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Frequency Domain Identification of Multiple Input Multiple Output Nonlinear Systems

机译:多输入多输出非线性系统的频域识别

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The proposed study introduces a total least squares with structure selection (TLSS) algorithm to identify continuous time differential equation models from generalized frequency response function matrix (GFRFM) of multiple-input multiple-output (MIMO) nonlinear system. The estimation procedure is progressive where the parameters of each degree of nonlinearity of each subsystem is estimated beginning with the estimation of linear terms and then adding higher order nonlinear terms. The algorithm combines the advantages of both the total least squares and orthogonal least squares with structure selection (OLSSS). The error reduction ratio (ERR) feature of OLSSS are exploited to provide an effective way of detecting the correct model structure or which terms to include into the model and the total least squares algorithm provides accurate estimates of the parameters when the data is corrupted with noise. The performance of the algorithm has been compared with the weighted complex orthogonal estimator and has been shown to be superior
机译:拟议的研究引入了总最小二乘结构选择(TLSS)算法,以从多输入多输出(MIMO)非线性系统的广义频率响应函数矩阵(GFRFM)识别连续时间微分方程模型。估计过程是渐进的,其中从线性项的估计开始,然后添加高阶非线性项,估计每个子系统的每个非线性度的参数。该算法将总最小二乘法和正交最小二乘的优势与结构选择(OLSSS)结合在一起。利用OLSSS的错误减少率(ERR)功能提供了一种检测正确模型结构的有效方法,或者提供了将哪些项包括在模型中的方法,并且当数据因噪声而损坏时,总最小二乘法可提供参数的准确估计。该算法的性能已与加权复数正交估计器进行了比较,并被证明具有优越的性能。

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