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Dynamic Sub-population Genetic Algorithm Combined with Dynamic Penalty Function to Solve Constrained Optimization Problems

机译:结合动态罚函数的动态亚种群遗传算法求解约束优化问题

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This paper presents a new method of dynamic sub-population genetic algorithm combined with modified dynamic penalty function to solve constrained optimization problems. The new method ensures the final optimal solution yields all constraints through re-organizing all individuals of each generation into two sub-populations according to the feasibility of individuals. And the modified dynamic penalty function gradually increases the punishment to bad individuals with the development of the evolution. With the help of the penalty function and other improvements, the new algorithm prevents local convergence and iteration wandering fluctuations. Typical instances are used to evaluate the optimizing performance of this new method; and the result shows that it can deal with constrained optimization problems well.
机译:提出了一种结合改进的动态罚函数的动态子种群遗传算法,解决了约束优化问题。新方法通过根据个体的可行性将每一代的所有个体重新组织为两个子种群,从而确保最终的最佳解决方案能够产生所有约束。改进后的动态惩罚功能随着进化的发展逐渐增加了对不良个体的惩罚。借助于惩罚函数和其他改进,新算法可防止局部收敛和迭代漂移波动。典型实例用于评估该新方法的优化性能。结果表明,该方法可以很好地解决约束优化问题。

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