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A Hybrid Method for Optimal Scheduling of Short-Term Electric Power Generation of Cascaded Hydroelectric Plants Based on Particle Swarm Optimization and Chance-Constrained Programming

机译:基于粒子群优化和机会约束规划的梯级水电站短期发电最优调度混合方法

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A novel strategy for optimal scheduling of short-term electric power generation of cascaded hydroelectric plants based on particle swarm optimization (PSO) and chance-constrained programming is presented to maximize the expected profit at a given risk level in this paper. Based on chance-constrained programming, in which some specified probability are given to simulate some uncertainties, such as water inflows, electricity prices, unit status, and so on. This paper proposes a model for short-term scheduling optimization of cascaded hydro plants, which includes uncertainties, spatial-temporal constraints among cascaded reservoirs, etc. A hybrid particle swarm optimization (HPSO), which is embedded with evolutionary algorithms, is presented to use for the solution of global optimization problems. Catastrophe theory, which is concerned with natural evolutionary or survival-of-the-fittest, is utilized as an indication of the premature converge of PSO, and the positions of particles are further adjusted in the search space according to chaos optimization. In this way, each particle competes and cooperates with its neighbors. The proof shows that HPSO is guaranteed to converge to the global optimization solution with probability one. The model presented is solved by a combination method of HPSO and Monte Carlo simulation. Finally, a numerical example is served for demonstrating the feasibility of the method developed.
机译:本文提出了一种基于粒子群优化(PSO)和机会约束规划的梯级水电站短期发电最优调度新策略,以在给定风险水平下最大化期望收益。基于机会受限的程序,其中给出了一些指定的概率来模拟一些不确定性,例如进水量,电价,单位状态等。本文提出了一种梯级水电站的短期调度优化模型,该模型包括不确定性,梯级水库之间的时空约束等。提出了一种嵌入进化算法的混合粒子群算法(HPSO)。解决全局优化问题。涉及自然进化或适者生存的突变理论被用作PSO早熟的指标,并且根据混沌优化进一步调整了搜索空间中粒子的位置。通过这种方式,每个粒子与其邻居竞争并合作。证明表明,HPSO保证以概率1收敛到全局优化解决方案。提出的模型通过HPSO和蒙特卡洛模拟的组合方法求解。最后,通过一个数值例子说明了该方法的可行性。

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