data transmission process, we realize that it is not
practical to broadcast full resolution data over long
distances. Therefore, we investigated how to
configure the communication network of the
wireless monitoring devices and also how to apply
the data reduction techniques to decrease the size of
transmitted file before transmission process. These
result in more effective utilization of available
resources and offer better energy efficiency to the
system.
2 PROPOSED ICT
ARCHITECTURE FOR SMART
GRIDS
In (Pourmirza and Brooke, 2013c) we proposed two
related architectural structures and discussed our
experimental results for the ICT infrastructure of an
urban environment in the Smart Grid. These two
architectures are: a communication network
architecture and a software architecture. In this
section we summarize the communication
architecture and its constituent components. In the
next section we will demonstrate the techniques we
have used to provide energy efficient
communication architecture specially designed for
the NAN of the Smart Grid.
The proposed architecture is a modular
architecture that integrates the peer-to-peer
hierarchical architectures, tailored to hybrid
communication technologies for transmitting data. It
is being implemented on the medium voltage power
network substation 6.6kV of the University of
Manchester campus which owns its own distribution
grid. This allows us to validate our architectural
designs on real equipment, real data, and input from
experts in power engineering. This architecture
(figure 1) comprises five layers that cooperate to
offer four main functions of monitoring, data
movement, data storage and control. Our proposed
architecture offers modularity, scalability, fault
tolerance, energy efficiency and future proofing
against changes in networking technology. Each of
these characteristics are discussed in details in
(Pourmirza and Brooke, 2013c).
The first layer in the figure 1 consists of smart
meters as monitoring devices, which are situated in
all the buildings of the University of Manchester.
They are responsible for monitoring building level
data that provide information about power usage and
permit the management of the power generation and
consumption. The information collected at this level
is valuable for prosumers (producer-consumer),
because by integrating such data with data on real-
time energy prices we can offer effective demand
response control.
The second layer comprises hundreds of sensors
located in the street areas that are responsible for
monitoring environmental data such as temperature,
light, and humidity. The data collected at this level is
essential for understanding the response of demand
on the electrical system to variables such as number
of people, weather, temperature, humidity and so on.
It also can help in controlling the power grid by
delivering data that can be used to anticipate demand
and improve control actions.
The second layer itself is divided into two sub-
layers. This division is due to the energy constraints
of the Wireless Sensor Network (WSN).
Consequently we have utilized cluster based
communication as a method of communication
instead of direct communication as a more energy
efficient data transmission technique (Abbasi and
Younis, 2007). In order to evaluate the WSN at this
level, we extended the TinyDB (MADDEN et al.,
2005) (WSN query processing engine) by adding a
Smart Grid component to it. The extension to
TinyDB enables us to run and test our prototype
implementation in the laboratory-based environment
as well as in a real physical environment.
The third layer comprises the monitoring and
control devices situated in 6.6 kV substations in our
test bed. They are responsible for monitoring three
phase voltages, currents, active power, power
factors, voltage's spectra (eight channels for each
phase) and current spectra (eight channels) and
frequency. These data are useful for fault
identification, power quality analysis, and many
other applications. This layer is also divided into
three sub-layers: namely a reconfigurable real-time
control and acquisition system called Compact RIO
(cRIO), data storage, and a control unit which is a
program responsible for applying control over the
substations only, that is called LabVIEW
(LabVIEW, 2007). The next layer (fourth) is the
database (DB) layer responsible for storing data
received from the layers below.
The final layer is the Neighbourhood Control
Unit (NCU) which extracts data from the database
layer or directly from the sensors. We have
developed a Geographical Information System (GIS)
enhanced display tool (Pourmirza and Brooke,
2013b) for this layer which is beneficial for
visualizing the live/historical data on a map view,
and for tracking and identifying the faulty part of the
system in advance.
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