Methods of enhancing the MOO CEM algorithm

ORiON Pub Date : 2022-01-01 DOI:10.5784/38-2-706
James Bekker
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Abstract

With the increasing need to solve problems faster and with fewer resources, great emphasisis placed on optimisation. Many real-world problems require addressing more than oneobjective that are in conflict, as well as taking into consideration a number of practical restrictionsor constraints. The multi-objective optimisation using the cross-entropy method (MOOCEM) algorithm is one of many algorithms that addresses the need to solve multi-objectiveproblems effectively, but it has a number of limitations. This paper explores methods ofenhancing the MOO CEM algorithm in order to improve the efficiency and increase the functionalityof the algorithm, allowing for it to be applied to additional classes of problems.Three possible methods of enhancement were identified: using the beta distribution to improvesampling, adding functionality to solve constrained problems and, lastly, implementinga non-dominated sorting algorithm to solve problems with more than two objectives. Thenew algorithms incorporating these enhancements were developed and tested on benchmarkproblems. Subsequently, the results were analysed using standard performance indicatorsand compared to results produced by the original MOO CEM algorithm. The findings of thisstudy indicate that using the beta distribution improves sampling and therefore algorithmefficiency. Methods of handling constraints and solving problems with an increased numberof objectives were implemented successfully. Based on these results, a final algorithmimplementing the enhancements is presented.
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改进MOO - CEM算法的方法
随着用更少的资源更快地解决问题的需求日益增加,优化成为重中之重。许多现实世界的问题需要解决多个相互冲突的目标,并考虑到许多实际的限制或约束。使用交叉熵法(MOOCEM)算法的多目标优化是有效解决多目标问题的众多算法之一,但它有许多局限性。本文探讨了增强MOO CEM算法的方法,以提高算法的效率和增加算法的功能,使其能够应用于其他类型的问题。确定了三种可能的增强方法:使用beta分布来改进采样,添加功能来解决约束问题,最后,实现非主导排序算法来解决具有两个以上目标的问题。结合这些增强的新算法被开发并在基准问题上进行了测试。随后,使用标准性能指标对结果进行分析,并与原始MOO CEM算法产生的结果进行比较。本研究的结果表明,使用beta分布改善了抽样,从而提高了算法效率。成功地实现了处理约束和解决目标数量增加的问题的方法。基于这些结果,提出了实现增强的最终算法。
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