An opposition theory enabled moth flame optimizer for strategic bidding in uniform spot energy market

Power generating companies have an opportunity to maximize their profit in electricity market by selling the energy at competitive prices under incomplete information of other rivals behavior. In a day-ahead energy market, Generating Company (GENCOs) sells the energy at optimal bid prices. To calcul...

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Main Authors: Pooja Jain, Akash Saxena
Format: Article
Language:English
Published: Elsevier 2019-08-01
Series:Engineering Science and Technology, an International Journal
Online Access:http://www.sciencedirect.com/science/article/pii/S2215098618312618
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spelling doaj-b5b73a49c9d6486a8aa748c4cc2784a22020-11-25T00:08:54ZengElsevierEngineering Science and Technology, an International Journal2215-09862019-08-0122410471067An opposition theory enabled moth flame optimizer for strategic bidding in uniform spot energy marketPooja Jain0Akash Saxena1Swami Keshvanand Institute of Technology, Management & Gramothan, Jaipur 302017, IndiaCorresponding author.; Swami Keshvanand Institute of Technology, Management & Gramothan, Jaipur 302017, IndiaPower generating companies have an opportunity to maximize their profit in electricity market by selling the energy at competitive prices under incomplete information of other rivals behavior. In a day-ahead energy market, Generating Company (GENCOs) sells the energy at optimal bid prices. To calculate the bid prices optimally and for maximizing the profit of generating company, this paper presents a solution for strategic bidding problem which is based on opposition theory enabled moth flame optimizer (OB-MFO).In this work, a new opposition theory enabled moth flame optimizer is proposed which have the additional concept of oppositional feature. First OB-MFO algorithm is tested on 22 benchmark and Congress on Evolutionary Computation (CEC-2017) functions, then it is applied to bidding problem of standard IEEE-14 bus (Test Case-1) and 7 generator power system (Test Case-2). The strategic bidding scheme for a generating company for single and multi hour trading duration in a day-ahead market is formulated. The major findings of the proposed approach are market clearing price (MCP), load dispatch and bid prices of five different blocks of different capacities. The meaningful comparison of the bidding results of other optimization techniques are presented. In addition to that price volatility analysis and exercise of market power analysis are also presented. The results confirm the effectiveness of proposed technique. Keywords: Moth flame optimizer, Strategic bidding, Market clearing price, Price volatility, Exercise of market powerhttp://www.sciencedirect.com/science/article/pii/S2215098618312618
collection DOAJ
language English
format Article
sources DOAJ
author Pooja Jain
Akash Saxena
spellingShingle Pooja Jain
Akash Saxena
An opposition theory enabled moth flame optimizer for strategic bidding in uniform spot energy market
Engineering Science and Technology, an International Journal
author_facet Pooja Jain
Akash Saxena
author_sort Pooja Jain
title An opposition theory enabled moth flame optimizer for strategic bidding in uniform spot energy market
title_short An opposition theory enabled moth flame optimizer for strategic bidding in uniform spot energy market
title_full An opposition theory enabled moth flame optimizer for strategic bidding in uniform spot energy market
title_fullStr An opposition theory enabled moth flame optimizer for strategic bidding in uniform spot energy market
title_full_unstemmed An opposition theory enabled moth flame optimizer for strategic bidding in uniform spot energy market
title_sort opposition theory enabled moth flame optimizer for strategic bidding in uniform spot energy market
publisher Elsevier
series Engineering Science and Technology, an International Journal
issn 2215-0986
publishDate 2019-08-01
description Power generating companies have an opportunity to maximize their profit in electricity market by selling the energy at competitive prices under incomplete information of other rivals behavior. In a day-ahead energy market, Generating Company (GENCOs) sells the energy at optimal bid prices. To calculate the bid prices optimally and for maximizing the profit of generating company, this paper presents a solution for strategic bidding problem which is based on opposition theory enabled moth flame optimizer (OB-MFO).In this work, a new opposition theory enabled moth flame optimizer is proposed which have the additional concept of oppositional feature. First OB-MFO algorithm is tested on 22 benchmark and Congress on Evolutionary Computation (CEC-2017) functions, then it is applied to bidding problem of standard IEEE-14 bus (Test Case-1) and 7 generator power system (Test Case-2). The strategic bidding scheme for a generating company for single and multi hour trading duration in a day-ahead market is formulated. The major findings of the proposed approach are market clearing price (MCP), load dispatch and bid prices of five different blocks of different capacities. The meaningful comparison of the bidding results of other optimization techniques are presented. In addition to that price volatility analysis and exercise of market power analysis are also presented. The results confirm the effectiveness of proposed technique. Keywords: Moth flame optimizer, Strategic bidding, Market clearing price, Price volatility, Exercise of market power
url http://www.sciencedirect.com/science/article/pii/S2215098618312618
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