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Solving dynamic economic emission dispatch problem considering wind power by multi-objective differential evolution with ensemble of selection method

机译:选择方法结合多目标差分进化求解考虑风电的动态经济排放调度问题

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摘要

Clean energy resources such as wind power are playing an important role in power generation recently. In this paper, a modified version of multi-objective differential evolution (MODE) is used to tackle the extended dynamic economic emission dispatch (DEED) problem by incorporating wind power plant into the system. DEED is a nonlinear and highly constrained multi-objective optimization problem and the predicted load is varying with time. Fuel costs and pollution emission are the two objectives to be optimized and the valve point effect, spinning reserve, real power loss as well as the ramping rate are considered. To solve the model effectively, an ensemble of selection method is used in the MODE algorithm. The real-time output adjustment and penalty factor methods are used to deal with the complex constraints. The proposed method is firstly examined on several multi-objective benchmark problems and the DEED problem without considering the wind power to test its effectiveness of solving multi-objective optimization problems. Secondly, the model considering wind power is solved and the results show that the proposed algorithm is effective in handling such problems.
机译:清洁能源,例如风能,最近在发电中起着重要作用。在本文中,多目标差分进化(MODE)的修改版本用于通过将风电厂纳入系统来解决扩展的动态经济排放调度(DEED)问题。 DEED是一个非线性且高度受限的多目标优化问题,预计负荷随时间变化。燃料成本和污染排放是要优化的两个目标,并且考虑了阀点效应,旋转储备,实际功率损耗以及斜率。为了有效地求解模型,在MODE算法中使用了一组选择方法。实时输出调整和惩罚因子方法用于处理复杂的约束。首先在不考虑风能的情况下,针对几个多目标基准问题和DEED问题对提出的方法进行了检验,以检验其解决多目标优化问题的有效性。其次,求解了考虑风能的模型,结果表明所提算法可以有效地解决此类问题。

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