2018
DOI: 10.1109/access.2018.2873806
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Online Process Monitoring Using Recursive Mutual Information-Based Variable Selection and Dissimilarity Analysis With No Prior Information

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Cited by 5 publications
(4 citation statements)
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“…Following prior knowledge, the component variables that are difficult to be measured online and the unchanged agitation speed are not considered in this study. The remaining 33 variables are described in Zeng et al (2018). A total of 960 samples are collected under normal state as training data.…”
Section: Te Processmentioning
confidence: 99%
“…Following prior knowledge, the component variables that are difficult to be measured online and the unchanged agitation speed are not considered in this study. The remaining 33 variables are described in Zeng et al (2018). A total of 960 samples are collected under normal state as training data.…”
Section: Te Processmentioning
confidence: 99%
“…The proposed method is specified on the TE process in this section. The TE process is a simulation of an actual chemical process and has been broadly applied to assess the validity of process monitoring methods. , The process includes 41 measured variables and 12 manipulated variables; we selected 33 variables that are commonly associated with process health as the monitored variables for following experiments . The TE data set provides normal data and 21 types of fault data for training and testing of models .…”
Section: Case Studymentioning
confidence: 99%
“…28,29 The process includes 41 measured variables and 12 manipulated variables; we selected 33 variables that are commonly associated with process health as the monitored variables for following experiments. 30 The TE data set provides normal data and 21 types of fault data for training and testing of models. 31 The training data set contained 960 normal samples under 48 h. In the testing data set, 21 types of faults were used, and 960 samples under 48 h were collected for each fault mode.…”
Section: Case Studymentioning
confidence: 99%
“…Shang et al proposed a new method to monitor the incipient fault by monitoring the statistical characteristics (mean, variance, skewness, kurtosis, etc) of the transformed component. Zeng et al proposed using recursive mutual information‐based variable selection and dissimilarity analysis with no prior information to monitor online process. Deng et al proposed a residual component weighting strategy by the mutual information between the sample weighted residual components and the original measured variables and built two monitoring statistics to detect the incipient faults.…”
Section: Introductionmentioning
confidence: 99%