Modeling non-stationary dynamic system using recurrent radial basis function networks

B. Todorovic, M. Stankovic, C. Moraga
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Abstract

This paper addresses the problem of continuous adaptation of neural networks in a non-stationary environment. We have applied the extended Kalman filter to the parameter, state and structure estimation of a recurrent radial basis function network. The architecture of the recurrent radial basis function network implements a nonlinear autoregressive model with exogenous inputs. Statistical criteria for structure adaptation (growing and pruning of hidden units and connections of the network) were derived using statistics estimated by the Kalman filter. The proposed algorithm is applied to non-stationary dynamic system modeling.
基于循环径向基函数网络的非平稳动态系统建模
研究了神经网络在非平稳环境下的连续自适应问题。将扩展卡尔曼滤波应用于循环径向基函数网络的参数估计、状态估计和结构估计。递归径向基函数网络的结构实现了带有外生输入的非线性自回归模型。利用卡尔曼滤波估计的统计量,导出了结构自适应的统计准则(隐单元的生长和修剪以及网络的连接)。将该算法应用于非平稳动态系统建模。
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