Literature DB >> 33747072

A Fault Prediction and Cause Identification Approach in Complex Industrial Processes Based on Deep Learning.

Yao Li1.   

Abstract

Faults occurring in the production line can cause many losses. Predicting the fault events before they occur or identifying the causes can effectively reduce such losses. A modern production line can provide enough data to solve the problem. However, in the face of complex industrial processes, this problem will become very difficult depending on traditional methods. In this paper, we propose a new approach based on a deep learning (DL) algorithm to solve the problem. First, we regard these process data as a spatial sequence according to the production process, which is different from traditional time series data. Second, we improve the long short-term memory (LSTM) neural network in an encoder-decoder model to adapt to the branch structure, corresponding to the spatial sequence. Meanwhile, an attention mechanism (AM) algorithm is used in fault detection and cause identification. Third, instead of traditional biclassification, the output is defined as a sequence of fault types. The approach proposed in this article has two advantages. On the one hand, treating data as a spatial sequence rather than a time sequence can overcome multidimensional problems and improve prediction accuracy. On the other hand, in the trained neural network, the weight vectors generated by the AM algorithm can represent the correlation between faults and the input data. This correlation can help engineers identify the cause of faults. The proposed approach is compared with some well-developed fault diagnosing methods in the Tennessee Eastman process. Experimental results show that the approach has higher prediction accuracy, and the weight vector can accurately label the factors that cause faults.
Copyright © 2021 Yao Li.

Entities:  

Mesh:

Year:  2021        PMID: 33747072      PMCID: PMC7954619          DOI: 10.1155/2021/6612342

Source DB:  PubMed          Journal:  Comput Intell Neurosci


  6 in total

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4.  Short-Time Wavelet Entropy Integrating Improved LSTM for Fault Diagnosis of Modular Multilevel Converter.

Authors:  Yongming Han; Wang Qi; Ning Ding; Zhiqiang Geng
Journal:  IEEE Trans Cybern       Date:  2022-07-19       Impact factor: 19.118

5.  LiReD: A Light-Weight Real-Time Fault Detection System for Edge Computing Using LSTM Recurrent Neural Networks.

Authors:  Donghyun Park; Seulgi Kim; Yelin An; Jae-Yoon Jung
Journal:  Sensors (Basel)       Date:  2018-06-30       Impact factor: 3.576

6.  Fault Detection and Diagnosis Using Combined Autoencoder and Long Short-Term Memory Network.

Authors:  Pangun Park; Piergiuseppe Di Marco; Hyejeon Shin; Junseong Bang
Journal:  Sensors (Basel)       Date:  2019-10-23       Impact factor: 3.576

  6 in total
  1 in total

1.  A RUL Estimation System from Clustered Run-to-Failure Degradation Signals.

Authors:  Anthony D Cho; Rodrigo A Carrasco; Gonzalo A Ruz
Journal:  Sensors (Basel)       Date:  2022-07-16       Impact factor: 3.847

  1 in total

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