Condition Monitoring and Predictive Maintenance of Process Equipments

Industry 4.0 the proclaimed fourth industrial revolution is unfolding at the moment. It is characterized by interconnectedness and vast amounts of available information. Industrial production has evolved enormously over the last centuries due to modern instruments. Hence issue of the instrument fail...

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Main Authors: Deshmukh Manthan, Dumbre Rohan, Anekar Shubham, Kulkarni Heramb, Pawar Sushant
Format: Article
Language:English
Published: EDP Sciences 2021-01-01
Series:ITM Web of Conferences
Online Access:https://www.itm-conferences.org/articles/itmconf/pdf/2021/05/itmconf_icacc2021_01003.pdf
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author Deshmukh Manthan
Dumbre Rohan
Anekar Shubham
Kulkarni Heramb
Pawar Sushant
author_facet Deshmukh Manthan
Dumbre Rohan
Anekar Shubham
Kulkarni Heramb
Pawar Sushant
author_sort Deshmukh Manthan
collection DOAJ
description Industry 4.0 the proclaimed fourth industrial revolution is unfolding at the moment. It is characterized by interconnectedness and vast amounts of available information. Industrial production has evolved enormously over the last centuries due to modern instruments. Hence issue of the instrument failure is very paramount in any industry. Even if one machine fails it halts the whole production. Overall, it may cost us with more man-hours, project delay, process latency and all this sums up as a huge loss. The life of the instruments should be taken care by continuously monitoring its health. Any faulty or unnatural disturbance in usage of the instrument may lead to its failure. Every instrument needs proper maintenance, even with the slight negligence towards the anomaly it may lead to instrument failure. In, predictive maintenance historic data is utilized and analyzed with the help of advance analytics and modelling techniques using Machine learning, moreover we can predict failures and can schedule the maintenance beforehand and predict failure in advance. With the help of relevant sensor dataset, we can estimate the remaining runtime of the instruments. This maintenance approach helps to lower the costs which are incurred due to system shut downs. It also ease the scheduling and maintenance activities.In this work, three different industrial case studies are considered like shell and tube type heat exchanger, plate type heat exchanger, and semiconductor manufacturing process.Here the predictive maintenance is carried out for heat exchanger by utilizing the concept of multi linear regression and time series analysis. For the semiconductor manufacturing dataset, support vector machine algorithm is implemented to find out the good and bad quality of semiconductor production slots.
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spelling doaj.art-eeda67039e5248d486d2ff07b0de98052022-12-21T18:33:04ZengEDP SciencesITM Web of Conferences2271-20972021-01-01400100310.1051/itmconf/20214001003itmconf_icacc2021_01003Condition Monitoring and Predictive Maintenance of Process EquipmentsDeshmukh Manthan0Dumbre Rohan1Anekar Shubham2Kulkarni Heramb3Pawar Sushant4Department of Instrumentation Engineering, Ramrao Adik Institute of TechnologyDepartment of Instrumentation Engineering, Ramrao Adik Institute of TechnologyDepartment of Instrumentation Engineering, Ramrao Adik Institute of TechnologyDepartment of Instrumentation Engineering, Ramrao Adik Institute of TechnologyDepartment of Instrumentation Engineering, Ramrao Adik Institute of TechnologyIndustry 4.0 the proclaimed fourth industrial revolution is unfolding at the moment. It is characterized by interconnectedness and vast amounts of available information. Industrial production has evolved enormously over the last centuries due to modern instruments. Hence issue of the instrument failure is very paramount in any industry. Even if one machine fails it halts the whole production. Overall, it may cost us with more man-hours, project delay, process latency and all this sums up as a huge loss. The life of the instruments should be taken care by continuously monitoring its health. Any faulty or unnatural disturbance in usage of the instrument may lead to its failure. Every instrument needs proper maintenance, even with the slight negligence towards the anomaly it may lead to instrument failure. In, predictive maintenance historic data is utilized and analyzed with the help of advance analytics and modelling techniques using Machine learning, moreover we can predict failures and can schedule the maintenance beforehand and predict failure in advance. With the help of relevant sensor dataset, we can estimate the remaining runtime of the instruments. This maintenance approach helps to lower the costs which are incurred due to system shut downs. It also ease the scheduling and maintenance activities.In this work, three different industrial case studies are considered like shell and tube type heat exchanger, plate type heat exchanger, and semiconductor manufacturing process.Here the predictive maintenance is carried out for heat exchanger by utilizing the concept of multi linear regression and time series analysis. For the semiconductor manufacturing dataset, support vector machine algorithm is implemented to find out the good and bad quality of semiconductor production slots.https://www.itm-conferences.org/articles/itmconf/pdf/2021/05/itmconf_icacc2021_01003.pdf
spellingShingle Deshmukh Manthan
Dumbre Rohan
Anekar Shubham
Kulkarni Heramb
Pawar Sushant
Condition Monitoring and Predictive Maintenance of Process Equipments
ITM Web of Conferences
title Condition Monitoring and Predictive Maintenance of Process Equipments
title_full Condition Monitoring and Predictive Maintenance of Process Equipments
title_fullStr Condition Monitoring and Predictive Maintenance of Process Equipments
title_full_unstemmed Condition Monitoring and Predictive Maintenance of Process Equipments
title_short Condition Monitoring and Predictive Maintenance of Process Equipments
title_sort condition monitoring and predictive maintenance of process equipments
url https://www.itm-conferences.org/articles/itmconf/pdf/2021/05/itmconf_icacc2021_01003.pdf
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