Fault Diagnosis by Multisensor Data: A Data-Driven Approach Based on Spectral Clustering and Pairwise Constraints

This paper deals with clustering based on feature selection of multisensor data in high-dimensional space. Spectral clustering algorithms are efficient tools in signal processing for grouping datasets sampled by multisensor systems for fault diagnosis. The effectiveness of spectral clustering stems...

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Main Authors: Massimo Pacella, Gabriele Papadia
Format: Article
Language:English
Published: MDPI AG 2020-12-01
Series:Sensors
Subjects:
PCA
Online Access:https://www.mdpi.com/1424-8220/20/24/7065
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spelling doaj-76c6ad9bf1e0476ebadcf44932b18b532020-12-11T00:00:48ZengMDPI AGSensors1424-82202020-12-01207065706510.3390/s20247065Fault Diagnosis by Multisensor Data: A Data-Driven Approach Based on Spectral Clustering and Pairwise ConstraintsMassimo Pacella0Gabriele Papadia1Department of Engineering for Innovation, University of Salento, 73100 Lecce, ItalyDepartment of Engineering for Innovation, University of Salento, 73100 Lecce, ItalyThis paper deals with clustering based on feature selection of multisensor data in high-dimensional space. Spectral clustering algorithms are efficient tools in signal processing for grouping datasets sampled by multisensor systems for fault diagnosis. The effectiveness of spectral clustering stems from constructing an embedding space based on an affinity matrix. This matrix shows the pairwise similarity of the data points. Clustering is then obtained by determining the spectral decomposition of the Laplacian graph. In the manufacturing field, clustering is an essential strategy for fault diagnosis. In this study, an enhanced spectral clustering approach is presented, which is augmented with pairwise constraints, and that results in efficient identification of fault scenarios. The effectiveness of the proposed approach is described using a real case study about a diesel injection control system for fault detection.https://www.mdpi.com/1424-8220/20/24/7065semi-supervised classificationspectral clusteringPCAfault detectionfuel-injection system
collection DOAJ
language English
format Article
sources DOAJ
author Massimo Pacella
Gabriele Papadia
spellingShingle Massimo Pacella
Gabriele Papadia
Fault Diagnosis by Multisensor Data: A Data-Driven Approach Based on Spectral Clustering and Pairwise Constraints
Sensors
semi-supervised classification
spectral clustering
PCA
fault detection
fuel-injection system
author_facet Massimo Pacella
Gabriele Papadia
author_sort Massimo Pacella
title Fault Diagnosis by Multisensor Data: A Data-Driven Approach Based on Spectral Clustering and Pairwise Constraints
title_short Fault Diagnosis by Multisensor Data: A Data-Driven Approach Based on Spectral Clustering and Pairwise Constraints
title_full Fault Diagnosis by Multisensor Data: A Data-Driven Approach Based on Spectral Clustering and Pairwise Constraints
title_fullStr Fault Diagnosis by Multisensor Data: A Data-Driven Approach Based on Spectral Clustering and Pairwise Constraints
title_full_unstemmed Fault Diagnosis by Multisensor Data: A Data-Driven Approach Based on Spectral Clustering and Pairwise Constraints
title_sort fault diagnosis by multisensor data: a data-driven approach based on spectral clustering and pairwise constraints
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-12-01
description This paper deals with clustering based on feature selection of multisensor data in high-dimensional space. Spectral clustering algorithms are efficient tools in signal processing for grouping datasets sampled by multisensor systems for fault diagnosis. The effectiveness of spectral clustering stems from constructing an embedding space based on an affinity matrix. This matrix shows the pairwise similarity of the data points. Clustering is then obtained by determining the spectral decomposition of the Laplacian graph. In the manufacturing field, clustering is an essential strategy for fault diagnosis. In this study, an enhanced spectral clustering approach is presented, which is augmented with pairwise constraints, and that results in efficient identification of fault scenarios. The effectiveness of the proposed approach is described using a real case study about a diesel injection control system for fault detection.
topic semi-supervised classification
spectral clustering
PCA
fault detection
fuel-injection system
url https://www.mdpi.com/1424-8220/20/24/7065
work_keys_str_mv AT massimopacella faultdiagnosisbymultisensordataadatadrivenapproachbasedonspectralclusteringandpairwiseconstraints
AT gabrielepapadia faultdiagnosisbymultisensordataadatadrivenapproachbasedonspectralclusteringandpairwiseconstraints
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