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A meta optimisation analysis of particle swarm optimisation velocity update equations for watershed management learning

机译:流域管理学习粒子群优化速度更新方程的元优化分析

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Particle swarm optimisation (PSO) is a general purpose optimisation algorithm used to address hard optimisation problems. The algorithm operates as a result of a number of particles converging on what is hoped to be the best solution. How the particles move through the problem space is therefore critical to the success of the algorithm. This study utilises meta optimisation to compare a number of velocity update equations to determine which features of each are of benefit to the algorithm. A number of hybrid velocity update equations are proposed based on other high performing velocity update equations. This research also presents a novel application of PSO to train a neural network function approximator to address the watershed management problem. It is found that the standard PSO with a linearly changing inertia, the proposed hybrid Attractive Repulsive PSO with avoidance of worst locations (AR PSOAWL) and Adaptive Velocity PSO (AV PSO) provide the best performance overall. The results presented in this paper also reveal that commonly used PSO parameters do not provide the best performance. Increasing and negative inertia values were found to perform better. (C) 2017 Elsevier B.V. All rights reserved.
机译:粒子群优化(PSO)是一种用于解决硬优化问题的通用优化算法。该算法由于许多粒子会聚在希望成为最佳解决方案的粒子的结果。因此,粒子如何移动问题空间对于算法的成功至关重要。该研究利用元优化来比较许多速度更新方程,以确定每个速度更新方程,以确定每个的特征是算法的益处。基于其他高执行速度更新方程提出了许多混合速度更新方程。该研究还提出了PSO的新颖应用,以训练神经网络功能近似剂以解决流域管理问题。发现标准PSO具有线性变化的惯性,所提出的混合型吸引力的PSO具有避免最差位置(AR PSOAWL)和自适应速度PSO(AV PSO)提供了最佳性能。本文提出的结果还揭示了常用的PSO参数不提供最佳性能。发现增加和负惯性值更好。 (c)2017 Elsevier B.v.保留所有权利。

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