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A Population Adaptive Based Immune Algorithm for Solving Multi-objective Optimization Problems

机译:基于自适应基于自适应的免疫算法,用于解决多目标优化问题

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The primary objective of this paper is to put forward a general framework under which clear definitions of immune operators and their roles are provided. To this aim, a novel Population Adaptive Based Immune Algorithm (PAIA) inspired by Clonal Selection and Immune Network theories for solving multi-objective optimization problems (MOP) is proposed. The algorithm is shown to be insensitive to the initial population size; the population and clone size are adaptive with respect to the search process and the problem at hand. It is argued that the algorithm can largely reduce the number of evaluation times and is more consistent with the vertebrate immune system than the previously proposed algorithms. Preliminary results suggest that the algorithm is a valuable alternative to already established evolutionary based optimization algorithms, such as NSGA II, SPEA and VIS.
机译:本文的主要目标是提出了一般框架,可在其中提供免疫运营商的清晰定义及其作用。为此目的,提出了一种新的群体自适应基于自适应的基于自适应的免疫算法(PAIA),其灵感来自克隆选择和免疫网络理论,用于解决多目标优化问题(MOP)。该算法显示对初始群体大小不敏感;人口和克隆尺寸是关于搜索过程和手头的问题的自适应。认为该算法可以大大降低评估时间的数量,并且与脊椎动物免疫系统比先前提出的算法更符合。初步结果表明该算法是已经建立了进化基于优化算法的有价值的替代品,例如NSGA II,SPEA和VI。

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