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Multiobjective controller design by solving a multiobjective matrix inequality problem

机译:解决多目标矩阵不等式问题的多目标控制器设计

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摘要

In this study, linear matrix inequality (LMI) approaches and multiobjective (MO) evolutionary algorithms are integrated to design controllers. An MO matrix inequality problem (MOMIP) is first defined. A hybrid MO differential evolution (HMODE) algorithm is then developed to solve the MOMIP. The hybrid algorithm combines deterministic and stochastic searching schemes. In the solving process, the deterministic part aims to exploit the structures of matrix inequalities, and the stochastic part is used to fully explore the decision variable space. Simulation results show that the HMODE algorithm can produce an approximated Pareto front (APF) and Pareto-efficient controllers that stabilise the associated controlled system. In contrast with single-objective designs using LMI approaches, the proposed MO methodology can clearly illustrate how the objectives involved affect each other, that is, a broad perspective on optimality is provided. This facilitates the selecting process for a representative design, and particularly the design that corresponds to a non-dominated vector lying in the knee region of the APF. In addition, controller gains can be readily modified to incorporate the preference or need of a system designer.
机译:在这项研究中,线性矩阵不等式(LMI)方法和多目标(MO)进化算法被集成到设计控制器中。首先定义一个MO矩阵不等式问题(MOMIP)。然后开发了混合MO差分进化(HMODE)算法来解决MOMIP。混合算法结合了确定性搜索和随机搜索方案。在求解过程中,确定性部分旨在利用矩阵不等式的结构,而随机性部分则用于充分探索决策变量空间。仿真结果表明,HMODE算法可以产生近似的Pareto前沿(APF)和Pareto有效控制器,以稳定相关的受控系统。与使用LMI方法的单目标设计相比,所提出的MO方法可以清楚地说明所涉及的目标如何相互影响,即提供了最佳性的广阔视野。这有利于代表性设计的选择过程,特别是对应于APF膝盖区域中非主导矢量的设计。另外,控制器增益可以很容易地修改以结合系统设计者的偏好或需要。

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