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Artificial neural networks design based on modified adaptive particle swarm optimization

机译:基于改进的自适应粒子群算法的人工神经网络设计

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This paper presents a weights training method of the artificial neural networks (ANN), which combines modified adaptive particle swarm optimization (MAPSO) with Back-propagation (BP) to apply to function approximation. BP is an approximate steepest descent algorithm, hence some inherent problems are frequently encountered in the use of this algorithm, e.g., very slow convergence speed in training, easily to get stuck in a local minimum, etc. This study uses the particle swarm optimization (PSO) method to avoid this problem. From the demonstrated examples, compared with PSO-ANN, APSO-ANN, we have obtained the better performance, better approximation and less convergence generations from the proposed MAPSO-ANN.
机译:本文提出了一种人工神经网络(ANN)的权重训练方法,该方法将改进的自适应粒子群优化(MAPSO)与反向传播(BP)相结合,以应用于函数逼近。 BP是一种近似最速下降算法,因此在使用该算法时经常会遇到一些固有问题,例如,训练中收敛速度非常慢,容易陷入局部最小值等。 PSO)方法来避免此问题。从演示的示例中,与PSO-ANN,APSO-ANN相比,我们从拟议的MAPSO-ANN中获得了更好的性能,更好的逼近度和更少的收敛次数。

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