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A modified mutative scale chaotic optimization algorithm for economic load dispatch

机译:经济负荷分配的改进变尺度混沌优化算法

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A modified mutative scale chaotic optimization (MMSCO) algorithm for economic load dispatch among power generation units is proposed in this paper. The MSCO does not require derivative information and uses stochastic random search instead of a gradient search. In MSCO, mutative scale chaotic sequences are changed into generation load variables through load maps for calculation of the cost function. But these load variables do not always correspond with load constraints, searching becomes random and sightless. In MMSCO, a novel load map is built after the chaotic search to ensure the load variables fit the feasible region. MMSCO is validated for a test system consisting of 13 thermal units whose incremental fuel cost function takes into account the valve-point loading effects. MMSCO is simple in concept, few in parameters, and easy in implementation. The proposed modified method outperforms other chaotic search algorithms in solving load dispatch problems with the valve-point effect.
机译:提出了一种改进的变尺度混沌优化(MMSCO)算法,用于机组间的经济负荷分配。 MSCO不需要导数信息,而是使用随机随机搜索而不是梯度搜索。在MSCO中,通过负载图将可变尺度混沌序列更改为发电负载变量,以计算成本函数。但是这些负载变量并不总是与负载约束相对应,搜索变得随机且看不见。在MMSCO中,经过混沌搜索后会建立一个新颖的载荷图,以确保载荷变量适合可行区域。 MMSCO已针对由13个热力单元组成的测试系统进行了验证,该热力单元的增量燃料成本函数考虑了阀点负载的影响。 MMSCO概念简单,参数少,易于实施。提出的改进方法在解决具有阀点效应的负荷分配问题方面优于其他混沌搜索算法。

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