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Univariate ReLU Neural Network and Its Application in Nonlinear System Identification

机译:单变量释放神经网络及其在非线性系统识别中的应用

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ReLU (rectified linear units) neural network has received significant attention since its emergence. In this paper, a univariate ReLU (UReLU) neural network is proposed to both model the nonlinear dynamic system and reveal the insights about the system. Specifically, the neural network consists of neurons with linear and UReLU activation functions, and the UReLU functions are defined as the ReLU functions respect to each dimension. The UReLU neural network is a single hidden layer neural network, and the structure is relatively simple. The initialization of the neural network employs the decoupling method, which provides a good initialization and some insight into the nonlinear system. Compared with normal ReLU neural network, the number of parameters of UReLU network is less, but it still provide a good approximation of the nonlinear dynamic system. The performance of the UReLU neural network is shown through a Hysteretic benchmark system: the Bouc-Wen system. Simulation results verify the effectiveness of the proposed method.
机译:Relu(彻底的线性单位)神经网络自出现以来受到重大关注。本文提出了一个单变量的Relu(URELU)神经网络,对非线性动态系统进行模型,揭示了系统的见解。具体地,神经网络由具有线性和URELU激活功能的神经元组成,并且URELU函数被定义为Relu功能对每个维度。 URELU神经网络是一个隐藏层神经网络,结构相对简单。神经网络的初始化采用解耦方法,该方法提供了良好的初始化和对非线性系统的一些洞察力。与正常的Relu神经网络相比,URELU网络的参数数量较小,但仍然提供了非线性动态系统的良好近似。通过滞后基准系统显示URELU神经网络的性能:BOUC-WEN系统。仿真结果验证了该方法的有效性。

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