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Internet of Things in Smart Grid: Architecture, Applications, Services, Key Technologies, and Challenges

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Internet of Things (IoT) is a connection of people and things at any time, in any place, with anyone and anything, using any network and any service. Thus, IoT is a huge dynamic global network infrastructure of Internet-enabled entities with web services. One of the most important applications of IoT is the Smart Grid (SG). SG is a data communications network which is integrated with the power grid to collect and analyze data that are acquired from transmission lines, distribution substations, and consumers. In this paper, we talk about IoT and SG and their relationship. Some IoT architectures in SG, requirements for using IoT in SG, IoT applications and services in SG, and challenges and future work are discussed.
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inventions
Review
Internet of Things in Smart Grid: Architecture,
Applications, Services, Key Technologies,
and Challenges
Alireza Ghasempour
Department of Information and Communication Technology, University of Applied Science and Technology,
Tehran 1391637111, Iran; alireza_ghasempour@yahoo.com
Received: 12 February 2019; Accepted: 21 March 2019; Published: 26 March 2019


Abstract:
Internet of Things (IoT) is a connection of people and things at any time, in any place,
with anyone and anything, using any network and any service. Thus, IoT is a huge dynamic global
network infrastructure of Internet-enabled entities with web services. One of the most important
applications of IoT is the Smart Grid (SG). SG is a data communications network which is integrated
with the power grid to collect and analyze data that are acquired from transmission lines, distribution
substations, and consumers. In this paper, we talk about IoT and SG and their relationship. Some IoT
architectures in SG, requirements for using IoT in SG, IoT applications and services in SG, and
challenges and future work are discussed.
Keywords:
Internet of Things; smart grid; advanced metering infrastructure; distributed energy
resources; smart meters; meter data management system; demand response; cybersecurity
1. Introduction
Before talking about the Internet of Things (IoT), it is worthy to explore the evolution of the
Internet. The first experimental network of two computers was created between the TX-2 computer
by Lincoln Labs of Massachusetts Institute of Technology (MIT) and the Q-32 mainframe operated
by the RAND corporations via a dedicated telephone line in 1965 [
1
]. The Internet was invented by
Vinton Cerf in 1973 [
2
]. Commercial use of the Internet started in the late 1980s [
1
]. The World Wide
Web (WWW) was invented by Tim Berners-Lee in 1989 [2] and became available in 1991 [3]. The first
mobile phone with Internet connectivity was the Nokia 9000 Communicator, launched in Finland in
1996 [
4
]. Thus, the mobile-Internet was formed. In June 2000, Friends Reunited as the first online social
network to achieve prominence in Britain was launched [
5
]. By emerging social networks, peoples’
identities are added to the Internet. In the next step in the IoT, objects can connect and communicate
with each other via the Internet.
The research in the IoT is in the beginning stages, and researchers provided different definitions
for it. Thus, there isn’t only one definition for IoT. The IoT is composed of two words: “Internet” and
“Thing.” The “Internet” can be defined as “The interconnection of computers in the world based on
TCP/IP protocols” and the “Thing” is “an object that is not precisely identifiable” Thus, “Internet of
Things” semantically means a worldwide network of interconnected objects uniquely addressable,
based on Transmission Control Protocol (TCP) and Internet Protocol (IP). Thus, it is reasonable to
define the IoT as “Things having identities and virtual personalities operating in smart spaces using
intelligent interfaces to connect and communicate within social, environmental, and user contexts” [
6
].
Also, IoT can be defined as a connection of people and things at any time, in any place, with
anything and anyone, using any path and any service [
7
,
8
]. This implies addressing elements such
as convergence, content, collections (repositories), computing, communication, and connectivity in
Inventions 2019,4, 22; doi:10.3390/inventions4010022 www.mdpi.com/journal/inventions
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the context where there is a seamless interconnection between people/humans and things and/or
between things (see Figure 1) [
9
]. Thus, IoT is a huge dynamic global network infrastructure of
Internet-enabled physical and virtual objects/entities with web services which contains embedded
technologies and all types of information devices such as global positioning system (GPS), infrared
devices, scanners, radio frequency identification (RFID) tags/devices, sensors, actuators, smartphones,
and the Internet to sense, identify, locate, track, connect, monitor, manage, communicate/interact,
cooperate, and control of objects/things in physical, digital, and virtual world. It uses computing and
self-configuring capabilities (based on interoperable communication protocols) and software tools to
process information, achieve data mining, and extract knowledge.
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context where there is a seamless interconnection between people/humans and things and/or
between things (see Figure 1) [9]. Thus, IoT is a huge dynamic global network infrastructure of
Internet-enabled physical and virtual objects/entities with web services which contains embedded
technologies and all types of information devices such as global positioning system (GPS), infrared
devices, scanners, radio frequency identification (RFID) tags/devices, sensors, actuators,
smartphones, and the Internet to sense, identify, locate, track, connect, monitor, manage,
communicate/interact, cooperate, and control of objects/things in physical, digital, and virtual world.
It uses computing and self-configuring capabilities (based on interoperable communication
protocols) and software tools to process information, achieve data mining, and extract knowledge.
Figure 1. Internet of Things (IoT) with its connections and related entities
One of the most important applications of IoT is the Smart Grid (SG). SG is a data
communications network which is integrated with the power grid to collect and analyze data that are
acquired from transmission lines, distribution substations, and consumers. Based on these data, SG
can provide predictive information to its suppliers and customers on how to best manage power [10].
In this paper, different layers of IoT architecture will be discussed. We will investigate technologies
which are essential to apply IoT to SG. Several IoT applications and services in SG will be introduced.
Finally, challenges that must be addressed and future work are discussed.
The rest of the paper is organized as follows. In Section 2, IoT, its history and development are
reviewed. Smart grid and its components are discussed in Section 3. Section 4 presents how IoT can
be used in SG to accomplish reliable data transmission. The architecture of IoT is discussed in Section
5. In Section 6, several key technologies to enable applying IoT to SG are introduced. The challenges
which must be addressed in future research directions are presented in Section 7. The conclusion is
given in Section 8.
2. Internet of Things
IoT is a multidisciplinary field that covers many subjects from technical issues (such as routing
protocols) to a combination of social and technical problems (e.g., security). IoT represents a vision
in which the Internet extends into the real world encompassing every uniquely identifiable object.
This vision is ubiquitous computing. Initially, Mark Weiser [11] in 1991 coined the term “Ubiquitous
Computing” that can be truly realized by IoT. Kevin Ashton [12] proposed the term “IoT” in his
presentation at Procter & Gamble (P&G) in 1999. Also, Neil Gershenfeld [13] used the same notion in
his book in 1999. The IoT first became popular through Sarma et al. [14] (from MIT Auto-ID center)
Figure 1. Internet of Things (IoT) with its connections and related entities.
One of the most important applications of IoT is the Smart Grid (SG). SG is a data communications
network which is integrated with the power grid to collect and analyze data that are acquired from
transmission lines, distribution substations, and consumers. Based on these data, SG can provide
predictive information to its suppliers and customers on how to best manage power [
10
]. In this
paper, different layers of IoT architecture will be discussed. We will investigate technologies which are
essential to apply IoT to SG. Several IoT applications and services in SG will be introduced. Finally,
challenges that must be addressed and future work are discussed.
The rest of the paper is organized as follows. In Section 2, IoT, its history and development are
reviewed. Smart grid and its components are discussed in Section 3. Section 4presents how IoT can be
used in SG to accomplish reliable data transmission. The architecture of IoT is discussed in Section 5.
In Section 6, several key technologies to enable applying IoT to SG are introduced. The challenges
which must be addressed in future research directions are presented in Section 7. The conclusion is
given in Section 8.
2. Internet of Things
IoT is a multidisciplinary field that covers many subjects from technical issues (such as routing
protocols) to a combination of social and technical problems (e.g., security). IoT represents a vision
in which the Internet extends into the real world encompassing every uniquely identifiable object.
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This vision is ubiquitous computing. Initially, Mark Weiser [
11
] in 1991 coined the term “Ubiquitous
Computing” that can be truly realized by IoT. Kevin Ashton [
12
] proposed the term “IoT” in his
presentation at Procter & Gamble (P&G) in 1999. Also, Neil Gershenfeld [
13
] used the same notion in
his book in 1999. The IoT first became popular through Sarma et al. [
14
] (from MIT Auto-ID center) in
2000. LG announced its first Internet refrigerator plans in 2000. During 2002–2004, IoT was mentioned
in mainstream publications such as Forbes [
15
], the Guardian [
16
], Scientific American [
17
] and the
Boston Globe [
18
]. International Telecom Union (ITU) published an annual report of the IoT [
19
],
which extended the concept of the IoT in 2005. In that report, there are four key enablers to the IoT:
1. Feeling Things (such as sensors and wireless sensor networks)
2. Tagging Things (using Radio Frequency Identification (RFID))
3. Thinking Things (such as smart materials, smart clothing and wearable computing, smart
homes and vehicles, and robotics)
4. Shrinking Things (using nanotechnology to make products smaller and smaller)
In 2005, Fleisch and Mattern [
20
] published their book in IoT topic. European politicians initially
used IoT in the context of RFID technology, e.g., in the titles of some RFID conferences such as “From
RFID to the IoT, Pervasive networked systems” (2006) and “RFID: Towards the IoT” (2007). In March
2008, the first scientific conference [
21
] was held in IoT. In 2008, a group of high-tech companies
launched the Internet Protocol for Smart Objects (IPSO) Alliance for the following goals [22]:
1. Interoperability: Organize interoperability tests that will allow members and interested parties
to show that products and services using IP for Smart Objects can work together and meet industry
standards for communication.
2. Invest in Innovation: Help innovators in small companies who are making IP devices and
web objects to gain visibility in the industry.
3. Promote IP: Promote the use of IP as the premier solution for access and communication for
Smart Objects - in print, in public, and in the media.
4. Uphold Standards: Support Internet Engineering Task Force (IETF) and other standards
development organizations in the development of standards for Smart Objects.
In April 2008, U.S. National Intelligence Council listed the Internet of Things as one of the 6
“Disruptive Civil Technologies” (Biogeotechnology, Energy Storage Materials, Biofuels and Bio-Based
Chemicals, Clean Coal Technologies, Service Robotics, and The Internet of Things) with potential
impacts on US interests out to 2025 [23].
In Jan 2009, President Obama promoted the idea of a smarter planet as a developing national
strategy and consequently gave worldwide concern. A dedicated European Union committee
published an action plan for Europe which sought to create a new and broad paradigm: the transition
from a network of interconnected computers and people, to a network of interconnected people with
things or things with each other (IoT) in 2009 [
24
]. Andrew Milroy at Frost and Sullivan [
25
] anticipated
that year 2014 would be the year of the Internet of things and the focus of both IT buyers and sellers
shifts to IoT. Also, more data would be generated by machines (‘things’) than by human beings in 2014.
Today, the IoT is used to denote advanced connectivity of devices and services that go beyond
the traditional machine to machine and covers a variety of protocols and applications. Connectivity
will take on an entirely new dimension, and future global networks will consist of not only humans
and devices, but also all sorts of things. Physical items can connect to the virtual world, be controlled
remotely and act as physical access points to Internet services. Currently, IoT can be viewed as a
network of networks.
There are three visions for IoT [26]:
Internet-oriented: In the internet-oriented vision, it is needed to make smart objects.
The objects must use the specification of IP protocols.
Semantic-oriented: In Semantic-oriented vision, the number of available sensors will be vast,
and their collected data will be huge. Thus, the raw data needs to be managed and processed for better
representations and understanding.
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Things-oriented: In the things-oriented vision, we can track any object using sensors and
pervasive technologies. Any object can be identified uniquely using an electronic product code (EPC).
EPC is extended using sensors.
IoT has three important characteristics [27]:
1. Comprehensive sense: Using sensors to collect information from any objects anytime
and anywhere.
2. Intelligent processing: Using techniques such as cloud computing to analyze huge amounts
of data to control objects.
3. Reliable transmission: Accurate and real-time data transmission via communications
networks and the Internet.
Cisco has created a dynamic connections counter to track the estimated number of connected
things from December 2012 until July 2020 [
28
]. In Dec. 2012, there were 8.7 billion connected objects
globally while in May 2014, the number is exceeding 12.3 billion. Cisco has conducted analysis on the
potential economic impact of the Internet of Everything, and their analysis indicates that there is as
much as $14.4 trillion of potential economic “value at stake” for global private-sector businesses over
the next decade, as a result of the emergence of the Internet of Everything [
29
]. Looking to the future,
Cisco Internet Business Solutions Group (IBSG) predicts there will be 25 billion devices connected to
the Internet by 2015 and 50 billion by 2020 [
30
]. A separate analysis from Morgan Stanley predicts
that number can be as high as 75 billion and claims that there are 200 unique consumer devices or
equipment that could be connected to the Internet that have not yet done so [
31
]. Michael Mandel [
32
]
in his report in Progressive Policy Institute describes how technological innovation, particularly as it
relates to the Internet of Everything (IoE), could lead America’s economy out of a “slow-growth rut.”
The European Commission (Information Society and Media DG) predicted 50 to 100 billion devices to
be connected by 2020 [
33
]. Future technological developments in IoT and its research needs that have
been foreseen for the next 20 years are outlined in Tables 1 and 2 [
33
]. Since there is a growing interest
in using IoT technologies, the number of industrial IoT projects and the number of IoT publications is
quickly growing.
3. Smart Grid
The smart grid is proposed to solve the issues of electricity grid (e.g., low reliability, high outages,
high greenhouse gas and carbon emission, economics, safety, and energy security) [
34
]. One of the
definitions for the smart grid is that the smart grid is a communication network on top of the electricity
grid to gather and analyze data from different components of a power grid to predict power supply
and demand which can be used for power management [
8
]. For comprehensive details and information
about characteristics and benefits of the SG, comparison between a power grid and SG, and general
requirements of a communication network in a SG, the readers can see chapter 3 of [35].
In a proposed model for the smart grid by the national institute of standards and technology,
the smart grid has 7 domains and roles of these domains are defined so that required information can
be exchanged and necessary decisions can be made [
7
]. Some of the required functionalities to deploy
the smart grid are as follows [10]:
1. Communication networks: Public, private, wired, and wireless communication networks that
can be used as the communication infrastructure for smart grid [36].
2. Cybersecurity: Determining measures to guarantee availability, integrity, and confidentiality
of the communication and control systems which are required to manage, operate, and protect smart
grid infrastructures [37].
3. Distributed energy resources: Using different kinds of generation (e.g., renewable energies)
and/or storage systems (batteries, plug-in electric cars with bi-directional chargers) that are connected
to distributed systems [38].
4. Distribution grid management: Trying to maximize the performance of components in
distribution systems such as feeders and transformers and integrate them with transmission systems,
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increase reliability, increase the distribution system efficiency, and improve management of distributed
renewable energy sources [39].
5. Electric transportation: Integrating plug-in electric vehicles in a large-scale [40].
6. Energy efficiency: Providing mechanisms for different kinds of customers to modify their
energy usage during peak hours and optimizing the balance between power supply and demand [
41
].
7. Energy storage: Using direct or indirect energy storage technologies such as pumped
hydroelectric storage technology [42].
8. Wide-area monitoring: Monitoring of power system components over a large geographic area
to optimize their performance and preventing problems before they happen [43].
9. Advanced metering infrastructure (AMI): AMI as one of the key components of SG creates a
bidirectional communication network between smart meters (SMs) and utility system to collect, send,
and analyze consumer energy consumption data [4446].
AMI is an improved and modified version of automatic meter reading. In an automatic meter
reading, data from different types of meters were collected automatically and were sent to a central
system through a one-way communication network for future analysis and billing purpose. Since the
automatic meter reading couldn’t provide bidirectional communications, AMI was introduced.
AMI has many tasks such as the ability to self-heal, adaptive power pricing, demand-side
management, energy efficiency enhancement, improving the reliability of SG, interoperability
with other systems, monitoring and control of power quality, outage management, providing
communications between central system and SMs, saving energy, and updating the software of
SMs [44].
AMI components are a central system, two-way communication networks, data concentrators,
and smart meters. SMs are installed at customers’ locations or other positions in smart grid to
measure consumption data and send them to the central system via communication networks for
billing, informing consumers for their consumptions, etc. In direct load control, SMs can give power
consumption overviews and schedule times for turning on and off devices to shift the load in SG. Also,
direct load control can add distributed energy resources to SG to supply higher load when the power
grid produces extra power [7].
Distributed energy resources, electric vehicles, gateways, home energy display, smart devices,
SMs, and tools for power consumption control can connect to each other via a home area network.
Bluetooth, IEEE 802.11b, IEEE 802.11s, IEEE 802.3az-2010, power line communication, and ZigBee
technologies can be used for home area network [45].
Several SMs send their data to the corresponding data concentrator through a neighborhood
area network (NAN) [
34
]. For example, several homes that are supplied by one transformer create a
NAN. Thus, NAN should carry a large volume of data and satisfy their quality of service requirements.
The following technologies and networks are some candidates for NAN: family standards of IEEE
802.11, the third and the fourth generations of wireless cellular networks (e.g., long-term evolution
(LTE), worldwide interoperability for microwave access (WiMAX), wideband code-division multiple
access), and optical networks (e.g., passive optical networks or Ethernet passive optical networks).
Also, equipment in the field should be managed by a field area network (FAN). The geographical
coverage of a FAN is like NAN. Therefore, similar communication networks and technologies can be
used for FAN too.
Data concentrator aggregates and compresses data from SMs in uplink connection and relays
data to SMs in downlink connection. Data concentrator enhances scalability and reliability of SG,
reduces power consumption of SMs, and decreases data collision between SMs’ transmitted data. But it
increases the delay in transmitting SMs’ data somewhat. Some data concentrators are connected to
the central system via a wide area network (WAN). Long-range and high-bandwidth communication
technologies such as fiber optic and wireless cellular networks (e.g., WiMAX, LTE, and LTE advanced
can be used in WAN [46].
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The central system collects and analyzes SMs’ data. It can have several components (connected via
a local area network) such as a meter data management system [
47
], geographic information system,
outage management system, consumer information system, power quality management, and load
forecasting systems. As an example, a meter data management system gets SMs’ data, stores them in
databases, and processes them [45].
4. IoT Applications and Services in SG
IoT can support technologies in SG. Comprehensive sensing and processing abilities of IoT
can improve SG abilities such as processing, warning, self-healing, disaster recovery, and reliability.
Combining IoT and SG can greatly promote the development of smart terminals, meters and sensors,
information equipment, and communication devices. IoT can be used to accomplish reliable data
transmission in wire and wireless communication infrastructures in different parts of SG (electricity
generation, transmission lines, distribution, and consumption/utilization) as follows:
1. In electricity generation, IoT can be used to monitor electricity generation of different kinds of
power plants (such as coal, wind, solar, biomass), gas emissions, energy storage, energy consumption,
and predict necessary power to supply consumers.
2. IoT can be used to acquire electricity consumption, dispatch, monitor and protect transmission
lines, substations, and towers, manage and control equipment.
3. IoT can be used in customer side in smart meters to measure different types of parameters,
intelligent power consumption, interoperability between different networks, charging and discharging
of electric vehicles, manage energy efficiency and power demand.
The main IoT application scenarios are as follows:
1. AMI with high reliability: AMI is a key component in SG. IoT can be used in AMI to collect
data, measure abnormality in SG, exchange information between smart meters, monitor electricity
quality and distributed energy, analyze user consumption pattern.
2. Smart home: A smart home can be used to interact with users and SG, enhance SG services,
meet marketing demand, improve QoS, control smart appliances, read power consumption information
which is gathered by smart meters, and monitor renewable energy.
3. Transmission line monitoring: By using wireless broadband communication technologies,
the transmission lines can be monitored to discover fault issues and eliminate them.
4. Electric Vehicle (EV) assistant management system: EV assistant management systems
comprise of charging station, EV, and monitoring center. With GPS, users can inspect nearby charging
stations and their parking information. The GPS will automatically guide drivers to the most suitable
charging station. The monitoring center manages car batteries, charging equipment, charging stations
and optimize resources.
5. Integrated IoT Architectures in Smart Grid
Several IoT architectures have been proposed to be integrated into SG. They can be categorized to
architectures with three layers or four layers [
48
53
] (see Table 1). In [
48
], three layers are proposed.
Layer 1 includes smart meters, network devices, and communication protocols. Layer 2 contains
devices which are responsible for receiving data at the central system. Layer 3 includes artificial
intelligent systems to provide information to decision and billing systems.
Table 1. Three-layer and four-layer models which are proposed for IoT architecture in a smart grid.
[4850] [51][52] [53]
Layer 4 Application Social Master station system
Layer 3 Application Cloud management Application Remote communication
Layer 2 Network Network Network Field network
Layer 1 Perception Perception Perception Terminal
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In [
49
,
50
], a three-layer structure is presented that contains perception layer, network layer, and
application layer. Perception layer (or device layer) uses different kinds of sensors (e.g., power sensor),
tags and readers (e.g., RFID tags/readers), or sensor equipment (such as GPS devices or cameras) to
collect information. The network layer contains different kinds of wired and wireless industry-specific
or public communication networks (such as 2G, 3G, 4G, cable broadband, public switched telephone
networks, private networks, Wi-Fi, ZigBee) and the Internet to map the information gathered by
sensors in the perception layer to communication protocols. It is used to route and transmit these
mapped data to the application layer for processing, control, and access to the core network. It includes
management and information centers. The application layer processes the information received
from the network layer to monitor IoT devices in real time. It uses a variety of IoT technologies to
realize an extensive set of IoT applications and contains application structure. Application structure is
responsible for information processing and computing, and interface to resources. IoT can accomplish
the integration of information technologies via the application layer.
In [
51
], the authors proposed four layers: device layer, network layer, cloud management layer,
and application layer. Device layer contains two sub-layers: (1) thing layer (which contains different
types of sensors, smart meters, smart tags, and actuators) to sense environment, collect data, and control
home appliances, (2) gateway layer (which contains microcontrollers, communication modules, and
local display and storage) that controls how to connect to elements of thing layer. The network layer
sends the data from the device layer to the application layer. The cloud management layer is responsible
for data storage and analysis and data and user management. The application layer provides services
to end users such as homeowners or utilities and includes demand response management, dynamic
pricing, or energy management.
The authors in [
52
] reviewed previous three-layer and four-layer models. The 4th layer in the
four-layer model is the supporting layer which integrates some common IoT technologies. Then, they
proposed a four-layer model that includes the previous three layers (perception layer, network layer,
and application layer) and add an additional social layer on top of these three layers. The social layer
regulates IoT applications.
The proposed four-layer model in [
53
] has a terminal layer, field network layer, remote
communication layer, and master station system layer. The terminal layer comprises remote terminal
units, smart meters, and smart devices. The field network layer includes wired communications such
as fiber optics or wireless communication technologies such as Wi-Fi, ZigBee, or RFID. The remote
communication layer contains wired and wireless wide area networks such as 3G or 4G wireless
cellular networks. Master station system layer includes the control systems for different parts of a
smart grid, e.g., generation, transmission, and distribution.
6. Requirements for Using IoT in SG
To use IoT in SG, we should have some technologies and satisfy some requirements which are
listed as follows:
1. Communication technologies: Communication technologies can be used to receive and
transmit acquired information about the state of SG’s devices. We have short-range and long-range
communication technology standards. ZigBee, Bluetooth, and ultra-wideband technologies are
examples of short-range communication technologies. For long-range communications, power
line communications [
54
], optical fiber, wireless cellular networks such as 3G and 4G, and satellite
communications can be used.
2. Data fusion techniques: Since the resources of IoT terminals (such as batteries, memory, and
bandwidth) are limited, it is not possible to send all information to the destination. Thus, to increase the
efficiency of information gathering, data fusion techniques can be utilized to collect and combine data.
3. Energy harvesting process: Since most of the IoT devices use battery as one of their primary
power sources, energy harvesting process is very important for IoT applications, e.g., using different
sensors and cameras to monitor different parts of a smart grid.
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4. Operating in harsh environments: IoT devices which are installed in high-voltage transmission
lines and substations must work in harsh environments. Thus, to extend the lifetime of their
sensors in these conditions, we should have sensors should be high or low temperature resistant,
anti-electromagnetic, or waterproof.
5. Reliability: IoT applications in different environments need to satisfy different requirements
such as reliability, self-organization, or self-healing. Thus, based on the actual environment, suitable
IoT device must be selected to overwhelm environmental issues. For example, when some devices
cannot send data due to lack of energy, a new route for the data must be found so that the network
reliability remains at the required level.
6. Security: Security methods must be implemented in all IoT layers to transmit, store, and
manage data, avoid information leakage and losses, and protect data.
7. Sensors: Sensors measure quantities such as current, voltage, frequency, temperature, power,
light, and other signals and deliver the raw information for processing, transmitting, and analyzing.
Recently, nanotechnology is used to provide high-performance material which covers different sensor
applications and enhances the growth of sensor industry.
7. Challenges and Future Research Directions
To achieve technical goals in applying IoT in SG, there are many challenges which must be
addressed in future research directions. Since IoT devices must work in different environments that
may have harsh conditions (e.g., high or low temperatures, high voltages, exposure to electromagnetic
waves, working in water, etc.), therefore, they must satisfy requirements at those conditions such as
reliability or compatibility.
In many applications, IoT devices and sensors operate on batteries (e.g., different types of sensors
which are used to monitor transmission lines), so suitable energy harvesting techniques should be used
or designed. We have several communication networks in different parts of the SG, so, IoT devices
should support necessary communication protocols so that transferring data from smart meters to the
central system is possible and guaranteed.
Since IoT devices in SG have limited resources and capabilities such as batteries, processing
power, storage, or bandwidth, so data fusion processes should be used to compress and aggregate
useful data so that we have more efficient energy and bandwidth usage and data collection.
Delay and packet loss are important parameters that determine the performance of smart gird.
Since congestion causes delay and packet loss, it degrades system performance (because IoT devices
and/or gateways IoT devices must resend data which causes more delay and increases the probability
of congestion again) and SG cannot satisfy predetermined requirements, e.g., maximum tolerable
delay. Therefore, it is necessary to minimize delay, optimize network design by finding an optimum
number of gateways and IoT devices, and minimize the number of connections to each gateway.
Since the smart grid contains many different gateways and IoT devices with different specifications
and resources, interoperability between these devices to exchange information is very critical.
One solution to achieve interoperability is to use IP-based networks. Another solution is that IoT
devices should support different communication protocols and architectures.
Sensors, smart meters, and other similar devices that measure and collect information in a smart
grid create big data that can consume a lot of energy and other resources and create a bottleneck.
We should design the smart grid in such a way that can efficiently store and process this huge amount
of collected data.
There are many separate standards for IoT devices, but there is no unified standard for IoT devices
in the smart grid. This may cause security, reliability, and interoperability issues for IoT devices in SG.
Therefore, standardization efforts should be unified.
To monitor and control IoT devices in SG, we should use the Internet which is very vulnerable,
and attackers can manipulate measured data by sensors and smart meters and cause a lot of financial
losses. Therefore, we should develop secure communications for IoT devices in the smart grid by
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considering resource limitations of IoT devices and determine some security measures for these devices.
For example, IoT devices have limitations in computation and storage. Thus, we should design or use
security solutions so that IoT devices are able to run them. From the collected data by smart meters,
it is possible to extract some information about consumers’ habits (e.g., wake up times, etc.), therefore
it must be guaranteed that this private information will not be used without consumers’ permission.
Also, suitable mechanisms for security measures such as trust management (between IoT devices
which are owned by different parties, e.g., customers and utilities), authentication, authorization, data
integrity, maintaining confidentiality, and detecting identity spoofing should be devised.
8. Conclusions
In this paper, we discussed the Internet of Things as a network of networks and talked about its
history, three visions and developments. The smart grid, as one of the most important applications of
IoT, is studied. Architecture and elements of a smart grid are discussed. Then, IoT architectures for SG,
requirements for using IoT in SG, IoT applications and services in SG, and challenges and future work
are investigated.
Funding: This research received no external funding.
Conflicts of Interest: The author declares no conflict of interest.
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Mit dem "Internet der Dinge" zeichnet sich ein fundamentaler Technik-Trend ab, dessen betriebswirtschaftliche Konsequenzen und Chancen hier erstmals erläutert werden. Das Buch stellt dabei nicht nur eine klare technologisch wie ökonomisch begründete Vision des Ubiquitous Computing dar, sondern beschreibt darüber hinaus in mehreren Fallstudien auch deren Umsetzung in die Unternehmenspraxis unterschiedlichster Branchen, skizziert die wichtigsten Technologien und leitet unmittelbar anwendbare Handlungsanleitungen ab. Es liefert eine fundierte, in sich geschlossene und übersichtlich dargestellte Analyse für Praktiker, Forscher und Studierende, die sich mit Gestaltung, Chancen und Risiken von RFID-Anwendungen und Ubiquitous-Computing-Szenarien auseinandersetzen.