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Improving convergence of evolutionary multi-objective optimization with local search : a concurrent-hybrid algorithm

机译:局部搜索提高进化多目标优化的收敛性:并发混合算法

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摘要

A local search method is often introduced in an evolutionary optimization algorithm, to enhance its speed and accuracy of convergence to optimal solutions. In multi-objective optimization problems, the implementation of local search is a non-trivial task, as determining a goal for local search in presence of multiple conflicting objectives becomes a difficult task. In this paper, we borrow a multiple criteria decision making concept of employing a reference point based approach of minimizing an achievement scalarizing function and integrate it as a search operator with a concurrent approach in an evolutionary multi-objective algorithm. Simulation results of the new concurrent-hybrid algorithm on several two to four-objective problems compared to a serial approach, clearly show the importance of local search in aiding a computationally faster and accurate convergence to the Pareto optimal front.
机译:进化优化算法中经常引入局部搜索方法,以提高其收敛到最优解的速度和准确性。在多目标优化问题中,本地搜索的实现是一项艰巨的任务,因为在存在多个冲突目标的情况下确定本地搜索的目标变得很困难。在本文中,我们借用了一种多准则决策概念,该概念采用了基于参考点的最小化成就标量函数的方法,并将其作为搜索算子与并发方法集成在进化多目标算法中。与串行方法相比,新的并发混合算法在几个2-4个目标问题上的仿真结果清楚地表明了局部搜索在帮助计算上更快,更准确地收敛到帕累托最优前沿方面的重要性。

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