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首页> 外文期刊>International Transactions on Electrical Energy Systems >A multi-objective hybrid evolutionary algorithm for dynamic economic emission load dispatch
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A multi-objective hybrid evolutionary algorithm for dynamic economic emission load dispatch

机译:动态经济排放负荷分配的多目标混合进化算法

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This paper presents a novel multi-objective evolutionary algorithm, namely chemical reaction optimization (CRO) algorithm for solving dynamic economic emission dispatch (DEED) problem of power systems. The DEED problem is a non-linear, non-convex, multi-dimensional, and highly constrained multi-objective optimization problem. It has no unique optimal solution with respect to all criteria because it involves multiple and often conflicting optimization criteria. In order to improve the convergence speed and quality of the solutions attained by CRO, it is combined with differential evolution to escape from local minima solutions. This hybrid differential evolution-based CRO (HCRO) methodology determines the feasible optimal solution of the non-linear DEED problem. To demonstrate the superiority of the proposed CRO and HCRO methods in solving non-convex, non-linear, and constrained DEED problem, the proposed frameworks are implemented on 10-unit and 30-unit test systems. It is found from the simulation results that HCRO exhibits significantly better performance in terms of solution quality and convergence speed for all the cases compared with CRO algorithm. Furthermore, the proposed HCRO algorithm is superior to most of the existing algorithms available in the literature. Copyright © 2015 John Wiley & Sons, Ltd.
机译:本文提出了一种新颖的多目标进化算法,即化学反应优化(CRO)算法,用于解决电力系统的动态经济排放调度(DEED)问题。 DEED问题是非线性,非凸,多维和高度约束的多目标优化问题。对于所有标准,它没有唯一的最佳解决方案,因为它涉及多个且经常相互冲突的优化标准。为了提高CRO所获得解决方案的收敛速度和质量,将其与差分进化相结合以摆脱局部极小值解决方案。这种基于混合差分演化的CRO(HCRO)方法确定了非线性DEED问题的可行最佳解决方案。为了证明所提出的CRO和HCRO方法在解决非凸,非线性和受约束的DEED问题方面的优越性,在10单元和30单元测试系统上实施了所提出的框架。从仿真结果发现,与CRO算法相比,在所有情况下HCRO在解决方案质量和收敛速度方面均表现出明显更好的性能。此外,提出的HCRO算法优于文献中现有的大多数现有算法。版权所有©2015 John Wiley&Sons,Ltd.

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