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An improved artificial neural network based on human-behaviour particle swarm optimization and cellular automata

机译:一种基于人行为粒子群优化和蜂窝自动机的改进的人工神经网络

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摘要

Back-Propagation (BP) neural network, as a powerful and adaptive tool, has led to a tremendous surge in various expert systems. However, BP model has some deficiencies such as getting trapped in local minima and premature convergence. These weaknesses can be partly compensated by combining the ANN with Evolutionary Algorithms (EAs), i.e., at the same time, EAs also sufferred from their own characteristics, such as premature convergence in Particle Swarm Optimization (PSO). To gain a better trained weights in EAs-ANN, this paper proposes an improved ANN model based on HPSO and Cellular Automata (CA), which is called ANN-HPSO-CA. Firstly, to balance global exploration and local exploitation better and prevent particles from trapping in local optima, CA strategy is involved in HPSO algorithm, which is denoted as HPSO-CA. Then, the proposed HPSO-CA algorithm is combined with ANN to prevent ANN from trapping in local minima. Finally, to validate the performance of ANN-HPSO-CA, 15 benchmark complex and real-world datasets are used to compare with some well-known EA-based ANN models. Experimental results confirm that the proposed ANN-HPSO-CA algorithm outperforms the other predictive EA-based ANN models. The numerical comparison results will provide useful information and references for any future study for choosing proper EAs as ANN training algorithms. In addition, ANN-HPSO-CA algorithm provides a good theoretical basis for an expert system with good convergence and robustness. (C) 2019 Elsevier Ltd. All rights reserved.
机译:背部传播(BP)神经网络作为强大和自适应工具,导致各种专家系统的巨大浪涌。然而,BP模型具有一些缺陷,例如被困在局部最小值和早产的收敛中。通过将ANN与进化算法(EAS)组合,即,同时,可以部分地补偿这些弱点,即,同时,EAS也受到了自身的特性,例如粒子群优化(PSO)的早产会聚。为了在EAS-ANN中获得更好的训练权重,本文提出了一种基于HPSO和蜂窝自动机(CA)的改进的ANN模型,称为ANN-HPSO-CA。首先,为了更好地平衡全球探索和本地利用,并防止粒子捕获本地Optima,CA策略涉及HPSO算法,其表示为HPSO-CA。然后,所提出的HPSO-CA算法与ANN组合以防止ANN陷入局部最小值。最后,为了验证Ann-HPSO-CA的性能,使用15个基准复合体和现实世界数据集来与一些以某种着名的基于EA的ANN模型进行比较。实验结果证实,所提出的Ann-HPSO-CA算法优于其他基于EA的ANN模型。数值比较结果将为未来的研究提供有用的信息和参考,以便选择适当的EAS作为ANN训练算法。此外,Ann-HPSO-CA算法为具有良好收敛和稳健性的专家系统提供了良好的理论依据。 (c)2019 Elsevier Ltd.保留所有权利。

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