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Auxiliary power unit failure prediction using quantified generalized renewal process

  • Yujie Zhang
  • , Lulu Wang
  • , Shaonian Wang
  • , Peng Wang
  • , Haitao Liao
  • , Yu Peng*
  • *Corresponding author for this work
  • Harbin Institute of Technology
  • Shenyang Main.Base
  • AECC Commercial Aircraft Engine Co., Ltd
  • University of Arkansas, Fayetteville

Research output: Contribution to journalArticlepeer-review

Abstract

Auxiliary Power Unit (APU) is an essential component utilized in modern civil aircraft. In order to meet APU availability requirements, failure prediction should be performed in an effective way. To this end, APU performance deterioration can be modeled by a Generalized Renewal Process (GRP). In this paper, aircraft APU failure prediction is implemented using a Weibull-based GRP (WGRP). However, the effect of maintenance activities on aircraft APU required in WGRP is difficult to be quantified. To solve this problem, a new model named Quantified Generalized Renewal Process (QGRP) is developed in this paper. In this model, APU performance-related test parameters after repairs are utilized to quantify the maintenance effect. Based on the proposed QGRP model, the conditional failure rate and hazard rate of each aircraft APU at a future point in time can be calculated based on the APU's virtual age and be combined to predict the number of failures of a fleet of APUs. The performance of the proposed QGRP model is validated using a three-year data set provided by China Southern Airlines. The results show that the QGRP model is effective in aircraft APU failure prediction.

Original languageEnglish
Pages (from-to)215-225
Number of pages11
JournalMicroelectronics Reliability
Volume84
DOIs
StatePublished - May 2018

Keywords

  • APU
  • Condition-based maintenance
  • Deterioration
  • Failure prediction
  • QGRP
  • Repairable systems
  • Virtual age

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