Abstract

Industrial data usually have nonlinear or multimodal characteristics which do not meet the data assumptions of statistics in principal component analysis (PCA). Therefore, PCA has a lower fault detection rate in industrial processes. Aiming at the above limitations of PCA, a fault detection method using principal component difference based on k-nearest neighbors (Diff-PCA) is proposed in this paper. First, find the k nearest neighbors set of each sample in the training data set and calculate its mean vector. Second, build an augmented vector using each sample and its corresponding mean vector. Third, calculate the loading matrix and score matrix using PCA. Next, calculate the estimated scores using the mean vector of each sample and missing data imputation technique for PCA. At last, build two new statistics using the difference between the real scores and estimated scores to detect faults. In addition, the fault diagnosis method based on contribution plots of monitored variables is also proposed in this paper. In Diff-PCA, the difference skill can eliminate the impact of the nonlinear and multimodal structure on fault detection. Meanwhile, the monitored subspaces by the two new statistics are different from that by T2 and SPE in PCA. The efficiency of the proposed strategy is implemented in two numerical cases (nonlinear and multimode) and the Tennessee Eastman (TE) processes. The fault detection results indicate that Diff-PCA outperforms the conventional PCA, Kernel PCA, dynamic PCA, principal component-based k nearest neighbor rule and k nearest neighbor rule.

Highlights

  • With the rapid development of production technologies, fault detection methods attract more and more attention

  • In terms of faults 5, 10, 16 and 19, the fault detection rate (FDR) of T2 and square prediction error (SPE) in Principal component analysis (PCA), kernel PCA (KPCA) and dynamic PCA (DPCA) are less than 90%, whereas FDRs of DiffPCA are beyond 90%, especially, the FDR of PCA-qdiff is near 100% in detecting fault 5

  • In this paper, a new fault detection method using principal component difference based on k-nearest neighbors is developed

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Summary

INTRODUCTION

With the rapid development of production technologies, fault detection methods attract more and more attention. C. Zhang et al.: Fault Detection in the TE Benchmark Process Using Principal Component Difference Based on K-Nearest Neighbors. All of the proposed strategies utilize T2 and SPE statistics to finish process monitoring. Since FD-kNN only considers the distance between the sample and its neighbors, it has high performance of fault detection for a process with multimodal structure [20], [21]. Aiming at the fault detection in processes with nonlinear and multimodal structures, a new fault detection strategy using principal component difference based on k nearest neighbors (Diff-PCA) is proposed in this paper. T2 and SPE statistics are applied to monitor the status of a sample in PCS and RS, respectively.

MISSING DATA IMPUTATION TECHNIQUE FOR PCA
BUILDING MODEL
ONLINE DETECTION
Findings
CONCLUSION
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