Optimal probabilistic location of DGs using Monte Carlo simulation based different bio-inspired algorithms

Stochastic nature of load demand has a great impact on the performance of electrical power system. As a result, planning of electrical power system considering load uncertainties became inevitable. This paper presents Monte Carlo simulation based different bio-inspired algorithms, grey wolf optimiza...

Full description

Bibliographic Details
Main Authors: Mahmoud G Hemeida, Salem Alkhalaf, Tomonobu Senjyu, Abdalla Ibrahim, Mahrous Ahmed, Ayman M. Bahaa-Eldin
Format: Article
Language:English
Published: Elsevier 2021-09-01
Series:Ain Shams Engineering Journal
Subjects:
GWO
Online Access:http://www.sciencedirect.com/science/article/pii/S2090447921000940
id doaj-a318514a377d4791bfb788ccee77249a
record_format Article
spelling doaj-a318514a377d4791bfb788ccee77249a2021-09-17T04:35:30ZengElsevierAin Shams Engineering Journal2090-44792021-09-0112327352762Optimal probabilistic location of DGs using Monte Carlo simulation based different bio-inspired algorithmsMahmoud G Hemeida0Salem Alkhalaf1Tomonobu Senjyu2Abdalla Ibrahim3Mahrous Ahmed4Ayman M. Bahaa-Eldin5Electrical Engineering Department, Minia Institute of Engineering, New Minia, Egypt; Corresponding author at: Mahmoud G Hemeida Minia High Institute of Engineering, New AlMinia, Minia, EgyptDepartment of Computer, College of Science and Arts in Ar-Rass, Qassim University, Ar Rass, Saudi ArabiaDepartment of Electrical and Electronics Engineering, Faculty of Engineering, University of The Ryukyus, 1 Senbaru, Nishihara-cho, Nakagami, Okinawa 903-0213, JapanElectrical Engineering Department, Faculty of Engineering, Aswan University, 81542 Aswan, EgyptIEEE Senior Member, Department of Electrical Engineering, College of Engineering, Taif University, P.O. Box 11099, Taif 21944, Saudi ArabiaMisr International University, Cairo, EgyptStochastic nature of load demand has a great impact on the performance of electrical power system. As a result, planning of electrical power system considering load uncertainties became inevitable. This paper presents Monte Carlo simulation based different bio-inspired algorithms, grey wolf optimization (GWO), manta ray foraging optimization (MRFO), satin bower bird optimization (SBO) and whale optimization (WOA) to optimize locations of three DG units under load uncertainties considering 500 scenarios. Each scenario includes 50 iterations which means that for each run we have 25,000 iterations and 500 characteristics for different load value. Two objectives are achieved. Firstly, statistically finding the optimal probabilistic location of three DG units under load uncertainties in IEEE 33-bus and IEEE 69-bus radial distribution system based on Monte Carlo simulation integrated with different bio-inspired algorithms. Secondly, comparing between the performances of four different bio-inspired algorithms. Three objective functions are considered, minimizing active power loss, minimizing voltage deviation and maximizing voltage stability index. The active and reactive power demand are normally distributed using normal distribution function. The optimal probabilistic location is investigated considering two cases under load uncertainties, optimizing location of three DG units generally and optimizing location of one DG unit assuming two optimum locations for the other two units extracted from case I. The obtained results (after placing DG units) are compared to the base case (DG units are not connected) and compared to each other according to the optimization technique. The results show that, SBO algorithm superiors other algorithms almost in all cases. Comes next GWO which provide good results generally. However, the good performance obtained by MRFO, it consumes twice the time of other algorithms. WOA however fast convergence, it provides results worse than other algorithms. The system is applied to the well-known IEEE 33-bus and IEEE 69-bus radial distribution system.http://www.sciencedirect.com/science/article/pii/S2090447921000940Optimal allocationMonte Carlo simulationBio-inspired algorithmDistributed generatorsGWOMRFO
collection DOAJ
language English
format Article
sources DOAJ
author Mahmoud G Hemeida
Salem Alkhalaf
Tomonobu Senjyu
Abdalla Ibrahim
Mahrous Ahmed
Ayman M. Bahaa-Eldin
spellingShingle Mahmoud G Hemeida
Salem Alkhalaf
Tomonobu Senjyu
Abdalla Ibrahim
Mahrous Ahmed
Ayman M. Bahaa-Eldin
Optimal probabilistic location of DGs using Monte Carlo simulation based different bio-inspired algorithms
Ain Shams Engineering Journal
Optimal allocation
Monte Carlo simulation
Bio-inspired algorithm
Distributed generators
GWO
MRFO
author_facet Mahmoud G Hemeida
Salem Alkhalaf
Tomonobu Senjyu
Abdalla Ibrahim
Mahrous Ahmed
Ayman M. Bahaa-Eldin
author_sort Mahmoud G Hemeida
title Optimal probabilistic location of DGs using Monte Carlo simulation based different bio-inspired algorithms
title_short Optimal probabilistic location of DGs using Monte Carlo simulation based different bio-inspired algorithms
title_full Optimal probabilistic location of DGs using Monte Carlo simulation based different bio-inspired algorithms
title_fullStr Optimal probabilistic location of DGs using Monte Carlo simulation based different bio-inspired algorithms
title_full_unstemmed Optimal probabilistic location of DGs using Monte Carlo simulation based different bio-inspired algorithms
title_sort optimal probabilistic location of dgs using monte carlo simulation based different bio-inspired algorithms
publisher Elsevier
series Ain Shams Engineering Journal
issn 2090-4479
publishDate 2021-09-01
description Stochastic nature of load demand has a great impact on the performance of electrical power system. As a result, planning of electrical power system considering load uncertainties became inevitable. This paper presents Monte Carlo simulation based different bio-inspired algorithms, grey wolf optimization (GWO), manta ray foraging optimization (MRFO), satin bower bird optimization (SBO) and whale optimization (WOA) to optimize locations of three DG units under load uncertainties considering 500 scenarios. Each scenario includes 50 iterations which means that for each run we have 25,000 iterations and 500 characteristics for different load value. Two objectives are achieved. Firstly, statistically finding the optimal probabilistic location of three DG units under load uncertainties in IEEE 33-bus and IEEE 69-bus radial distribution system based on Monte Carlo simulation integrated with different bio-inspired algorithms. Secondly, comparing between the performances of four different bio-inspired algorithms. Three objective functions are considered, minimizing active power loss, minimizing voltage deviation and maximizing voltage stability index. The active and reactive power demand are normally distributed using normal distribution function. The optimal probabilistic location is investigated considering two cases under load uncertainties, optimizing location of three DG units generally and optimizing location of one DG unit assuming two optimum locations for the other two units extracted from case I. The obtained results (after placing DG units) are compared to the base case (DG units are not connected) and compared to each other according to the optimization technique. The results show that, SBO algorithm superiors other algorithms almost in all cases. Comes next GWO which provide good results generally. However, the good performance obtained by MRFO, it consumes twice the time of other algorithms. WOA however fast convergence, it provides results worse than other algorithms. The system is applied to the well-known IEEE 33-bus and IEEE 69-bus radial distribution system.
topic Optimal allocation
Monte Carlo simulation
Bio-inspired algorithm
Distributed generators
GWO
MRFO
url http://www.sciencedirect.com/science/article/pii/S2090447921000940
work_keys_str_mv AT mahmoudghemeida optimalprobabilisticlocationofdgsusingmontecarlosimulationbaseddifferentbioinspiredalgorithms
AT salemalkhalaf optimalprobabilisticlocationofdgsusingmontecarlosimulationbaseddifferentbioinspiredalgorithms
AT tomonobusenjyu optimalprobabilisticlocationofdgsusingmontecarlosimulationbaseddifferentbioinspiredalgorithms
AT abdallaibrahim optimalprobabilisticlocationofdgsusingmontecarlosimulationbaseddifferentbioinspiredalgorithms
AT mahrousahmed optimalprobabilisticlocationofdgsusingmontecarlosimulationbaseddifferentbioinspiredalgorithms
AT aymanmbahaaeldin optimalprobabilisticlocationofdgsusingmontecarlosimulationbaseddifferentbioinspiredalgorithms
_version_ 1717377752772902912