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Fault Detection and Diagnosis Via Improved Statistical Process Control: Chemical Process Application
Kamarul Asri Ibrahim
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Fault Detection and Diagnosis Via Improved Statistical Process Control: Chemical Process Application
Kamarul Asri Ibrahim
Multivariate Statistical Process Control (MSPC) technique has been widely used for fault detection and diagnosis (FDD). Currently, contribution plots are used as basic tools for fault diagnosis in MSPC approaches. This plot does not exactly diagnose the fault, it just provides greater insight into possible causes and thereby narrow down the search. Hence, the cause of the faults cannot be found in a straightforward manner. Therefore, this study is conducted to introduce a new approach for detecting and diagnosing fault via correlation technique. Multivariate analysis technique i.e Principal Component Analysis, PCA and Partial Correlation Analysis, PCorrA are utilized to determine the correlation coefficient between quality variables and process variables. A precut multicomponent distillation column that has been installed with controllers is used as the study unit operation. Improved SPC method is implemented to detect and diagnose various kinds of faults, which occur in the process. Individual charting technique such as Shewhart, Exponential Weight Moving Average (EWMA) and Moving Average and Moving Range (MAMR) charts are used to facilitate the FDD.
Medie | Bøger Paperback Bog (Bog med blødt omslag og limet ryg) |
Udgivet | 30. juli 2012 |
ISBN13 | 9783659177651 |
Forlag | LAP LAMBERT Academic Publishing |
Antal sider | 172 |
Mål | 150 × 10 × 226 mm · 274 g |
Sprog | Tysk |
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