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Analysis of fitness noise in particle swarm optimization: From robotic learning to benchmark functions

机译:粒子群优化中的适应噪声分析:从机器人学习到基准功能

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Population-based learning techniques have been proven to be effective in dealing with noise and are thus promising tools for the optimization of robotic controllers, which have inherently noisy performance evaluations. This article discusses how the results and guidelines derived from tests on benchmark functions can be extended to the fitness distributions encountered in robotic learning. We show that the large-amplitude noise found in robotic evaluations is disruptive to the initial phases of the learning process of PSO. Under these conditions, neither increasing the population size nor increasing the number of iterations are efficient strategies to improve the performance of the learning. We also show that PSO is more sensitive to good spurious evaluations of bad solutions than bad evaluations of good solutions, i.e., there is a non-symmetric effect of noise on the performance of the learning.
机译:基于人群的学习技术已被证明可以有效地处理噪声,因此是用于优化机器人控制器的有前途的工具,这些机器人控制器固有地具有嘈杂的性能评估。本文讨论了如何将基于基准功能测试得出的结果和指南扩展到机器人学习中遇到的适应度分布。我们表明,在机器人评估中发现的大振幅噪声对PSO学习过程的初始阶段具有破坏性。在这种情况下,既不增加总体规模也不增加迭代次数都不是提高学习性能的有效策略。我们还表明,与对良好解决方案的不良评估相比,PSO对不良解决方案的良好杂散评估更敏感,即噪声对学习性能的影响是非对称的。

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