跳到主要內容區塊

國立臺灣大學統計與數據科學研究所

最新消息

【演講公告】11/3專題討論|成功大學統計系李宜真助理教授:Building Degradation Index with Variable Selection for Multivariate Sensory Data

講者:李宜真助理教授(成功大學統計系)。
時間:111年11月3日(星期四)13:30。
地點:台大次震宇宙館601室。
講題:Building Degradation Index with Variable Selection for Multivariate Sensory Data
摘要:The modeling and analysis of degradation data have been an active research area in reliability engineering for reliability assessment and system health management. As the sensor technology advances, multivariate sensory data are commonly collected for the underlying degradation process. However, most existing research on degradation modeling requires a univariate degradation index to be provided. Thus, to construct a degradation index for multivariate sensory data is a fundamental step in degradation modeling. In this paper, we propose a novel degradation index building method for multivariate sensory data with censoring. Based on an additive nonlinear model with variable selection, the proposed method can handle censored data, and can automatically select the informative sensor signals to be used in the degradation index. The penalized likelihood method with adaptive group penalty is developed for parameter estimation. We demonstrate that the proposed method outperforms existing methods via both simulation studies and analyses of the jet engine sensor data.