Detection of multiple sensor faults in a palm oil fractionation plant using artificial neural network
Given the universal approximation properties, simplicity as well its intrinsic analogy to the non-linear state space form, a recurrent Elman network is derived and applied as process predictor for fault detection in process plants. In this paper, a two-stage scheme integrating a neural Elman network...
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my.utm.9872017-08-27T06:46:19Z http://eprints.utm.my/id/eprint/987/ Detection of multiple sensor faults in a palm oil fractionation plant using artificial neural network Ahmad, Arshad Abd. Hamid, Mohd. Kamaruddin TP Chemical technology Given the universal approximation properties, simplicity as well its intrinsic analogy to the non-linear state space form, a recurrent Elman network is derived and applied as process predictor for fault detection in process plants. In this paper, a two-stage scheme integrating a neural Elman network dynamic predictor and a feedforward neural network fault classifier is proposed to overcome the problem of multiple sensor faults. The scheme was implemented to detect sensor failures in a palm oil fractionation process. To generate the required simulation data, Hysys.Plant dynamic process simulator was employed. The use of the output prediction error, between a neural network model and a non-linear dynamic process, as a residual for detecting sensor faults is analysed. A second neural network classifier is developed to detect the sensor faults from the residuals generated, and results are presented to demonstrate the satisfactory detection of two sensor faults achieved simultaneously using this scheme. 2002-06 Conference or Workshop Item PeerReviewed application/pdf en http://eprints.utm.my/id/eprint/987/1/RSCE_2002_MKAH.pdf Ahmad, Arshad and Abd. Hamid, Mohd. Kamaruddin (2002) Detection of multiple sensor faults in a palm oil fractionation plant using artificial neural network. In: Regional Symposium on Chemical Engineering in conjunction with Symposium of Malaysian Chemical Engineers, June 2002, Petaling Jaya. |
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TP Chemical technology Ahmad, Arshad Abd. Hamid, Mohd. Kamaruddin Detection of multiple sensor faults in a palm oil fractionation plant using artificial neural network |
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Given the universal approximation properties, simplicity as well its intrinsic analogy to the non-linear state space form, a recurrent Elman network is derived and applied as process predictor for fault detection in process plants. In this paper, a two-stage scheme integrating a neural Elman network dynamic predictor and a feedforward neural network fault classifier is proposed to overcome the problem of multiple sensor faults. The scheme was implemented to detect sensor failures in a palm oil fractionation process. To generate the required simulation data, Hysys.Plant dynamic process simulator was employed. The use of the output prediction error, between a neural network model and a non-linear dynamic process, as a residual for detecting sensor faults is analysed. A second neural network classifier is developed to detect the sensor faults from the residuals generated, and results are presented to demonstrate the satisfactory detection of two sensor faults achieved simultaneously using this scheme. |
format |
Conference or Workshop Item |
author |
Ahmad, Arshad Abd. Hamid, Mohd. Kamaruddin |
author_facet |
Ahmad, Arshad Abd. Hamid, Mohd. Kamaruddin |
author_sort |
Ahmad, Arshad |
title |
Detection of multiple sensor faults in a palm oil fractionation plant using artificial neural network |
title_short |
Detection of multiple sensor faults in a palm oil fractionation plant using artificial neural network |
title_full |
Detection of multiple sensor faults in a palm oil fractionation plant using artificial neural network |
title_fullStr |
Detection of multiple sensor faults in a palm oil fractionation plant using artificial neural network |
title_full_unstemmed |
Detection of multiple sensor faults in a palm oil fractionation plant using artificial neural network |
title_sort |
detection of multiple sensor faults in a palm oil fractionation plant using artificial neural network |
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2002 |
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http://eprints.utm.my/id/eprint/987/1/RSCE_2002_MKAH.pdf http://eprints.utm.my/id/eprint/987/ |
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