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Fault Diagnosis Based on Chemical Sensor Data with an Active Deep Neural Network

Big sensor data provide significant potential for chemical fault diagnosis, which involves the baseline values of security, stability and reliability in chemical processes. A deep neural network (DNN) with novel active learning for inducing chemical fault diagnosis is presented in this study. It is...

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Detalles Bibliográficos
Autores principales: Jiang, Peng, Hu, Zhixin, Liu, Jun, Yu, Shanen, Wu, Feng
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5087483/
https://www.ncbi.nlm.nih.gov/pubmed/27754386
http://dx.doi.org/10.3390/s16101695
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author Jiang, Peng
Hu, Zhixin
Liu, Jun
Yu, Shanen
Wu, Feng
author_facet Jiang, Peng
Hu, Zhixin
Liu, Jun
Yu, Shanen
Wu, Feng
author_sort Jiang, Peng
collection PubMed
description Big sensor data provide significant potential for chemical fault diagnosis, which involves the baseline values of security, stability and reliability in chemical processes. A deep neural network (DNN) with novel active learning for inducing chemical fault diagnosis is presented in this study. It is a method using large amount of chemical sensor data, which is a combination of deep learning and active learning criterion to target the difficulty of consecutive fault diagnosis. DNN with deep architectures, instead of shallow ones, could be developed through deep learning to learn a suitable feature representation from raw sensor data in an unsupervised manner using stacked denoising auto-encoder (SDAE) and work through a layer-by-layer successive learning process. The features are added to the top Softmax regression layer to construct the discriminative fault characteristics for diagnosis in a supervised manner. Considering the expensive and time consuming labeling of sensor data in chemical applications, in contrast to the available methods, we employ a novel active learning criterion for the particularity of chemical processes, which is a combination of Best vs. Second Best criterion (BvSB) and a Lowest False Positive criterion (LFP), for further fine-tuning of diagnosis model in an active manner rather than passive manner. That is, we allow models to rank the most informative sensor data to be labeled for updating the DNN parameters during the interaction phase. The effectiveness of the proposed method is validated in two well-known industrial datasets. Results indicate that the proposed method can obtain superior diagnosis accuracy and provide significant performance improvement in accuracy and false positive rate with less labeled chemical sensor data by further active learning compared with existing methods.
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spelling pubmed-50874832016-11-07 Fault Diagnosis Based on Chemical Sensor Data with an Active Deep Neural Network Jiang, Peng Hu, Zhixin Liu, Jun Yu, Shanen Wu, Feng Sensors (Basel) Article Big sensor data provide significant potential for chemical fault diagnosis, which involves the baseline values of security, stability and reliability in chemical processes. A deep neural network (DNN) with novel active learning for inducing chemical fault diagnosis is presented in this study. It is a method using large amount of chemical sensor data, which is a combination of deep learning and active learning criterion to target the difficulty of consecutive fault diagnosis. DNN with deep architectures, instead of shallow ones, could be developed through deep learning to learn a suitable feature representation from raw sensor data in an unsupervised manner using stacked denoising auto-encoder (SDAE) and work through a layer-by-layer successive learning process. The features are added to the top Softmax regression layer to construct the discriminative fault characteristics for diagnosis in a supervised manner. Considering the expensive and time consuming labeling of sensor data in chemical applications, in contrast to the available methods, we employ a novel active learning criterion for the particularity of chemical processes, which is a combination of Best vs. Second Best criterion (BvSB) and a Lowest False Positive criterion (LFP), for further fine-tuning of diagnosis model in an active manner rather than passive manner. That is, we allow models to rank the most informative sensor data to be labeled for updating the DNN parameters during the interaction phase. The effectiveness of the proposed method is validated in two well-known industrial datasets. Results indicate that the proposed method can obtain superior diagnosis accuracy and provide significant performance improvement in accuracy and false positive rate with less labeled chemical sensor data by further active learning compared with existing methods. MDPI 2016-10-13 /pmc/articles/PMC5087483/ /pubmed/27754386 http://dx.doi.org/10.3390/s16101695 Text en © 2016 by the authors; licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC-BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Jiang, Peng
Hu, Zhixin
Liu, Jun
Yu, Shanen
Wu, Feng
Fault Diagnosis Based on Chemical Sensor Data with an Active Deep Neural Network
title Fault Diagnosis Based on Chemical Sensor Data with an Active Deep Neural Network
title_full Fault Diagnosis Based on Chemical Sensor Data with an Active Deep Neural Network
title_fullStr Fault Diagnosis Based on Chemical Sensor Data with an Active Deep Neural Network
title_full_unstemmed Fault Diagnosis Based on Chemical Sensor Data with an Active Deep Neural Network
title_short Fault Diagnosis Based on Chemical Sensor Data with an Active Deep Neural Network
title_sort fault diagnosis based on chemical sensor data with an active deep neural network
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5087483/
https://www.ncbi.nlm.nih.gov/pubmed/27754386
http://dx.doi.org/10.3390/s16101695
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