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Partial Derivate Contribution Plot Based on KPLS-KSER for Nonlinear Process Fault Diagnosis

机译:基于KPLS-KSER的偏微分贡献图用于非线性过程故障诊断

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In the process monitoring of nonlinear systems, kernel function is the main means to solve the nonlinear data by mapping low-dimensional nonlinear data to high-dimensional linear data. However, the use of kernel function has two disadvantages: 1. Kernel function needs a lot of calculation, especially under the condition of large number of training samples, 2. Kernel function leads to the inability to obtain the relationship between input variables and statistics. So that the identification of fault variables is difficult. In this paper, Taylor series expansion is used to remove the high order infinitesimal term, so that the Gaussian kernel function is replaced by the input matrix, which greatly reduces the amount of computation required for fault detection and diagnosis. The replacement method is introduced into the KPLS model, and the input matrix is successfully decomposed into quality-related and unrelated parts by using SVD decomposition. Based on the detection model, through the gradient theory, the partial derivate is used to calculate the gradient of each variable in the statistics to isolate the fault variables. In order to verify the effectiveness of the algorithm, this paper uses the TEP model to carry on the simulation experiment, has obtained the very good process monitoring effect, at the same time has greatly reduced the simulation experiment time.
机译:在非线性系统的过程监控中,核函数是通过将低维非线性数据映射到高维线性数据来求解非线性数据的主要手段。但是,使用核函数有两个缺点:1.核函数需要大量计算,尤其是在训练样本数量众多的情况下; 2.核函数导致无法获得输入变量和统计量之间的关系。因此,难以识别故障变量。在本文中,泰勒级数展开用于去除高阶无穷小项,从而用输入矩阵代替高斯核函数,从而大大减少了故障检测和诊断所需的计算量。将替换方法引入KPLS模型,并使用SVD分解将输入矩阵成功分解为与质量相关和无关的部分。基于检测模型,通过梯度理论,使用偏导数来计算统计中每个变量的梯度,以隔离故障变量。为了验证算法的有效性,本文采用TEP模型进行了仿真实验,取得了很好的过程监控效果,同时大大减少了仿真实验的时间。

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