Recover Fractional Lévy Flight Bat Algorithm for Optimization in Artificial Neural Networks Model

S. Tiacharoen
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Abstract

The bat algorithm (BA) is a heuristic optimization method based on the loudness and the rate of ultrasonic bursts. It has been simulated bats use echolocation for foraging. It has been proven that this algorithm has a good ability to search for the global optimum, but it suffers from slow searching speed in the last iterations. This paper proposes a recover fractional Lévy flight bat algorithm (rFLFBA) to improve BA by adjusting the inertia weight of velocity update instead of fractional Lévy flight from fractional Lévy flight bat algorithm (FLFBA). rFLFBA is deployed as learning method for artificial neural networks (ANNs) to increase the efficiencies in avoiding the local minima problem and the slow convergence rate of bat algorithms. The results are compared with a Particle Swarm optimization and Gravitational Search Algorithm (PSOGSA), Grey Wolf optimizer (GWO), and FLFBA learning methods for ANNs. The resulting classification rate of ANNs trained with GWO, PSOGSA, and FLFBA is also examined. The simulation results show that rFLFBA better than GWO and PSOGSA for training ANNs in terms of convergence curve. It is also proven that an ANN trained with rFLFBA has better accuracy than one trained with FLFBA.
人工神经网络模型优化中的恢复分数阶lsamvy飞行蝙蝠算法
蝙蝠算法(bat algorithm, BA)是一种基于响度和超声爆破率的启发式优化方法。有人模拟蝙蝠利用回声定位觅食。实践证明,该算法具有良好的全局最优搜索能力,但在最后的迭代中存在搜索速度慢的问题。本文提出了一种恢复分数阶lcv飞行蝙蝠算法(rFLFBA),通过调整速度更新的惯性权值来代替分数阶lcv飞行蝙蝠算法(FLFBA)来改善BA。将rFLFBA作为人工神经网络的学习方法,提高了算法的效率,避免了局部极小问题和蝙蝠算法收敛速度慢的问题。结果与粒子群优化和引力搜索算法(PSOGSA)、灰狼优化器(GWO)和FLFBA学习方法进行了比较。我们还检验了用GWO、PSOGSA和FLFBA训练的ann的分类率。仿真结果表明,rFLFBA在收敛曲线上优于GWO和PSOGSA。实验还证明了用rFLFBA训练的人工神经网络比用FLFBA训练的人工神经网络具有更好的准确率。
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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