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Digital Twin Technology

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Chapter 7
Digital Twin Technology
Zongyan Wang
Additional information is available at the end of the chapter
http://dx.doi.org/10.5772/intechopen.80974
© 2016 The Author(s). Licensee InTech. This chapter is distributed under the terms of the Creative Commons
Attribution License (http://creativecommons.org/licenses/by/3.0), which permits unrestricted use,
distribution, and reproduction in any medium, provided the original work is properly cited.
ZongyanWang
Additional information is available at the end of the chapter
Abstract
Digital twin technology is considered to be the core technology of realizing Cyber-
Physical System (CPS). It is the simulation technology that integrates multidisciplinary,
multiphysical quantity, multiscale and multi probability by making full use of physical
model, sensor update, operation history and other data. It is the mapping technology for
the whole lifecycle process of physical equipment in virtual space. It is the basic technol-
ogy of Industrial 4.0. This chapter mainly introduces: (1) the generation of digital twin
technology; (2) the denition and characteristics of digital twin technology; (3) the rela-
tionship between digital twin and digital thread; (4) the implementation of the product
digital twin model; and (5) the research progress and application of digital twin research.
Keywords: digital twin, digital twin models, digital twin workshops, digital
twin applications, Cyber-Physical System (CPS), virtual reality fusion, intelligent
manufacturing, products lifecycle management, modeling and simulation
1. The generation of digital twin technology
The use of the “twin/twins” concept in the manufacturing can be traced back to NASA’s
Apollo program [1]. In the project, NASA needs to make two identical spacecraft. The aircraft
left on earth is called a twin and is used to reect the status/condition of the space vehicle in
action. During the ight preparation, the space vehicle known as the twins is widely used in
training. During the mission, the twins were used to simulate the space model on the ground,
and it can accurately reect and predict the status of the space vehicle in operation as much as
possible, so as to assist the astronauts in orbit to make the most correct decision in emergen-
cies. From this perspective, it can be seen that the twins are actually a prototype or model
that reects the real operation situation in real time through simulation. It has two signicant
characteristics: (1) the twins with the objects to be reected are almost exactly the same as the
© 2020 The Author(s). Licensee IntechOpen. This chapter is distributed under the terms of the Creative
Commons Attribution License (http://creativecommons.org/licenses/by/3.0), which permits unrestricted use,
distribution, and reproduction in any medium, provided the original work is properly cited.
appearance (the geometry and size of the product), content (the structure of the product and
its macro- and microphysical properties) and properties (the function and performance of the
product); and (2) it allows you to mirror/reect real operation/state by means of simulation,
etc. It needs to be pointed out that the twin at this time is still physical.
In 2003, professor Michael Grieves proposed the concept of virtual digital representations
equivalent to physical products in a product lifecycle management (PLM) course at the
University of Michigan and gives it a denition: which is a digital copy of one or a set of specic
devices that can abstractly represent a real device and can be used as a basis for testing under
real or simulated conditions [2]. The concept stems from the expectation of a clearer expres-
sion of the information and data of the device, hoping to put all the information together for a
higher level of analysis. Although this concept was not called at the time as digital twin model
(from 2003 to 2005, known as the “mirrored spaced model” [3], and during 2006–2010, known
as “information mirror model” [4]), but its conceptual model had all the elements of the digital
twin model, namely the physical space and virtual space and the relation or interface between
them, therefore, it was regarded as the embryonic form of digital twin.
In 2006, the US National Science Foundation (NSF) rst proposed the concept of the infor-
mation physics system Cyber-Physical Systems (CPS), and could also be translated into a
network entity system, or an information physical integration system [5]. The information
physics system is dened as a network composed of physical input and output and interac-
tive components. It is neither dierent from the independent equipment that is not connected
to the network, nor it is dierent from the pure network without physical input and output.
In 2011, professor Michael Grieves, in his book “Virtually perfect: driving innovative and lean
products through product lifecycle management” [6], cited the conceptual model of the noun
digital twin model (digital twin), which is described by his co-author John Vickers, and it is
still in use today. Its conceptual model is shown in Figure 1, including three main parts: (1)
real space entity products; (2) virtual space virtual products; and (3) data and information
interface between real space and virtual space.
This conceptual model greatly expands the “twins” in the Apollo program: (1) it digitizes
the twin model and use digital expression to build a virtual product with the same content
and nature as the product entity in appearance; (2) it introduces virtual space and establishes
the association between virtual space and real space, so that data and information can be
Figure 1. Conceptual model of digital twin.
Industry 4.0 - Impact on Intelligent Logistics and Manufacturing96
exchanged between each other; (3) it visually reects the concept of integrating the real with
the imaginary, and controlling the real with the imaginary; and (4) extension of the concept
and extension, in addition to products, factory, workshop, production lines, manufacturing
resources (work position, equipment, personnel, materials, etc.), in the virtual space corre-
sponding digital twin model can be set up.
However, it did not aract much aention from scholars when the concept and model were
proposed in 2003. The main reasons are: (1) there were limited technical means to collect
product-related information in the production process at that time, most of which were based
on manual methods and paper documents; in particular, it is dicult to realize the on-line
real-time collection of production data; (2) the digital description of physical products is not
yet mature, and relevant software and hardware cannot support the precise denition and
description of related properties and behaviors of physical products in virtual space; and (3)
at that time, it was dicult to realize real-time processing of big data with computer perfor-
mance and algorithm, and mobile communication technology was not mature enough, and
real-time data transmission between virtual and real data was dicult to achieve.
After 2011, the digital twin ushered in a new development opportunity. The digital twin was
proposed and further developed by the US Air Force Research Laboratory in 2011; the aim is to
solve the maintenance and life prediction of aircraft in the future complex service environment
[7]. In 2025, they plan to deliver a new type of space vehicle and digital model that corresponds
to the physical product. The digital twin has super realism in two aspects: (1) it includes all
geometric data, such as machining error and (2) includes all material data, such as material
microstructure data. In 2012, the US Air Force Research Laboratory proposed the concept of
Airframe Digital Twin” as the hyper-realistic model of the airframe being manufactured and
maintained. The Airframe Digital Twin can be used to simulate and judge whether the air-
frame meets the task condition. It is an integrated model composed of many sub-models [8].
The Airframe Digital Twin is a consistent model and computational model of a single air-
frame in the whole product lifecycle. It is associated with the materials, manufacturing speci-
cations and processes used to manufacture and maintain aircraft. It is also a sub-model of
aircraft digital twin, which is an integrated model including electronic system model, ight
control system model, propulsion system model and other subsystem models. At this time,
digital twin enters the initial planning and implementation stage from the conceptual model
stage, and its connotation and nature are further described and studied.
Specically, (1) it highlights the hierarchical and integrated nature of digital twin, for exam-
ple, the aircraft digital twin, the airframe digital twin, airframe structure model, material state
evolution model and so on, and is benecial to the gradual implementation and nal realiza-
tion of digital twin; (2) it highlights the hyperrealism of digital twin, including geometric
model, physical model, material evolution model, etc.; (3) it highlights the universality of
digital twin, that is, it includes the whole product life cycle and extends from the design stage
to the subsequent product manufacturing stage and product service stage; (4) it highlights
the consistency of digital twin in the whole life cycle of products, which reects the idea of a
single data source; and (5) it highlights the computability of digital twin, and the real state of
corresponding product entity can be reected in real time through simulation and analysis.
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In 2012, in the face of future aircraft light quality, high load and the demand of the longer ser-
vice time under more extreme environment, NASA and the US Air Force Research Laboratory
in cooperation put forward the common digital twin example of future aircraft. For aircraft,
ight systems or launch vehicles, they dene digital twin as an integrated multi-physical,
multi-scale, probabilistic simulation model for aircraft or system, which uses the best avail-
able physical models, updated sensor data, and historical data to reect the state of the ying
entity corresponding to the model [9]. In the same year, digital twin were formally introduced
into the public view in the roadmap of modeling, simulation, information technology and
processing released by NASA [10]. The denition can be considered as a periodic summary of
previous research by the US Air Force Research Laboratory and NASA, especially it empha-
sizes the integration, multiphysical, multiscale, probabilistic characteristics of digital twin,
and its main function is to be able to reect the state of corresponding ight products in real
time (continuing the function of the twins of the early Apollo project); the data used includes
the current best available product physical models, updated sensor data, and historical data
for product groups.
In 2013, Germany proposed the “Industry 4.0,” whose core technology is Cyber-Physical
System (CPS). CPS is a multidimensional complex system which is integrated with comput-
ing, communication, control, network and the physical environment [11]. Based on the big
data network and mass computing and through the organic integration and deep cooperation
of 3C (computing, communication, control) technology, the real-time perception, dynamic
control and information service of large-scale engineering systems can be realized. CPS from
physical space, environment, activities, large data collection, storage, modeling, analysis,
mining, evaluation, prediction, optimization and coordination combine with design of the
object, testing, and performance characterization to realize the depth fusion of network space
(cyberspace) and physical space, real-time interaction and mutual coupling and update on
each other; Furthermore, it promotes the comprehensive intelligence of industrial assets
through self-perception, self-memory, self-cognition, self-decision-making, self-reconstruc-
tion and intelligent support. CPS connects people, machines and things. The virtual and real
bidirectional dynamic connection in CPS connotation has two steps: (1) virtual entity such as
the design of a product is simulated rst and then manufactured and (2) entity virtualization.
In the process of manufacturing, using and running, entities reect their status to the virtual
end and conduct monitoring, judgment, analysis, prediction and optimization through the
virtual mode.
By constructing a closed loop channel for data interaction between information space and
physical space, CPS can realize the interaction between information virtual model and physi-
cal entity. The emergence of digital twin provides a clear idea, method and implementation
way for CPS. On the basis of the physical entity modeling the static model, through the real-
time data acquisition, data integration and monitoring, dynamic tracking of physical entity
working status and progress measurement result (such as acquisition, traceability informa-
tion, etc.), the physical entities in the physical space are reconstructed in the information
space, forming digital twin with the ability of perception analysis and decision execution.
Therefore, from this perspective, digital twin is the core technology of CPS.
Industry 4.0 - Impact on Intelligent Logistics and Manufacturing98
In 2014, Professor Michael Grieves elaborated digital twin in detail in his white paper “Digital
Twin: Manufacturing Excellence through Virtual Factory Replication” [2]. In the same year,
the U.S. defense department, PTC, Siemens and Assaults accepted the term “digital twin” and
began to use it in marketing campaigns. It needs to be pointed out that they all use “digital
twin” instead of “digital twins”.
In 2015, General Electric Company planned to implement real-time monitoring, timely inspec-
tion and predictive maintenance of engines based on digital hygiene and through its own
cloud service platform—Predix, using advanced technologies such as big data and Internet
of Things [12]. In Made in China 2025, CPS is considered to be an integrated technical system
that supports the deep integration of industrialization and informatization, and is an impor-
tant starting point for promoting the integration of manufacturing and Internet.
In 2017, in order to realize the interactive fusion of the physical world and the informa-
tion world of the manufacturing workshop, Tao Fei puts forward the realization mode of
the digital twin workshop, and made clear its system composition, operation mechanism,
characteristics and key technology, which provided the theory and method reference for
the realization of the information physical system of the manufacturing workshop [13]. For
two consecutive years (2016 and 2017), Gartner, the world’s most authoritative IT research
and consulting rm, listed digital twin as one of the top 10 strategic technology trends
of the year. The world’s largest weapons manufacturer Lockheed Martin in November
2017 ranked digital twin as the top of the six leading technology in the future defense and
aerospace industries. In December 2017, the China Association for Science and Technology
(CAST) Intelligent Manufacturing Academic Union (CIMA) listed digital twin as one of
the top 10 technological advances in intelligent manufacturing at the World Intelligent
Manufacturing Conference [14].
It can be seen that the digital twins have developed rapidly in both theoretical and application
levels in recent years. At the same time, the application range has gradually shifted from the
product design stage to the product manufacturing stage and operation and service stage,
which has aracted wide aention of scholars and enterprises. The main reasons are the fol-
lowing aspects:
1. the rise and wide application of model digital expression technology such as model light-
weight, MBD, physics-based modeling, etc., makes it possible to accurately describe physi-
cal products at various stages of the product life cycle using digital methods; and
2. the rapid popularization and application of the new generation of information and com-
munication technologies such as large data, Internet of Things, mobile Internet, cloud com-
puting, and the rapid development of computer science and technology such as large-scale
computing, high-performance computing, distributed computing, as well as the emergence
of intelligent optimization algorithms, such as machine learning and deep learning, make
products reliable with real-time dynamic data collection and predict possible, such as fast
transmission, storage, analysis and decision, and provide important technical support for
real-time correlation and interaction between virtual space and physical space.
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2. The denition and characteristics of digital twin technology
From the perspective of the origin and current development of digital twin, its applications
mainly focus on product design and operation and maintenance stages, but with the rapid
spread and application of new generation of information and communication technology
such as big data, Internet of Things, mobile Internet, and cloud computing, digital twin have
gone beyond the traditional product design and operation phases. To make it easier to under-
stand the digital twin, this section gives a denition of the digital twin technology.
2.1. Denition of digital twin and digital twin model
Digital twin refers to the processes and methods for describing and modeling the character-
istics, behavior, formation process, and performance of physical objects using digital technol-
ogy, and can also be referred to as digital twin technology. The digital twin model refers to
a virtual model that completely corresponds to and is consistent with the physical entities in
the real world, and can simulate its behavior and performances in a real-time environment
in real time. It can be said that digital twin is techniques, processes, and methods, and that
digital twin models are objects, models, and data. Digital twin technology is not only using
human theory and knowledge to build virtual models but also can use virtual model simula-
tion technology to explore and predict the unknown world, to nd beer ways and means,
and constantly inspire human innovative thinking. The pursuit of optimization and progress,
therefore, in digital twin technology provides new ideas and tools for current manufacturing
innovation and development.
In the future, there will be a digital twin model in the virtual space that is exactly the same
as the entity in the physical space. For example, the physical factory has a corresponding fac-
tory digital twin model in the virtual space, and the physical workshop has a corresponding
workshop digital twin model in the virtual space. Physical production lines in the virtual
space have corresponding production line digital twin model and so on.
Digital twin is the foundation of the intelligent manufacturing system. The most important
enlightening signicance of digital twin is that it realizes the feedback from the physical sys-
tem to the digital model of cyberspace [15].
This is a feat of reverse thinking in the industrial eld. People try to plug everything that
happens in the physical world back into digital space. Only full life tracking with loop feed-
back is the true full lifecycle concept. In this way, the digital and physical world can be truly
harmonized throughout the entire lifecycle. Various types of simulation, analysis, data accu-
mulation, and mining based on digital models, and even the application of articial intel-
ligence, can ensure its applicability to real-world physical systems. This is the signicance
of digital twin to intelligent manufacturing. The intelligence of an intelligent system must
be rst perceived, modeled, and then analyzed. Without digital twin’ accurate modeling of a
real production system, the so-called intelligent manufacturing system is passive water and
cannot be implemented.
Industry 4.0 - Impact on Intelligent Logistics and Manufacturing100
2.2. Denition of product digital twin model
Considering the evolution process and related explanations of the existing product digital
twin model, the author gives the denition of the product digital twin model: the prod-
uct digital twin model refers to the full-element reconstruction and digitized mapping
of the physical entity’s working state and work progress in the information space, and
is an integrated multiphysics, multiscale, hyperrealistic, dynamic probability simulation
model that can be used for simulating, monitoring, diagnosing, predicting, and controlling
the formation process, state, and behavior of physical entities in the real world. Product
digital twin model generated by the product model based on the product design stage,
and during the next product manufacturing and service stage, with the product data and
information interaction between physical entities, constantly improves their integrity and
accuracy, nishing a complete and accurate description of product physical entity. Some
scholars have also interpreted the digital twin model as digital mirror, digital mapping,
digital twins, etc.
It can be seen from the denition of the product digital twin model that: (1) the product
digital twin model is a simulation model in which product physical entities are integrated
in the information space, a digital le of the entire lifecycle of product physical entities,
and the integrated management of the product lifecycle data and full value chain data; (2)
the product digital twin model is perfected by continuous data and information interaction
with the physical entity of the product; (3) the nal representation of the product digital
twin models is a complete and accurate digital description of the physical entity of the
product; and (4) product digital twin model can be used to simulate, monitor, diagnose,
predict, and control the formation process and status of physical entities in a physical
environment.
The product digital twin model is far beyond the category of digital prototype (or virtual
prototype) and digital product denition. The product digital twin model includes not
only the description of the product geometry, function and performance, but also the
description of the formation process and state of the whole life cycle, such as product
manufacturing or maintenance process. Digital prototype, also called virtual prototype, is
a digital description of a mechanical product or a subsystem with independent functions.
It not only reects the geometric properties of the product object, but also reects the
function and performance of the product object in at least one domain. Digital prototype
is formed in the stage of product design and can be applied to the whole lifecycle of
products, including engineering design, manufacturing, assembly, inspection, sales, use,
after-sale, recovery and other links. The denition of digital product refers to the activi-
ties of digitizing the function, performance and physical properties of mechanical prod-
ucts. From the connotation of digital prototype (or virtual prototype) and digital product
denition, they mainly focus on the description of the product geometry, function and
performance in the product design stage, and does not involve the description of the
formation process and state of other full life cycle stages such as product manufacturing
or maintenance process.
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2.3. Basic features of the product digital twin model
The product digital twin model has many characteristics including: virtuality, uniqueness,
multiphysical, multiscale, hierarchical, integrated, dynamic, super-realistic, computability,
probability and multidisciplinary.
1. Virtuality: the product digital twin model is a physical product in digital mapping model,
information space is a virtual model, belonging to the information space (or virtual space)
and does not belong to the physical space.
2. Uniqueness: a physical product corresponds to a product digital twin model.
3. Multiphysical: the product digital twin model is based on the physical properties of physical
product digital mapping model; It is not only necessary to describe the geometric properties
of the physical product (such as shape, size, tolerance, etc.), but also to describe the various
physical properties of the physical product, including structural dynamics models, thermo-
dynamic models, stress analysis models, fatigue damage models, and material properties of
product composition materials (such as stiness, strength, hardness, and fatigue strength).
4. Multiscale: the product digital twin model not only describes the macroscopic properties of
the physical product, such as geometric dimensions, but also the microscopic properties of the
physical product, such as the microstructure of the material, the surface roughness and so on.
5. Hierarchical: the dierent components, parts, etc. that make up the nal product can
all have their corresponding digital twin models. For example, the aircraft digital twin
model includes the rack digital twin model, the ight control system digital twin model,
the propulsion control system digital twin model, etc., which is conducive to hierarchi-
cal and detailed management of product data and product models, and the progressive
realization of the product digital twin model.
6. Integrated: the product digital twin model is a multiscale and multilevel integrated model of
multiple physical structure models, geometric models, and material models, which is condu-
cive to the rapid simulation and analysis of the product’s structural and mechanical properties.
7. Dynamic: the product digital twin model will constantly change and improve through
the continuous interaction with the product entity during various stages of the whole
lifecycle; for example, product manufacturing data (such as test data, the progress data)
will be reected in the digital twin model of the virtual space, and at the same time, based
on the digital twin model, can realize the real-time, dynamic and visual monitoring of the
manufacturing state and process of the product.
8. Super-realistic: the product digital twin model and the physical product are basically
identical in appearance, content, and nature, with high degree of actuality, and can accu-
rately reect the real state of the physical product.
9. Computability: based on the product digital twin model, simulations, calculations and
analysis can be used to simulate and reect the status and behavior of the corresponding
physical product in real time.
10. Probability: the product digital twin model allows computation and simulation using
probabilistic statistics.
Industry 4.0 - Impact on Intelligent Logistics and Manufacturing102
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It can be found that digital twin is a concept that is related to and dierentiated from digital
thread. Digital twin is a digital representation of a physical product, so that we can see on
this digital product what the actual physical product may be and related technology that
includes augmented reality and virtual reality. Digital thread in the process of design and
production, the parameters of the simulation analysis model can be passed to the product’s
full three-dimensional geometric model, and then transmied to the digital production line to
be processed into a real physical product, and then reected in the product denition model
through the online digital detection/measurement system, and it is fed back to the simulation
analysis model, so that the current and future functions and performance of the dynamic and
real-time evaluation system can be realized.
In short, digital thread runs through the entire product lifecycle, especially from the seamless
integration of product design, production and operation, while digital twin, more like the con-
cept of intelligent products, emphasizes feedback from product operation and maintenance
to product design. It is the digital shadow of physical products. Through integration with
external sensors, it reects all the characteristics of objects from micro to macro and shows
the evolution process of product life cycle. Of course, not only products but also production
systems (production equipment and production lines) and systems in use and maintenance
should be built as needed.
4. Implementation of digital twin technology
4.1. Product design stage
Product digital twin is a hyperrealistic dynamic model of physical products in virtual space.
In order to achieve product digital twin, we must rst have a natural (easy to understand),
accurate, ecient digital expression method of data denition and transmission. The method
supports all stages of product life cycle, including product design, process design, process-
ing, assembly, use and maintenance. The model-based denition (MBD) technology that has
emerged in recent years is an eective way to solve this problem, and therefore it has become
Figure 2. Principle of digital thread.
Industry 4.0 - Impact on Intelligent Logistics and Manufacturing104
one of the important means for achieving product digital twin. MBD refers to a digital denition
method that aaches all relevant product design denitions, process descriptions, aributes,
and management information to the product’s three-dimensional model. MBD technology
enables product denition data to drive all aspects of the entire manufacturing process, fully
modeling the concept of parallel collaborative design of products and the idea of a single data
source, which is also one of the essence of digital twin. The product denition model mainly
includes two kinds of data: one is geometric information, that is, the product design model; and
the other is nongeometric information, stored in the specication tree, and the PDM software
supporting the 3D design software which is responsible for storing and managing the data [16].
Secondly, after the product denition based on the 3D model is realized, the process design,
tooling design, production manufacturing process and even product function testing and
verication process simulation and optimization need to be performed based on the model.
In order to ensure the accuracy of simulation and optimization results, at least the following
three points must be guaranteed:
1. High accuracy and hyperrealism of product virtual model: product modeling not only
needs to pay aention to geometric feature information (shape, size and tolerance) but
also the physical properties of the product model (such as stress analysis model, dynamic
model, and thermodynamics model, and material stiness, plasticity, exibility, elasticity,
fatigues strength, etc.). Through the use of articial intelligence, machine learning and
other methods, based on the historical data of similar product groups to achieve continu-
ous optimization of existing models, the product virtual model is closer to the functions
and characteristics of real-world physical products.
2. Accuracy and instantaneity of simulation: advanced simulation platform and simulation
software can be used, such as commercial simulation software Ansys, Abaqus, etc.
3. Model light-weighting: model light-weighting is the key technology for achieving digital
twin. First of all, the lightweight technology of the model greatly reduces the storage size
of the model, so that the geometric information, feature information and aribute informa-
tion needed for product process design and simulation can be directly extracted from the
3D model without any unnecessary redundant information. Second, the lightweight model
makes it possible to visualize product simulations, simulate complex systems, simulate
production lines, and simulate products based on instant data. Finally, the lightweight
model reduces the time, cost, and speed of information transfer between systems, facili-
tates end-to-end integration of value chains, information sharing between upstream and
downstream companies in supplies chains, business process integration, and collaborative
product design and development.
4.2. Production stage
The evolution and improvement of product digital twin is through constant interaction with
product entities. In the manufacturing phase, the physical real world delivers production test
data (such as test data, schedule data, and logistics data) to virtual products in the virtual world
and displays them instantly. Product’s model-based production test data monitoring and
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production process monitoring are realized (including the comparison of the design value and
the measured value, the comparison of the actual used material characteristics with the design
material characteristics, the comparison of the planned completion schedule and the actual
completion schedule, etc.). In addition, based on the production of measured data, through the
intelligent forecasting and analysis of logistics and schedules, we can realize the prediction and
analysis of quality, manufacturing resources, and production schedules. At the same time, the
intelligent decision module formulates a corresponding solution to the entity product based on
the results of the prediction and analysis, so as to achieve dynamic control and optimization of
the entity product, and achieve the purpose of virtual integration and virtual control.
Therefore, how to achieve real-time accurate multisource heterogeneous data collection,
eective information extraction, and reliable transmission in a complex and dynamic physi-
cal space are prerequisites for achieving digital twin. In recent years, the rapid development
of technologies, such as Internet of Things, sensor networks, industrial Internet, and seman-
tic analysis and identication, has provided a practical and feasible solution. In addition,
articial intelligence, machine learning, and data are used to demonstrate the role of digital
twin in product data integration demonstration, product production progress monitoring,
product quality monitoring, intelligent analysis and decision-making (such as product qual-
ity analysis and forecasting, dynamic scheduling and optimization). The rapid development
of technology such as mining and high-performance computing has provided important tech-
nical support for this purpose. Since the assembly line is the carrier for product assembly, the
architecture also considers digital hygienic production and assembly line digital twin. The
framework mainly includes three parts:
1. Real-time collection of dynamic data in physical space: the dynamic data generated dur-
ing the assembly process of the product can be divided into production personnel data,
instrument and equipment data, tooling tool data, production logistics data, production
progress data, production quality data, and actual work hour data. There are eight catego-
ries of data for reverse problems. First of all, for the manufacturing resources (production
personnel, equipment, tooling, materials, AGV, pallets), combined with the characteristics
and needs of the production site, the use of barcode technology, RFID, sensors and other
Internet of Things technology, manufacturing resource information identication, the
manufacturing process awareness information collection point is designed and a manu-
facturing object connection network is constructed in the production workshop to real-
ize the real-time perception of manufacturing resources. The production personnel data,
instrument and equipment data, tooling data, production logistics data and other manu-
facturing resources-related data are classied as real-time sensing data; the production
progress data, actual work hour data, production quality data, and reverse problem data
are classied as process data. Real-time sensing data collection will promote the produc-
tion of process data. In addition, for the abovementioned large number of multisource,
heterogeneous production data, on the basis of predened manufacturing information
processing and extraction rules, the multisource manufacturing information relationship
is dened, data identication and cleaning are performed, and data is nally standardized
and packaged and formed a unied data service and published it externally.
Industry 4.0 - Impact on Intelligent Logistics and Manufacturing106
2. The digital twin evolution of virtual space: by using the unied data service to drive the
three-dimensional virtual model of assembly line and the three-dimensional model of
product, the product digital twin instances and the assembly line digital twin instances
are generated and updated continuously. Assembling line digital twin and product digital
twin instances are associated with real-world assembly lines and physical products, and
the data exchange between each other is achieved through a unied database in virtual
space.
3. Status monitoring and process optimization feedback control based on digital twin: real-time
monitoring, correction and optimization of product production process, assembly line and
assembly station through historical data of assembly line, excavation of product history data,
and assembly process evaluation technology through the comparison of real-time data and
design data and planning data, the comparison of product technology status and quality char-
acteristics, real-time monitoring, quality forecasting and analysis, advance warning, and pro-
duction scheduling optimization are realized, so as to achieve closed loop feedback of product
production process and bidirectional connection between control and virtual reality. Specic
functions include real-time monitoring of product quality, product quality analysis and opti-
mization, real-time monitoring of production lines, real-time monitoring of manufacturing
resources, optimization of production scheduling, and optimization of material distribution.
4.3. Product service stage
During the product service (product use and maintenance) stage, the status of the product
still needs to be tracked and monitored in real time, including the physical space location,
external environment, quality status, usage status, technology, and functional status of the
product. The actual status, real-time data, use and maintenance of recorded data predict and
analyze the health, life, function and performance of the product, and provide early warning
of product quality issues. At the same time, when the product fails and has quality prob-
lems, it can realize rapid positioning of product physical location, fault and quality problem
records, parts replacement, product maintenance, product upgrade and even scrapping and
decommissioning.
On the one hand, in the physical space, using the Internet of Things, sensor technology, mobile
Internet technology, the measured data related to physical products (the latest sensor data,
location data, external environment sensing data, etc.), product usage data and maintenance
data are mapped to the product digital twin in the virtual space.
On the other hand, in the virtual space, the model visualization technology is used to realize
the real-time monitoring of the physical product usage process; combining with historical
data, historical maintenance data and related historical data of the same type of products, the
continuous optimization of product model, structure analysis model, thermodynamic model,
product failure and life prediction and analysis model is realized by using machine learning
data mining methods and optimization algorithms; it makes the product digital twinning
and prediction analysis model more accurate, and the simulation prediction results more in
line with the actual situation. For physical products that have experienced faults and quality
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problems, traceability and simulation techniques are used to quickly locate quality problems,
cause analysis, solution generation, and feasibility verication. Finally, the nal results gener-
ated are fed back to the physical space to guide the product quality troubleshooting and trac-
ing. Similar to the product manufacturing process, the implementation framework of digital
twin in the process of product service mainly includes three parts: data collection in physical
space, digital twin evolution in virtual space, and state monitoring and optimization control
based on digital twin.
5. Research progress and application of digital twin technology
5.1. Research progress on digital twin
The concept of digital twin was rst proposed by professor Grieve in 2003 at the University
of Michigan’s product lifecycle management course and was dened as a three-dimensional
model including physical products and virtual products and the connection between the two.
However, due to technical and cognitive limitations at that time, the concept of digital twin
was not taken seriously. It was not until 2011 that the US Air Force Research Laboratory and
NASA jointly proposed the construction of a digital twin for future aircrafts, and dened digi-
tal twin as a highly integrated multiphysical eld, multiscale and multiprobability simulation
model for aircrafts or systems. It was able to reect the function, real-time state and evolution
trend of the entities corresponding to the model by using physical model, sensor data and
historical data, etc. Then, digital twin really aracted aention. Some scholars supplemented
and perfected it on the basis of NASA’s concept. For example, Gabor and others suggested
that digital twin should also include expert knowledge to realize accurate simulation. Rios
and others believed that digital twin was not only for aircrafts [17, 18].
In the process of continuous improvement and development of the concept of digital twin,
academia has mainly carried out relevant research on modeling, information physics integra-
tion, interaction and collaboration, and service application of digital twin.
Some research has been carried out on the framework and modeling process of digital twin
modeling in modeling, but there is still no consistent conclusion. Some progress has been
made in modeling-related theories, including physical behavior research, nondestructive
material measurement technology, quantitative error and condence evaluation research.
These auxiliary technologies will help to determine model parameters, construct behavior
constraints, and verify model accuracy.
In the aspect of information physics fusion, there are only preliminary studies on the dimen-
sionality reduction and integration of sensor data and manufacturing data in the aspect of
digital twin information physics fusion, while the research on the theory and technology of
digital twin information physics fusion is still blank. In order to solve this dicult prob-
lem, professor Tao Fei decomposed and rened the scientic problem of information physics
fusion into four dierent dimensions of fusion: physical fusion, model fusion, data fusion,
and service fusion in 2017, and designed the corresponding system implementation refer-
ence framework. Combined with the theory of digital twin technology and manufacturing
service, this chapter systematically studies and discusses four key scientic issues of physical
Industry 4.0 - Impact on Intelligent Logistics and Manufacturing108
integration, model integration, data integration and service integration, and extracts and
summarizes the corresponding basic theories and key technologies. His related work pro-
vides some theoretical and technical references for relevant scholars to carry out theoretical
and technological research on the physical integration of digital twin information and for
enterprises to build and practice the concept of digital twin.
The research on real-time acquisition theory of production data and man-machine interaction
that has been carried out in the eld of interaction and collaboration is helpful to realize the
interaction and collaboration between the physical world and the virtual world. However,
there are few related researches on interaction and collaboration between machines and ser-
vices at present.
In service application, some research has been carried out on service application of digi-
tal twin in fatigue damage prediction, structural damage monitoring, real-time running
states detection, faults location, etc.; however, there are still many problems to be solved
in realizing service integration and coordination. From the above analysis, it can be seen
that the research on the related theories of digital twin is still in its infancy. In order to pro-
mote the application of digital twin to the ground, it needs to be systematically and deeply
studied in the aspects of digital twin modeling, information physics fusion, exchange and
cooperation.
5.2. Application of digital twin technology
5.2.1. Product design based on digital twin
Product design refers to the work process of providing all the solutions needed for prod-
uct production through research, analysis and design according to user requirements. The
product design based on digital twin refers to the synergy of existing physical products and
virtual products in the design driven by the digital data generated by the products, and con-
tinuously discovers new, unique and valuable product concepts and transforms them into
detailed products. The design plan continuously reduces the inconsistency between the actual
behavior of the product and the expected behavior of the design. The product design based on
digital twin emphasizes the overall improvement of design quality and eciency through the
integration of virtual and real life cycles and the establishment of virtual simulation models
with super reality.
5.2.2. Virtual prototype based on digital twin
Virtual prototype is a digital model built into the digital world that reects the authenticity of
a physical prototype, through multi-domain comprehensive simulation and equipment per-
formance aenuation simulation, the performance of the equipment can be tested and evalu-
ated before the physical prototype is manufactured, and the design defects can be improved
to shorten the design improvement period. The virtual prototype based on digital twin is
based on the comprehensive and realistic description of the mechanical system, electrical
system and hydraulic multidomain system of the equipment. It has the ability to map the life
cycle of the physical equipment, thus designing the equipment, and predictive maintenance
provides powerful analytical decision support.
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5.2.3. Workshop rapid design based on digital twin
The workshop rapid design based on digital twin adopts the idea of “information physics
fusion,” which completes the digitization of physical equipment, the scripting of motion pro-
cess, the integration of the whole system, the synchronization of control commands, and the
parallelization of on-site information to form a complete line of execution engine. Through
the physical equipment and the corresponding virtual model for virtual and real interac-
tion, instruction and information synchronization, a rapid design, planning, assembly and
testing platform for the workshop supporting physical equipment connection is formed.
The platform: (1) uses the 3D engine designs and builds a special model library, combining
workshop area, capacity requirements, equipment selection, and construction of virtual 3D
model of workshop, which can quickly complete the workshop layout design; (2) prepares
action scripts for heterogeneous devices, develops response programs, builds virtual control
networks, implements near-physical simulation of virtual full-line machining movements,
and predicts, evaluates and optimizes based on actual data; and (3) can test the consistence
of the distributed integration equipment and the whole line movement, the internal control
logic, the instruction and information downlink channel, the job cycle synchronization and so
on, and optimize the workshop design based on the virtual reality fusion data.
5.2.4. Process planning based on digital twin
Process planning is the technical document of the product manufacturing process and opera-
tion method; it is a disciplined document that all production personnel should strictly and
conscientiously implement; and it is the basis for product production preparation, production
scheduling, worker operation and quality inspection. Digital twin-driven process planning
refers to the realization of process design and continuous optimization for production sites
by establishing virtual simulation models such as products, resources and process ows with
super reality, and virtual and real mapping of full factor and full process. In the process
design mode of digital twin driving, the simulation model of virtual space and the entity
of physical space are mapped to each other to form an iterative collaborative optimization
mechanism of virtual and real symbiosis.
5.2.5. Workshop production scheduling optimization based on digital twin
Production scheduling is the nerve center of decision-making optimization, process control
and performance improvement in the production workshop, and it is the operation pillar of
orderly, stable, balanced economy, and is agile and ecient in the production workshop. The
digital twin-driven scheduling mode is a new scheduling mechanism of virtual-real response,
virtual-real interaction, virtual-control-real, iterative optimization, which is supported by the
digital twin system, through the virtual-real mapping and interaction fusion of all elements, all
data, all models and all spaces, and realizes cooperative matching and continuous optimiza-
tion of the workpiece-machine-constraint-goal scheduling requirements. Under the digital
twin-driven scheduling model, the scheduling elements are mapped to each other in the physi-
cal workshop and virtual workshop, forming the co-optimization network of virtual reality
co-existence. Physical workshop actively perceives production status. Virtual workshop can
analyze scheduling status, adjust scheduling scheme and evaluate scheduling decision through
Industry 4.0 - Impact on Intelligent Logistics and Manufacturing110
self-organization, self-learning and self-simulation. It can quickly determine abnormal range,
respond quickly and make intelligent decision. It has beer adaptability to change, disturbance
response ability and abnormal resolution ability.
5.2.6. Production logistics accurate distribution based on digital twin
Production logistics including enterprise internal logistics and enterprise external logistics
between businesses are to guarantee the normal production and are the key of high produc-
tion eciency, and they reduce the product cost. Digital twin production logistics is under
the twin data-driven, and through the actual physical entities and the virtual model mapping,
real-time interaction and closed loop control, realize the task of production logistics com-
binatorial optimization, transportation route planning, transportation process control in the
physical world and information world and overlapping generations between the top logistics
services system, so as to achieve production logistics seamlessly and is an intelligent of a new
kind of production logistics operation mode.
5.2.7. Intelligent control of workshop equipment based on digital twin
The control system of workshop equipment is the brain of workshop equipment. The correct-
ness of its control function and control strategy directly aects the function and performance
of workshop equipment. The control advantages of digital twin are as follows: (1) in the stage
of equipment design, the design of the control system is matched based on the digital twin
virtual reality synchronization, so that the control system and the physical equipment are
fused earlier and match, and the burden of the real machine is lightening; (2) in the commis-
sioning stage, the overall matching of control system and equipment is further promoted, the
design defects are improved, and the design redundancy is reduced; and (3) in the running
stage, the control feedback information is no longer a relative independent parameter, but
the physical real time state of the digital twin, which can provide objective and eective data
support for the autonomous decision of the algorithm.
5.2.8. Man-machine interaction based on digital twin
By human-computer interaction, the exibility of the machine can be improved and the work-
load of manual work can be reduced. The workshop man-machine interaction based on digi-
tal twin refers to the construction of a digital twin virtual workshop which is fully mapped to
the actual physical workshops. Through high speed and reliable communication technology,
the robot can quickly adjust the work plan by identifying the workers’ instructions through
touch, gesture, or sound, so as to make it possible to cooperate with the workers. Industry
action and update the manufacturing process of virtual workshop in real time.
5.2.9. Assembly based on digital twin
The assembly of complex products is the nal stage and key link of the realization of product
function and performance. It is an important factor aecting the quality and performance of
complex products. The quality of assembly determines the nal quality of complex products
to a great extent. The assembly process of the digital twin drive will be based on the integration
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of the Internet of Things of all equipment, the integration of the physical world of the assem-
bly process and the information world, and the precise control of the parts, equipment and
assembly process through the intelligent software services platform and tools, and the uni-
ed and ecient control of the assembly process of complex products. The self-organization,
adaptation and dynamic response of the product assembly system are realized.
5.2.10. Testing/detection based on digital twin
The digital twin drive test/detection is to build a high-delity test system and a virtual model of
the measured object in the virtual space. With the help of test data real-time transmission and
test instruction execution technology, the multi-discipline/multi-scale/multi-physical properties
of the physical object under test and the virtual object under test are driven by historical data and
real-time data to achieve high-delity simulation and interaction. It thus intuitively and com-
prehensively reects the full life cycle state of the production process and eectively supports
scientic decision-making based on data and knowledge. The digital twin-driven test/detection
process includes knowledge modeling, system design, system construction, and full lifecycle
management and autonomous decision-making of system, object, and process state data.
5.2.11. Manufacturing energy management based on digital twin
The management of manufacturing energy consumption refers to monitoring, analyzing,
controlling and optimizing the energy consumption of water, electricity, gas, heat and raw
materials in the manufacturing process, while ensuring the performance of the manufactur-
ing system and the economic benet of the enterprise, so as to realize the ne management of
energy consumption, achieve energy saving and reduce the cost of the manufacturing enter-
prise, and maintain the enterprise, the purpose of the competitiveness of the industry.
5.2.12. Product quality analysis and traceability based on digital twin
Product quality analysis and tracing refers to the design of the correct and reasonable manu-
facturing process, at the same time, the processing precision, stress and other factors in the
production process are comprehensively considered to realize the analysis of the quality of
the product. In the case of quality problems, it can trace all the links in the processing and nd
out the reasons, thus improving the processing technology and control, processing quality.
5.2.13. Fault prediction and health management based on digital twin
Prognostics and Health Management (PHM) use various sensors and data processing meth-
ods to evaluate the health status of the equipment, and predict the equipment failure and
residual life, so as to transform the traditional post maintenance into pre service maintenance.
5.2.14. Product-service system based on digital twin
Product-service system (PSS) is a value providing system that provides a combination of dif-
ferent “physical products and services” to consumers, including a product oriented PSS, a use
oriented PSS, and a result oriented PSS. Under the support of digital twin, PSS is based on the
Industry 4.0 - Impact on Intelligent Logistics and Manufacturing112
digital twin, through the intelligent analysis and decision-making of dierent “physical prod-
ucts and service” combination, rapid personalized product service conguration and service
process experience and rapid supply, and the use of the virtual and real synchronization
among elements to realize the optimal allocation and integration of resources. The PSS based
on the digital twin model makes full use of the digital and information system to eectively
support the intelligent decision-making, rapid supply, intelligent service, value and environ-
ment analysis of the life cycle of complex products and services.
6. Conclusions
The digital twin technology can not only make use of the theories and knowledge of human
beings to establish virtual models, but also make use of the simulation technology of virtual
models to explore and predict the unknown world, and nd beer ways, constantly stimulate
the creative thinking of human beings, and continue to pursue the optimization and progress,
which are the innovation of the current manufacturing industry. This chapter mainly sum-
marizes the denition, connotation and implementation methods of digital twin technology.
Acknowledgements
During the writing of this chapter, doctoral candidate Yan He, master graduates student Zijian
Zhang, Yujie Yuan, Yu-hu Li, Yansong Liu, Hao-wei He, Wangxing Yan and Tengfei Wang of
CAD/CAM Engineering Technology Research Center, School of Mechanical Engineering, North
University of China and Shanxi Crane Digital Design Engineering Technology Research Center
provided their help. They did a lot of work for this chapter, and a special thanks for their eorts.
Author details
Zongyan Wang
Address all correspondence to: iamwangzongyan@sina.com
School of Mechanical Engineering, North University of China, Taiyuan, China
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