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NUST INSTITUTIONS' LIBRARY CATALOGUE
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Atta-ur-Rahman School of Applied Biosciences (ASAB)
Central Library (CL)
Centre for International Peace & Stability (CIPS)
College of Aeronautical Engineering (CAE)
College of Electrical & Mechanical Engineering (CEME)
Institute of Environmental Science and Engineering (IESE)
Institute of Geographical Information Systems (IGIS)
Military College of Engineering (MCE)
Military College of Signals (MCS)
NUST Baluchistan Campus (NBC)
NUST Creative Learning School & College (NCLS&C)
NUST Institute of Peace & Conflict Studies (NIPCONS)
NUST Law School (NLS)
NUST School of Health Sciences (NSHS)
Pakistan Navy Engineering College (PNEC)
School of Art Design and Architecture (SADA)
School of Chemical & Materials Engineering (SCME)
School of Civil and Environmental Engineering (SCEE)
School of Interdisciplinary Engineering and Sciences (SINES)
School of Mechanical & Manufacturing Engineering (SMME)
School of Natural Sciences (SNS)
US-Pakistan Center for Advanced Studies in Energy (USPCAS-E)
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MS-MECH-84 MSTHESIS ABSTRACT. Reconfigurable Manufacturing Systems (RMS) effectively respond to fluctuating market needs and customer demands for finished product. Diagnosability is a supporting characteristic of RMS that has a say in the quality of finished product. Cost and time taken for manufacturing are also considerably affected if proper diagnosability measures are not taken. Previous studies on Diagnosability of RMS have been studied from Axiomatic System Theory as such Design For Diagnosability (DFD). Nevertheless Diagnosability remains to be the least studied characteristic of RMS. With the availability of digitized data, Machine Learning approaches to advance manufacturing have proven to be considerably effective. A research gap existed for the application of Machine Learning techniques in improving the Diagnosability of RMS. A framework of Machine Learning has been proposed to address this gap. The working of the framework has been illustrated by two demonstrations from the available datasets, one in identifying proper signals in semi-conductor manufacturing to predict excursions, and the second in predicting machine failures due to a variety of factors. The framework is rendered in a concurrent-engineering fashion. The framework is tested against two available manufacturing datasets. Increase in Diagnosability will decrease the cost and time taken to production. Key Words: Reconfigurable Manufacturing Systems, Machine Learning, Artificial Intelligence, Preventive Maintenance, Intelligent Manufacturing
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