On the Design of a Matrix Adaptation Evolution Strategy for Optimization on General Quadratic Manifolds

Patrick Spettel, H. Beyer
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引用次数: 1

Abstract

An evolution strategy design is presented that allows for an evolution on general quadratic manifolds. That is, it covers elliptic, parabolic, and hyperbolic equality constraints. The peculiarity of the presented algorithm design is that it is an interior point method. It evaluates the objective function only for feasible search parameter vectors and it evolves itself on the nonlinear constraint manifold. Such a characteristic is particularly important in situations where it is not possible to evaluate infeasible parameter vectors, e.g., in simulation-based optimization. This is achieved by a closed form transformation of an individual’s parameter vector, which is in contrast to iterative repair mechanisms. This constraint handling approach is incorporated into a matrix adaptation evolution strategy making such algorithms capable of handling problems containing the constraints considered. Results of different experiments are presented. A test problem consisting of a spherical objective function and a single hyperbolic/parabolic equality constraint is used. It is designed to be scalable in the dimension. As a further benchmark, the Thomson problem is used. Both problems are used to compare the performance of the developed algorithm with other optimization methods supporting constraints. The experiments show the effectiveness of the proposed algorithm on the considered problems. Additionally, an idea for handling multiple constraints is discussed. And for a better understanding of the dynamical behavior of the proposed algorithm, single run dynamics are presented.
一般二次流形优化的矩阵自适应进化策略设计
提出了一种允许对一般二次流形进行演化的演化策略设计。也就是说,它涵盖了椭圆型、抛物线型和双曲型等式约束。该算法设计的特点是采用内点法。它只对可行的搜索参数向量评估目标函数,并在非线性约束流形上自我演化。这种特性在不可能评估不可行参数向量的情况下尤其重要,例如在基于模拟的优化中。这是通过个体参数向量的封闭形式转换实现的,这与迭代修复机制相反。该约束处理方法被纳入矩阵自适应进化策略,使得该算法能够处理包含所考虑约束的问题。给出了不同实验的结果。采用了一个由球面目标函数和单一双曲/抛物等式约束组成的测试问题。它被设计为在维度上可伸缩。作为进一步的基准,使用了汤姆逊问题。用这两个问题来比较所开发算法与其他支持约束的优化方法的性能。实验证明了该算法对所考虑问题的有效性。此外,还讨论了处理多个约束的思想。为了更好地理解所提算法的动力学行为,给出了单次运行动力学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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