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A First-Order Difference Model-Based Evolutionary Dynamic Multiobjective Optimization

机译:基于一阶差异模型的进化动态多目标优化

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This paper presents a novel algorithm to solve dynamic multiobjective optimization problems. In dynamic multiobjective optimization problems, multiple objective functions and/or constraints may change over time, which requires a multiobjective optimization algorithm to track the moving Pareto-optimal solutions and/or Pareto-optimal front. A first-order difference model is designed to predict the new locations of a certain number of Pareto-optimal solutions based on the previous locations when an environmental change is detected. In addition, a part of old Pareto-optimal solutions are retained to the new population. The prediction model is incorporated into a multiobjective evolutionary algorithm based on decomposition to solve the dynamic multiobjective optimization problems. In such a way, the changed POS or POF can be tracked more quickly. The proposed algorithm is tested on a number of typical benchmark problems with different dynamic characteristics and difficulties. Experimental results show that the proposed algorithm performs competitively when addressing dynamic multiobjective optimization problems in comparisons with the other state-of-the-art algorithms.
机译:本文提出了一种解决动态多目标优化问题的新算法。在动态多目标优化问题中,多个目标函数和/或约束可能随时间变化,这需要多目标优化算法跟踪移动的静态最佳解决方案和/或帕累托 - 最佳前部。一阶差异模型旨在基于检测到环境变化时基于先前的位置预测一定数量的帕累托最佳解决方案的新位置。此外,旧帕累托最佳解决方案的一部分被保留给新人群。基于分解的基于分解的多目标进化算法结合到求解动态多目标优化问题的预测模型。以这样的方式,可以更快地跟踪改变的POS或POF。在不同动态特征和困难的许多典型基准问题上测试了所提出的算法。实验结果表明,当与其他最先进的算法进行比较时,该算法在解决动态多目标优化问题时竞争性地执行。

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