Condition-Based Monitoring and Anomaly Detection of Industrial Equipment using Autoencoder
Real-time Condition-based Monitoring (CbM) of wire manufacturing equipment of a partner facility involves the manual process of listening to the sound pressure of the equipment by the personnel assigned to it. This is to prevent further damage and to mitigate costs by monitoring the earliest signs o...
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Archīum Ateneo
2021
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ph-ateneo-arc.discs-faculty-pubs-12832022-04-26T09:52:50Z Condition-Based Monitoring and Anomaly Detection of Industrial Equipment using Autoencoder Lagazo, Daniel de Vera, Jose Alfredo Coronel, Andrei D Jimenez, Joseph Mark Gatmaitan, Emman Real-time Condition-based Monitoring (CbM) of wire manufacturing equipment of a partner facility involves the manual process of listening to the sound pressure of the equipment by the personnel assigned to it. This is to prevent further damage and to mitigate costs by monitoring the earliest signs of defects in the form of anomalous sound. We augmented the facility's CbM system by deploying an acoustic recorder and by building an autoencoder that is trained using the normal sound pressure of the wire extruding machine. This paper discusses a process for sound pressure acquisition, data pre-processing and preparation, feature extraction, anomaly detection, model evaluation, and case studies of downtime incidents. The objective of this paper is to automate the monitoring of the condition of the equipment and to find possible symptoms of unhealthy sound pressure prior to the reported downtimes. A comparative analysis of density score and reconstruction error, our chosen anomaly detection techniques, is presented in this paper. 2021-06-01T07:00:00Z text https://archium.ateneo.edu/discs-faculty-pubs/316 https://ieeexplore.ieee.org/document/9497816 Department of Information Systems & Computer Science Faculty Publications Archīum Ateneo Computer science Wires Manuals Feature extraction Real-time systems Data models Manufacturing Auto-encoder CNN wire equipment MFCC spectrogram reconstruction error density score condition-based monitoring anomaly detection sound pressure Computer Sciences Databases and Information Systems Theory and Algorithms |
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Computer science Wires Manuals Feature extraction Real-time systems Data models Manufacturing Auto-encoder CNN wire equipment MFCC spectrogram reconstruction error density score condition-based monitoring anomaly detection sound pressure Computer Sciences Databases and Information Systems Theory and Algorithms |
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Computer science Wires Manuals Feature extraction Real-time systems Data models Manufacturing Auto-encoder CNN wire equipment MFCC spectrogram reconstruction error density score condition-based monitoring anomaly detection sound pressure Computer Sciences Databases and Information Systems Theory and Algorithms Lagazo, Daniel de Vera, Jose Alfredo Coronel, Andrei D Jimenez, Joseph Mark Gatmaitan, Emman Condition-Based Monitoring and Anomaly Detection of Industrial Equipment using Autoencoder |
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Real-time Condition-based Monitoring (CbM) of wire manufacturing equipment of a partner facility involves the manual process of listening to the sound pressure of the equipment by the personnel assigned to it. This is to prevent further damage and to mitigate costs by monitoring the earliest signs of defects in the form of anomalous sound. We augmented the facility's CbM system by deploying an acoustic recorder and by building an autoencoder that is trained using the normal sound pressure of the wire extruding machine. This paper discusses a process for sound pressure acquisition, data pre-processing and preparation, feature extraction, anomaly detection, model evaluation, and case studies of downtime incidents. The objective of this paper is to automate the monitoring of the condition of the equipment and to find possible symptoms of unhealthy sound pressure prior to the reported downtimes. A comparative analysis of density score and reconstruction error, our chosen anomaly detection techniques, is presented in this paper. |
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text |
author |
Lagazo, Daniel de Vera, Jose Alfredo Coronel, Andrei D Jimenez, Joseph Mark Gatmaitan, Emman |
author_facet |
Lagazo, Daniel de Vera, Jose Alfredo Coronel, Andrei D Jimenez, Joseph Mark Gatmaitan, Emman |
author_sort |
Lagazo, Daniel |
title |
Condition-Based Monitoring and Anomaly Detection of Industrial Equipment using Autoencoder |
title_short |
Condition-Based Monitoring and Anomaly Detection of Industrial Equipment using Autoencoder |
title_full |
Condition-Based Monitoring and Anomaly Detection of Industrial Equipment using Autoencoder |
title_fullStr |
Condition-Based Monitoring and Anomaly Detection of Industrial Equipment using Autoencoder |
title_full_unstemmed |
Condition-Based Monitoring and Anomaly Detection of Industrial Equipment using Autoencoder |
title_sort |
condition-based monitoring and anomaly detection of industrial equipment using autoencoder |
publisher |
Archīum Ateneo |
publishDate |
2021 |
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https://archium.ateneo.edu/discs-faculty-pubs/316 https://ieeexplore.ieee.org/document/9497816 |
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1733052854908747776 |