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Solving Multiobjective Optimization Problems Using an Artificial Immune System

机译:使用人工免疫系统解决多目标优化问题

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摘要

In this paper, we propose an algorithm based on the clonal selection principle to solve multiobjective optimization problems (either constrained or unconstrained). The proposed approach uses Pareto dominance and feasibility to identify solutions that deserve to be cloned, and uses two types of mutation: uniform mutation is applied to the clones produced and non-uniform mutation is applied to the "not so good" antibodies (which are represented by binary strings that encode the decision variables of the problem to be solved). We also use a secondary (or external) population that stores the nondominated solutions found along the search process. Such secondary population constitutes the elitist mechanism of our approach and it allows it to move towards the true Pareto front of a problem over time. Our approach is compared with three other algorithms that are representative of the state-of-the-art in evolutionary multiobjective optimization. For our comparative study, three metrics are adopted and graphical comparisons with respect to the true Pareto front of each problem are also included. Results indicate that the proposed approach is a viable alternative to solve multiobjective optimization problems.
机译:在本文中,我们提出了一种基于克隆选择原理的算法来解决多目标优化问题(约束或无约束)。拟议的方法利用Pareto优势和可行性来确定值得克隆的解决方案,并使用两种类型的突变:对产生的克隆应用均匀突变,对“不太好的”抗体应用非均匀突变(由编码要解决问题的决策变量的二进制字符串表示)。我们还使用次要(或外部)总体来存储在搜索过程中找到的非支配解决方案。这样的次要人口构成了我们方法的精英机制,随着时间的流逝,它使它朝着真正的帕累托前沿发展。我们的方法与其他三种算法进行了比较,这些算法代表了进化多目标优化的最新技术。在我们的比较研究中,采用了三个指标,并且还包括了每个问题的真实帕累托前沿的图形比较。结果表明,该方法是解决多目标优化问题的可行选择。

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