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Method for identifying Hammerstein models

机译:识别哈默斯坦模型的方法

摘要

The computerized method for identifying Hammerstein models is a method in which the linear dynamic part is modeled by a space-state model and the static nonlinear part is modeled using a radial basis function neural network (RBFNN). Accurate identification of a Hammerstein model requires that output error between the actual and estimated systems be minimized. Thus, the problem of identification is an optimization problem. A hybrid algorithm, based on least mean square (LMS) principles and the Subspace Identification Method (SIM) is developed for the identification of the Hammerstein model. LMS is a gradient-based optimization algorithm that searches for optimal solutions in the negative direction of the gradient of a cost index. In the method, LMS is used for estimating the parameters of the RBFNN. For estimation of state-space matrices, the N4SID algorithm for subspace identification is used.
机译:用于识别Hammerstein模型的计算机化方法是通过空间状态模型对线性动态部分进行建模,并使用径向基函数神经网络(RBFNN)对静态非线性部分进行建模的方法。准确识别Hammerstein模型要求将实际系统与估计系统之间的输出误差降至最低。因此,识别问题是优化问题。开发了一种基于最小均方(LMS)原理和子空间识别方法(SIM)的混合算法,用于识别Hammerstein模型。 LMS是基于梯度的优化算法,可在成本指数梯度的负方向上搜索最佳解。在该方法中,LMS用于估计RBFNN的参数。为了估计状态空间矩阵,使用了N4SID算法进行子空间识别。

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