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Probabilistic optimization algorithms for real-coded problems and its application in Latin hypercube problem

机译:实际编码问题的概率优化算法及其在拉丁超立方体问题中的应用

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This paper proposes a novel optimization algorithm for read-coded problems called the Probabilistic Optimization Algorithm (POA). In the proposed algorithm, rather than a binary or integer, a probabilistic representation is used for the individuals. Each individual in the proposed algorithm is a probability density function and is capable of representing the entire search space simultaneously. In the search process, each solution performs as a local search and climbs the local optima, and at the same time, the interaction among the probabilistic individuals in the population offers a global search. The parameters of the proposed algorithm are studied in this paper and their effect on the search process is presented. A structured population is proposed for the algorithm and the effect of different structures is analyzed. The algorithm is used to solve Latin Hyper-cube problem and experimental studies suggest promising results. Different benchmark functions are also used to test the algorithm and results are presented. The analyses suggest that the improvement is more significant for large scale problems. (c) 2020 Elsevier Ltd. All rights reserved.
机译:本文提出了一种新颖的读取编码问题优化算法,称为概率优化算法(POA)。在所提出的算法中,而不是二进制或整数,概率表示用于个人。所提出的算法中的每个单独是概率密度函数,并且能够同时表示整个搜索空间。在搜索过程中,每个解决方案执行作为本地搜索并爬上本地Optima,同时,人口中的概率个人之间的交互提供全球搜索。本文研究了所提出的算法的参数,并提出了对搜索过程的影响。为该算法提出了结构化群体,分析了不同结构的效果。该算法用于解决拉丁超立方体问题和实验研究表明有前途的结果。不同的基准函数也用于测试算法和结果。分析表明,改善对于大规模问题更为重要。 (c)2020 elestvier有限公司保留所有权利。

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