基于主成分分析的局部线性神经网络

L. Ramrath, Marco Muenchhof, R. Isermann
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引用次数: 1

摘要

提出了一种基于主成分分析的工艺参数估计新方法。对于以输入和输出信号测量损坏为特征的变量误差(EIV)问题,该估计器产生最优估计结果。由于故障检测方法中的残差产生通常具有EIV特征,因此可用估计器识别线性模型进行残差计算。为了克服线性模型的局限性,将所开发的估计器集成到能够识别非线性过程的LOLIMOT方法中。该估计量可用作标准最小二乘估计量的替代方法来识别局部线性模型的参数。对比结果表明,所开发的估计器对eiv设置中的残差生成具有较好的适用性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Local linear neural networks based on principal component analysis
A new method for the estimation of process parameters based on the principal component analysis is developed. The estimator yields optimal estimation results in the case of errors in variables (EIV) problems which are characterized by corrupted measurements of input and output signals. As the residual generation in fault detection methods often feature EIV characteristics, the estimator can be used to identify linear models for residual calculation. To overcome the limitations on linear models, the developed estimator is integrated into the LOLIMOT approach which is able to identify nonlinear processes. The estimator is used as an alternative to the standard Least Squares estimator to identify the parameters of the local linear models. Comparative results show the better suitability of the developed estimator for the residual generation in EIV-setups
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