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A New Multiobjective Evolutionary Algorithm Based on Decomposition of the Objective Space for Multiobjective Optimization

机译:一种基于目标空间分解的多目标进化新算法

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摘要

In order to well maintain the diversity of obtained solutions, a new multiobjective evolutionary algorithm based on decomposition of the objective space formultiobjective optimization problems (MOPs) is designed. In order to achieve the goal, the objective space of aMOP is decomposed into a set of subobjective spaces by a set of direction vectors. In the evolutionary process, each subobjective space has a solution, even if it is not a Pareto optimal solution. In such a way, the diversity of obtained solutions can be maintained, which is critical for solving some MOPs. In addition, if a solution is dominated by other solutions, the solution can generate more new solutions than those solutions, which makes the solution of each subobjective space converge to the optimal solutions as far as possible. Experimental studies have been conducted to compare this proposed algorithm with classic MOEA/D and NSGAII. Simulation results on six multiobjective benchmark functions show that the proposed algorithm is able to obtain better diversity and more evenly distributed Pareto front than the other two algorithms.
机译:为了很好地保持所获得解的多样性,设计了一种基于目标空间分解的多目标优化问题的新多目标进化算法。为了实现该目标,通过一组方向向量将aMOP的目标空间分解为一组子目标空间。在进化过程中,每个子目标空间都有一个解,即使它不是帕累托最优解也是如此。这样,可以维持所获得解决方案的多样性,这对于解决某些MOP至关重要。另外,如果一个解决方案由其他解决方案主导,则该解决方案可以生成比那些解决方案更多的新解决方案,这使每个子目标空间的解决方案尽可能地收敛到最优解。已经进行了实验研究,以将该提议的算法与经典的MOEA / D和NSGAII进行比较。对六个多目标基准函数的仿真结果表明,与其他两个算法相比,该算法能够获得更好的多样性和更均匀的帕累托前沿分布。

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