非线性系统的对角递归神经网络辨识

C. Ku, K.Y. Lee
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引用次数: 15

摘要

提出了递归神经网络用于非线性动态系统辨识的方法。当系统辨识与控制问题相结合时,实时性非常重要,必须设计一种神经辨识器,使其收敛且训练时间不会太长。神经网络也应该是简单和容易实现的。提出了一种新的神经辨识器,即对角递归神经网络(DRNN)。提出了一种广义的动态反向传播算法来训练DRNN。将该方法应用于非线性系统的识别,仿真结果显示了良好的效果。
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Nonlinear system identification using diagonal recurrent neural networks
The recurrent neural network is proposed for system identification of nonlinear dynamic systems. When the system identification is coupled with control problems, the real-time feature is very important, and a neuro-identifier must be designed so that it will converge and the training time will not be too long. The neural network should also be simple and implemented easily. A novel neuro-identifier, the diagonal recurrent neural network (DRNN), that fulfils these requirements is proposed. A generalized algorithm, dynamic backpropagation, is developed to train the DRNN. The DRNN was used to identify nonlinear systems, and simulation showed promising results.<>
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