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Evolutionary Tristate PSO for Strategic Bidding of Pumped-Storage Hydroelectric Plant

机译:进化三态PSO用于抽水蓄能电站的战略招标

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This paper develops bidding strategy for operating multiunit pumped-storage power plant in a day-ahead electricity market. Based on forecasted hourly market clearing price, the objective is to self-schedule and maximize the expected profit of the pumped-storage plant, considering both spinning and nonspinning reserve bids and meeting the technical operating constraints. Evolutionary tristate particle swarm optimization (ETPSO) based approach is proposed to solve the problem, combining basic particle swarm optimization (PSO) with tristate coding technique and genetics-based mutation operation. The discrete characteristic of a pumped-storage plant is modeled using tristate coding technique and mutation operation is used for faster convergence. The proposed model is adaptive for nonlinear 3-D relationship between the power produced, the energy stored, and the head of the associated reservoir. The proposed approach is applied for a practical utility consisting of four units. Simulation results for different operating cycles of the storage plant indicate the attractive properties of ETPSO approach with highly optimal solution and robust convergence behavior.
机译:本文针对日间电力市场中的多机组抽水蓄能电站的运行制定了投标策略。基于预测的每小时市场清算价格,目标是考虑到旋转和非旋转储备投标并满足技术操作约束条件,对抽水蓄能电站进行自我调度并最大程度地提高其预期利润。提出了基于进化三态粒子群优化(ETPSO)的方法,将基本粒子群优化(PSO)与三态编码技术和基于遗传的变异操作相结合。使用三态编码技术对抽水蓄能电站的离散特性进行建模,并使用突变操作来加快收敛速度​​。所提出的模型适用于所产生的功率,存储的能量和相关储层的扬程之间的非线性3-D关系。所提出的方法适用于由四个单元组成的实用程序。存储工厂不同运行周期的仿真结果表明,ETPSO方法具有极好的吸引力,具有高度优化的解决方案和强大的收敛性。

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