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Search: WFRF:(Wang H) > (2015-2019) > Doctoral thesis > Toward Predictive M...

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Toward Predictive Maintenance in a Cloud Manufacturing Environment : A population-wide approach

Schmidt, Bernard, 1981- (author)
Högskolan i Skövde,Institutionen för ingenjörsvetenskap,Forskningscentrum för Virtuella system,Produktion och Automatiseringsteknik, Production and Automation Engineering
Wang, Lihui (thesis advisor)
Högskolan i Skövde,Forskningscentrum för Virtuella system,Institutionen för ingenjörsvetenskap,KTH Royal Institute of Technology, Stockholm, Sweden
Ng, Amos H. C., 1970- (thesis advisor)
Högskolan i Skövde,Institutionen för ingenjörsvetenskap,Forskningscentrum för Virtuella system
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Yuan, Fuqing (opponent)
UiT The Arctic University of Norway, Tromsø ,Norway
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 (creator_code:org_t)
ISBN 9789198418729
Skövde : University of Skövde, 2018
English.
  • Doctoral thesis (other academic/artistic)
Abstract Subject headings
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  • The research presented in this thesis is focused on improving industrial maintenance by using better decision support that is based on a wider range of input information. The core objective is to research how to integrate information from a population of similar monitored objects. The data to be aggregated comes from multiple disparate sources including double ball-bar circularity tests, the maintenance management system, and the machine tool’s controller. Various data processing and machine learning methods are applied and evaluated. Finally, an economic evaluation of the proposed approach is presented. The work performed is presented in five appended papers.Paper I presents an investigation of cloud-based predictive maintenance concepts and their potential benefits and challenges.Paper II presents the results of an investigation of available and potentially useful data from the perspective of predictive analytics with a focus on the linear axes of machine tools.Paper III proposes a semantic framework for predictive maintenance, and investigates means of acquiring relevant information from different sources (i.e., ontology-based data retrieval).Paper IV presents a method for data integration. The method is applied to data obtained from a real manufacturing setup. Simulation-based evaluation is used to compare results with a traditional time-based approach.Paper V presents the results from additional simulation-based experiments based on the method from Paper IV. The aim is to improve the method and provide additional information that can support maintenance decision-making (e.g., determining the optimal interval for inspections).The method developed in this thesis is applied to a population of linear axes from a set of similar multipurpose machine tools. The linear axes of machine tools are very important, as their performance directly affects machining quality. Measurements from circularity tests performed using a double ball-bar measuring device are combined with event and context information to build statistical failure and classification models. Based on those models, a decision-making process is proposed and evaluated. In the analysed case, the proposed approach leads to direct maintenance cost reduction of around 40 % compared to a time-based approach.

Subject headings

TEKNIK OCH TEKNOLOGIER  -- Maskinteknik -- Tillförlitlighets- och kvalitetsteknik (hsv//swe)
ENGINEERING AND TECHNOLOGY  -- Mechanical Engineering -- Reliability and Maintenance (hsv//eng)

Keyword

predictive maintenance
condition monitoring
population-wide approach
machine learning
double ball-bar measurement
Production and Automation Engineering
Produktion och automatiseringsteknik

Publication and Content Type

vet (subject category)
dok (subject category)

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