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Cultural algorithm based long-term optimization scheduling of cascaded Hydro-Plant

机译:基于文化算法的梯级水厂长期优化调度

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A novel approach for long-term optimization scheduling of cascaded hydro-plant reservoirs using cultural algorithm (CA) is presented in this paper. By using of evolutionary programming(EP) model, the situation knowledge and the normative knowledge in belief space are constituted by refining and reasoning the experiences of excellent population which transmitted by the function of accept(). Which in turn to guide population evolution. A detailed mathematical model of a long-term scheduling mathematical model based on annual maximum electric power output of cascaded Hydro-Plant was established. The simulation result for three hydro-plants demonstrates that CA has more powerful global, local searching ability and more fast convergence velocity than Genetic algorithm (GA). The scheduling result can increase 2.32 hundred million kWh compared to GA. The CA can offer a new optimization method and thought for large-scale cascaded hydro-Plant scheduling.
机译:提出了一种利用文化算法(CA)对梯级水电站水库进行长期优化调度的新方法。运用进化规划(EP)模型,通过对accept()函数所传递的优秀人群的经验进行细化和推理,从而构成了信念空间中的情境知识和规范知识。进而引导人口进化。建立了基于级联水电厂年最大发电量的长期调度数学模型的详细数学模型。对三个水电厂的仿真结果表明,与遗传算法相比,CA具有更强大的全局,局部搜索能力和更快的收敛速度。与GA相比,调度结果可以增加2.32亿千瓦时。 CA可以为大规模级联水电厂调度提供新的优化方法和思路。

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