- Open Access
- Total Downloads : 2002
- Authors : Arunesh Dutt, Ashish Dhamanda
- Paper ID : IJERTV2IS100552
- Volume & Issue : Volume 02, Issue 10 (October 2013)
- Published (First Online): 16-10-2013
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License: This work is licensed under a Creative Commons Attribution 4.0 International License
Classical Approach to Solve Economic Load Dispatch Problem of Thermal Generating Unit in MATLAB Programming
Arunesh Dutt 1, Ashish Dhamanda 2
1Assistant Professor (EEE), SGIET, NGBU, Allahabad, U.P, India
2Ph.d Student (EE), SSET, SHIATS, Allahabad, U.P, India
Abstract
The classical approach to the Economic Load Dispatch Problem (ELDP) seeks to minimize the cost of generation subject to the certain constraints. Economic load dispatch (ELD) problem is one of the most important in power system operation and planning. So many models by using different techniques have been used to solve these problems. Lambda iteration method (LIM) offers a suitable and classical approach to meet the objectives of to determine the optimal combination of power outputs of all generating units so as to meet the required demand at minimum cost while satisfying the generator constraint. This paper presents an improved fast and reliable technique to solve ELD Problem using Lambda iteration method (LIM) in MATLAB environment for two and three generator units, which are thermal generating units and two separate cases, has to be considered with and without generator constraints. Simulation results show that the each thermal generating unit for the proposed method is compared with the all cases and find out the optimum one from the compared response.
Keywords: Economic Load Dispatch (ELD), Economic Load Dispatch Problem (ELDP), Lambda iteration method (LIM), Satisfying Constraints.
-
Introduction
The increasing energy demand and the decreasing energy resources have made optimization a great necessity in power system operation and planning. Economic dispatch is the optimization scheme of generation system to determine the best generation schedule to supply a given load with minimum cost, while satisfying a set of constraints. Because of the increasing size and complexity of power system
networks, such as multiple fuel options, more attention is being given to develop optimization methods that automatically account for such practical constraints. Fuel supplies for thermal can be coal, natural gas, oil, or nuclear fuel. The other costs such as costs of labour, supplies, maintenance, etc. being difficult to be determined and approximate, are assumed to vary as a fixed percentage of the fuel cost. Therefore, these costs are included in the fuel cost. Thus, the operating cost of a thermal plant, which is mainly the fuel cost, is given as a function of generation. This function is defined as a nonlinear function of plant generation. The cost of generation depends upon the system constraint for a particular load demand it means the cost of generation is not fixed for a particular load demand but depends upon the operating constraint of the sources [2],[3]. The ELD problem has been solved via many traditional optimization methods, including: Gradient-based techniques, Newton methods, Linear programming, and quadratic programming [6]. The economic operation of a thermal unit, input-output modeling characteristic is significant. For this function considers a single unit consisting of a boiler, a turbine, and a generator as shown in figure 1 [4],[5],[12].
Fig. 1 Simple Model of Thermal Generation System
-
Problem Formulation
ELD is an important function in modern power system to schedule the power generator outputs with respect to the load demands, and to operate the power system most economically, the main objective of economic load dispatch is to allocate the optimal power generation from different units at the lowest possible cost while satisfying the system constraints. ELD problem can be mathematically formulated as follows-
2.1 Objective Function
The Objective function for ELD can be expressed mathematically as follows:-
2.2.2 Inequality Constraints
Inequality constraints for power generating units are as follows:
Pgimin <= Pgi <= Pgimax (i = 1, 2., NG) (5)
Where Pgimin, and Pgimax are the minimum and maximum limit of power generation of a ith plant.
2.3 Incremental Fuel Cost
The incremental fuel cost can be obtained from the following equation:
(IC)i = 2 ai Pgi + bi /hr (6)
Minimize Pgi = NG
i = 1
Subject to:
Ci Pgi (1)
Where IC is incremental fuel cost. a is actual incremental cost curve. b is approximated (linear) incremental cost curve. Pg is total power generation [5],[12].
The energy balance equation
For dispatching purposes, the cost is usually
NG i = 1
Pgi = Pd (2)
approximated by one or more quadratic segments, so the fuel cost curve in the active power generation, takes up a quadratic form. Incremental fuel cost curve are
Ci Pgi = NG
i = 1
ai Pgi2 + bi Pgi + ci /hr (3)
shown in figure 2 as follows-
Where ai, bi and ci are the cost coefficients of ith units.
2.2. Constraints Function
The economic power system operation needs to satisfy the following types of constraints:
2.2.1 Equality Constraints
In equality constraints the sum of real power generation of all the various units must always be equal to the total real power demand on the system.
Fig. 2 Incremental Cost Curve of Generator i
-
Lambda Iteration Method
Pd = NG
i = 1
Pgi (4)
Lambda iteration method is more conventional to deal with the minimization of cost of generating the power
Where Pgi is the total real power generation. Pd is the total real power demand.
at any demand. For more number of units, the Lambda iteration method is more accurate and incremental cost curves of all units are stored in memory.
Flow Chart of Lambda iteration method for ELD is given below:
Fig. 3 Flow Chart of ELD with Generator Constraints
-
Numerical Example
Two and Three generating units have different characteristic. Their cost function characteristics are given by following equations [4],[5]-
-
For Two Generating Unit
C1 = 0.004P12+ 9.2P1+ 420 / (7)
C2= 0.0029P22+ 8.5P2 + 350 / (8)
The unit operating ranges are-
100 MW P1 200 MW (9)
150 MW P2 500 MW (10)
Let us consider =12
-
For Three Generating Unit
C1 = 0.006P12+ 8.4P1+ 400 / (11)
C2= 0.006P22+ 8.93P2 + 600 / (12)
2
2
C3= 0.004P2 + 6.78P2 + 650 / (13)
The unit operating ranges are-
100 MW P1 600MW (14)
60 MW P2 300 MW (15)
300 MW P3 650 MW (16)
Let us consider =9 [4],[5]
-
-
Simulation And Result
The Lambda iteration method is applied in four cases with two generating unit to find out the minimum cost for any demand. The optimal results with the conventional Lambda iteration method will get.
In the first case transmission losses and generator constraints are neglected, in second case generator constraints are consider without transmission losses, in third case transmission losses are consider without generator constraint and the fourth case with transmission losses and generator constraint. All these simulation are done on MATLAB environment. The tables for each case are as follows-
-
For Two Generating Unit
S.No.
Lambda
Power Demand (MW)
Fuel Cost (F) /hr
1
9.6684
260
3152.4
2
10.1391
400
4538.9
3
10.7443
580
6418.4
4
11.1142
690
7620.6
Table. 1: Economic Load Dispatch without generator constraints (For Case 1)
S.No.
Lambda
Power Demand (MW)
Fuel Cost (F)
/hr
1
9.4280
260
3164.2
2
10.1391
400
4538.9
3
10.7443
580
6418.4
4
11.3420
690
7631.3
S.No.
Lambda
Power Demand (MW)
Fuel Cost (F)
/hr
1
9.4280
260
3164.2
2
10.1391
400
4538.9
3
10.7443
580
6418.4
4
11.3420
690
7631.3
10000
9000
8000
Fuel Cost (R/hr)
Fuel Cost (R/hr)
7000
6000
Table. 2: Economic Load Dispatch with generator constraints (For Case 2)
-
For Three Generating System
5000
4000
3000
200
250 300 350 400 450 500 550 600 650 700 750 80
Power Demand (Mw)
S.No.
Lambda
Power Demand (MW)
Fuel Cost (F)
/hr
1
9.7429
550
6357.2
2
11.2171
980
10864.0
3
11.9714
1200
13414.0
4
13.0000
1500
17160.0
S.No.
Lambda
Power Demand (MW)
Fuel Cost (F)
/hr
1
9.7429
550
6357.2
2
11.2171
980
10864.0
3
11.9714
1200
13414.0
4
13.0000
1500
17160.0
Table. 3: Economic Load Dispatch without generator constraints (For Case 3)
S.No.
Lambda
Power Demand (MW)
Fuel Cost (F)
/hr
1
9.7429
550
6357.2
2
11.2171
980
10864.0
3
11.9714
1200
13414.0
4
15.000
1500
17401.0
Table. 4: Economic Load Dispatch with generator constraints (For Case 4)
From the above tables, the response of two separate cases for two generating unit can be obtained-
Graph.1: Between Power Demand (Mw) and Fuel Cost ( /hr) (For Case 1)
10000
9000
8000
Fuel Cost (R/hr)
Fuel Cost (R/hr)
7000
6000
5000
4000
3000
200 250 300 350 400 450 500 550 600 650 700 750 800
Power Demand (Mw)
Graph.2: Between Power Demand (Mw) and Fuel Cost ( /hr) (For Case 2)
The response of two separate cases for three generating unit can be obtained as follow-
2
1.8
1.6
4
x 10
-
For Two Generating Unit
10000
9000
8000
Fuel Cost R/hr
Fuel Cost R/hr
1.4
1.2
1
0.8
7000
Fuel Cost (R/hr)
Fuel Cost (R/hr)
6000
5000
4000
Case 1
Case 2
0.6
500 550 600 650 700 750 800 850 900 950 1000 1050 1100 1150 1200 1250 1300 1350 1400 1450 1500 1550 1600
Power Demand (Mw)
Graph.3: Between Power Demand (Mw) and Fuel Cost ( /hr) (For Case 3)
4
x 10
3000
200 250 300 350 400 450 500 550 600 650 700 750 800
Power Demand (Mw)
Graph.5: Between Power Demand (Mw) and Fuel Cost ( /hr)
-
For Three Generating Unit
-
2.4
2.2
2
1.8
Fuel Cost R/hr
Fuel Cost R/hr
1.6
1.4
1.2
1
0.8
2.6
2.4
2.2
2
Fuel Cost R/hr
Fuel Cost R/hr
1.8
1.6
1.4
1.2
1
Case 2
Case 1
0.6
500 550 600 650 700 750 800 850 900 950 1000 1050 1100 1150 1200 1250 1300 1350 1400 1450 1500 1550 1600
Power Demand (Mw)
Graph.4: Between Power Demand (Mw) and Fuel Cost ( /hr) (For Case 4)
Comparison of above stated cases and respective graphs, the combined responses can be obtained between Power Demand (Mw) and Fuel Cost ( /hr).
0.8
0.6
500 550 600 650 700 750 800 850 900 950100010501100115012001250130013501400145015001550160016501700175018001850190019502000
Power Demand Mw
Graph.6: Between Power Demand (Mw) and Fuel Cost ( /hr)
6. Conclusion
For solving economic load dispatch problem of thermal generating units, we considered two and three generating units and each generating unit have two different cases. The first case is economic load dispatch (ELD) without generator constraints, second case is ELD with generator constraints. For each case a separate table and corresponding response we obtained and the combined response of all separate cases also obtained after comparison of the above cases we find that the first case (ELD without transmission line losses and generator constraints) give the optimal value in comparison to the other cases. Thus we can conclude that the Lambda iteration method gives the better result and useful to solve ELD problem.
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