Hybrid Mesh Adaptive Direct Search and Genetic Algorithms for solving fuzzy non-linear optimization problems

P. Vasant
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引用次数: 3

Abstract

In this paper, computational and simulation results are presented for the performance of the fitness function, decision variables and CPU time of the proposed hybridization method of Mesh Adaptive Direct Search (MADS) and Genetic Algorithm (GA). MADS is a class of direct search algorithms for nonlinear optimization. The MADS algorithm is a modification of the Pattern Search (PS) algorithm. The algorithms differ in how the set of points forming the mesh is computed. The PS algorithm uses fixed direction vectors, whereas the MADS algorithm uses random selection of vectors to define the mesh. A key advantage of MADS over PS is that local exploration of the space of variables is not restricted to a finite number of directions (poll directions). This is the primary drawback of PS algorithms, and therefore the main motivation in using MADS to solve the industrial production planning problem is to overcome this restriction. A thorough investigation on hybrid MADS and GA is performed for the quality of the best fitness function, decision variables and computational CPU time.
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求解模糊非线性优化问题的混合网格自适应直接搜索和遗传算法
本文给出了网格自适应直接搜索(MADS)和遗传算法(GA)杂交方法的适应度函数性能、决策变量性能和CPU时间性能的计算和仿真结果。MADS是一类用于非线性优化的直接搜索算法。MADS算法是对模式搜索(PS)算法的改进。这些算法的不同之处在于如何计算形成网格的点集。PS算法使用固定的方向矢量,而MADS算法使用随机选择的矢量来定义网格。与PS相比,MADS的一个关键优势是对变量空间的局部探索不限于有限数量的方向(轮询方向)。这是PS算法的主要缺点,因此使用MADS来解决工业生产计划问题的主要动机是克服这一限制。对混合MADS和遗传算法的最佳适应度函数、决策变量和计算CPU时间的质量进行了深入的研究。
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