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Adaptive Update Range of Solutions in MOEA/D for Multi and Many-Objective Optimization

机译:MOEA / D中用于多目标和多目标优化的解决方案的自适应更新范围

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MOEA/D, a representative multi-objective evolutionary algorithm, decomposes a multi-objective optimization problem into a number of single objective optimization problems and tries to approximate Pareto front by simultaneously optimizing each of these single objective problems. MOEA/D has several options to calculate a scalar value from multiple objective function values of a solution. In many-objective optimization problems including four or more objective functions, MOEA/D using the weighted sum scalarizing function achieves high search performance. However, the weighted sum has a serious problem that the entire concave Pareto front cannot be approximated. To overcome this problem of the weighted sum based MOEA/D, in this work we propose a method to adaptively determine update ranges of solutions in the framework of MOEA/D. The experimental results show that the weighted sum based MOEA/D using the proposed solution update method can approximate the entire concave Pareto front and improve the search performance.
机译:MOEA / D是一种有代表性的多目标进化算法,它将多目标优化问题分解为许多单目标优化问题,并通过同时优化这些单目标问题中的每一个来尝试近似Pareto前沿。 MOEA / D具有多个选项,可以根据解决方案的多个目标函数值来计算标量值。在包含四个或更多目标函数的多目标优化问题中,使用加权和标量函数的MOEA / D可实现较高的搜索性能。但是,加权和具有严重的问题,即不能近似整个凹面的帕累托前沿。为了克服基于加权和的MOEA / D的问题,在这项工作中,我们提出了一种在MOEA / D框架中自适应确定解决方案更新范围的方法。实验结果表明,采用提出的解更新方法的基于加权和的MOEA / D可以逼近整个凹面Pareto前沿,提高了搜索性能。

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