Sensitivity Analysis of Sensors in a Hydraulic Condition Monitoring System Using CNN Models

Condition monitoring (CM) is a useful application in industry 4.0, where the machine’s health is controlled by computational intelligence methods. Data-driven models, especially from the field of deep learning, are efficient solutions for the analysis of time series sensor data due to their ability...

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Main Authors: Caroline König, Ahmed Mohamed Helmi
Format: Article
Language:English
Published: MDPI AG 2020-06-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/11/3307
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spelling doaj-2e1a91bf7fca498ca4316a1cfca2f5e72020-11-25T03:11:51ZengMDPI AGSensors1424-82202020-06-01203307330710.3390/s20113307Sensitivity Analysis of Sensors in a Hydraulic Condition Monitoring System Using CNN ModelsCaroline König0Ahmed Mohamed Helmi1Department of Computer Science, Universitat Politècnica de Catalunya, UPC BarcelonaTech, 08034 Barcelona, SpainDepartment of Computer and Systems Engineering, Faculty of Engineering, Zagazig University, Zagazig 44519, EgyptCondition monitoring (CM) is a useful application in industry 4.0, where the machine’s health is controlled by computational intelligence methods. Data-driven models, especially from the field of deep learning, are efficient solutions for the analysis of time series sensor data due to their ability to recognize patterns in high dimensional data and to track the temporal evolution of the signal. Despite the excellent performance of deep learning models in many applications, additional requirements regarding the interpretability of machine learning models are getting relevant. In this work, we present a study on the sensitivity of sensors in a deep learning based CM system providing high-level information about the relevance of the sensors. Several convolutional neural networks (CNN) have been constructed from a multisensory dataset for the prediction of different degradation states in a hydraulic system. An attribution analysis of the input features provided insights about the contribution of each sensor in the prediction of the classifier. Relevant sensors were identified, and CNN models built on the selected sensors resulted equal in prediction quality to the original models. The information about the relevance of sensors is useful for the system’s design to decide timely on the required sensors.https://www.mdpi.com/1424-8220/20/11/3307condition monitoringhydraulic systemssensor signalsconvolutional neural networksclassification
collection DOAJ
language English
format Article
sources DOAJ
author Caroline König
Ahmed Mohamed Helmi
spellingShingle Caroline König
Ahmed Mohamed Helmi
Sensitivity Analysis of Sensors in a Hydraulic Condition Monitoring System Using CNN Models
Sensors
condition monitoring
hydraulic systems
sensor signals
convolutional neural networks
classification
author_facet Caroline König
Ahmed Mohamed Helmi
author_sort Caroline König
title Sensitivity Analysis of Sensors in a Hydraulic Condition Monitoring System Using CNN Models
title_short Sensitivity Analysis of Sensors in a Hydraulic Condition Monitoring System Using CNN Models
title_full Sensitivity Analysis of Sensors in a Hydraulic Condition Monitoring System Using CNN Models
title_fullStr Sensitivity Analysis of Sensors in a Hydraulic Condition Monitoring System Using CNN Models
title_full_unstemmed Sensitivity Analysis of Sensors in a Hydraulic Condition Monitoring System Using CNN Models
title_sort sensitivity analysis of sensors in a hydraulic condition monitoring system using cnn models
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-06-01
description Condition monitoring (CM) is a useful application in industry 4.0, where the machine’s health is controlled by computational intelligence methods. Data-driven models, especially from the field of deep learning, are efficient solutions for the analysis of time series sensor data due to their ability to recognize patterns in high dimensional data and to track the temporal evolution of the signal. Despite the excellent performance of deep learning models in many applications, additional requirements regarding the interpretability of machine learning models are getting relevant. In this work, we present a study on the sensitivity of sensors in a deep learning based CM system providing high-level information about the relevance of the sensors. Several convolutional neural networks (CNN) have been constructed from a multisensory dataset for the prediction of different degradation states in a hydraulic system. An attribution analysis of the input features provided insights about the contribution of each sensor in the prediction of the classifier. Relevant sensors were identified, and CNN models built on the selected sensors resulted equal in prediction quality to the original models. The information about the relevance of sensors is useful for the system’s design to decide timely on the required sensors.
topic condition monitoring
hydraulic systems
sensor signals
convolutional neural networks
classification
url https://www.mdpi.com/1424-8220/20/11/3307
work_keys_str_mv AT carolinekonig sensitivityanalysisofsensorsinahydraulicconditionmonitoringsystemusingcnnmodels
AT ahmedmohamedhelmi sensitivityanalysisofsensorsinahydraulicconditionmonitoringsystemusingcnnmodels
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