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Robust oriented particle swarm optimization algorithm applied to inverse problems

机译:面向逆问题的鲁棒定向粒子群优化算法

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This paper proposes a particle swarm optimization algorithm to find the robust solution of an inverse problem in which uncertainties or perturbations are inevitable. To reduce the heavy computational burden for expected fitness evaluations, a strategy to assign expected fitness only to the best solution searched by a particle in every iterative cycle is proposed, a repository is introduced to memory the searched history and then employed to determine the expected fitness value of a specific solution. The simplex method is used to find the worst case solution of a potential candidate to consider hard constraint functions. The numerical results serve to demonstrate the pros and cons of the proposed algorithm and the necessity to devote efforts in the development of robust oriented optimal algorithms.
机译:本文提出了一种粒子群优化算法,以寻找一个不确定性或扰动不可避免的反问题的鲁棒解决方案。为了减轻预期适应性评估的繁重计算负担,提出了一种仅将预期适应性分配给每个迭代循环中粒子搜索的最佳解决方案的策略,引入了一个存储库来存储搜索的历史记录,然后用于确定预期适应性特定解决方案的价值。单纯形法用于查找考虑硬约束函数的潜在候选方案的最坏情况。数值结果证明了所提算法的优缺点,以及为发展鲁棒定向最优算法而付出的努力的必要性。

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