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Controlling of local search methods' parameters in memetic algorithms using the principles of simulated annealing

机译:使用模拟退火原理控制麦克算法中的本地搜索方法的参数

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In simulated annealing the probability of transition to a state with worse value of objective function is guided by a cooling schedule. The more iterations are spent, the more strict the acceptance probability function becomes. In the end of the optimization process, the probability of transfer to worse state approaches zero. In this paper the principles of cooling schedules are used to control the parameters of local search methods in the memetic algorithm. The memetic algorithm in this paper is a combination of genetic algorithm, Hooke-Jeeves method, Nelder-Mead simplex method and Dai-Yuan version of nonlinear conjugate gradient method. The controlled parameter of Hooke-Jeeves method is the radius r, for Nelder Mead method the size of edge of the simplex and the length of step for nonlinear conjugate gradient method.
机译:在模拟退火的情况下,通过冷却时间表引导到具有更差的目标函数值的状态的过渡概率。花费更多的迭代,验收概率函数越严格。在优化过程结束时,转移到更差状态的概率接近零。在本文中,冷却时间表的原理用于控制迭代算法中的本地搜索方法的参数。本文中的膜算法是遗传算法,胡克 - 丝门方法,Nelder-Mead Simplex方法和非线性缀合物梯度法的替代版本的组合。 Hooke-Jeeves方法的受控参数是半径R,对于Nelder Mead方法,Simplex的边缘尺寸和非线性缀合物梯度法的步骤的长度。

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