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Training feedforward neural networks using hybrid particle swarm optimization and gravitational search algorithm

机译:使用混合粒子群优化和引力搜索算法训练前馈神经网络

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摘要

The Gravitational Search Algorithm (GSA) is a novel heuristic optimization method based on the law of gravity and mass interactions. It has been proven that this algorithm has good ability to search for the global optimum, but it suffers from slow searching speed in the last iterations. This work proposes a hybrid of Particle Swarm Optimization (PSO) and GSA to resolve the aforementioned problem. In this paper, GSA and PSOGSA are employed as new training methods for Feedforward Neural Networks (FNNs) in order to investigate the efficiencies of these algorithms in reducing the problems of trapping in local minima and the slow convergence rate of current evolutionary learning algorithms. The results are compared with a standard PSO-based learning algorithm for FNNs. The resulting accuracy of FNNs trained with PSO, GSA, and PSOGSA is also investigated. The experimental results show that PSOGSA outperforms both PSO and GSA for training FNNs in terms of converging speed and avoiding local minima. It is also proven that an FNN trained with PSOGSA has better accuracy than one trained with GSA.
机译:重力搜索算法(GSA)是一种基于重力和质量相互作用定律的新颖启发式优化方法。已经证明该算法具有良好的全局最优搜索能力,但在最后一次迭代中搜索速度较慢。这项工作提出了粒子群优化(PSO)和GSA的混合体,以解决上述问题。在本文中,GSA和PSOGSA被用作前馈神经网络(FNN)的新训练方法,以研究这些算法在减少局部极小值捕获问题和当前进化学习算法的缓慢收敛速度方面的效率。将结果与FNN的基于标准PSO的学习算法进行比较。还研究了使用PSO,GSA和PSOGSA训练的FNN的准确性。实验结果表明,在训练FNN的收敛速度和避免局部最小值方面,PSOGSA优于PSO和GSA。还证明了用PSOGSA训练的FNN比使用GSA训练的FNN具有更好的准确性。

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