Interactive particle swarm optimization

J. Madár, J. Abonyi, F. Szeifert
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引用次数: 40

Abstract

It is often desirable to simultaneously handle several objectives and constraints in practical optimization problems. In some cases, these objectives and constraints are non-commensurable and they are not explicitly/mathematically available. For this kind of problems, interactive optimization may be a good approach. Interactive optimization means that a human user evaluates the potential solutions in qualitative way. In recent years evolutionary computation (EC) was applied for interactive optimization, which approach has became known as interactive evolutionary computation (IEC). The aim of this paper is to propose a new interactive optimization method based on particle swarm optimization (PSO). PSO is a relatively new population based optimization approach, whose concept originates from the simulation of simplified social systems. The paper shows that interactive PSO cannot be based on the same concept as IEC because the information sharing mechanism of PSO significantly differs from EC. So this paper proposes an approach which considers the unique attributes of PSO. The proposed algorithm has been implemented in MATLAB (IPSO toolbox) and applied to a case-study of temperature profile design of a batch beer fermenter. The results show that IPSO is an efficient and comfortable interactive optimization algorithm. The developed IPSO toolbox (for Mat-lab) can be downloaded from the Web site of the authors: http://www.fmt.vein.hu/softcomp/ipso.
交互粒子群优化
在实际的优化问题中,通常需要同时处理多个目标和约束。在某些情况下,这些目标和约束是不可比较的,它们不是明确的/数学上可用的。对于这类问题,交互式优化可能是一种很好的方法。交互优化是指人类用户以定性的方式评估潜在的解决方案。近年来,进化计算(EC)被用于交互式优化,这种方法被称为交互式进化计算(IEC)。本文的目的是提出一种基于粒子群算法的交互式优化方法。粒子群优化是一种较新的基于群体的优化方法,其概念来源于对简化社会系统的模拟。由于PSO的信息共享机制与EC有很大的不同,交互式PSO不能基于与IEC相同的概念。为此,本文提出了一种考虑粒子群独特属性的算法。该算法已在MATLAB (IPSO工具箱)中实现,并应用于间歇式啤酒发酵罐温度剖面设计的实例研究。结果表明,IPSO是一种高效、舒适的交互式优化算法。开发的IPSO工具箱(用于Mat-lab)可以从作者的网站http://www.fmt.vein.hu/softcomp/ipso下载。
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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