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MO-TRIBES, an adaptive multiobjective particle swarm optimization algorithm

机译:MO-TRIBES,一种自适应多目标粒子群优化算法

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This paper presents MO-TRIBES, an adaptive multiobjective Particle Swarm Optimization (PSO) algorithm. Metaheuristics have the drawback of being very dependent on their parameter values. Then, performances are strongly related to the fitting of parameters. Usually, such tuning is a lengthy, time consuming and delicate process. The aim of this paper is to present and to evaluate MO-TRIBES, which is an adaptive algorithm, designed for multiobjective optimization, allowing to avoid the parameter fitting step. A global description of TRIBES and a comparison with other algorithms are provided. Using an adaptive algorithm means that adaptation rules must be defined. Swarm's structure and strategies of displacement of the particles are modified during the process according to the tribes behaviors. The choice of the final solutions is made using the Pareto dominance criterion. Rules based on crowding distance have been incorporated in order to maintain diversity along the Pareto Front. Preliminary simulations are provided and compared with the best known algorithms. These results show that MO-TRIBES is a promising alternative to tackle multiobjective problems without the constraint of parameter fitting.
机译:本文提出了MO-TRIBES,一种自适应多目标粒子群优化(PSO)算法。元启发法的缺点是非常依赖于它们的参数值。然后,性能与参数的拟合紧密相关。通常,这种调整是一个漫长,费时且微妙的过程。本文的目的是提出和评估MO-TRIBES,这是一种自适应算法,专为多目标优化而设计,可避免参数拟合步骤。提供了TRIBES的全局描述以及与其他算法的比较。使用自适应算法意味着必须定义自适应规则。在此过程中,根据部落的行为对Swarm的结构和粒子的迁移策略进行了修改。最终解决方案的选择是使用帕累托优势准则进行的。为了保持沿帕累托前线的多样性,已纳入了基于拥挤距离的规则。提供了初步的模拟,并与最知名的算法进行了比较。这些结果表明,MO-TRIBES是无参数拟合约束的多目标问题解决方案。

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