Predictive Maintenance Scheduling with Failure Rate Described by Truncated Normal Distribution

The method of risk assessment and planning of technical inspections of machines and optimization of production tasks is the main focus of this study. Any unpredicted failure resulted in the production plans no longer being valid, production processes needing to be rescheduled, costs of unused machin...

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Main Authors: Iwona Paprocka, Wojciech M. Kempa, Grzegorz Ćwikła
Format: Article
Language:English
Published: MDPI AG 2020-11-01
Series:Sensors
Subjects:
Online Access:https://www.mdpi.com/1424-8220/20/23/6787
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spelling doaj-e59af4efabe04af9937612e8dc49e33e2020-11-28T00:06:09ZengMDPI AGSensors1424-82202020-11-01206787678710.3390/s20236787Predictive Maintenance Scheduling with Failure Rate Described by Truncated Normal DistributionIwona Paprocka0Wojciech M. Kempa1Grzegorz Ćwikła2Silesian University of Technology, Faculty of Mechanical Engineering, Department of Engineering Processes Automation and Integrated Manufacturing Systems, Konarskiego 18A str., 44-100 Gliwice, PolandDepartment of Mathematics Applications and Methods for Artificial Intelligence, Faculty of Applied Mathematics, Silesian University of Technology, 23, Kaszubska Str., 44-100 Gliwice, PolandSilesian University of Technology, Faculty of Mechanical Engineering, Department of Engineering Processes Automation and Integrated Manufacturing Systems, Konarskiego 18A str., 44-100 Gliwice, PolandThe method of risk assessment and planning of technical inspections of machines and optimization of production tasks is the main focus of this study. Any unpredicted failure resulted in the production plans no longer being valid, production processes needing to be rescheduled, costs of unused machine production capacity and losses due to the production of poor-quality products increase, as well as additional costs of human resources, equipment, and materials used during the maintenance. The method reflects the operation of the production system and the nature of the disturbances, allowing for the estimation of unknown parameters related to machine reliability. The machine failure frequency was described with the normal distribution truncated to the positive half of the axis. In production practice, this distribution is commonly used to describe the phenomenon of irregularities. The presented method was an extension of the Six Sigma concept for monitoring and continuous control in order to eliminate and prevent various inconsistencies in processes and resulting products. Reliability characteristics were used to develop predictive schedules. Schedules were assessed using the criteria of solution and quality robustness. Estimation methods of parameters describing disturbances were compared for different job shop scheduling problems. The estimation method based on a maximum likelihood approach allowed for more accurate prediction of scheduling problems. The paper presents a practical example of the application of the proposed method for electric steering gears.https://www.mdpi.com/1424-8220/20/23/6787predictive maintenanceproduction planningMTTFnormal distributionSix Sigmareliability theory
collection DOAJ
language English
format Article
sources DOAJ
author Iwona Paprocka
Wojciech M. Kempa
Grzegorz Ćwikła
spellingShingle Iwona Paprocka
Wojciech M. Kempa
Grzegorz Ćwikła
Predictive Maintenance Scheduling with Failure Rate Described by Truncated Normal Distribution
Sensors
predictive maintenance
production planning
MTTF
normal distribution
Six Sigma
reliability theory
author_facet Iwona Paprocka
Wojciech M. Kempa
Grzegorz Ćwikła
author_sort Iwona Paprocka
title Predictive Maintenance Scheduling with Failure Rate Described by Truncated Normal Distribution
title_short Predictive Maintenance Scheduling with Failure Rate Described by Truncated Normal Distribution
title_full Predictive Maintenance Scheduling with Failure Rate Described by Truncated Normal Distribution
title_fullStr Predictive Maintenance Scheduling with Failure Rate Described by Truncated Normal Distribution
title_full_unstemmed Predictive Maintenance Scheduling with Failure Rate Described by Truncated Normal Distribution
title_sort predictive maintenance scheduling with failure rate described by truncated normal distribution
publisher MDPI AG
series Sensors
issn 1424-8220
publishDate 2020-11-01
description The method of risk assessment and planning of technical inspections of machines and optimization of production tasks is the main focus of this study. Any unpredicted failure resulted in the production plans no longer being valid, production processes needing to be rescheduled, costs of unused machine production capacity and losses due to the production of poor-quality products increase, as well as additional costs of human resources, equipment, and materials used during the maintenance. The method reflects the operation of the production system and the nature of the disturbances, allowing for the estimation of unknown parameters related to machine reliability. The machine failure frequency was described with the normal distribution truncated to the positive half of the axis. In production practice, this distribution is commonly used to describe the phenomenon of irregularities. The presented method was an extension of the Six Sigma concept for monitoring and continuous control in order to eliminate and prevent various inconsistencies in processes and resulting products. Reliability characteristics were used to develop predictive schedules. Schedules were assessed using the criteria of solution and quality robustness. Estimation methods of parameters describing disturbances were compared for different job shop scheduling problems. The estimation method based on a maximum likelihood approach allowed for more accurate prediction of scheduling problems. The paper presents a practical example of the application of the proposed method for electric steering gears.
topic predictive maintenance
production planning
MTTF
normal distribution
Six Sigma
reliability theory
url https://www.mdpi.com/1424-8220/20/23/6787
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AT grzegorzcwikła predictivemaintenanceschedulingwithfailureratedescribedbytruncatednormaldistribution
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