An Inference-based Prognostic Framework for Health Management of Automotive Systems

IF 1.4 Q2 ENGINEERING, MULTIDISCIPLINARY
C. Sankavaram, A. Kodali, K. Pattipati, Satnam Singh, Yilu Zhang, M. Salman
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引用次数: 5

Abstract

This paper presents a unified data-driven prognostic framework that combines failure time data, static parameter data and dynamic time-series data. The framework employs proportional hazards model and a soft dynamic multiple fault diagnosis algorithm for inferring the degraded state trajectories of components and to estimate their remaining useful life times. The framework takes into account the cross-subsystem fault propagation, a case prevalent in any networked and embedded system. The key idea is to use Cox proportional hazards model to estimate the survival functions of error codes and symptoms (probabilistic test outcomes/prognostic indicators) from failure time data and static parameter data, and use them to infer the survival functions of components via soft dynamic multiple fault diagnosis algorithm. The average remaining useful life and its higher-order central moments (e.g., variance, skewness, kurtosis) can be estimated from these component survival functions. The framework is demonstrated on datasets derived from two automotive systems, namely hybrid electric vehicle regenerative braking system, and an electronic throttle control subsystem simulator. Although the proposed framework is validated on automotive systems, it has the potential to be applicable to a wide variety of systems, ranging from aerospace systems to buildings to power grids.
基于推理的汽车系统健康管理预测框架
本文提出了一种结合故障时间数据、静态参数数据和动态时间序列数据的统一数据驱动预测框架。该框架采用比例风险模型和软动态多故障诊断算法来推断部件的退化状态轨迹并估计其剩余使用寿命。该框架考虑了任何网络和嵌入式系统中普遍存在的跨子系统故障传播。其核心思想是利用Cox比例风险模型从故障时间数据和静态参数数据中估计出错误码和故障症状(概率测试结果/预后指标)的生存函数,并利用它们通过软动态多故障诊断算法推断出部件的生存函数。平均剩余使用寿命及其高阶中心矩(例如,方差、偏度、峰度)可以从这些成分生存函数中估计出来。该框架在来自两个汽车系统的数据集上进行了演示,即混合动力电动汽车再生制动系统和电子油门控制子系统模拟器。虽然提出的框架在汽车系统上得到了验证,但它有可能适用于各种各样的系统,从航空航天系统到建筑物再到电网。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.90
自引率
9.50%
发文量
18
审稿时长
9 weeks
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