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Failure probability prediction based on condition monitoring data of wind energy systems for spare parts supply
Authors:Kirsten Tracht  Gert Goch  Peter Schuh  Michael Sorg  Jan F Westerkamp
Affiliation:1. Bremen Institute for Mechanical Engineering (bime), University of Bremen, Badgasteiner Straße 1, 28359 Bremen, Germany;2. Bremen Institute for Metrology, Automation and Quality Science (BIMAQ), University of Bremen, Linzer Straße 13, 28359 Bremen, Germany
Abstract:The feasibility of maintenance processes relies on the availability of spare parts. Spare part inventory planning is capital intensive. It is based on demand forecasting, which possesses a high potential in reducing inventories. Even if condition monitoring systems are installed in technical systems, condition monitoring information is barely used to predict the failure probability of units. Therefore, an enhanced forecast model, which integrates SCADA information, has been developed. This leads to more accurate spare part demand forecasts. The approach presented in the paper is based on data mining, the proportional hazards model (PHM) and a binomial distribution. It has been validated with maintenance data of wind energy systems.
Keywords:Maintenance  Predictive model  Reliability
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