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一种自适应框架,用于调整自然启发式优化算法中的坐标系。

An Adaptive Framework to Tune the Coordinate Systems in Nature-Inspired Optimization Algorithms.

出版信息

IEEE Trans Cybern. 2019 Apr;49(4):1403-1416. doi: 10.1109/TCYB.2018.2802912. Epub 2018 Mar 12.

Abstract

The performance of many nature-inspired optimization algorithms (NIOAs) depends strongly on their implemented coordinate system. However, the commonly used coordinate system is fixed and not well suited for different function landscapes, NIOAs thus might not search efficiently. To overcome this shortcoming, in this paper we propose a framework, named ACoS, to adaptively tune the coordinate systems in NIOAs. In ACoS, an Eigen coordinate system is established by making use of the cumulative population distribution information, which can be obtained based on a covariance matrix adaptation strategy and an additional archiving mechanism. Since the population distribution information can reflect the features of the function landscape to some extent, NIOAs in the Eigen coordinate system have the capability to identify the modality of the function landscape. In addition, the Eigen coordinate system is coupled with the original coordinate system, and they are selected according to a probability vector. The probability vector aims to determine the selection ratio of each coordinate system for each individual, and is adaptively updated based on the collected information from the offspring. ACoS has been applied to two of the most popular paradigms of NIOAs, i.e., particle swarm optimization and differential evolution, for solving 30 test functions with 30D and 50D at the 2014 IEEE Congress on Evolutionary Computation. The experimental studies demonstrate its effectiveness.

摘要

许多受自然启发的优化算法(NIOAs)的性能强烈依赖于它们所采用的坐标系。然而,常用的坐标系是固定的,不太适合不同的函数景观,因此 NIOAs 可能无法有效地搜索。为了克服这一缺点,本文提出了一个框架,名为 ACoS,用于自适应调整 NIOAs 中的坐标系。在 ACoS 中,通过利用基于协方差矩阵自适应策略和附加归档机制的累积种群分布信息来建立特征坐标系。由于种群分布信息在一定程度上可以反映函数景观的特征,因此在特征坐标系中的 NIOAs 具有识别函数景观模态的能力。此外,特征坐标系与原始坐标系相耦合,并根据概率向量进行选择。概率向量旨在确定每个个体每个坐标系的选择比例,并根据从后代收集的信息进行自适应更新。ACoS 已经应用于两种最流行的 NIOAs 范例,即粒子群优化和差分进化,用于解决 2014 年 IEEE 进化计算大会上的 30 个 30D 和 50D 测试函数。实验研究证明了它的有效性。

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