Next Generation Networks for Telecommunications Operators
Providing Services to Transnational Smart Grid Operators
Gurkan Tuna
1
, George C. Kiokes
2
, Erietta I. Zountouridou
3
and V. Cagri Gungor
4
1
Department of Computer Programming, Trakya University, Edirne, Turkey
2
Hellenic Air-Force Academy, 1010 Dekeleia, Attica, Greece
3
National Technical University of Athens, Iroon Politechniou 9, Athens, Greece
4
Department of Computer Engineering, Abdullah Gul University, Kayseri, Turkey
Keywords: Smart Grid, Smart Grid Applications, Next Generation Networks, Performance Evaluations.
Abstract: Due to the networking expertise, services and technical support of telecommunications operators, Smart
Grid (SG) operators prefer telecommunications operators for their communications needs instead of creating
private networks. In this paper, the use of Next Generation Networks (NGNs) by telecommunications
operators to provide services to transnational SG operators for SG applications is evaluated. NGNs are all IP
networks which are packet based and use IP to transport the various types of traffic such as data, voice,
video, and signalling over converged fixed and mobile networks. The main idea of transnational SG
operators is simple. By creating a huge single infrastructure for energy, more than one countries and nations
can be powered at once. For this, it is not needed to install very huge power plants. Simply creating a
complex network of power grid connections to each participating country is enough. The results of a set of
simulation studies are given to show the efficiency of the NGN-based communication infrastructure for SG
applications in terms of important network performance metrics. The results show that NGN-based
communication infrastructures can carry packets based on their priority levels and bandwidth allocations in
order to meet the specific requirements of SG applications.
1 INTRODUCTION
Considering environmental concerns, limited
infrastructure is seen as one of the biggest
constraints in green energy since it is not easy to
shift to a totally different energy source and adapt of
new energy technologies. On the other hand, if
renewable energy systems are designed to provide
power to many countries and nations, it is possible
to connect each of their national energy systems
together. However, if transnational Smart Grids
(SGs) are designed, more economical issues and
complexities than national SGs if purely fuel-based
energy systems are involved. With renewable
energy, the problems may not be completely
resolved, but at least it will be possible to
concentrate more on the distribution of the SG’s
energy output to the entire grid. For national power
grids, load balancing may be a serious issue if
individual or single location-based renewable energy
systems are involved, but with a transnational power
grid, the problem of intermittency may be solved by
involving solar or wind farms connected to the grid
that would always supply energy. In this way, the
transnational power grid will basically just shift
energy loads to the connected countries.
To fully exploit the benefits of Smart Grid (SG),
many applications with varying levels of QoS,
reliability, robustness and security for different
purposes have been developed. The applications deal
with different issues including demand and response
management, asset management, and outage
management. Since, in the SG with an advanced
communication infrastructure, various types of data
are required to communicate efficiently with
different degrees of QoS, reliability, robustness, and
security (Gungor et al, 2010; Livgard, 2010; Moghe
et al, 2009; Sood et al, 2009). Therefore, the
communication infrastructure requires end-to-end
reliable two-way communications, and
interoperability between applications with sufficient
bandwidth and low-latencies (Erol-Kantarci and
Mouftah, 2011).
231
Tuna G., Kiokes G., Zountouridou E. and Gungor V..
Next Generation Networks for Telecommunications Operators Providing Services to Transnational Smart Grid Operators.
DOI: 10.5220/0005523902310238
In Proceedings of the 12th International Conference on Informatics in Control, Automation and Robotics (ICINCO-2015), pages 231-238
ISBN: 978-989-758-123-6
Copyright
c
2015 SCITEPRESS (Science and Technology Publications, Lda.)
To the best of our knowledge, in the literature
there are no prior studies evaluating the
effectiveness of Next Generation Networks (NGNs)
by telecommunications operators for utility
applications in large scale SG deployments of
transnational SG operators. Therefore, in this paper,
we focus on the use of NGNs for smart grid and
evaluate its effectiveness. The contribution of this
paper is twofold. First, the use and advantages of
using an NGN-based communications infrastructure
are presented. Second, with the result of a set of
performance evaluations, the effectiveness of NGNs
for SG applications is shown. The rest of the paper is
organized as follows. A description of the SG
infrastructure is given in Section 2, focusing on the
data communication properties, followed by an
introduction to SG applications and their
communication requirements. Section 3 presents the
use of NGNs for SG applications and discusses
implementation aspects. Section 4 presents
performance evaluation. Finally, Section 5
concludes the paper.
2 SMART GRID
COMMUNICATION
INFRASTRUCTURE
As shown in Figure 1, the communication
infrastructure can also be considered to consist of
three different transmission categories: 1) Wide
Area Network (WAN), 2) Neighborhood Area
Network (NAN) and 3) Home Area Network (HAN)
(Gungor et al, 2013). Between these three networks
the core backbone, backhaul distribution and the
access points are located. These transmission
categories are briefly described below.
WAN: Basically, it is a high bandwidth, two-
way communication network which can handle
long-distance data transmissions for
automation and monitoring of SG applications.
It provides all the communications between the
substations and the electric utility. In order to
be fully effective and scalable, it covers all the
substations, the distributed power and the
storage facilities along with any distribution
assets such as transformers, capacitor banks
and reclosers (Moghe et al, 2009).
NAN: It is a broadband wireless resource and
uses low bandwidth channels which meet the
requirements for reliable and robust
communications. It is developed between
customer premises and substations with the
deployment of intelligent nodes to collect and
control the data from the surrounding data
points and includes the communication
between individual service connections, such
as devices destined for distribution automation
and control, and backhaul points to the electric
utilities (Sood et al, 2009).
HAN: It is a dedicated network which allows
transfer of information between various
electronic devices in the home, including home
electrical appliances, smart meters, in-home
display devices, energy management devices,
distributed energy resources. It also contains
software applications to monitor and control
these networks. It enables consumers to get
information about the consumption behaviors
and the electricity usage costs via in-home
display devices or through a web interface.
Figure 1: Smart Grid communication infrastructure.
2.1 Common Smart Grid Applications
In this subsection, major applications that can be
found in a SG are briefly discussed along with their
communication requirements.
Substation Automation: All devices in a
substation are controlled, monitored, and
managed by Substation Automation Systems
(SASs). They gather the data and perform
routing and other operations, to make the
system efficient, reliable, secure, and well
responsive, with reference to real-time
communication. The network technology is the
key element in SASs to provide for full control
over the devices, monitoring the operations,
conditions of devices, and also the operations
of substations. A successful deployment of a
SG system always requires the effective and
efficient communication infrastructure, which
can be selected based on various network
communication technologies. Wireless
communication technologies that can be
adopted in SASs are WiMAX or wireless mesh
networks. Moreover, cellular network can be
preferred for remote operations and
maintenance at remote sites. Similarly,
Wireless Local Area Network (WLAN) can be
preferred to protect, monitor, and control the
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distributed energy resources where data rate
requirements are less.
Overhead Transmission Line Monitoring
(OTLM
): OTLM is one of the important
operations
of Transmission and Distribution
(T&D) side SG applications, because
overheating, icing, and lightning strikes always
create vulnerability to the SG transmission
lines. It monitors T&D systems to reduce the
risk of failure. Wireless sensor nodes are
deployed over the transmission lines and
communicate via relays, to notify about the
transmission lines and provide effective
monitoring.
Home Energy Management (HEM): It is
generally considered at consumer side, where
home equipment can be monitored and
controlled. HEM can provide energy
efficiency, data measurement, transmission,
optimization, and balance to consumption and
power supply. Advance control systems, in-
home displays, smart appliances and smart
meters are the main components of HEM.
Mesh topology may be preferred in this type of
system, which can provide higher reliability to
various data paths.
Advanced Metering Infrastructure (AMI): It
provides a handshake communication between
utility systems and smart meters and combines
a variety of computer hardware, software, data
management systems, monitoring systems,
smart meters, and advanced sensors. In this
way, it collects the distributed information
from utilities and meters. AMI is a complex
structure system, which requires efficient IT
and communication infrastructure, such as,
meter data management system which monitors
and manages a large amount of data in efficient
way to inform consumers and to maintain the
billing information in a more intelligent way
(Lu and Gungor, 2009).
Wide-Area Situational Awareness (WASA):
WASA is basically a set of technologies which
provide an overall, dynamic picture of the
operation of the grid. One of the key functions
of SGs is monitoring and situational awareness
to get reliability, protection, and
interoperability among so many interconnected
devices and systems. Any abnormalities can
result in a widespread problem that endangers
the system’s dependability and protection.
Demand Response Management (DRM): To
reach a balance between demand and supply of
electrical energy, DRM is responsible for
controlling the energy demand and loads
during critical peak situations (Quak et al,
2002).
Asset Management (AM): The management of
SG assets and the data they create requires the
ability to capture, store and visualize data
pertaining to asset status, performance and
real-time risk. For this objective, asset
management systems play a key role.
Future T&D Systems: By the integration of a
SG, the distribution and transmission
infrastructures of existing power grids can be
renewed for better reliability and flexibility to
AC transmission systems. In urban areas,
renewable energy sources, such as High-
voltage DC (HVDC) technologies, may be
used.
Renewable Resources: In last few decades,
there is a tremendous growth in the use of wind
power generators and distributed solar plants.
Advanced Forecasting Algorithms: In recent
years, power demand has rapidly increased
(Wagenaars et al, 2009) in the USA. Proper
estimation of demand can provide better
planning for the electricity generation. It can be
promising to introduce SG technologies to
existing systems to enhance the generation
resources by robust two-way communications,
active customer participation, dynamic pricing
schemes, and other flexible technologies.
In addition to the abovementioned applications,
Meter Data Management (MDM), Distribution
Automation (DA), Distribution Management (DM)
and Outage Management (OM) are also important
applications
.
3 NEXT GENERATION
NETWORKS FOR SMART
GRID APPLICATIONS
Since SG concept relies on the seamless integration
of the traditional power grid infrastructure with a
sophisticated advanced communication
infrastructure (Gungor et al, 2013), the
communication infrastructure plays a key role for
the overall system and moves different types of data
with different communication requirements and
varying degrees of reliability, Quality of Service
(QoS), and security. Therefore, it must be flexible,
interoperable, scalable, and secure to meet the
communication requirements of each SG component
(Tuna et al, 2013; Amin and Wollenberg, 2005;
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Yigit et al, 2014; Yang et al, 2007). A list of the
common requirements of SG applications is given as
follows.
Data rate: Different SG applications require
different data rates. For instance, the data rates
for some SG applications such as SASs,
OLTM, DA, AMI, DRM, HEM, OM, AM,
MDM, DM, Distributed Energy Resources and
Storage (DERS), Vehicle to Grid (V2G), and
Electrical Vehicles Charging (EVC) are low,
typically <100Kbps (ALCATEL, 2014). On the
other hand, a few applications which transmit
audio and video data require higher data dates,
such as WASA, require data rates of 1-
1.5Mbit/s (Gungor et al, 2013).
Throughput: Throughput requirements are
different for each specific SG application.
Latency: Some SG applications such as AMI,
HEM, OM, AM, MDM, V2G, and EVC can
tolerate latencies up to 2 sec (Gungor et al,
2013). On the other hand, mission-critical SG
applications such as WASA may not tolerate
such high latencies.
Reliability: Although most SG applications
need highly reliable data communication, some
specific SG applications can tolerate short
outages during data transfers (Moslehi and
Kumar, 2010).
Frequency Range: To achieve reliable and
high-quality data communication, and
overcome environment-specific problems and
line of sight issues such as penetration through
walls, rain fade and foliage lower frequency
ranges (<2 GHz) are preferred in the service
area of electric utilities (Kilbourne and Bender,
2010; Sahin et al, 2014).
Security: The critical data gathered from
various SG components must be protected
against both physical and cyber attacks (Leon
et al, 2007).
Considering the application specific
requirements of different SG applications along with
the integration with different access networks and
complexity introduced by heterogeneous network
infrastructures, meeting the QoS requirements of SG
applications becomes a significant performance
issue. Moreover, fixed and wireless access networks
converge towards IP based transport in SG
networks. Therefore, addressing the requirement for
scalable and effective control and management
becomes critical. To address this challenge, policy-
based management tools can be employed. To meet
QoS requirements of SG applications, network
designers should take into consideration several
parameters including bandwidth, delay, jitter, and
packet loss rate, and employ various mechanisms
such as rerouting in the core of the network control
access at the corners of the network, and filters.
Moreover, for some SG applications, meeting the
QoS requirements is not enough. In addition to this,
Quality of Experience (QoE), users’ perception of a
provided service, should be enhanced. Finally, some
SG networks should facilitate a single party to
establish QoS-enabled path between the two IP
providers mutually interconnected by one or more
transit providers (Stojanovic et al, 2013). Therefore,
negotiating and maintaining an end-to-end service
level agreement is needed.
For the seamless transformation from traditional
power grids to SGs, especially in large-scale SG
deployments, electric utilities can employ NGNs for
their communications infrastructures. The NGNs are
packet based networks and use IP to transport the
various types of traffic, e.g. data, signalling, voice
and video. They are fully managed services
platforms which combine multiple services over a
single access line (ETSI, 2014) and enable the
deployment of access independent services over
converged fixed and mobile networks to provide
flexibility, scalability and security at maximum cost
efficiency (Lovrek et al, 2011). IP Multimedia
Subsystem (IMS) can be viewed as the core
component of the NGNs and provides an access
independent platform for a variety of access
technologies (ITU, 2006). The NGNs offer many
advantages to SG operators which install and
manage their communication networks as well as the
ones who use the services provided
telecommunication operators.
For telecommunications operators, SG is an
opportunity to expand their businesses into the
energy market and become established players in the
electricity value chain. There is an urgent need for
this since in the SG each consumer location has a
piece of equipment, collocated with the smart meter,
that communicates information related to usage,
demand-response triggers, and failures to another
unit aggregating the information of multiple smart
meters and ultimately communicating the aggregated
data to the main SG operations center. Therefore,
telecommunications operators can offer competitive
services to SG operators in terms of investment cost,
operational complexity, reliability, and flexibility.
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4 PERFORMANCE
EVALUATION
Different from the traditional power grids, for the
SGs, the communication infrastructure plays a key
role for the overall system performance. Therefore,
there is a need to predict and analyze in time the
behaviour of NGNs for SG applications in terms of
major network parameters. The main objective of
the performance evaluation study presented in this
section is to analyze the effectiveness of NGNs for
SG applications with different priorities in large
scale SG deployments using the OPNET Modeler
(Riverbed, 2014). The performance evaluation study
is based on the Asynchronous Transfer Mode
(ATM) (Kouvatsos, 2002) protocols and architecture
modified to SG system requirements. Inside the
network, the packets are sent with random priority
from one to three, one being the highest weight
factor and three being the lowest as it is defined for
NGNs, in the control plane service layer with
uniform distribution, and are stored in several
buffers in the network with different priorities. The
nodes are outspread in large cities in the
geographical area of Turkey and Greece in order to
create a specified wide area network (WAN) which
occupies almost 500.000 Km
2
area and
interconnected through the Getaway node. As
shown in Figure 2, the topology study includes
twenty one nodes-cities which function as end users
(clients) and two gateways cities which
communicate between each other, Istanbul for the
Turkish region and Athens for the Greek region
through they pass all the data.
Figure 2: Next generation network nodes-cities location
for the two countries.
The explanation of the priority levels is given below.
Priority level 1: It has the higher acceptance
indemnity in the network. This priority is
addressed in emergency telecommunications
over the NGN and data services are examined.
Priority level 2: It has lower acceptance
indemnity from level 1, but higher acceptance
indemnity from the one that is granted in the
level 3. As examples of level 2 priority are the
real time services (VoIP, video), VPN and
voice services. In this study voice applications
are studied.
Priority level 3: It has the smaller acceptance
priority in the network. As examples are
reported the “traditional” services of Internet
Services Provider (e.g. e-mail). In this study
email applications are studied.
The nodes are interconnected through the
Getaway node. Each node transmits packets that the
node itself generates and packets assumed are
guaranteed to be successfully delivered to the
Getaway node in NGN network. The application’s
operation mode is assigned as Simultaneous, and
start time is set to Constant (100). Links between
neighbouring nodes and Getaway are bi-directional
with transmission data rate of up to 155.52 Mbit/s
(payload: 148.608 Mbit/s; overhead: 6.912 Mbit/s,
including path overhead) using fiber optics. Thus, all
nodes can both send to and receive from the
Getaway. The simulation duration is set to End of
Simulation and lasts 6000 simulation sec. Finally all
nodes have an equal transmission power and
transmissions can reach up to the Getaway node
according the region. The assumptions that are
taken into account while developing the network are:
20% bandwidth is occupied for data emergency
applications.
50% bandwidth is occupied for voice
applications.
30% bandwidth is occupied for email
applications.
There are two main types of statistics in the
performance evaluation. The first type is the
collection of values from individual nodes in the
network (node statistics) and the second type is from
the entire network (global statistics). Global
statistics can be used when we are interested in an
overall picture of the network performance. Global
Statistics are collected for all nodes/links in the
network. Node statistics provide information about
individual node. The Global Statistics of the network
are evaluated based on the following factors.
Delay (sec): It represents the end to end delay
of data received in the network. End to end
delay is measured from the time it is created to
the time it is reassembled at the destination.
Delay Variation: It measures the variance
among samples of end-to-end delay
experienced by packets traversing the network
along all connections established network-
wide.
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Cell Delay (sec): It represents the end to end
delay of cells received by all layers in the
network. It is measured from the time a cell is
sent from the source layer to the time it is
received by the layer in the destination node.
Cell Delay Variation: It measures the variance
among end to end delays for cells received at
all layers in the network.
Traffic Sent (bits/sec): It represents the
application traffic sent by the layer in bits/sec
through the network.
Traffic Received (bits/sec): It represents the
application traffic received by the layer across
the network.
The Node Statistics of the network is evaluated
based on the following factor.
Voice application traffic received (bytes/sec):
It represents average bytes per second
forwarded to the voice application by the
transport layer in this node.
Traffic received signaling queue (bits/sec): It
represents traffic received (in bits/sec) by each
queue of a certain port.
Queue delay deviation: It is standard deviation
of queuing delay experienced by packets in
each queue. This statistic is computed as:
(q_delay - E[q_delay])^2 and expressed in
seconds.
Figure 3 is the graph of delay variation and delay in
the simulation scenario. Delay variations and delay
across the network are crucial for providing
acceptable services. The analysis indicates that the
developed network offers minimum latency in order
to avoid distortion situations. Similar observations
can be also made for Cell delay and Cell variation as
shown in Figure 4. Figure 5 is the graph of data
traffic received for the sum of applications by the
network. If the first high spike for email traffic is
excluded, it can be seen that data emergency
application achieves the lowest values in traffic
which is in line with our priorities levels and a
steady stream of data traffic is sent without
disruption. The spikes at the beginning of the
simulation are the indications of control traffic due
to the presence of nodes. The results shown in
Figures 6 and 7 are related to node statistics. Blue
line represents Istanbul node statistics and red line
represents Athens node statistics. In Figure 7, the
results show that almost average equal performance
is obtained for delay deviation for the two nodes.
Figure 3: Delay and delay variation.
Figure 4: Cell delay and cell delay variation.
Figure 5: Traffic received comparison for applications.
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Figure 6: Traffic received Signalling Queue two
getaways-nodes comparison.
Figure 7: Delay Deviation-CBR queue two getaways-
nodes comparison.
5 CONCLUSIONS
It is seen that all over Europe electric utilities and
telecommunications operators have started
collaborating to deliver information and
communications technology and telecommunication
services for smart grid. In addition, countries around
Europe and Asia have started to create huge single
power grid infrastructures for energy that can power
many countries and nations at once. To do this, they
have simply been creating a complex network of
power grid connections to each participating
country. But, several challenges have been
identified and called for further discussions and
investigations on how telecommunications operators
can meet the special requirements of the electric
utilities in building the proposed grid infrastructures.
It is widely recognized that meeting the
communications requirements is mission critical.
In this paper, the use of Next Generation
Networks for Smart Grid applications used by
transnational Smart Grid operators has been
discussed and a detailed analysis has been presented.
As depicted and shown with the results of the
simulation studies presented in this paper, Next
Generation Networks based backbones offer better
delay handling and bandwidth allocation features to
different Smart Grid applications, and in this way,
QoS requirements of these applications can be
handled efficiently.
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