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Theoretical and Practical Convergence of a Self-Adaptive Penalty Algorithm for Constrained Global Optimization

机译:自适应惩罚算法的理论与实践趋同算法限制全局优化

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摘要

This paper proposes a self-adaptive penalty function and presents a penalty-based algorithm for solving nonsmooth and nonconvex constrained optimization problems. We prove that the general constrained optimization problem is equivalent to a bound constrained problem in the sense that they have the same global solutions. The global minimizer of the penalty function subject to a set of bound constraints may be obtained by a population-based meta-heuristic. Further, a hybrid self-adaptive penalty firefly algorithm, with a local intensification search, is designed, and its convergence analysis is established. The numerical experiments and a comparison with other penalty-based approaches show the effectiveness of the new self-adaptive penalty algorithm in solving constrained global optimization problems.
机译:本文提出了一种自适应惩罚功能,并提出了一种基于惩罚的算法,用于求解非变形和非凸起的优化问题。 我们证明了一般约束优化问题相当于它们具有相同的全局解决方案的意义上的受限约束问题。 受到一组限制的惩罚功能的全局最小化器可以通过基于群体的元启发式获得。 此外,设计了一种具有本地强化搜索的混合自适应罚款萤火虫算法,并建立了其收敛性分析。 与其他基于惩罚方法的数值实验和比较显示了新的自适应惩罚算法在解决受约束的全局优化问题方面的有效性。

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