A REVIEW OF ADVANCES IN ECONOMIC DISPATCH USING
ARTIFICIAL NEURAL NETWORKS
Engr. Tahir Nadeem Malik
Elect. Engg. Deptt. University of Engg.& Tech., Taxila (Pakistan) Student Member IEEE
Dr.Aftab Ahmad
National Power Control Centre WAPDA, Islamabad (Pakistan)
Engr.Aftab Ahmad
Elect. Engg. Deptt. University of Engg.& Tech., Taxila (Pakistan)
Key words: Economic Dispatch (ED), Artificial Neural Network (ANN), Hopfield Neural Network, Prohibited Zones,
Artificial Intelligence (AI).
Abstract:
Economic Dispatch Problem (EDP) has been discussed with reference to the developments based on
Artificial Neural Networks (ANN) approaches. A selected survey / overview on Economic Dispatch using
Artificial Neural Network within the IEE/IEEE publications frame work have been presented.
1 INTRODUCTION
Power Economic Dispatch (ED) is necessary and
vital step in power system operational planning. This
is non-linear constrained optimization problem and
is defined as the process of allocating generation
levels to the generating units in the mix, so that the
system load may be supplied entirely and most
economically (Happ, 1977). It is on-line function,
carried out after every 15-30 minutes or on request
in Power Control Centers. In this paper efforts have
been made to develop brief survey on the advances
in Economic Dispatch Problem based on Artificial
Neural Network Techniques. The paper is organized
as follows: The Economic Dispatch (ED) problem
formulation is introduced in Section II. Section III
addresses the selected survey on Economic Dispatch
Problem based on Artificial Neural Network (ANN)
Techniques. Lastly there is conclusion.
2 ECONOMIC DISPATCH
PROBLEM
The Economic Dispatch in its simplest form is
formulated as:
Minimize
(1)
=
=
N
1i
iiT
)P(CC
Where: C
T
: Total cost
C
i
: generator fuel cost of the ith generating
unit.
Subject to equality constraint:
(2)
=
=+
N
1i
iLD
PPP
Where: P
D
: total load.
P
L
: transmission loss given by
=
ij
ji
j
iL
PPaP
Where: a
ij
: transmission loss coefficient.
Inequality constraints:
P
i (min)
P
i
P
i (max)
(3)
Where: P
i(min)
: the minimum generation power
P
i (max)
: the maximum generation power.
354
Nadeem Malik T., Ahmad A. and Ahmad A. (2004).
A REVIEW OF ADVANCES IN ECONOMIC DISPATCH USING ARTIFICIAL NEURAL NETWORKS.
In Proceedings of the First International Conference on Informatics in Control, Automation and Robotics, pages 354-357
DOI: 10.5220/0001137103540357
Copyright
c
SciTePress
Economic Dispatch Problem (EDP) has been solved
by optimization techniques (Chowdhury, 1990).
3 ECONOMIC DISPATCH
PROBLEM USING ANN
During the last decade the applications of ANN to
various problem of Power system have increased
considerably. Economic dispatch problem has been
solved by using the Hopfield Neural Network
architecture. In the discussion to follow a brief
survey / overview on ANN based techniques has
been given selectively within the framework of
IEE/IEEE publications.
(Matuda, 1989) presented the representation of
large numbers in neural networks and its application
to economical load dispatching of electric power.
This work represents one large number by one
neuron which converges finally to any real values by
using Hopfield Network. For the validation EDP has
been mapped in the proposed model and tested for
four node system supplying 30, 000 MW load.
(Park, 1993) presented Economic Load
Dispatch for Piecewise Quadratic Cost Function
using Hopfield Neural Network. EDP has been
mapped into Hopfield neural network with
differential synchronous transition model and
modified sigmoidal function. The proposed method
has been tested for Convex and Non convex
economic dispatch problems.
(Fukuyama, 1994) presented an application of
neural network to dynamic dispatch using multi
processors. Dynamic Economic Dispatch has been
carried out by using Gaussian Machine. The
modeling has been programmed in parallel C and
tested on transputer.
(King, 1995) presented Optimal Environmental
Dispatching of Electric Power System via an
Improved Hopfield Neural Network model. A
simulator has been developed and a criterion for
selecting its parameters has been discussed to obtain
an optimal dispatch in the minimum amount of
iterations.
(Djukanovic, 1996) presented a method for
resolving the real-time economic dispatch problem.
A suitable topology for the neural-net based on the
multi-layered perceptron has been developed and an
appropriate training method based on the back
propagation algorithm has been used. The proposed
method has been applied to two test systems. Hybrid
intelligent system consisting of GDR neural-net
architecture and Gold Works II based expert system
has been proposed for the solution of
environmental/economic dispatch problem
(Yalcinoz, 1997) presented Large Scale
Economic Dispatch using Improved Hopfield Neural
Network. Gee’s Hopfield Neural Networks (GHN)
has been modified to solve EDP. Proposed model
has been tested on 3, 20, 40, 80, 120,160 and 240
units. The execution time and number of iterations
have been reduced compared to classical methods.
(Su, 1997) presented a Fast-Computation
Hopfield Method to Economic Dispatch of Power
Systems. The method employs a linear input-output
model for neurons. EDP has been formulated in such
a way that direct computation instead of iterations
for solving the problems becomes possible. 3 and 13
bus systems have been tested.
(Yalcinoz, 1998) presented Neural Networks
Approach for solving Economic Dispatch Problem
with Transmission Capacity Constraints. Gee and
Prager’s (GP) method has been modified in order to
solve ED with transmission capacity constraints. The
proposed method (PHN) has achieved efficient and
accurate solutions for two-area power systems with
3, 4, 40 and 120 units.
(Lee, 1998) developed two different methods ---
the slope adjustment and bias adjustment methods,
in order to speed up the convergence of the Hopfield
Neural Network System. To guarantee and for faster
convergence, adaptive learning rates have also been
developed by using energy functions and applied to
the slope and bias adjustment methods. The results
of the traditional, fixed learning rate and adaptive
learning rate methods have been compared for
economic load dispatch problems.
(Walsh, 1999) presented Augmented Hopfield
Network for Constrained Generator Scheduling.
This paper presents an augmented Hopfield Neural
Network scheduling algorithm that unites the unit
commitment and generation dispatch functions. This
algorithm successfully considers ramp rate,
transmission and fuel constraints in addition to the
more common constraints. Model has been tested on
system consisting 17 thermal and 2 hydro units.
(Yalcinoze, 1999) presented Security Dispatch
using the Hopfield Neural Network. A mapping
process has been formulated and a computational
method for obtaining the weights and biases has
been described using a slack variable technique for
handling inequality constraints..
(Liang, 1999) developed re-dispatch approach
based on the Hopfield Neural Network considering
the dynamic dispatch problem that involve the
allocation of system generation optimally among
dispatchable generating units while tracking a load
curve and observing power ramping response rate
limits of the units, system spinning reserve
requirements. This method has been successfully
applied to utility system.
A REVIEW OF ADVANCES IN ECONOMIC DISPATCH USING ARTIFICIAL NEURAL NETWORKS
355
(Lee, 2000) presented Real Power Optimization
with Load Flow using Adaptive Hopfield Neural
Network. Instead of using the typical B-coefficient
method, actual load flow to compute the
transmission loss accurately.
(Su, 2000) presented New Approach with a
Hopfield Modeling Framework to Economic
Dispatch. The weighting factors associated with the
terms of the energy function can be either
appropriately selected or directly estimated in the
proposed model. The proposed method has been
tested on 3-bus and 13-bus system.
(Su, 2000) presented A Hopfield Model to
Economic Dispatch having Special Units. This paper
presents a Hopfield model with three strategies to
solve the economic dispatch (ED) problems having
prohibited operating zones. Application of the
proposed approach has been demonstrated using a
15-unit system with 4 units having prohibited zones.
(Altun, 2000) presented Constrained Economic
Dispatch with Prohibited Operating Zones: A
Hopfield Neural Network Approach. A new
mapping process has been used and a computational
method for obtaining the weights and biases is
described using a slack variable technique for
handling inequality constraints. The proposed
approach has been demonstrated on 18-unit system
with 4 units having prohibited zones.
(Hartati, 2000)
presents a summary of algorithms
that have been proposed for the application of the
Hopfield Neural Network to the Economic Load
Dispatch problem.
(Bastos, 2002) presented Modified Hopfield
Network in which internal parameters of the neural
network are computed using the valid-subspace
technique, which guarantees convergence to
equilibrium points that represent a solution for the
ED problem. Simulation results and a comparative
analysis involving a 3-bus test system have been
presented to illustrate efficiency of the proposed
approach.
4 CONCLUSIONS
Artificial Intelligence Tools are being used to solve
the EDP. These are gaining popularity over the
solution methods based on optimization theory due
to their strengths. The Hopfield Neural Network
architecture is dominating for the various aspects of
EDP. In (Park, 1993) a Hopfield neural network is
proposed to solve the classical economic dispatch
problem with non-convex cost function. The
computation effort for solving the problem is high
due to large number of iterations to obtain the
optimality. In (Su, 1997) an analytic Hopfield
method reducing considerably this computation
effort is proposed. However the method is not
applied to non-convex cost functions. In (Yalcinoze,
1998) a neural network approach for solving
Economic Dispatch with transmission capacity
constraints has been proposed. (Su, 2000) is the
extension of (Su, 1997) in the sense it incorporates
transmission loss. (King, 1995) and (Yalcinoze,
1999) incorporates the environmental and security
aspects in Hopfield model respectively. (Lee, 1998)
improves convergence and guarantees the
convergence. In (Lee, 2000) B coefficients have
been replaced by load flow equation. In (Altun,
2000) & (Hartati, 2000) there are Hopfield
approaches for dealing the prohibited zones problem
in ED. This selected review reveals that the
advancement in ANN approaches gradual,
systematic and gaining maturity for different aspects
of EDP and there is the potential for the use of ANN
to deal Economic dispatch problem.
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