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A mixed-strategy based gravitational search algorithm for parameter identification of hydraulic turbine governing system

机译:基于混合策略的重力搜索算法在水轮机调节系统参数辨识中的应用

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A Mixed-Strategy based Gravitational Search Algorithm (MS-GSA) is proposed in this paper, in which three improvement strategies are mixed and integrated in the standard GSA to enhance the optimization ability. The first improvement strategy is introducing elite agent's guidance into movement function to accelerate convergence speed. The second one is designing an adaptive gravitational constant function to keep a balance between the exploration and exploitation in the searching process. And the third improvement strategy is the mutation strategy based on the Cauchy and Gaussian mutations for overcoming the shortages of premature. The MS-GSA has been verified by comparing with 7 popular meta-heuristics algorithms on 23 typical basic benchmark functions and 7 CEC2005 composite benchmark functions. The results on these benchmark functions show that the MS-GSA has achieved significantly better performance than other algorithms. The effectiveness and significance of the results have been verified by Wilcoxon's test. Finally, the MS-GSA is employed to solve the parameter identification problem of Hydraulic turbine governing system (HTGS). It is shown that the MS-GSA is able to identify the parameters of HTGS effectively with higher accuracy compared with existing methods. (C) 2016 Elsevier B.V. All rights reserved.
机译:提出了一种基于混合策略的引力搜索算法(MS-GSA),其中将三种改进策略混合并集成到标准GSA中以提高优化能力。第一个改进策略是将精英特工的指导引入运动功能以加快收敛速度​​。第二个是设计自适应引力常数函数,以在搜索过程中保持勘探与开采之间的平衡。第三个改进策略是基于柯西和高斯突变的突变策略,以克服过早的不足。通过在23种典型的基本基准功能和7种CEC2005复合基准功能上与7种流行的元启发式算法进行比较,验证了MS-GSA。这些基准功能的结果表明,MS-GSA的性能明显优于其他算法。 Wilcoxon检验证明了结果的有效性和意义。最后,采用MS-GSA解决了水轮机调节系统(HTGS)的参数辨识问题。结果表明,与现有方法相比,MS-GSA能够有效,准确地识别HTGS的参数。 (C)2016 Elsevier B.V.保留所有权利。

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