Nonlinear Optimal Control Using Sequential Niching Differential Evolution and Parallel Workers

IF 0.9 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Y. Matanga, Yanxia Sun, Zenghui Wang
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引用次数: 0

Abstract

—Optimal control is a high-quality and challenging control approach that requires very explorative metaheuristic optimisation techniques to find the most efficient control profile for the performance index function, especially in the case of highly nonlinear dynamic processes. Considering the success of differential evolution in nonlinear optimal control problems, the current research proposes the use of sequential niching differential evolution to boost further the solution accuracy of the solver owing to its globally convergent feature. Also, because sequential niching bans previously discovered solutions, it can propose several competing optimal control profiles relevant for control practitioners. Simulation experiments of the proposed algorithm have been first conducted on IEEE CEC2017/2019 datasets and n-dimensional classical test sets, yielding improved solution accuracy and robust performances on optimal control case studies
基于顺序小生境差分进化与并行工人的非线性最优控制
-最优控制是一种高质量和具有挑战性的控制方法,需要非常探索性的元启发式优化技术来找到性能指标函数的最有效的控制轮廓,特别是在高度非线性动态过程的情况下。考虑到差分进化在非线性最优控制问题中的成功,目前的研究提出利用序列小生境差分进化的全局收敛特性进一步提高求解器的求解精度。此外,由于顺序小生境禁止先前发现的解决方案,它可以为控制从业者提出几个相互竞争的最优控制概况。该算法首先在IEEE CEC2017/2019数据集和n维经典测试集上进行了仿真实验,在最优控制案例研究中获得了更高的解精度和鲁棒性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Journal of Advances in Information Technology
Journal of Advances in Information Technology Computer Science-Information Systems
CiteScore
4.20
自引率
20.00%
发文量
46
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