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首页> 外文期刊>The Canadian Journal of Chemical Engineering >NONLINEAR PROCESS MONITORING USING KERNEL NONNEGATIVE MATRIX FACTORIZATION
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NONLINEAR PROCESS MONITORING USING KERNEL NONNEGATIVE MATRIX FACTORIZATION

机译:非线性过程监控使用内核非负矩阵分解

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摘要

This paper focuses on developing an advanced nonlinear process monitoring technique involving fault detection and identification methods. The new monitoring methods are proposed based on two nonlinear matrix factorization algorithms. Both factorizations use the kernel method to replace lower-dimensional nonlinearity using higher-dimensional linearity by nonlinearly mapping the data onto a high-dimensional linear space. In the high-dimensional linear space, also known as feature space, the first factorization decomposes the data matrix into two low-rank matrix products, in which the first matrix factor is restricted to being orthogonal and non-negative leading to a good performance in the subspace approximation of the original data. In the second factorization, a matrix consisting of all types of fault samples is decomposed into two low-rank matrix products, in which the second matrix factor is restricted to being orthogonal and non-negative providing a clear K-means clustering interpretation. On the basis of the above two factorizations, the corresponding fault detection and identification methods are developed. Finally, the proposed approaches are used to monitor the penicillin fermentation process (PFP), and encouraging experimental results are achieved.
机译:本文侧重于开发涉及故障检测和识别方法的先进的非线性过程监控技术。基于两个非线性矩阵分解算法提出了新的监控方法。通过非线性地将数据映射到高维线性空间,遍布核法使用内核方法使用更高维线性来替换低维度非线性。在高维线性空间中,也称为特征空间,第一分解将数据矩阵分解为两个低秩矩阵产品,其中第一矩阵因子仅限于正交和非负导致良好的性能原始数据的子空间近似值。在第二分解中,由所有类型的故障样本组成的矩阵被分解成两个低秩矩阵产品,其中第二矩阵因子被限制为正交和非负面提供清晰的K-Meary聚类解释。在上述两个因素的基础上,开发了相应的故障检测和识别方法。最后,所提出的方法用于监测青霉素发酵过程(PFP),令人振奋的实验结果实现。

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