Combination of KPCA and causality analysis for root cause diagnosis of industrial process fault

2017 ◽  
Vol 95 (8) ◽  
pp. 1497-1509 ◽  
Author(s):  
Hasssan Gharahbagheri ◽  
Syed Imtiaz ◽  
Faisal Khan
2015 ◽  
Vol 48 (21) ◽  
pp. 838-843 ◽  
Author(s):  
H. Gharahbagheri ◽  
S. Imtiaz ◽  
F. Khan ◽  
S. Ahmed

Author(s):  
Fan Yang ◽  
Sirish Shah ◽  
Deyun Xiao

Signed directed graph based modeling and its validation from process knowledge and process data This paper is concerned with the fusion of information from process data and process connectivity and its subsequent use in fault diagnosis and process hazard assessment. The Signed Directed Graph (SDG), as a graphical model for capturing process topology and connectivity to show the causal relationships between process variables by material and information paths, has been widely used in root cause and hazard propagation analysis. An SDG is usually built based on process knowledge as described by piping and instrumentation diagrams. This is a complex and experience-dependent task, and therefore the resulting SDG should be validated by process data before being used for analysis. This paper introduces two validation methods. One is based on cross-correlation analysis of process data with assumed time delays, while the other is based on transfer entropy, where the correlation coefficient between two variables or the information transfer from one variable to another can be computed to validate the corresponding paths in SDGs. In addition to this, the relationship captured by data-based methods should also be validated by process knowledge to confirm its causality. This knowledge can be realized by checking the reachability or the influence of one variable on another based on the corresponding SDG which is the basis of causality. A case study of an industrial process is presented to illustrate the application of the proposed methods.


2020 ◽  
Vol 1 (1) ◽  
pp. 25-41
Author(s):  
Qiming Chen ◽  
Xinyi Fei ◽  
Lie Xie ◽  
Dongliu Li ◽  
Qibing Wang

Purpose1. To improve the causality analysis performance, a novel causality detector based on time-delayed convergent cross mapping (TD-CCM) is proposed in this work. 2. Identify the root cause of plant-wide oscillations in process control system.Design/methodology/approachA novel causality analysis framework is proposed based on denoising and periodicity-removing TD-CCM (time-delayed convergent cross mapping). We first point out that noise and periodicity have adverse effects on causality detection. Then, the empirical mode decomposition (EMD) and detrended fluctuation analysis (FDA) are combined to achieve denoising. The periodicities are effectively removed through singular spectrum analysis (SSA). Following, the TD-CCM can accurately capture the causalities and locate the root cause by analyzing the filtered signals.Findings1. A novel causality detector based on denoising and periodicity-removing time-delayed convergent cross mapping (TD-CCM) is proposed. 2. Simulation studies show that the proposed method is able to improve the causality analysis performance. 3. Industrial case study shows the proposed method can be used to analyze the root cause of plant-wide oscillations in process control system.Originality/value1. A novel causality detector based on denoising and periodicity-removing time-delayed convergent cross mapping (TD-CCM) is proposed. 2. The influences of noise and periodicity on causality analysis are investigated. 3. Simulations and industrial case shows that the proposed method can improve the causality analysis performance and can be used to identify the root cause of plant-wide oscillations in process control system.


2018 ◽  
Vol 51 (18) ◽  
pp. 381-386 ◽  
Author(s):  
Han-Sheng Chen ◽  
Zhengbing Yan ◽  
Xuelei Zhang ◽  
Yi Liu ◽  
Yuan Yao

2017 ◽  
Vol 50 (1) ◽  
pp. 13898-13903 ◽  
Author(s):  
Han-Sheng Chen ◽  
Chunhui Zhao ◽  
Zhengbing Yan ◽  
Yuan Yao

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