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Adaptive system identification using multilayer neural networks andGaussian potential function networks

机译:使用多层神经网络和戈斯族势函数网络的自适应系统识别

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This paper deals with the characteristics of multilayer neural networks and radial basis function networks, and provides their hybridization by considering their advantages and disadvantages. The hybrid networks show their effectiveness in system identification as well as alleviate problems of error backpropagation algorithm such as local minima, slow speed, and size of structure by adopting other networks effectively. Potential performance improvement is demonstrated by computer simulation for two general problems of identification: static and dynamical system identification
机译:本文涉及多层神经网络和径向基函数网络的特征,并通过考虑其优缺点来提供杂交。混合网络在系统识别中展示了它们在系统识别中的有效性,并通过有效地采用其他网络,减轻了诸如局部最小值,慢速和结构尺寸的误差反向算法的问题。通过计算机模拟证明了潜在的性能改进,用于识别的两个一般问题:静态和动态系统识别

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