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A Kernel Least Squares Based Approach for Nonlinear Quality-Related Fault Detection

机译:基于核最小二乘的非线性质量相关故障检测方法

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摘要

In this paper, a nonlinear quality-related fault detection approach is proposed based on kernel least squares (KLS) model. The major novelty of the proposed method is that it utilizes KLS model to exploit the entire correlation between feature and output matrices. First, it uses a nonlinear projection function to map original process variables into feature space in which the correlation between feature and output matrices is realized by means of KLS. Then, the feature matrix is decomposed into two orthogonal parts by singular value decomposition and the statistics for each part are determined appropriately for the purpose of quality-related fault detection. Compared with existing kernel partial least squares (KPLS) based approaches, the proposed new method has the following obvious advantages. 1) It extracts the full correlation information of feature matrix, while KPLS-based approaches only use the partial correlation of several selected latent variables; therefore, it is more stable than the existing ones. 2) It omits the iterative computation of KPLS model and the determination of the number of latent variables; therefore, it is more efficient in engineering implementation. 3) It only uses two statistics to determine the type of fault, while most of the KPLS-based approaches need four; therefore, it has a more simple diagnosis logic. For simulation verification, a widely used literature example and an industrial benchmark are utilized to evaluate the performance of the proposed method.
机译:本文提出了一种基于核最小二乘(KLS)模型的非线性质量相关故障检测方法。该方法的主要新颖之处在于它利用KLS模型来开发特征矩阵和输出矩阵之间的整个相关性。首先,它使用非线性投影函数将原始过程变量映射到特征空间中,其中特征和输出矩阵之间的相关性通过KLS实现。然后,通过奇异值分解将特征矩阵分解为两个正交部分,并针对质量相关故障检测的目的适当确定每个部分的统计量。与现有的基于核偏最小二乘法(KPLS)的方法相比,该新方法具有以下明显的优势。 1)提取特征矩阵的全部相关信息,而基于KPLS的方法仅使用几个选定的潜在变量的部分相关;因此,它比现有的稳定。 2)省略了KPLS模型的迭代计算和潜在变量数量的确定;因此,在工程实施中效率更高。 3)它仅使用两个统计信息来确定故障的类型,而大多数基于KPLS的方法都需要四个;因此,它具有更简单的诊断逻辑。为了进行仿真验证,利用了广泛使用的文献示例和行业基准来评估所提出方法的性能。

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