A Hybrid Approach: Dynamic Diagnostic Rules for Sensor Systems in Industry 4.0 Generated by Online Hyperparameter Tuned Random Forest

In this work, a hybrid component Fault Detection and Diagnosis (FDD) approach for industrial sensor systems is established and analyzed, to provide a hybrid schema that combines the advantages and eliminates the drawbacks of both model-based and data-driven methods of diagnosis. Moreover, it shines...

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Main Authors: Ahlam Mallak, Madjid Fathi
Format: Article
Language:English
Published: MDPI AG 2020-09-01
Series:Sci
Subjects:
Online Access:https://www.mdpi.com/2413-4155/2/4/61
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spelling doaj-6eee66fede354833aa58b9f1ecc592a62020-11-25T03:41:47ZengMDPI AGSci2413-41552020-09-012616110.3390/sci2040061A Hybrid Approach: Dynamic Diagnostic Rules for Sensor Systems in Industry 4.0 Generated by Online Hyperparameter Tuned Random ForestAhlam Mallak0Madjid Fathi1Department of Electrical Engineering and Computer Science, Knowledge-based Systems and Knowledge Management, University of Siegen, 57076 Siegen, GermanyDepartment of Electrical Engineering and Computer Science, Knowledge-based Systems and Knowledge Management, University of Siegen, 57076 Siegen, GermanyIn this work, a hybrid component Fault Detection and Diagnosis (FDD) approach for industrial sensor systems is established and analyzed, to provide a hybrid schema that combines the advantages and eliminates the drawbacks of both model-based and data-driven methods of diagnosis. Moreover, it shines the light on a new utilization of Random Forest (RF) together with model-based diagnosis, beyond its ordinary data-driven application. RF is trained and hyperparameter tuned using three-fold cross validation over a random grid of parameters using random search, to finally generate diagnostic graphs as the dynamic, data-driven part of this system. This is followed by translating those graphs into model-based rules in the form of if-else statements, SQL queries or semantic queries such as SPARQL, in order to feed the dynamic rules into a structured model essential for further diagnosis. The RF hyperparameters are consistently updated online using the newly generated sensor data to maintain the dynamicity and accuracy of the generated graphs and rules thereafter. The architecture of the proposed method is demonstrated in a comprehensive manner, and the dynamic rules extraction phase is applied using a case study on condition monitoring of a hydraulic test rig using time-series multivariate sensor readings.https://www.mdpi.com/2413-4155/2/4/61industry4.0fault detectionfault diagnosisrandom forestdiagnostic graphdistributed diagnosis
collection DOAJ
language English
format Article
sources DOAJ
author Ahlam Mallak
Madjid Fathi
spellingShingle Ahlam Mallak
Madjid Fathi
A Hybrid Approach: Dynamic Diagnostic Rules for Sensor Systems in Industry 4.0 Generated by Online Hyperparameter Tuned Random Forest
Sci
industry4.0
fault detection
fault diagnosis
random forest
diagnostic graph
distributed diagnosis
author_facet Ahlam Mallak
Madjid Fathi
author_sort Ahlam Mallak
title A Hybrid Approach: Dynamic Diagnostic Rules for Sensor Systems in Industry 4.0 Generated by Online Hyperparameter Tuned Random Forest
title_short A Hybrid Approach: Dynamic Diagnostic Rules for Sensor Systems in Industry 4.0 Generated by Online Hyperparameter Tuned Random Forest
title_full A Hybrid Approach: Dynamic Diagnostic Rules for Sensor Systems in Industry 4.0 Generated by Online Hyperparameter Tuned Random Forest
title_fullStr A Hybrid Approach: Dynamic Diagnostic Rules for Sensor Systems in Industry 4.0 Generated by Online Hyperparameter Tuned Random Forest
title_full_unstemmed A Hybrid Approach: Dynamic Diagnostic Rules for Sensor Systems in Industry 4.0 Generated by Online Hyperparameter Tuned Random Forest
title_sort hybrid approach: dynamic diagnostic rules for sensor systems in industry 4.0 generated by online hyperparameter tuned random forest
publisher MDPI AG
series Sci
issn 2413-4155
publishDate 2020-09-01
description In this work, a hybrid component Fault Detection and Diagnosis (FDD) approach for industrial sensor systems is established and analyzed, to provide a hybrid schema that combines the advantages and eliminates the drawbacks of both model-based and data-driven methods of diagnosis. Moreover, it shines the light on a new utilization of Random Forest (RF) together with model-based diagnosis, beyond its ordinary data-driven application. RF is trained and hyperparameter tuned using three-fold cross validation over a random grid of parameters using random search, to finally generate diagnostic graphs as the dynamic, data-driven part of this system. This is followed by translating those graphs into model-based rules in the form of if-else statements, SQL queries or semantic queries such as SPARQL, in order to feed the dynamic rules into a structured model essential for further diagnosis. The RF hyperparameters are consistently updated online using the newly generated sensor data to maintain the dynamicity and accuracy of the generated graphs and rules thereafter. The architecture of the proposed method is demonstrated in a comprehensive manner, and the dynamic rules extraction phase is applied using a case study on condition monitoring of a hydraulic test rig using time-series multivariate sensor readings.
topic industry4.0
fault detection
fault diagnosis
random forest
diagnostic graph
distributed diagnosis
url https://www.mdpi.com/2413-4155/2/4/61
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