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Improved nonlinear PCA for process monitoring using support vector data description

机译:使用支持向量数据描述的用于过程监控的改进的非线性PCA

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Nonlinear principal component analysis (PCA) based on neural networks has drawn significant attention as a monitoring tool for complex nonlinear processes, but there remains a difficulty with determining the optimal network topology. This paper exploits the advantages of the Fast Recursive Algorithm, where the number of nodes, the location of centres, and the weights between the hidden layer and the output layer can be identified simultaneously for the radial basis function (RBF) networks. The topology problem for the nonlinear PCA based on neural networks can thus be solved. Another problem with nonlinear PCA is that the derived nonlinear scores may not be statistically independent or follow a simple parametric distribution. This hinders its applications in process monitoring since the simplicity of applying predetermined probability distribution functions is lost. This paper proposes the use of a support vector data description and shows that transforming the nonlinear principal components into a feature space allows a simple statistical inference. Results from both simulated and industrial data confirm the efficacy of the proposed method for solving nonlinear principal component problems, compared with linear PCA and kernel PCA.
机译:基于神经网络的非线性主成分分析(PCA)作为复杂非线性过程的监视工具已引起了广泛的关注,但在确定最佳网络拓扑方面仍然存在困难。本文利用了快速递归算法的优势,其中可以同时为径向基函数(RBF)网络识别节点数,中心位置以及隐藏层和输出层之间的权重。因此可以解决基于神经网络的非线性PCA的拓扑问题。非线性PCA的另一个问题是,得出的非线性分数可能不是统计上独立的,也不是遵循简单的参数分布。由于失去了应用预定概率分布函数的简单性,这阻碍了其在过程监控中的应用。本文提出了使用支持向量数据描述的方法,并表明将非线性主成分转换为特征空间可以进行简单的统计推断。与线性PCA和核PCA相比,来自仿真和工业数据的结果均证实了该方法解决非线性主成分问题的有效性。

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