Abstract:
The power system operation, in general, intends to satisfy the load demand at all
the locations within the power network involving the considerations of economy of
operation, system reliability, system security, and emission control in the generation in a
convincing way. Due to drastic growth in the demand, there is a need to upgrade/add the
capacity of generation and transmission system. However, due to increased transmission
and distribution costs, global exhaustion of fossil fuels, deregulation trends, advancement
in technologies and concern about the environmental impacts, installation of adequate
number of small scale generation units rather than few large central generation units is
emerging as an effective solution to meet the load growth.
Such small scale generation is commonly referred to as distributed generation
(DG) or dispersed generation, provides electrical power near the premises of consumers
and is connected to the distribution or sub-transmission system to curtail the cost of
service. The size of DG usually ranges from few kW to several MW. Today, there are
many DG technologies in trend covering conventional (such as micro turbines,
combustion turbine, combined cycle, internal combustion engines etc.) to nonconventional
(such as wind, photovoltaic solar, fuel cell, ocean, and geothermal etc.)
technologies. DG provides a lot of benefits to utilities and consumers such as reduction in
power losses; enhancement in voltage profile; power quality & reliability improvement;
deferral of system upgrades; reactive power support; standby generation and peak
shaving. However, DG may degrade the performance of the distribution system, if it is
not planned carefully. In order to achieve the aforesaid benefits, optimal planning of DG
units are essential. Therefore, in this thesis, efforts have been made to develop few
methodologies for integrating DG into the existing distribution networks so as enhance its
performance.
Under optimal planning of DG, determination of its optimal size and location is
the most notable and promising aspect to avail the prospective benefits. Selection of the
best location and size of DG, out of the different possibilities requires computationally
laborious efforts for even a small system. Most of the existing work on DG siting and
sizing considered various issues, such as power loss minimization; voltage profile;
stability; reliability; and loading margin improvement; harmonic pollution reduction;
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investment minimization or profit maximization; loading margin etc., by formulating
single or multi-objective problems. Different optimization techniques/methods used for
solving these problems can be categorized as index based techniques, analytical
approaches, classical approaches, and Artificial Intelligence (AI) based approaches. Index
based methods for DG allocation provide approximate solution with comparatively less
computational time. On the other hand, analytical approach based methods typically
produce closed-form solutions in terms of algebraic expressions that can be analyzed for
DG allocation and planning studies. Classical approaches are suitable in finding the
optimal solution of continuous and differentiable functions. These approaches have
tendency to stuck at local optimal point and hence, have limited scope in practical
applications. AI based methods cover Genetic algorithms (GA), Particle Swarm
optimization (PSO), Tabu search, Artificial Bee colony (ABC) algorithm, Harmony
Search Algorithm (HSA), Ant Colony, Simulated Annealing (SA), GA-fuzzy logic,
Bacterial Foraging with PSO, plant growth simulation algorithm (PGSA), Immune
algorithm, Evolutionary Programming (EP), Differential Evolution etc. These techniques
are being used extensively in DG planning problems with satisfactory performance.
Analytical approaches are emerging as one of the attractive options for solving
DG siting and sizing problems as these approaches achieve an optimal or near-optimal
solution with less computational efforts. Most of the analytical approaches for DG siting
and sizing available in literature use exact loss formula and require the formulation of the
bus impedance matrix (ZBUS). Due to negligible shunt charging admittance of the
distribution lines in comparison to transmission lines and mostly radial structure of
distribution network, ZBUS cannot be formulated and hence, the aforementioned
techniques are not well suited for radial distribution network. Moreover, different
analytical approaches available in the literature for DG allocation attempt to minimize the
active power losses only.
In this work, an analytical approach based methodology for optimal sizing and
siting of single as well as multiple DGs is presented for active, reactive and apparent
power loss minimization in distribution system. To meet this objective, suitable analytical
expressions have been developed, which are based on change in real and imaginary
components of branch currents due to DG placement. Further, a procedure is developed
for computing the DG size, location, and power factor. This procedure initially
determines a set of locations for DG placement and then, the optimum size and power
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factor of DG at each locations are computed using developed expressions. The developed
methodology has been tested on two test system, namely, 33-bus and 69-bus radial
distribution networks. The results obtained by the developed method are compared in
terms of size, location, and loss reduction with those by other methods available in the
literature. By comparison of the results, it is concluded that the proposed analytical
method produces better loss savings as compared to other methods.
Various analytical approaches for DG allocations addressed in the literature
consider only single load level for obtaining the size of DG. However, in actual practice,
the load demand varies over a wide range. The variations in load level can be considered
by performing as many load flows as the number of load levels. This Repeated Load Flow
(RPLF) is computationally exhausting and time consuming especially for large number of
load levels. Hence, there is a need to develop an efficient and simple method for DG
allocation accommodating the variation in load level of the distribution network. Further,
few researchers have used Interval Arithmetic (IA) in order to consider the variation in
line parameters and load values ,while solving load flow problem of distribution system.
To the best of author’s knowledge, no literature is found so far on the application of IA in
solving DG sizing and siting problems.
Therefore, in this thesis to address this gap, an IA based method has been
developed for DG sizing and siting in a balance radial distribution system so as to take the
variations in load level into account. In this developed method, the variations in apparent
power of load and DG current are represented by complex interval variables. First,
suitable expressions to compute the apparent power loss saving in the system in terms of
real and imaginary components of DG current are derived, then, the loss saving is
maximized in order to obtain the real and imaginary components of DG currents. A
method is also developed to calculate the optimal size and location of DG considering the
variations in load values. This method first identifies a set of suitable locations and then
computes the operating range of each DG in terms of interval. INTerval LABoratory
(INTLAB) tool box under MATLAB environment is used to implement the developed
algorithm for solving DG sizing and siting problem. The developed method is tested on
33-bus and 69-bus radial distribution networks. Optimal DG sizing and siting has been
obtained to keep the system loss at a minimum level. The results obtained by developed
method are compared with those by RPLF method for validation purpose.
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Due to sincere concern about global warming issue, significant attention is being
paid worldwide on generation of electricity through renewable energy resources. Among
various renewable energy resources, wind and solar are the promising ones as these
resources are available naturally without any cost. However, intermittent nature of these
resources makes the output from such resources based DGs non-dispatchable. In the
literature, the uncertainties in power output from such renewable DG units have been
handled using probabilistic and statistical analysis based methods. These techniques need
large quantum of renewable resources and hence the computational procedures involved
in these become complicated.
Thus, in thesis, an approach based on Interval Programming (IvP) and Binary
Particle Swarm Optimization (BPSO) has been developed for allocating the wind-based
DG units in distribution network. The problem has been formulated for minimization of
annual energy loss considering the constraints on bus voltage magnitude; thermal loading
limits of lines; penetration of wind power into the system; and active and reactive power
balance equation. The uncertainties associated with the output from wind-based DG and
loads are modeled using IvP technique. A BPSO algorithm has been used to find an
optimal solution. The proposed method has been applied to 33-bus and 69-bus test
distribution systems. The results obtained by the proposed method show significant
reduction in energy losses and improvement in system voltage profile.
Apart from analytical approach based methods, several Artificial Intelligence (AI)
based method (as discussed above) have been employed in the last decade to solve the
DG allocation problem with satisfactory performance. Recently, a new bio-inspired
algorithm known as BAT algorithm (BA) has been successfully employed for solving
capacitor placement problem in distribution network. However, the performance of this
algorithm has not been test for solving DG siting and sizing problem.
Therefore, in this thesis, a BA based method has been developed for optimal siting
and sizing of dispatchable DG units in the radial distribution network. This work aims to
minimize annual capital cost of DG, O&M cost of DG, energy loss cost, imported energy
cost and emission cost subject to various operational constraints i.e. limits on bus voltage
magnitudes, line loading limits, total penetration of DG units, active-reactive power
balance, number of DG units limit, and operating limits on DG units. Gas Turbine (GT),
Micro Turbine (MT) and Fuel Cell (FC) based DG units have been considered as the
candidate DG types to be allocated. The developed formulation is a Mixed Integer Non
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Linear Programming (MINLP) problem and has been solved by a BA based algorithm. In
order to demonstrate the effectiveness of proposed approach, it has been tested on 33-bus
and 69-bus radial distribution networks. The obtained results show that due to simple
evolution process, BA exhibits good behavior in terms of convergence rate and solution
quality.
Conventional expansion planning of distribution network covers
expansion/upgradation of existing substations or feeders/lines and addition of new
substations or feeders/lines to meet the increased load demand. When DG is integrated in
an existing distribution network, it postpones the efforts to be made under conventional
planning to fulfill the increased load demand. In addition to DG, capacitors can also be
considered as an option for expansion planning of distribution network. In the literature
reviewed, very limited work has been reported on optimal expansion planning of
distribution network considering DG and capacitor along with traditional planning
options.
In this thesis, a comprehensive formulation for multistage expansion planning of
distribution network has been presented to minimize the total cost of expansion. As
planning options, installation of DGs and capacitors (both fixed and switching type) as
well as reinforcement of distribution lines and substation transformer are considered with
perspective of Distribution Company (DisCo). The objective function includes
installation and operating costs of DGs and capacitors, cost of energy loss, cost of power
purchased from grid and costs of substation and feeder upgradation. A GA and PSO
based hybrid algorithm is applied for solving the developed formulation. In order to
achieve optimal solution, GA is applied to 50% chromosomes/particles and PSO to the
rest. To check its feasibility, the proposed approach has been tested on a 9-bus primary
distribution system considering four options, namely, only conventional planning; and
conventional planning along with DGs only, conventional planning along with capacitors
only, and conventional planning with both DG and capacitors. From the obtained results,
it is observed that consideration of conventional planning option along with DG and
capacitors results the lowest cost of expansion. The results obtained by the proposed
method have also been compared with those by GA and PSO based solution techniques.
Summarizing, various contributions made through this thesis work are as follows:
A simple analytical approach based strategy has been developed to determine the
optimal siting and sizing of single and multiple DG, so as to minimize the active,
reactive and apparent power loss in a balanced radial distribution network. For
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this purpose, suitable analytical expressions have been derived. The developed
strategy requires only base case load flow results.
A new and efficient method for solving the sizing and siting problem of DGs in
balanced radial distribution network has been presented considering the variations
in load demand. An IA based approach has been used for performing the load
flow so as to take the variation in load demand into account.
An approach based on IvP and BPSO for allocating the wind based DG in
distribution system, has been developed. An IvP based algorithm is used for
considering the variations in output from the wind DG and load. The formulated
problem has been solved using a BPSO based technique.
A new bio-inspired Bat algorithm based approach is implemented to determine the
optimal size and location of distpatchable DGs in radial distribution system to
minimize annual capital and O&M cost of DG, energy loss cost and emission cost
subject to various operational constraints. This problem is formulated as a mixed
integer non-linear programming problem.
A formulation for multistage distribution network expansion planning considering
DGs and capacitors (both fixed and switching) along with traditional planning
options have been developed. The objective function reflects the total cost
associated with expansion planning over planning horizon. The developed
formulation has been solved by a hybrid GA-PSO based technique.