as warehouses,
or to improve existing facilities of this kind in the real world (by analysing the interac-
tion between operations and processes in simulation mode, without any risk from such
analyses in real facilities). The model presented in the paper is particularly applicable
to industries that deal with the handling of multiple small units, especially in selected
major industries such as the electronics industry, food industry, textile industry, automotive
industry, chemical industry (pharmaceutical industry), steel industry and construction
industry [31,32].
Automated guided vehicle systems are used for tasks that would normally be per-
formed by forklifts, conveyor systems, or hand trucks, which move large volumes of
material repeatedly [33].
In addition to transporting raw materials, AGVs are used in work-in-process applica-
tions and with finished products to support production or production lines. In work-in-
process applications, AGVs move materials or parts from warehouses to production lines
or from one workstation to another, ensuring the repetitive efficient movement of materials
during the production process. Without AGVs, production processes can come to a halt
when the work-in-process lines run out of material. Production is then delayed while a
human worker picks up the necessary materials from the warehouse and delivers them to
the production line.
Sensors 2024,24, 1029 8 of 19
AGVs are also used in infeed and outfeed handling for replenishment and for picking
up. For example, AGVs can be used to transport inventory from the point of receipt
to the point of storage, or from long-term storage locations to picking-up locations for
replenishment. Moving inventory from long-term storage to picking-up locations ensures
that the people picking up the goods will have adequate inventory, thereby streamlining
the picking-up process. AGVs assist in the picking-up process by guiding warehouse
co-workers through tasks and transporting picked-up orders to packing and fulfilment
sites [34].
3. Materials and Methods
3.1. Technological Procedure after the Introduction of AGVs
The introduction of AGVs has eliminated the number of staff who have been rede-
ployed to other necessary positions. In the process, 3 manual workers who were designated
to transport material from the warehouse to the production line were eliminated. The
workers also loaded the respective trolleys with materials and picked up materials inde-
pendently, as needed. Automation was carried out on the remaining transport from the
warehouse to the assembly lines and back.
In the replacement of 3 workers, the company has deployed 2 AGVs. For AGV
workflow-loading and -unloading points, 3 unloading points are needed for the AGVs on
the line:
The 1st place is for a trolley with foam backrest reinforcements;
The 2nd space is designated for a trolley with foam seat cushions;
The 3rd space is reserved for a trolley with head restraints.
Every single place is located at different parts of the line. In terms of loading, the
unloaded trolleys are placed by the AGV at one designated location in the warehouse.
There, one worker, who selects all 3 types of materials for the respective trolleys, takes
the trolley to the warehouse, then loads it with new goods and places the loaded trolley
at the location (in the warehouse) where the AGV will later take over the loaded trolley
(
see Figure 2
). The AGV can be independently loaded and unloaded using a lifting platform
without the need for an employee. When unloading a full cart in the line, the AGV loads the
empty cart to eliminate “empty” AGV trips and transports it to the front of the warehouse.
Sensors 2024, 24, x FOR PEER REVIEW 9 of 20
Figure 2. Automation at the selected location.
Automation took place on trolley routes where manual transport was carried out
(with previous technology) using hand-pulled trolleys and operators. The red circle indi-
cates the locations of deployed AGVs of small dimensions. The automatic charger is built
into the oor in a dedicated charging area. The AGV does not need to charge while sta-
tionary, as there may be a situation where one AGV will be charging and the other will be
waiting for a request behind it (in a loop). The AGV station is controlled by the First In,
First Out (FIFO) system. This system uses the conditions for ordering the FIFO system,
which are as follows:
The recovery of the transit signal for the FIFO order is carried out by an RFID tag in
the loop, after the AGV leaves the production zone of the line;
From this point, the AGV starts communicating with the power-line communication
(PLC) and announces that the order is complete.
Faurecia, together with the AGV supplier, during the installation process, deter-
mined the exact position of this tag. Each material must have its own tag so that the AGV
can identify which production line needs to be supplied with the material at that moment.
3.1.1. Control Point
The company that supplied the AGVs prepared one control point which was used to
communicate with the AGVs. The position and the subsequent route are checked to see if
it is free or not at the required moment, to avoid a situation where the rst AGV blocks
the second AGV from performing the task. If the situation is dierent, i.e., an AGV enters
the route of another AGV, the rst AGV stops and allows the route of the other AGV to be
completed.
3.1.2. Trac Intersection with Other AGVs
AGVs from other suppliers are also in place in the company, and on some routes they
cross with the newly introduced AGVs in Segment 2. For that reason, the system needs to
be upgraded, and therefore the junctions adapted, to be suitable for all AGVs. The men-
tioned crossing occurs in the middle of the route (from the warehouse to the production
line), where the main handling aisle is located. The communication consists of sending
signals between AGVs, so the communication between AGVs must be two-way (between
new and old AGVs). If a newly installed AGV wants to enter a common trac zone, the
PLC system checks whether the zone of the previous AGV is occupied or not. If the route
is automatically cleared, entry is blocked for older-technology AGVs and allowed for
newer-technology AGVs. The new AGVs have three positions for entering and three posi-
tions for exiting this zone.
Figure 2. Automation at the selected location.
Automation took place on trolley routes where manual transport was carried out (with
previous technology) using hand-pulled trolleys and operators. The red circle indicates the
locations of deployed AGVs of small dimensions. The automatic charger is built into the
floor in a dedicated charging area. The AGV does not need to charge while stationary, as
Sensors 2024,24, 1029 9 of 19
there may be a situation where one AGV will be charging and the other will be waiting
for a request behind it (in a loop). The AGV station is controlled by the First In, First Out
(FIFO) system. This system uses the conditions for ordering the FIFO system, which are as
follows:
The recovery of the transit signal for the FIFO order is carried out by an RFID tag in
the loop, after the AGV leaves the production zone of the line;
From this point, the AGV starts communicating with the power-line communication
(PLC) and announces that the order is complete.
Faurecia, together with the AGV supplier, during the installation process, determined
the exact position of this tag. Each material must have its own tag so that the AGV can
identify which production line needs to be supplied with the material at that moment.
3.1.1. Control Point
The company that supplied the AGVs prepared one control point which was used to
communicate with the AGVs. The position and the subsequent route are checked to see if
it is free or not at the required moment, to avoid a situation where the first AGV blocks
the second AGV from performing the task. If the situation is different, i.e., an AGV enters
the route of another AGV, the first AGV stops and allows the route of the other AGV to be
completed.
3.1.2. Traffic Intersection with Other AGVs
AGVs from other suppliers are also in place in the company, and on some routes
they cross with the newly introduced AGVs in Segment 2. For that reason, the system
needs to be upgraded, and therefore the junctions adapted, to be suitable for all AGVs.
The mentioned crossing occurs in the middle of the route (from the warehouse to the
production line), where the main handling aisle is located. The communication consists of
sending signals between AGVs, so the communication between AGVs must be two-way
(between new and old AGVs). If a newly installed AGV wants to enter a common traffic
zone, the PLC system checks whether the zone of the previous AGV is occupied or not. If
the route is automatically cleared, entry is blocked for older-technology AGVs and allowed
for newer-technology AGVs. The new AGVs have three positions for entering and three
positions for exiting this zone.
3.1.3. The Charging Station
A charging station is installed inside the loop and is operated as a stop for the AGV.
The charging station is installed on a pole in the form of a box. One cable with three wires
is installed for each charging point.
3.1.4. Trolleys
The compact trolleys for AGVs were designed by Faurecia independently, according
to the adaptation of the material to be transported and the increase in the transport capacity
of the trolleys.
3.1.5. Elements of the Field
A PLC1512 in an enclosure with a basic human machine interface (HMI) panel, type
KTP 1200, and an industrial switch will be used to control the entire system. We will use
2 Integrated Facilities Management (IFM) units, type AL1102, to collect signals from the
assembly zone.
3.2. Functions of the Circuit
PLC—this is the brain of the entire AGV system. In this project, a PLC1512 is used,
connected via PROFINET to the IFM AL1102 modules and via standard networks to the
customer’s Wi-Fi network. The PLC controls all signals in the field and all communication
with the AGVs.
Sensors 2024,24, 1029 10 of 19
Wi-Fi—all AGVs installed in this project use a Wi-Fi network to communicate with the
parent system, and the network had to be secured by the company. The AGVs will always
communicate with the parent PLC 1512.
HMI—the HMI panel is installed in the main PLC box. The purpose of this panel is
to monitor all plant traffic, along with traffic zones and signal monitoring. There are also
password-protected functions in the HMI panel so that, in the event of an emergency, traffic,
zones, and traffic signals for the AGVs can be restarted. The default language of the system
is English, but the Slovak language can be added. The system can be pre-configured, but
currently operates on the following principle:
Screen—Intersections: a total of 30 intersections divided into 3 sub-screens. Each
screen will display 10 swipe buttons. The button changes colour depending on the status
of the junction (e.g., whether it is busy or not). If the advanced user is logged in, clicking
the button will re-execute the intersection.
Screen—Signal monitoring: here, all connected inputs are displayed and there is the
option to bypass them sequentially.
Screen—Layout: this displays the factory layout, with all positions. If the AGV is
present at the stop on the charger, it will be displayed with a green rectangle. Also, for all
positions with a sensor, the status will be displayed with a circle (a green circle means that
this station is ready for a new job, a red circle means that it is not ready for a new job, and
if there is a situation in which all stations are ready to send a job, they will all be shown
with a green circle). To perform the check, the visualization is the same. If the AGV can
enter the sensor position, it will be shown in green.
Screen—AGV list: in this case, the status of all connected AGVs is displayed.
Screen—Alarm History: here, you will see a list of errors collected from the AGV with
the time they occurred, sorted by time interval. The line also contains information about
the serial number of the AGV. If there is an error, the line is shown in red; if it is only a
warning, the line is shown in orange.
Intersections—the project includes central control of intersections where 30 intersec-
tions will be prepared with AGVs that can be monitored from the HMI.
Photocells and inductive sensors—5 inductive sensors are used to monitor positions
in the assembly zone and warehouse. Four sensors are used to create the order and one
sensor is used to check and block the AGV entrance.
If we look at the logistics results measured by the introduction of AGVs, we can see
in Table 2a summary of the logistics efficiency information, where basic information is
summarised over one working shift.
Table 2. Summary of the logistics efficiency information.
Cycle time of the Manufactoring [s] 155
Working time in minutes to complete goods 31.8
Ideal number of operators 12.27
Planned number of operators 44
Productivity potential (%) 72%
Planned logistics time [minutes/end of product] 113.9
Current number of shift operators 43
Efficiency of direct work in logistics 29%
Additionally, the workload, which is shown in Figure 3, is divided into several parts
(by commodity), frames, foams, packaging, finished products, and small parts—plastics,
screws, levers, buttons, etc.
Sensors 2024,24, 1029 11 of 19
Sensors 2024, 24, x FOR PEER REVIEW 11 of 20
If we look at the logistics results measured by the introduction of AGVs, we can see
in Table 2 a summary of the logistics eciency information, where basic information is
summarised over one working shift.
Table 2. Summary of the logistics eciency information.
Cycle time of the Manufactoring [s] 155
Working time in minutes to complete goods 31.8
Ideal number of operators 12.27
Planned number of operators 44
Productivity potential (%) 72%
Planned logistics time [minutes/end of
product] 113.9
Current number of shift operators 43
Efficiency of direct work in logistics 29%
Additionally, the workload, which is shown in Figure 3, is divided into several parts
(by commodity), frames, foams, packaging, nished products, and small parts—plastics,
screws, levers, buons, etc.
Figure 3. The workload.
From the graph, we can see that the item with the highest time is the picking up of
small parts, with a value of 35%, and, on the contrary, the item with the lowest value is
the item specied under the name “packaging”, which accounts for 14%. The remaining
commodities show approximately the same percentage of workload as the item packag-
ing.
3.2.1. Proposal for AGV/AMR
The rst alternative option we chose was a jacking transfer robot from SEER, speci-
cally the AMB-J type (see Figure 4). The robot uses a two-wheel dierential drive mode.
The maximum speed achieved with the load is 1.5 m/s. The device is a manipulator robot
with a jacking mechanism, which is based on an operation using simultaneous localization
and mapping (SLAM) lasers [33]. SLAM is the process of mapping an area while tracking
the location of a device in that area. This is what mobile mapping enables. This allows
large areas to be mapped in much less time because areas can be surveyed using mobile
15%
17%
19%
14%
35%
Finished products Frames Foams Packaging Small parts
Figure 3. The workload.
From the graph, we can see that the item with the highest time is the picking up of
small parts, with a value of 35%, and, on the contrary, the item with the lowest value is
the item specified under the name “packaging”, which accounts for 14%. The remaining
commodities show approximately the same percentage of workload as the item packaging.
3.2.1. Proposal for AGV/AMR
The first alternative option we chose was a jacking transfer robot from SEER, specifi-
cally the AMB-J type (see Figure 4). The robot uses a two-wheel differential drive mode.
The maximum speed achieved with the load is 1.5 m/s. The device is a manipulator robot
with a jacking mechanism, which is based on an operation using simultaneous localization
and mapping (SLAM) lasers [33]. SLAM is the process of mapping an area while tracking
the location of a device in that area. This is what mobile mapping enables. This allows large
areas to be mapped in much less time because areas can be surveyed using mobile robots,
drones, or vehicles. SLAM systems simplify data collection and can be used in outdoor or
indoor environments [34].
Sensors 2024, 24, x FOR PEER REVIEW 12 of 20
robots, drones, or vehicles. SLAM systems simplify data collection and can be used in
outdoor or indoor environments [34].
The AMB-J types are latent jack-up robots, with payloads covering 150, 300, and 600
kg. The unit has compact dimensions: it is 780 mm long, 550 mm wide, 260 mm high, and
weighs 135 kg. The maximum lift height is 50 mm with tolerances of ±2 mm and the turn-
ing diameter is 910 mm. Due to its small size, the vehicle is very exible and can t into
very narrow streets. Its low height makes it suitable for low-lying trolleys or shelves and
racks. The automated guided vehicle can identify dierent shelves, racks, and other com-
ponents in the warehouse. Multiple security is provided by staggered dual lasers located
on both the front and back. Fast charging has a signicant positive impact on the baery
life, enabling it to operate continuously for a full 24 h. The lithium baery can be charged
in auto-charging mode or manually and has a duration of 8 h on a full charge. A continu-
ous connection of 3 h is required to fully charge the baery through either continuous
charging or being connected to the charger [33].
Figure 4. AGV from SEER, type AMB-J [33].
The selected AGV model also has specied conditions when it cannot be deployed
and used. The prohibitions of operation are as follows:
Must not be used outdoors;
Must not be used in an environment that would severely interfere with the naviga-
tion equipment;
Should not be used in environments with dust, powder, or explosive hazards;
Is not allowed to be used in highly salted environments (marine climate);
Must not be used in extremely harsh weather (cold, strong magnetic elds and ex-
treme weather);
In terms of materials, the carriage of explosive and ammable materials is prohibited,
and these materials, liquid objects and persons are not allowed to be transported on
it;
From the perspective of the terrain, riding on uneven, obstructive, or stepped sur-
faces is prohibited [33].
The software oers the following features: editing of maps and models, a module for
localization, a module for navigation, peripheral extension, an application programming
interface (API), visible operation, the dispatching of multiple robots, Wi-Fi, automatic
charging, laser reector navigation, and pallet recognition [33].
3.2.2. Navigation and Control System
This system enables the robot to carry out a range of predetermined tasks. Within the
created map, the navigation and control system directs the robot to a specied destination,
as instructed by the user. The procedure consists of:
Figure 4. AGV from SEER, type AMB-J [33].
The AMB-J types are latent jack-up robots, with payloads covering 150, 300, and
600 kg
. The unit has compact dimensions: it is 780 mm long, 550 mm wide, 260 mm high,
and weighs 135 kg. The maximum lift height is 50 mm with tolerances of
±
2 mm and
the turning diameter is 910 mm. Due to its small size, the vehicle is very flexible and
can fit into very narrow streets. Its low height makes it suitable for low-lying trolleys or
shelves and racks. The automated guided vehicle can identify different shelves, racks,
Sensors 2024,24, 1029 12 of 19
and other components in the warehouse. Multiple security is provided by staggered dual
lasers located on both the front and back. Fast charging has a significant positive impact
on the battery life, enabling it to operate continuously for a full 24 h. The lithium battery
can be charged in auto-charging mode or manually and has a duration of 8 h on a full
charge. A continuous connection of 3 h is required to fully charge the battery through either
continuous charging or being connected to the charger [33].
The selected AGV model also has specified conditions when it cannot be deployed
and used. The prohibitions of operation are as follows:
Must not be used outdoors;
Must not be used in an environment that would severely interfere with the navigation
equipment;
Should not be used in environments with dust, powder, or explosive hazards;
Is not allowed to be used in highly salted environments (marine climate);
Must not be used in extremely harsh weather (cold, strong magnetic fields and extreme
weather);
In terms of materials, the carriage of explosive and flammable materials is prohibited,
and these materials, liquid objects and persons are not allowed to be transported on it;
From the perspective of the terrain, riding on uneven, obstructive, or stepped surfaces
is prohibited [33].
The software offers the following features: editing of maps and models, a module for
localization, a module for navigation, peripheral extension, an application programming
interface (API), visible operation, the dispatching of multiple robots, Wi-Fi, automatic
charging, laser reflector navigation, and pallet recognition [33].
3.2.2. Navigation and Control System
This system enables the robot to carry out a range of predetermined tasks. Within the
created map, the navigation and control system directs the robot to a specified destination,
as instructed by the user. The procedure consists of:
Global path planning—this involves identifying the destination point and inputting
a map file to generate the shortest route to the destination. It also includes breaking
down one large task into sub-tasks for each route section;
Task scheduling—based on the subtasks of the current route or action execution mod-
ule, the task scheduler generates auxiliary tasks according to the specified instructions;
Local path planning—the robot only advises movement along the current specified
route. If an obstacle occurs on its route, based on the current position of the route
given by the localization device and using sensors, the system will block, report an
error, and then lock (stay in place);
Action planning—the robot is set to perform the specified action based on instructions
and current information from the sensors;
Localization—the robot has a built-in localization module that provides real-time
accurate information about its location, based on SLAM navigation, and also uses
navigation using QR codes;
Sensors—used to detect obstacles and possible assessments for slowing down, there
are built-in sensors such as a six-axis gyroscope, sensor, 3D camera, and infrared and
DI signal, etc.;
Actuators—these are used to measure the state of the robot and, when executed
following a stimulus, execute the specified tasks [33].
When introducing AGVs, it is not enough to acquire the robot itself, but also the
accessories necessary for its proper functioning, which are as follows: the charging station
and the corresponding charging cables, the safety module, software, and training, etc. And
the cost also includes all the transport of the robot to the company, packaging, installation,
and wiring costs.
Sensors 2024,24, 1029 13 of 19
3.2.3. Proposal to Introduce AGV/AMR in the Warehouse
When AMR/AGV is proposed to be introduced into the company, only one such
vehicle is required, which reduces the number of current AGVs (2). The implementation of
AMR/AGV has been specified only for AGVs that are small and have the loads positioned
on top of each other. A technology using AGV/AMR vehicles would follow the same
principle of material transport, with the vehicle being equipped with a lifting platform. The
introduction of 1 vehicle would also minimize the number of vehicles in the handling aisle,
which has the impact of reducing congestion.
The AGV/AMR deployment can be seen in the diagram above (Figure 5), in which
the AGV/AMR is indicated in the red circle.
Sensors 2024, 24, x FOR PEER REVIEW 13 of 20
Global path planning—this involves identifying the destination point and inpuing
a map le to generate the shortest route to the destination. It also includes breaking
down one large task into sub-tasks for each route section;
Task scheduling—based on the subtasks of the current route or action execution mod-
ule, the task scheduler generates auxiliary tasks according to the specied instruc-
tions;
Local path planning—the robot only advises movement along the current specied
route. If an obstacle occurs on its route, based on the current position of the route
given by the localization device and using sensors, the system will block, report an
error, and then lock (stay in place);
Action planning—the robot is set to perform the specied action based on instruc-
tions and current information from the sensors;
Localizationthe robot has a built-in localization module that provides real-time ac-
curate information about its location, based on SLAM navigation, and also uses nav-
igation using QR codes;
Sensors—used to detect obstacles and possible assessments for slowing down, there
are built-in sensors such as a six-axis gyroscope, sensor, 3D camera, and infrared and
DI signal, etc.;
Actuators—these are used to measure the state of the robot and, when executed fol-
lowing a stimulus, execute the specied tasks [33].
When introducing AGVs, it is not enough to acquire the robot itself, but also the ac-
cessories necessary for its proper functioning, which are as follows: the charging station
and the corresponding charging cables, the safety module, software, and training, etc. And
the cost also includes all the transport of the robot to the company, packaging, installation,
and wiring costs.
3.2.3. Proposal to Introduce AGV/AMR in the Warehouse
When AMR/AGV is proposed to be introduced into the company, only one such ve-
hicle is required, which reduces the number of current AGVs (2). The implementation of
AMR/AGV has been specied only for AGVs that are small and have the loads positioned
on top of each other. A technology using AGV/AMR vehicles would follow the same prin-
ciple of material transport, with the vehicle being equipped with a lifting platform. The
introduction of 1 vehicle would also minimize the number of vehicles in the handling
aisle, which has the impact of reducing congestion.
The AGV/AMR deployment can be seen in the diagram above (Figure 5), in which
the AGV/AMR is indicated in the red circle.
Figure 5. Scheme for the introduction of AMR/AGV vehicles.
Figure 5. Scheme for the introduction of AMR/AGV vehicles.
3.2.4. Time Use
Table 3displays the production volume of seats designated for the chosen vehicles,
denoted by the letter “C” in the table. The table also outlines the distribution of seats
by comfort type such as classic, comfort, or sport. The production hall has a three-shift
operation with a current output of 510 seats per day, equivalent to 170 seats per shift.
Table 3. Summary of production volume.
Segment 2
Total
Type of Seat Classic
Comfortable
Sports C8 Way C Comfort C Sport
Production volume [%] 6 60 7 6 13 8 100
Volume/day [pcs] 31 304 36 33 68 38 510
Number of shifts/days 3 3 3 3 3 3 -
Volume/shift [pcs] 10 101 12 11 23 13 170
One working shift, i.e., 8 h (480 min), is distributed as follows: 1st break—10 min, 2nd
break—20 min; 5 min at the beginning of the shift, where the authorized worker explains any
changes to the operators, and 5 min at the end of the shift, which belongs to the cleaning of
the hall, are still included in the rest time. This gives a networking time of 440 min per shift.
3.2.5. Before the Introduction of AGVs
The production line requires 28 auto-sets of each material per hour. As a result, the
transport routes for a specific cycle were adjusted accordingly. Table 4presents the number
of car-sets transported per transport trolley, with distances in meters. The distance from the
warehouse to the production line is the same when transporting the same type of material.
Table 4presents additional details, such as the hourly demand for trolleys, the operator’s
Sensors 2024,24, 1029 14 of 19
theoretical speed, and the total cycle time, which includes the time taken to stop work and
retrieve an empty trolley, as well as a 50% congestion efficiency value. This calculation
includes the previous period’s AGVs, which required the trolley operator to give way
before crossing the handling aisle, resulting in downtime. As a result, the three workers
who were responsible for supplying materials were also responsible for loading the trolley
in the material warehouse. This time is no longer considered as part of the transport cycle.
Table 4. Time use of operators (4.2).
Ordinal Number
Material Transported
Required Quantity/in Line/h [pcs]
Quantity of Car-Sets/Trolley
Name of the Flow
Pickup
Unloading
Distance There (m)
Distance Back (m)
Quantity of Trolleys
Quantity of Trolleys/h
Theoretical Speed (m/s)
Time/Stop (s)
Congestion Efficiency (%)
Transport Time/Cycle (s)
1. Two rows of
foam seating 28 6 Flow 1 P1 D1 45 45 1 4.7 1.1 4 50 183
2. Two rows of
foam backrests
28 6 Flow 2 P2 D2 40 40 1 4.7 1.1 4 50 169
3.
Two rows of
headrests and
backrests
28 4 Flow 3 P3 D3 55 55 1 7 1.1 4 50 210
3.2.6. After the Introduction of AGVs
The information needed to calculate the cycle time is again shown in Table 5, where
the distance information has not changed with respect to the previous technology. Next,
the table shows the measured values exhibited by the AGV. These mainly relate to the
material required in the line, which has remained unchanged because the company has
signed contracts for a certain period that it has to fulfil, and for this reason the requirement
has remained unchanged. The subsequent supply of the assembly line depends on this
parameter. Subsequently, there is information on the quantity of material transported;
where the capacity of the trolleys has been doubled for the foam reinforcements and for
the head restraints this has increased in the number of pieces, from 12 pieces to 45 pieces.
As a result, there is no need for such an intensive amount of transport of the picked-up
trolleys to the line, as with the previous technology. This also reduces the density in the
handling line. Another parameter is the AGV speed, which is almost twice as low as that of
the operator, which also affects the total cycle time. Not least, we can also note the number
of stops in the loop, which reaches 4. This sequence of stops is as follows: first, the cart is
loaded in the warehouse near the AGV. Second, the cart is unloaded on the assembly line.
Third, the empty cart is picked up in the line area. Lastly, the empty cart is unloaded near
the warehouse. Each single stop represents a time of 30 s. The AGV stops also need to be
included in the cycle-time calculation, due to congestion that occurs in the handling aisle.
The coefficient is given by the company and is 80%; also, the additional item of time lost
due to accelerations and decelerations of the AGVs is also 80%.
Sensors 2024,24, 1029 15 of 19
Table 5. Time use of AGVs.
Ordinal number
Material Transported
Required Quantity/in Line/h [pcs]
Quantity of Car-Sets/Trolley
Name of the Flow
Pickup
Unloading
Distance There (m)
Distance Back (m)
Quantity of Trolleys
Quantity of Trolleys/h
Theoretical Speed (m/s)
Time/Stop (s)
Congestion Efficiency (%)
Time Loss Due to Turning or Deceleration (%)
Transport Time/Cycle (s)
Practical Number of AGV/Loop (pcs)
1. Two rows of
foam seating 28 10 Flow 1 P1 D1 45 45 1 2.8 0.4 4 30 80 539
2
2.
Two rows of
foam
backrests
28 12 Flow 2 P2 D2 40 40 1 2.3 0.4 4 30 80 500
3.
Two rows of
headrests and
backrests
28 15 Flow 3 P3 D3 55 55 1 1.9 0.4 4 30 80 617
3.2.7. Time Payback on Investment
Time payback is a crucial metric for companies. It is particularly useful when assessing
potential investments in innovative ventures, where calculating the time taken to recuperate
an initial spend is essential. For a company, this is one of the main elements that has
sufficient influence on the decision of the suitability of an investment. From this, we can
understand the net profit in each period. At the beginning of the period, the values show a
net loss, and the consequence of these results is the finance invested in innovation. It is up
to the company which method it uses to calculate the return, as the difference in methods is
the range of items included. The most used method in companies is the share of net profit
minus the initial investment method; it is also possible to express it as a percentage. In
terms of accuracy, the method is the so-called mean payback period, which is much more
accurate than the above method. In this method, the calculation is as follows: the cost of
the investment is divided by the annual cash flow (annual income) minus the cost savings
of the investment.
The general formula for return on investment (ROI) is as follows:
ROI =Ca pCamr (1)
where
ROI—cost of implementation (e.g., technology) [EUR/month];
Cap—average past costs [EUR/month];
Camr—average maintenance and repair costs [EUR/month] [7].
The cost of electricity is not required by the company, so we will only count it on input
data. We will also not count the cost of carrying out repairs and maintenance work because
the company, almost since the introduction of the first automation, has a special in-house
employee who is responsible for carrying out repairs and maintenance.
Sensors 2024,24, 1029 16 of 19
3.2.8. Costs Incurred from the Previous Technology
This section summaries the costs of the previous technology used by the company
before the introduction of the AGVs. Cost items include the wages of the employees
in each segment. In the problem addressed, there were three employees who removed
the material and then transported it from the warehouse to the assembly line. They also
transported empty carts from the assembly line to the warehouse. This is the cost per
employee (see Table 6). The table also shows the total cost in EUR per month.
Table 6. Employee costs.
Activity Performed Number of Operators
Total Unit Cost/Month (EUR)
Total Unit Cost/Year (EUR)
Warehouse operator 1 2200 26,400
Trolley operator 2 4000 52,800
Total costs (EUR) 7000 79,200
When using human labour, the highest cost to society is the wage paid to employees.
As the cost of human labour rises every year, rising in direct proportion to inflation, so do
the costs to society.
3.2.9. AGV Investment in the Company
The company provided us with real data on the total costs of the introduction of the
AGV technology. The total cost will be found for the items that include the purchase of
the AGV itself, and there are also the items related to the proper functioning of the AGV,
such as installation, putting the AGV into service, transport, project design and others. In
addition, we included in the cost of technology the carts, which were newly designed to
fit the AGV. Table 7shows the additional costs for infrastructure modification and hall
adaptation. New guidance elements are also included in the cost. The company handled
the acquisition of AGV in two ways.
Table 7. Summary of AGV costs in the company.
Item Quantity (pcs) Unit Price (EUR) Total Price (EUR)
AGV costs 70,550.00
AGVs and accessories 2 18,500 37,000
Lease finance costs (excluding VAT) 48 1350 27,800
Insurance (small recurring costs) 48 - -
Project 1 5000 5000
Transport 1 750 750
Installation 1 - -
Commissioning (performed by the AGV team)
0 - -
Spare parts 1 - -
Trolleys 21,700
Trolleys 5 1500 7500
Renewal of stands 2 2000 4000
Training 1 8000 8000
Supplementary material for trolleys 4 300 1200
Sensors, cables, light indication for trolley 2 500 1000
Warehouse modification 10,750
Preparation of trolley loading points 1 8000 8000
Preparation of trolley unloading points 0 3000 -
Tape—layout reorganization 400 5 2000
Tags and protection 100 8 750
Total cost of AGV 1 38,200
Total cost of AGV 2 (lease) 64,800
Sensors 2024,24, 1029 17 of 19
The first method of financing was carried out by monthly instalments; in this way,
the accessories for the operation of the AVG were procured, which the company had
to purchase. The second method was also financed by monthly instalments, where the
company does not purchase the AGVs but only leases them. The monthly instalment of the
AGV rental is EUR 450.
Table 8shows the calculation of the returns between the previous and the current
technology introduced to the firm on Segment 2. From the table, we can see the next total
annual cost of the previous technology is EUR 79,200 and the total cost associated with the
current technology (AGV) is EUR 49,000.
Table 8. Summary of costs and investments.
Calculation of Return Quantity (pcs) Unit Price (EUR) Total Price (EUR)
Large one-off costs - - 38,200
Small additional costs:
AGV rental costs
(450 EUR/month) 24 450 10,800
Maintenance 0 100 -
Total cost 49,000
Staff 3 26,400 EUR/year 79,200 EUR/year
Time returns on finance AGV ROI = 49,000/79,200 = 0.6187 = 0.6187 years = 8 months.
By implementing AGVs in Segment 2, a time payback compared to the previous cost
per worker, in a time period of 8 months, was created.
4. Conclusions
By implementing two AGVs, we were able to replace the human work of four operators.
It was a constantly repeating handling route consisting of four stations using different
modes of transport. Based on the workload analysis of the individual employees, we
concluded that this was a suitable place to implement AGVs for the positions because of
the repeatability and the one-sidedness of the individual operations.
Financially, the company saves EUR 24,824 per year, due to the replacement of old
AGVs with new AGVs in the service. Up until now, 18 operators have been needed
for individual operations, whose annual wage costs amount to EUR 28,000. The cost of
operating flood equipment such as low-lift trucks, forklifts and small trains amounted to
EUR 61,000 per year in the company. Since the introduction of the first AGV, the company
has saved EUR 756,000 in wage costs for 18 people. The resulting calculation for the
company’s position, which we have studied, shows that within 8 months the company will
have recovered the financial resources invested in AGVs. Another but more financially
demanding option would be the replacement of AGVs with AMRs, which we have tried
to point out, and which can also be identified as very realistic in terms of cost recovery.
The only question is which way the company will choose in terms of technology. The
cost calculations for the given technologies and their advantages and disadvantages are
described in this article. The company will continue to automate the processes, because
it increases safety in the company and the degree of comfort, speed, and simplicity of the
equipment of individual performances.
By implementing AGVs in their own way, the company acquired two automated
vehicles with a return on investment of 8 months. The company’s investment in the AGVs
amounts to EUR 79,200 for the selected model, saving the work of three employees who
can be reassigned to operations that the AGV cannot perform.
The company is constantly striving to introduce automated vehicles with positive
results in terms of savings and forms of the automation process.
In our case, we had all the information we needed to perform a detailed analysis. The
necessary information consisted mainly of the technical parameters of the vehicles and
Sensors 2024,24, 1029 18 of 19
trolleys, the price, uptime, and line utilization, and finally, the calculated parameters of
both time and economic payback.
Author Contributions: Conceptualization, I.K.; editing of the manuscript, I.K. and J.K.; realization,
D.K. and I.K.; introduction, I.K.; literature review, J.K. and D.B.; materials and methods, D.K., D.B.
and I.K.; data curation, J.K.; results, J.K. and I.K.; writing—original draft, I.K. and D.K.; visualization,
J.K.; final revision, J.K. and I.K. All authors have read and agreed to the published version of the
manuscript.
Funding: The paper is an output of the project 025ŽU-4/2023 “Identification of the impact of driver
fatigue on road safety”.
Institutional Review Board Statement: Not applicable.
Informed Consent Statement: Not applicable.
Data Availability Statement: Data are contained within the article.
Conflicts of Interest: The authors declare no conflicts of interest.
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Recent years have seen a dramatic rise in the popularity of autonomous mobile robots (AMRs) due to their practicality and potential uses in the modern world. Path planning is among the most important tasks in AMR navigation since it demands the robot to identify the best route based on desired performance criteria such as safety margin, shortest time, and energy consumption. The complexity of the problem can however become intractable when challenging scenarios are considered, which include navigation in a dynamic environment and solving multi-objective optimizations. Various classical and heuristic techniques have been proposed by researchers to mitigate such issues. The purpose of this paper is to provide a comprehensive and up-to-date literature review of the path planning strategies that have received a considerable attention over the past decade. A systematic analysis of the strengths, shortcomings, and scope of each method is presented. The trends as well as challenges in practical implementation of the strategies are also discussed at the end of this paper. The outcome of this survey provides useful guidance for future research into creating new strategies that can enhance the autonomy level of AMRs while preserving their robustness against unforeseen circumstances in practice.
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Previous research on automated guided vehicles (AGVs) and Industry 4.0 has mainly focused on technical aspects, while the humans who work with AGVs as well as the influences on the organisation have received limited attention. This paper aims to explore human- and organisation-related challenges in the introduction of AGVs in production facilities. Two cases are examined and analysed using the Human, Technology, and Organisation (HTO) model, which highlights the interactions between the three subsystems: human, technology, and organisation. The paper shows that several human- and organisation-related challenges arise when introducing AGVs, such as supporting the AGVs with new work procedures for managing AGV errors, determining what different operators need to know about AGVs, and developing acceptance among employees. The identified challenges complement the technical focus in previous research. Actions are proposed to facilitate the introduction of AGVs to avoid or manage the identified challenges. The findings of this study can help managers involved in the introduction of AGVs to consider human- and organisation-related aspects to improve AGV performance and employee well-being.