多目标优化的混合局部搜索算子

Alan Díaz-Manríquez, G. T. Pulido, R. Becerra
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引用次数: 2

摘要

近年来,发展混合方法解决多目标优化问题已成为进化计算界的一个重要趋势。尽管数学规划技术与多目标进化算法的混合方法不是很流行,但当这两个领域成功地结合在一起时,结果是令人印象深刻的。然而,这种杂交的主要目标依赖于需要多次执行数学方法以获得帕累托前沿的样本,从而提高适应度函数评估的数量。然而,使用替代模型已经成为减少函数评估数量的一种经常性方法。本文提出了一种混合算子,将原多目标问题转化为一组改进的目标规划模型。此外,在混合算子中使用局部代理模型代替真实函数。采用直接搜索法对具有代理对象的目标规划模型进行优化。此外,本文还提出了一种使用混合算子的独立算法。利用专业文献中常用的几个测试问题和性能指标对新算法进行了验证。结果表明,该算子产生了一种有效的算法,其结果与两种知名的多目标进化算法的结果相比具有竞争力。
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A hybrid local search operator for multiobjective optimization
In recent years, the development of hybrid approaches to solve multiobjective optimization problems has become an important trend in the evolutionary computation community. Despite hybrid approaches of mathematical programming techniques with multiobjective evolutionary algorithms are not very popular, when both fields are successfully coupled, results are impressive. However, the main objective of this sort of hybridization relays on the needing of several executions of the mathematical approach in order to obtain a sample of the Pareto front, raising with this, the number of fitness function evaluations. However, the use of surrogate models has become a recurrent approach to diminish the number of function evaluations. In this work, a hybrid operator that transforms the original multiobjective problem into a set of modified goal programming models is proposed. Furthermore, a local surrogate model is used instead of the real function in the hybrid operator. The goal programming model with the surrogate is optimized by a direct search method. Additionally, a standalone algorithm that uses the hybrid operator is here proposed. The new algorithm is validated using several test problems and performance measures commonly adopted in the specialized literature. Results indicate that the proposed operator gives rise to an effective algorithm, which produces results that are competitive with respect to those obtained by two well-known multiobjective evolutionary algorithms.
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