Accurate model reduction of large scale systems using adaptive multi-objective particle swarm optimization algorithm

A. Kazemi, Reza Behinfaraz, A. Ghiasi
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引用次数: 5

Abstract

Due to existence of many variables in large scale systems, design and implementation of controllers for such systems have been always important challenges. A common way to solve the problem is to obtain an equivalent reduced order model of the system in the first step and then, design a suitable controller. In this paper model reduction of large scale systems based on multi objective particle swarm optimization is presented. According to the required order of reduction, proper reduced system is obtained. For high precision in modeling, multi objective particle swarm optimization is used. In this algorithm, multi objects regarding to properties of system response are solved. It is shown that proposed approach is very useful tool for model reduction of large scale systems. Simulation examples prove this claim.
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基于自适应多目标粒子群优化算法的大规模系统精确模型约简
由于大型系统中存在许多变量,因此大型系统控制器的设计与实现一直是一个重要的挑战。解决这一问题的一种常用方法是首先获得系统的等效降阶模型,然后设计合适的控制器。提出了一种基于多目标粒子群优化的大型系统模型约简方法。根据所需的约简阶,得到合适的约简体系。为了提高建模精度,采用了多目标粒子群优化算法。该算法求解了涉及系统响应特性的多目标问题。结果表明,该方法是一个非常有用的工具,可以用于大系统的模型约简。仿真实例证明了这一说法。
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