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EPSRC Reference:
EP/C54658X/1
Title:
A stochastic modelling development to system state prediction of high value, high risk systems subject to condition monitoring
Principal Investigator:
Wang, Professor W
Other Investigators:
Researcher Co-Investigators:
Project Partners:
QinetiQ
Department:
Accounting Econ & Mgt Science Res Inst
Organisation:
University of Salford
Scheme:
Standard Research (Pre-FEC)
Starts:
01 February 2006
Ends:
31 March 2009
Value (£):
160,995
EPSRC Research Topic Classifications:
Mathematical Aspects of OR
EPSRC Industrial Sector Classifications:
Aerospace, Defence and Marine
Related Grants:
Panel History:
Panel Date
Panel Name
Outcome
08 Jun 2005
Mathematics Prioritisation Panel (Science)
Deferred
Summary on Grant Application Form
Condition monitoring is growing in popularity In industry with considerable sums now being spent on condition monitoring hardware and software. It is noted however that despite the significant rise In the profile of maintenance activities, and a burgeoning in the numbers and sophistication of condition monitoring equipment, systems continue to fail. Why is this? The single largest contributing factor Is that maintenance engineers lack a reliable way of prognosis. The aim of the project is to develop a modelling approach for fault detection, prognosis and subsequently maintenance decision making. The key technique we adopt Is what called a Hidden Markov Model (HMM) . It is a technique widely used in speech recognition and image segmentation.Here we assume the system monitored deteriorates according to a time/age dependent Markov process, but its state is unobservable. We furtherassume that the observed monitoring parameters is influenced by the underlying state of the system with random noise but not vice versus. A recursive filtering techniques is used to establish the initial fault detection and prognosis model based observed past history information. The model proposed will play a major role in condition based maintenance decision support, which in turn will save millions in UK industry if it proves to be valid.
Key Findings
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Potential use in non-academic contexts
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Summary
Date Materialised
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Project URL:
Further Information:
Organisation Website:
http://www.salford.ac.uk