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Application of Differential Evolution to Dynamic Economic Dispatch Problem with Transmission Losses under Various Bidding Strategies in Electricity Markets
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 Title & Authors
Application of Differential Evolution to Dynamic Economic Dispatch Problem with Transmission Losses under Various Bidding Strategies in Electricity Markets
Rampriya, B.; Mahadevan, K.; Kannan, S.;
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 Abstract
This paper presents the application of Differential Evolution (DE) algorithm to obtain a solution for Bid Based Dynamic Economic Dispatch (BBDED) problem including the transmission losses and to maximize the social profit in a deregulated power system. The IEEE-30 bus test system with six generators, two customers and two trading periods are considered under various bidding strategies in a day-ahead electricity market. By matching the bids received from supplying and distributing entities, the Independent System Operator (ISO) maximize the social profit, (with the choices available). The simulation results of DE are compared with the results of Particle swarm optimization (PSO). The results demonstrate the potential of DE algorithm and show its effectiveness to solve BBDED.
 Keywords
Bid Based Dynamic Economic dispatch (BBDED);Differential Evolution (DE);Generation Companies (GENCOs);Independent System Operator (ISO);
 Language
English
 Cited by
1.
Power Scheduling of Distributed Generators for Economic and Stable Operation of a Microgrid, IEEE Transactions on Smart Grid, 2013, 4, 1, 398  crossref(new windwow)
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