SlideShare a Scribd company logo
NOVATEUR PUBLICATIONS
INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY
[IJIERT]
ISSN: 2394-3696
VOLUME 2, ISSUE 4, APR.-2015
1 | P a g e
AN EFFICIENT COUPLED GENETIC ALGORITHM AND LOAD
FLOW ALGORITHM FOR OPTIMAL PLACEMENT OF
DISTRIBUTED GENERATORS
Rashed Mobin
Department Of Electrical Engineering.,Meghnad Saha Institute Of
Technology,Kolkata,India
Mr.Ambarnath Banerji(HOD)
Department Of Electrical Engineering.,Meghnad Saha Institute Of
Technology,Kolkata,India
Utsav Das
Department Of Electrical Engineering.,Meghnad Saha Institute Of
Technology,Kolkata,India
ABSTRACT
A genetic algorithm is used in conjunction with an efficient load flow programme to
determine the optimal locations of the predefined DGs with MATLAB & MATPOWER
software. The best location for the DGs is determined using the genetic algorithm. The
branch electrical loss is considered as the objective function and the system total loss
represent the fitness evaluation function for driving the GA. The load flow equations are
considered as equality constraints and the equations of nodal voltage and branch
capacity are considered as inequality constraints. The approach is tested on a 9 &14 bus
IEEE distribution feeder.
INTRODUCTION
Connection of distributed generation (DG) fundamentally alters distribution network
operation and creates a variety of well-documented impacts with voltage rise being the
dominant effect, particularly in rural networks. With the increasing levels of generation
to be accommodated, planning and design of distribution networks will need to change
to harness approaches that use information and communication technology to actively
manage the network
Distributed generators are, by definition, small size generators, which can come from
traditional or some revolutionary technologies (e.g., fuel cells, micro-CHPs,
photovoltaic panels). Integration of DG with power networks (Grid) requires
consideration of some issues in terms of numbers and the capacity of the DGs, the best
location, the type of network connection, etc. Their benefits to networks are reduction in
NOVATEUR PUBLICATIONS
INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY
[IJIERT]
ISSN: 2394-3696
VOLUME 2, ISSUE 4, APR.-2015
2 | P a g e
losses, providing higher reliability and increase in load ability and improved voltage
profile. Their drawback is in issues such as various stability problems and the change
in protection grading, etc. Furthermore, the installation of DG units at non-optimal
places can result in an increase of power losses and hence increase of costs.
It is clear that while each of the broad approaches identified above offers advantages in
terms of examining one of the problems, no approach in the literature can truly provide
both optimal siting and sizing of DG across an entire network for a given number of DG
units, without the requirement of predetermining capacities or locations. Here, a method
is presented that combines the analytical accuracy of OPF with the ability of the genetic
algorithm to efficiently search a large range of location combinations. Although this
comes at the expense of requiring predefinition of the number of DG units, this allows
exploration of a range of interesting problems
Advantages of GAs are their ability to avoid being trapped in local optima and also
their expected number of function evaluations before reaching the optimum is
significantly reduced compared with exhaustive search methods.
Here an attempt is made to discuss the identification of the DG placement for the
reduction of the total real power losses in the distribution system through a developed
GA in conjunction with an efficient load flow programme within MATLAB
environment.
Here, the objective function, which calculates the total losses of power, is considered
the fitness function and the equations of load flow considered as equality constraints
and the equations of nodal voltage and branch capacity are considered as inequalities
constraints.
LOAD FLOW
Load flow analysis of distribution systems has not received much attention unlike load
flow analysis of transmission systems. However, some work has been carried out on
load flow analysis of a distribution network, but the choice of a solution method for
practical systems is often difficult. Generally, distribution networks are radial with a
small X/R ratio. Because of this, distribution networks are not suited for solving such
networks with Newton-Raphson or fast decoupled load flow methods
In this approach, the voltage magnitude at the buses, real and reactive power flowing
through lines, real and reactive losses in lines, and total losses in the system are
calculated and it is assumed that the three phase radial distribution networks are
balanced and can be represented by their equivalent single line diagrams.
NOVATEUR PUBLICATIONS
INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY
[IJIERT]
ISSN: 2394-3696
VOLUME 2, ISSUE 4, APR.-2015
3 | P a g e
For practical calculations, we have the following equations:
GA FOR DGs PLACEMENT
The use of GA for DGs placement requires the determination of six steps as illustrated
below
Step l :Representation
The representation scheme determines how the problem is structured in the GA and also
determines the genetic operators that are used (between the two different
representations: a float and a binary GA)
Step 2: Initialize population
The GA must be provided with an initial population. The basic call for this function is
given by the MATLAB command called (initialize). This creates a matrix of random
numbers with the number of rows equal to the population size and the number columns
equal to the number of rows plus one.
NOVATEUR PUBLICATIONS
INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY
[IJIERT]
ISSN: 2394-3696
VOLUME 2, ISSUE 4, APR.-2015
4 | P a g e
Step 3 :Selection
In this step, one choice is made from the three implemented selection functions (roulette
wheel, normalised geometric select and tournament).
Step 4: Reproduction
To produce the new solutions, two operators, crossover and mutation, are used.
Step 5 :Fitness evaluation
The total system losses were used as the fitness evaluation function, which is an output
of the load flow software tool described in Section 2.
Step 6: Termination
The termination function determines when to stop the simulated evolution and return
the resulting population. A maximum generation criteria is used to stop the simulation.
NOVATEUR PUBLICATIONS
INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY
[IJIERT]
ISSN: 2394-3696
VOLUME 2, ISSUE 4, APR.-2015
5 | P a g e
CASE STUDY
The work was carried out for a IEEE 9 bus system by using matpower,GA tool box
and others softwares.
NOVATEUR PUBLICATIONS
INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY
[IJIERT]
ISSN: 2394-3696
VOLUME 2, ISSUE 4, APR.-2015
6 | P a g e
VOLTAGE OF BRANCHES POWER INJECTION
TOTAL LOSSES TABULATION
BRANCH WITHOUT
DG
WITH DG
Nodes 1 7 9
Voltage
V(pu) Voltage V(pu)
1 1 1
2 0.817 1.043
3 0.828 1.051
4 0.913 1.01
5 0.855 1.01
6 0.828 1.051
7 0.801 1.043
8 0.817 1.043
9 0.838 1.003
BRANCH WITHOUT
DG
WITH
DG
P(MW) POWER P(MW)
INJECTION
1 327.92 68.66
2 147.32 53.95
3 52.53 -36.54
4 0 0
5 51.05 -37.14
6 -49.46 25.69
7 0 0
8 -49.8 25.64
9 -175.99 -14.69
BRANCH P(MW)
WITHOUT
DG
Q (MW) P(MW)
WITH
DG
Q(MW)
1 0 81.82 0 2.87
2 4.785 25.9 0.497 2.69
3 1.485 6.47 0.596 2.6
4 0 0 0 0
5 0.507 4.3 0.169 1.43
6 0.338 2.86 0.052 0.44
7 0 0 0 0
8 1.193 6 0.324 1.63
9 4.609 39.18 0.025 0
TOTAL 12.917 166.52 1.664 11.88
NOVATEUR PUBLICATIONS
INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY
[IJIERT]
ISSN: 2394-3696
VOLUME 2, ISSUE 4, APR.-2015
7 | P a g e
From the results it can be observed that using distributed generators the total power loss
has been reduced. The active power is reduced from 8.543 to 1.664 i.e., 80.52 % losses
reduction and the reactive power is reduced from 166.52 to 11.88 ie 92.86 %
reduction.
BUS
1
BUS
2
BUS
3
BUS
4
BUS
5
BUS
6
BUS
7
BUS
8
BUS
9
POWER
LOSSES
1 1 1 0 0 0 0 0 0 4.95470158
1 1 0 1 0 0 0 0 0 3.907972
1 1 0 0 1 0 0 0 0 2.770643
1 1 0 0 0 1 0 0 0 4.921616
1 1 0 0 0 0 1 0 0 5.30912
1 1 0 0 0 0 0 1 0 7.021909
1 1 0 0 0 0 0 0 1 3.046834
1 0 1 1 0 0 0 0 0 4.422235
1 0 1 0 1 0 0 0 0 4.134531
1 0 1 0 0 1 0 0 0 8.543124
1 0 1 0 0 0 1 0 0 5.842195
1 0 1 0 0 0 0 1 0 5.400015
1 0 1 0 0 0 0 0 1 3.117107
1 0 0 1 1 0 0 0 0 7.213207
1 0 0 1 0 1 0 0 0 4.848058
1 0 0 1 0 0 1 0 0 3.906668
1 0 0 1 0 0 0 1 0 4.772461
1 0 0 1 0 0 0 0 1 7.299286
1 0 0 0 1 1 0 0 0 3.683721
1 0 0 0 1 0 1 0 0 2.363856
1 0 0 0 1 0 0 1 0 2.765858
NOVATEUR PUBLICATIONS
INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY
[IJIERT]
ISSN: 2394-3696
VOLUME 2, ISSUE 4, APR.-2015
8 | P a g e
GENERATOR PRESENT = 1
NO GENERATOR = 0
The above table that with changing the position of 3 generator in a 9 bus system the
power loss for different position of generator are different.
Thus by selecting the best case ie with generator on bus 1,7,9 the total loss is greatly
reduced.
CONCLUSION
This projet has presented a novel approach in determining suitable locations (nodes) in
the system under investigation for the three DGs instalation and sizing for loss
minimisation using efficient coupled GA and the load flow method. The proposed
method has been tested on a 9 bus system. The results suggest that the active power
losses are reduced from 8.543 to 1.664 i.e., 80.52 % losses reduction
Genetic control parameters (i.e., pm, pc, population size and number of generation)
play an important role in the performance of the GA and some permutations and
combinations of these parameters need to be tested to get the best performance. The
proposed convergence criteria can provide acceptable accuracy in overall results.
Using this approach and genetic algorithm all of power system problem can be solved.
We can find out the Generator Maintenance scheduling with transmission constraints
can be worked out using this approach.
1 0 0 0 1 0 0 0 1 3.49245
1 0 0 0 0 1 1 0 0 5.561506
1 0 0 0 0 1 0 1 0 5.152932
1 0 0 0 0 1 0 0 1 3.001599
1 0 0 0 0 0 1 1 0 4.638628
1 0 0 0 0 0 1 0 1 1.664186
1 0 0 0 0 0 0 1 1 2.982716
NOVATEUR PUBLICATIONS
INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY
[IJIERT]
ISSN: 2394-3696
VOLUME 2, ISSUE 4, APR.-2015
9 | P a g e
REFERENCES
1. Mardeneh, M,Gharenpetin, G.B;”Sitting and sizing of D.G units using Genetic
Algorithm and optimal power flow based technique.
2. G.PHarrison, A.Piccplo ”Exploring the trade offs between incentives for
distributed generation Developer and DNO’’s. IEEE Trans. Power system.
3. J. Chipperfield and P. J. Fleming1 , The MATLAB Genetic Algorithm Toolbox.
4. Das, D., Kothari, D.P. and Kalam, A. (1995) ‘Simple and efficient method for
load flow solution of radial distribution networks’, Electrical Power & Energy
Systems, Vol. 17, No. 5.
5. Nara, K., Shiose, A., Kitagawa, M. and Ishihara, T. (1992) ‘Implementation of
genetic algorithm for distribution systems loss minimum reconfiguration’, IEEE
Transactions on Power Systems, August, Vol. 7, No. 3.

More Related Content

PDF
Adaptive maximum power point tracking using neural networks for a photovoltai...
PDF
Optimal Placement of DG for Loss Reduction and Voltage Sag Mitigation in Radi...
PDF
Design and Performance Analysis of Genetic based PID-PSS with SVC in a Multi-...
PDF
Ag33180185
PDF
Numerical Method for Power Losses Minimization of Vector- Controlled Inductio...
PDF
Automatic generation-control-of-multi-area-electric-energy-systems-using-modi...
PDF
A novel p q control algorithm for combined active
PDF
ijess_paper7
Adaptive maximum power point tracking using neural networks for a photovoltai...
Optimal Placement of DG for Loss Reduction and Voltage Sag Mitigation in Radi...
Design and Performance Analysis of Genetic based PID-PSS with SVC in a Multi-...
Ag33180185
Numerical Method for Power Losses Minimization of Vector- Controlled Inductio...
Automatic generation-control-of-multi-area-electric-energy-systems-using-modi...
A novel p q control algorithm for combined active
ijess_paper7

What's hot (18)

PDF
Artificial Intelligence Technique based Reactive Power Planning Incorporating...
PDF
Power transformer faults diagnosis using undestructive methods and ann for dg...
PDF
T04201162168Optimal Allocation of FACTS Device with Multiple Objectives Using...
PDF
A Study of Load Flow Analysis Using Particle Swarm Optimization
PDF
paper11
PDF
A New Design Method of an LCL Filter Applied in Active DC-Traction Substations
PDF
A novel method for determining fixed running time in operating electric train...
PDF
Economic Load Dispatch Problem with Valve – Point Effect Using a Binary Bat A...
PDF
Improving Efficiency of Active Power Filter for Renewable Power Generation Sy...
PDF
Elk 26-6-32-1711-330
PDF
96 manuscript-579-1-10-20210211
PDF
Comparative power flow analysis of 28 and 52 buses for 330 kv power grid netw...
PDF
Evaluation of IEEE 57 Bus System for Optimal Power Flow Analysis
PDF
A novel p q control algorithm for combined active front end converter and shu...
PDF
Power losses reduction of power transmission network using optimal location o...
PDF
Wind speed modeling based on measurement data to predict future wind speed wi...
PDF
Cascade forward neural network based on resilient backpropagation for simulta...
PDF
22057 44311-1-pb
Artificial Intelligence Technique based Reactive Power Planning Incorporating...
Power transformer faults diagnosis using undestructive methods and ann for dg...
T04201162168Optimal Allocation of FACTS Device with Multiple Objectives Using...
A Study of Load Flow Analysis Using Particle Swarm Optimization
paper11
A New Design Method of an LCL Filter Applied in Active DC-Traction Substations
A novel method for determining fixed running time in operating electric train...
Economic Load Dispatch Problem with Valve – Point Effect Using a Binary Bat A...
Improving Efficiency of Active Power Filter for Renewable Power Generation Sy...
Elk 26-6-32-1711-330
96 manuscript-579-1-10-20210211
Comparative power flow analysis of 28 and 52 buses for 330 kv power grid netw...
Evaluation of IEEE 57 Bus System for Optimal Power Flow Analysis
A novel p q control algorithm for combined active front end converter and shu...
Power losses reduction of power transmission network using optimal location o...
Wind speed modeling based on measurement data to predict future wind speed wi...
Cascade forward neural network based on resilient backpropagation for simulta...
22057 44311-1-pb
Ad

Similar to AN EFFICIENT COUPLED GENETIC ALGORITHM AND LOAD FLOW ALGORITHM FOR OPTIMAL PLACEMENT OF DISTRIBUTED GENERATORS (20)

PDF
Multi-objective optimal placement of distributed generations for dynamic loads
PDF
IRJET- Optimization of Distributed Generation using Genetics Algorithm an...
PDF
40220140502004
PDF
PDF
IRJET- Comprehensive Analysis on Optimal Allocation and Sizing of Distributed...
PDF
A_genetic_algorithm_based_approach_for_optimal_all.pdf
PDF
Optimal Siting And Sizing Of Distributed Generation For Radial Distribution S...
PDF
An analytical approach for optimal placement of combined dg and capacitor in ...
PDF
Performance comparison of distributed generation installation arrangement in ...
PDF
Ka3418051809
PPTX
Voltage_Stability_Analysis_With DG NEW (1).pptx
PDF
A Novel Approach for Allocation of Optimal Capacitor and Distributed Generati...
PDF
Energy harvesting maximization by integration of distributed generation based...
PDF
Multi-objective distributed generation integration in radial distribution sy...
PDF
IJMTST020105
PDF
Placement of Multiple Distributed Generators in Distribution Network for Loss...
PDF
01 16286 32182-1-sm multiple (edit)
PDF
B04721015
PDF
IRJET- Optimal Placement and Size of DG and DER for Minimizing Power Loss and...
PDF
Optimal planning of RDGs in electrical distribution networks using hybrid SAP...
Multi-objective optimal placement of distributed generations for dynamic loads
IRJET- Optimization of Distributed Generation using Genetics Algorithm an...
40220140502004
IRJET- Comprehensive Analysis on Optimal Allocation and Sizing of Distributed...
A_genetic_algorithm_based_approach_for_optimal_all.pdf
Optimal Siting And Sizing Of Distributed Generation For Radial Distribution S...
An analytical approach for optimal placement of combined dg and capacitor in ...
Performance comparison of distributed generation installation arrangement in ...
Ka3418051809
Voltage_Stability_Analysis_With DG NEW (1).pptx
A Novel Approach for Allocation of Optimal Capacitor and Distributed Generati...
Energy harvesting maximization by integration of distributed generation based...
Multi-objective distributed generation integration in radial distribution sy...
IJMTST020105
Placement of Multiple Distributed Generators in Distribution Network for Loss...
01 16286 32182-1-sm multiple (edit)
B04721015
IRJET- Optimal Placement and Size of DG and DER for Minimizing Power Loss and...
Optimal planning of RDGs in electrical distribution networks using hybrid SAP...
Ad

More from ijiert bestjournal (20)

PDF
CRACKS IN STEEL CASTING FOR VOLUTE CASING OF A PUMP
PDF
A COMPARATIVE STUDY OF DESIGN OF SIMPLE SPUR GEAR TRAIN AND HELICAL GEAR TRAI...
PDF
COMPARATIVE ANALYSIS OF CONVENTIONAL LEAF SPRING AND COMPOSITE LEAF
PDF
POWER GENERATION BY DIFFUSER AUGMENTED WIND TURBINE
PDF
FINITE ELEMENT ANALYSIS OF CONNECTING ROD OF MG-ALLOY
PDF
REVIEW ON CRITICAL SPEED IMPROVEMENT IN SINGLE CYLINDER ENGINE VALVE TRAIN
PDF
ENERGY CONVERSION PHENOMENON IN IMPLEMENTATION OF WATER LIFTING BY USING PEND...
PDF
SCUDERI SPLIT CYCLE ENGINE: REVOLUTIONARY TECHNOLOGY & EVOLUTIONARY DESIGN RE...
PDF
EXPERIMENTAL EVALUATION OF TEMPERATURE DISTRIBUTION IN JOURNAL BEARING OPERAT...
PDF
STUDY OF SOLAR THERMAL CAVITY RECEIVER FOR PARABOLIC CONCENTRATING COLLECTOR
PDF
DESIGN, OPTIMIZATION AND FINITE ELEMENT ANALYSIS OF CRANKSHAFT
PDF
ELECTRO CHEMICAL MACHINING AND ELECTRICAL DISCHARGE MACHINING PROCESSES MICRO...
PDF
HEAT TRANSFER ENHANCEMENT BY USING NANOFLUID JET IMPINGEMENT
PDF
MODIFICATION AND OPTIMIZATION IN STEEL SANDWICH PANELS USING ANSYS WORKBENCH
PDF
IMPACT ANALYSIS OF ALUMINUM HONEYCOMB SANDWICH PANEL BUMPER BEAM: A REVIEW
PDF
DESIGN OF WELDING FIXTURES AND POSITIONERS
PDF
ADVANCED TRANSIENT THERMAL AND STRUCTURAL ANALYSIS OF DISC BRAKE BY USING ANS...
PDF
REVIEW ON MECHANICAL PROPERTIES OF NON-ASBESTOS COMPOSITE MATERIAL USED IN BR...
PDF
PERFORMANCE EVALUATION OF TRIBOLOGICAL PROPERTIES OF COTTON SEED OIL FOR MULT...
PDF
MAGNETIC ABRASIVE FINISHING
CRACKS IN STEEL CASTING FOR VOLUTE CASING OF A PUMP
A COMPARATIVE STUDY OF DESIGN OF SIMPLE SPUR GEAR TRAIN AND HELICAL GEAR TRAI...
COMPARATIVE ANALYSIS OF CONVENTIONAL LEAF SPRING AND COMPOSITE LEAF
POWER GENERATION BY DIFFUSER AUGMENTED WIND TURBINE
FINITE ELEMENT ANALYSIS OF CONNECTING ROD OF MG-ALLOY
REVIEW ON CRITICAL SPEED IMPROVEMENT IN SINGLE CYLINDER ENGINE VALVE TRAIN
ENERGY CONVERSION PHENOMENON IN IMPLEMENTATION OF WATER LIFTING BY USING PEND...
SCUDERI SPLIT CYCLE ENGINE: REVOLUTIONARY TECHNOLOGY & EVOLUTIONARY DESIGN RE...
EXPERIMENTAL EVALUATION OF TEMPERATURE DISTRIBUTION IN JOURNAL BEARING OPERAT...
STUDY OF SOLAR THERMAL CAVITY RECEIVER FOR PARABOLIC CONCENTRATING COLLECTOR
DESIGN, OPTIMIZATION AND FINITE ELEMENT ANALYSIS OF CRANKSHAFT
ELECTRO CHEMICAL MACHINING AND ELECTRICAL DISCHARGE MACHINING PROCESSES MICRO...
HEAT TRANSFER ENHANCEMENT BY USING NANOFLUID JET IMPINGEMENT
MODIFICATION AND OPTIMIZATION IN STEEL SANDWICH PANELS USING ANSYS WORKBENCH
IMPACT ANALYSIS OF ALUMINUM HONEYCOMB SANDWICH PANEL BUMPER BEAM: A REVIEW
DESIGN OF WELDING FIXTURES AND POSITIONERS
ADVANCED TRANSIENT THERMAL AND STRUCTURAL ANALYSIS OF DISC BRAKE BY USING ANS...
REVIEW ON MECHANICAL PROPERTIES OF NON-ASBESTOS COMPOSITE MATERIAL USED IN BR...
PERFORMANCE EVALUATION OF TRIBOLOGICAL PROPERTIES OF COTTON SEED OIL FOR MULT...
MAGNETIC ABRASIVE FINISHING

Recently uploaded (20)

PPTX
M Tech Sem 1 Civil Engineering Environmental Sciences.pptx
PDF
Well-logging-methods_new................
PPTX
CYBER-CRIMES AND SECURITY A guide to understanding
PDF
BMEC211 - INTRODUCTION TO MECHATRONICS-1.pdf
PDF
Automation-in-Manufacturing-Chapter-Introduction.pdf
PDF
Mohammad Mahdi Farshadian CV - Prospective PhD Student 2026
PPTX
bas. eng. economics group 4 presentation 1.pptx
PDF
TFEC-4-2020-Design-Guide-for-Timber-Roof-Trusses.pdf
PPTX
additive manufacturing of ss316l using mig welding
PDF
Unit I ESSENTIAL OF DIGITAL MARKETING.pdf
PDF
keyrequirementskkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkk
PDF
The CXO Playbook 2025 – Future-Ready Strategies for C-Suite Leaders Cerebrai...
PPTX
Internet of Things (IOT) - A guide to understanding
PPTX
Construction Project Organization Group 2.pptx
PPTX
Foundation to blockchain - A guide to Blockchain Tech
PPT
introduction to datamining and warehousing
PDF
Model Code of Practice - Construction Work - 21102022 .pdf
PDF
PRIZ Academy - 9 Windows Thinking Where to Invest Today to Win Tomorrow.pdf
PDF
Enhancing Cyber Defense Against Zero-Day Attacks using Ensemble Neural Networks
PPTX
Infosys Presentation by1.Riyan Bagwan 2.Samadhan Naiknavare 3.Gaurav Shinde 4...
M Tech Sem 1 Civil Engineering Environmental Sciences.pptx
Well-logging-methods_new................
CYBER-CRIMES AND SECURITY A guide to understanding
BMEC211 - INTRODUCTION TO MECHATRONICS-1.pdf
Automation-in-Manufacturing-Chapter-Introduction.pdf
Mohammad Mahdi Farshadian CV - Prospective PhD Student 2026
bas. eng. economics group 4 presentation 1.pptx
TFEC-4-2020-Design-Guide-for-Timber-Roof-Trusses.pdf
additive manufacturing of ss316l using mig welding
Unit I ESSENTIAL OF DIGITAL MARKETING.pdf
keyrequirementskkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkkk
The CXO Playbook 2025 – Future-Ready Strategies for C-Suite Leaders Cerebrai...
Internet of Things (IOT) - A guide to understanding
Construction Project Organization Group 2.pptx
Foundation to blockchain - A guide to Blockchain Tech
introduction to datamining and warehousing
Model Code of Practice - Construction Work - 21102022 .pdf
PRIZ Academy - 9 Windows Thinking Where to Invest Today to Win Tomorrow.pdf
Enhancing Cyber Defense Against Zero-Day Attacks using Ensemble Neural Networks
Infosys Presentation by1.Riyan Bagwan 2.Samadhan Naiknavare 3.Gaurav Shinde 4...

AN EFFICIENT COUPLED GENETIC ALGORITHM AND LOAD FLOW ALGORITHM FOR OPTIMAL PLACEMENT OF DISTRIBUTED GENERATORS

  • 1. NOVATEUR PUBLICATIONS INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY [IJIERT] ISSN: 2394-3696 VOLUME 2, ISSUE 4, APR.-2015 1 | P a g e AN EFFICIENT COUPLED GENETIC ALGORITHM AND LOAD FLOW ALGORITHM FOR OPTIMAL PLACEMENT OF DISTRIBUTED GENERATORS Rashed Mobin Department Of Electrical Engineering.,Meghnad Saha Institute Of Technology,Kolkata,India Mr.Ambarnath Banerji(HOD) Department Of Electrical Engineering.,Meghnad Saha Institute Of Technology,Kolkata,India Utsav Das Department Of Electrical Engineering.,Meghnad Saha Institute Of Technology,Kolkata,India ABSTRACT A genetic algorithm is used in conjunction with an efficient load flow programme to determine the optimal locations of the predefined DGs with MATLAB & MATPOWER software. The best location for the DGs is determined using the genetic algorithm. The branch electrical loss is considered as the objective function and the system total loss represent the fitness evaluation function for driving the GA. The load flow equations are considered as equality constraints and the equations of nodal voltage and branch capacity are considered as inequality constraints. The approach is tested on a 9 &14 bus IEEE distribution feeder. INTRODUCTION Connection of distributed generation (DG) fundamentally alters distribution network operation and creates a variety of well-documented impacts with voltage rise being the dominant effect, particularly in rural networks. With the increasing levels of generation to be accommodated, planning and design of distribution networks will need to change to harness approaches that use information and communication technology to actively manage the network Distributed generators are, by definition, small size generators, which can come from traditional or some revolutionary technologies (e.g., fuel cells, micro-CHPs, photovoltaic panels). Integration of DG with power networks (Grid) requires consideration of some issues in terms of numbers and the capacity of the DGs, the best location, the type of network connection, etc. Their benefits to networks are reduction in
  • 2. NOVATEUR PUBLICATIONS INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY [IJIERT] ISSN: 2394-3696 VOLUME 2, ISSUE 4, APR.-2015 2 | P a g e losses, providing higher reliability and increase in load ability and improved voltage profile. Their drawback is in issues such as various stability problems and the change in protection grading, etc. Furthermore, the installation of DG units at non-optimal places can result in an increase of power losses and hence increase of costs. It is clear that while each of the broad approaches identified above offers advantages in terms of examining one of the problems, no approach in the literature can truly provide both optimal siting and sizing of DG across an entire network for a given number of DG units, without the requirement of predetermining capacities or locations. Here, a method is presented that combines the analytical accuracy of OPF with the ability of the genetic algorithm to efficiently search a large range of location combinations. Although this comes at the expense of requiring predefinition of the number of DG units, this allows exploration of a range of interesting problems Advantages of GAs are their ability to avoid being trapped in local optima and also their expected number of function evaluations before reaching the optimum is significantly reduced compared with exhaustive search methods. Here an attempt is made to discuss the identification of the DG placement for the reduction of the total real power losses in the distribution system through a developed GA in conjunction with an efficient load flow programme within MATLAB environment. Here, the objective function, which calculates the total losses of power, is considered the fitness function and the equations of load flow considered as equality constraints and the equations of nodal voltage and branch capacity are considered as inequalities constraints. LOAD FLOW Load flow analysis of distribution systems has not received much attention unlike load flow analysis of transmission systems. However, some work has been carried out on load flow analysis of a distribution network, but the choice of a solution method for practical systems is often difficult. Generally, distribution networks are radial with a small X/R ratio. Because of this, distribution networks are not suited for solving such networks with Newton-Raphson or fast decoupled load flow methods In this approach, the voltage magnitude at the buses, real and reactive power flowing through lines, real and reactive losses in lines, and total losses in the system are calculated and it is assumed that the three phase radial distribution networks are balanced and can be represented by their equivalent single line diagrams.
  • 3. NOVATEUR PUBLICATIONS INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY [IJIERT] ISSN: 2394-3696 VOLUME 2, ISSUE 4, APR.-2015 3 | P a g e For practical calculations, we have the following equations: GA FOR DGs PLACEMENT The use of GA for DGs placement requires the determination of six steps as illustrated below Step l :Representation The representation scheme determines how the problem is structured in the GA and also determines the genetic operators that are used (between the two different representations: a float and a binary GA) Step 2: Initialize population The GA must be provided with an initial population. The basic call for this function is given by the MATLAB command called (initialize). This creates a matrix of random numbers with the number of rows equal to the population size and the number columns equal to the number of rows plus one.
  • 4. NOVATEUR PUBLICATIONS INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY [IJIERT] ISSN: 2394-3696 VOLUME 2, ISSUE 4, APR.-2015 4 | P a g e Step 3 :Selection In this step, one choice is made from the three implemented selection functions (roulette wheel, normalised geometric select and tournament). Step 4: Reproduction To produce the new solutions, two operators, crossover and mutation, are used. Step 5 :Fitness evaluation The total system losses were used as the fitness evaluation function, which is an output of the load flow software tool described in Section 2. Step 6: Termination The termination function determines when to stop the simulated evolution and return the resulting population. A maximum generation criteria is used to stop the simulation.
  • 5. NOVATEUR PUBLICATIONS INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY [IJIERT] ISSN: 2394-3696 VOLUME 2, ISSUE 4, APR.-2015 5 | P a g e CASE STUDY The work was carried out for a IEEE 9 bus system by using matpower,GA tool box and others softwares.
  • 6. NOVATEUR PUBLICATIONS INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY [IJIERT] ISSN: 2394-3696 VOLUME 2, ISSUE 4, APR.-2015 6 | P a g e VOLTAGE OF BRANCHES POWER INJECTION TOTAL LOSSES TABULATION BRANCH WITHOUT DG WITH DG Nodes 1 7 9 Voltage V(pu) Voltage V(pu) 1 1 1 2 0.817 1.043 3 0.828 1.051 4 0.913 1.01 5 0.855 1.01 6 0.828 1.051 7 0.801 1.043 8 0.817 1.043 9 0.838 1.003 BRANCH WITHOUT DG WITH DG P(MW) POWER P(MW) INJECTION 1 327.92 68.66 2 147.32 53.95 3 52.53 -36.54 4 0 0 5 51.05 -37.14 6 -49.46 25.69 7 0 0 8 -49.8 25.64 9 -175.99 -14.69 BRANCH P(MW) WITHOUT DG Q (MW) P(MW) WITH DG Q(MW) 1 0 81.82 0 2.87 2 4.785 25.9 0.497 2.69 3 1.485 6.47 0.596 2.6 4 0 0 0 0 5 0.507 4.3 0.169 1.43 6 0.338 2.86 0.052 0.44 7 0 0 0 0 8 1.193 6 0.324 1.63 9 4.609 39.18 0.025 0 TOTAL 12.917 166.52 1.664 11.88
  • 7. NOVATEUR PUBLICATIONS INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY [IJIERT] ISSN: 2394-3696 VOLUME 2, ISSUE 4, APR.-2015 7 | P a g e From the results it can be observed that using distributed generators the total power loss has been reduced. The active power is reduced from 8.543 to 1.664 i.e., 80.52 % losses reduction and the reactive power is reduced from 166.52 to 11.88 ie 92.86 % reduction. BUS 1 BUS 2 BUS 3 BUS 4 BUS 5 BUS 6 BUS 7 BUS 8 BUS 9 POWER LOSSES 1 1 1 0 0 0 0 0 0 4.95470158 1 1 0 1 0 0 0 0 0 3.907972 1 1 0 0 1 0 0 0 0 2.770643 1 1 0 0 0 1 0 0 0 4.921616 1 1 0 0 0 0 1 0 0 5.30912 1 1 0 0 0 0 0 1 0 7.021909 1 1 0 0 0 0 0 0 1 3.046834 1 0 1 1 0 0 0 0 0 4.422235 1 0 1 0 1 0 0 0 0 4.134531 1 0 1 0 0 1 0 0 0 8.543124 1 0 1 0 0 0 1 0 0 5.842195 1 0 1 0 0 0 0 1 0 5.400015 1 0 1 0 0 0 0 0 1 3.117107 1 0 0 1 1 0 0 0 0 7.213207 1 0 0 1 0 1 0 0 0 4.848058 1 0 0 1 0 0 1 0 0 3.906668 1 0 0 1 0 0 0 1 0 4.772461 1 0 0 1 0 0 0 0 1 7.299286 1 0 0 0 1 1 0 0 0 3.683721 1 0 0 0 1 0 1 0 0 2.363856 1 0 0 0 1 0 0 1 0 2.765858
  • 8. NOVATEUR PUBLICATIONS INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY [IJIERT] ISSN: 2394-3696 VOLUME 2, ISSUE 4, APR.-2015 8 | P a g e GENERATOR PRESENT = 1 NO GENERATOR = 0 The above table that with changing the position of 3 generator in a 9 bus system the power loss for different position of generator are different. Thus by selecting the best case ie with generator on bus 1,7,9 the total loss is greatly reduced. CONCLUSION This projet has presented a novel approach in determining suitable locations (nodes) in the system under investigation for the three DGs instalation and sizing for loss minimisation using efficient coupled GA and the load flow method. The proposed method has been tested on a 9 bus system. The results suggest that the active power losses are reduced from 8.543 to 1.664 i.e., 80.52 % losses reduction Genetic control parameters (i.e., pm, pc, population size and number of generation) play an important role in the performance of the GA and some permutations and combinations of these parameters need to be tested to get the best performance. The proposed convergence criteria can provide acceptable accuracy in overall results. Using this approach and genetic algorithm all of power system problem can be solved. We can find out the Generator Maintenance scheduling with transmission constraints can be worked out using this approach. 1 0 0 0 1 0 0 0 1 3.49245 1 0 0 0 0 1 1 0 0 5.561506 1 0 0 0 0 1 0 1 0 5.152932 1 0 0 0 0 1 0 0 1 3.001599 1 0 0 0 0 0 1 1 0 4.638628 1 0 0 0 0 0 1 0 1 1.664186 1 0 0 0 0 0 0 1 1 2.982716
  • 9. NOVATEUR PUBLICATIONS INTERNATIONAL JOURNAL OF INNOVATIONS IN ENGINEERING RESEARCH AND TECHNOLOGY [IJIERT] ISSN: 2394-3696 VOLUME 2, ISSUE 4, APR.-2015 9 | P a g e REFERENCES 1. Mardeneh, M,Gharenpetin, G.B;”Sitting and sizing of D.G units using Genetic Algorithm and optimal power flow based technique. 2. G.PHarrison, A.Piccplo ”Exploring the trade offs between incentives for distributed generation Developer and DNO’’s. IEEE Trans. Power system. 3. J. Chipperfield and P. J. Fleming1 , The MATLAB Genetic Algorithm Toolbox. 4. Das, D., Kothari, D.P. and Kalam, A. (1995) ‘Simple and efficient method for load flow solution of radial distribution networks’, Electrical Power & Energy Systems, Vol. 17, No. 5. 5. Nara, K., Shiose, A., Kitagawa, M. and Ishihara, T. (1992) ‘Implementation of genetic algorithm for distribution systems loss minimum reconfiguration’, IEEE Transactions on Power Systems, August, Vol. 7, No. 3.