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A Novel Approach to Improve the Performance of Evolutionary Methods for Nonlinear Constrained Optimization

机译:一种改进非线性约束优化进化方法性能的新方法

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摘要

Evolutionary methods are well-known techniques for solving nonlinear constrained optimization problems. Due to the exploration power of evolution-based optimizers, population usually converges to a region around global optimum after several generations. Although this convergence can be efficiently used to reduce search space, in most of the existing optimization methods, search is still continued over original space and considerable time is wasted for searching ineffective regions. This paper proposes a simple and general approach based on search space reduction to improve the exploitation power of the existing evolutionary methods without adding any significant computational complexity. After a number of generations when enough exploration is performed, search space is reduced to a small subspace around the best individual, and then search is continued over this reduced space. If the space reduction parameters (red_gen and red_factor) are adjusted properly, reduced space will include global optimum. The proposed scheme can help the existing evolutionary methods to find better near-optimal solutions in a shorter time. To demonstrate the power of the new approach, it is applied to a set of benchmark constrained optimization problems and the results are compared with a previous work in the literature.
机译:进化方法是解决非线性约束优化问题的众所周知的技术。由于基于进化的优化器的探索能力,种群通常会在几代后收敛到全球最优值附近的区域。尽管可以有效地利用这种收敛来减少搜索空间,但是在大多数现有的优化方法中,搜索仍然在原始空间上继续进行,并且浪费了大量时间来搜索无效区域。本文提出了一种基于搜索空间缩减的简单通用方法,以在不增加任何计算复杂性的情况下提高现有进化方法的开发能力。经过几代人的探索之后,将搜索空间缩小为围绕最佳个体的较小子空间,然后在该缩小的空间上继续搜索。如果适当调整了空间缩减参数(red_gen和red_factor),则缩减空间将包括全局最优值。所提出的方案可以帮助现有的进化方法在较短的时间内找到更好的近似最优解。为了证明这种新方法的强大功能,将其应用于一组基准约束优化问题,并将结果与​​文献中的先前工作进行了比较。

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