Risk-constrained optimal bidding strategy for a generation company using self-organizing hierarchical particle swarm optimization

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Abstract

This article proposes optimal bidding strategies for a generation company (GenCo) considering risk of profit variation by self-organizing hierarchical particle swarm optimization with time-varying acceleration coefficients (SPSO-TVAC). Based on a trade-off technique, the expected profit maximization and risk minimization are achieved. Nonconvex operating cost functions of thermal generation units and minimum up/down time constraints are cooperated to provide the optimal bid prices in a day-ahead uniform price spot market. The rivals bidding behavior is estimated by Monte Carlo simulation. Test results indicate that SPSO-TVAC is superior to inertia weight approach particle swarm optimization (IWAPSO) and genetic algorithm (GA) in searching the optimal bidding strategy solutions. Copyright © 2012 Taylor & Francis Group, LLC.

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Boonchuay, C., & Ongsakul, W. (2012). Risk-constrained optimal bidding strategy for a generation company using self-organizing hierarchical particle swarm optimization. Applied Artificial Intelligence, 26(3), 246–260. https://doi.org/10.1080/08839514.2012.646162

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