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Study of simulated annealing based algorithms for multiobjective optimization of a constrained problem

机译:基于模拟退火的约束问题多目标优化算法研究

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In this paper, four simulated annealing based multiobjective algorithms―SMOSA, UMOSA, PSA and WMOSA have been used to solve multiobjective optimization of constrained problems with varying degree of complexity along with a new PDMOSA algorithm. PDMOSA algorithm uses a strategy of Pareto dominant based fitness in the acceptance criteria of simulated annealing and is improved. In all algorithms, the current solution explores its neighborhoods in a way similar to that of classical simulated annealing. The performance and computational cost for all algorithms have been studied. All algorithms are found to be quite robust with algorithmic parameters and are capable of generating a large number of well diversified Pareto-optimal solutions. The quality and diversification of Pareto-optimal solutions generated by all algorithms are found to be problem specific. The computational cost is least by WMOSA and is followed by PDMOSA. The algorithms are simple to formulate and require reasonable computational time. Hence, the simultaneous use of all algorithms is suggested to obtain a wider spectrum of efficient solutions.
机译:本文采用了四种基于模拟退火的多目标算法——SMOSA,UMOSA,PSA和WMOSA来解决复杂度不同的约束问题的多目标优化,同时提出了一种新的PDMOSA算法。 PDMOSA算法在模拟退火的接受标准中使用了基于Pareto优势的适应性策略,并对其进行了改进。在所有算法中,当前解决方案都以类似于经典模拟退火的方式探索其邻域。已经研究了所有算法的性能和计算成本。发现所有算法在算法参数上都非常健壮,并且能够生成大量非常多样化的帕累托最优解。所有算法生成的帕累托最优解的质量和多样性被发现是特定于问题的。 WMOSA的计算成本最低,其次是PDMOSA。这些算法公式简单,需要合理的计算时间。因此,建议同时使用所有算法以获得更广泛的有效解决方案。

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