汽车电气系统的智能诊断/预测框架

Manzar Abbas, A. Ferri, M. Orchard, G. Vachtsevanos
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引用次数: 48

摘要

汽车系统越来越依赖于电子元件、计算机控制和传感器。在电气系统中检测故障并预测故障部件的剩余使用寿命已变得至关重要。本文介绍了一种用于电池等关键电气部件的监测、建模、数据处理、故障诊断和故障预测的集成方法。使能技术包括信号处理、传感器选择和放置、最佳状态指标的选择和提取,以及基于故障模型物理和贝叶斯估计方法的准确故障诊断和故障预测算法。所提出的体系结构可在电子控制单元(ECU)上实现,所需的计算资源最少。潜在的好处包括降低维护成本,提高资产可靠性和可用性,延长关键组件的使用寿命。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Intelligent Diagnostic/Prognostic Framework for Automotive Electrical Systems
Automotive systems are becoming increasingly dependent on electrical components, computer control, and sensors. It has become extremely critical to detect faults in the electrical system and predict the remaining useful life of failing components. This paper introduces an integrated methodology for monitoring, modeling, data processing, fault diagnosis, and failure prognosis of critical electrical components such as the battery. The enabling technologies include signal processing, sensor selection and placement, selection and extraction of optimum condition indicators, and accurate fault diagnosis and failure prognosis algorithms that are based on both the physics of failure models and Bayesian estimation methods. The proposed architecture is implementable on-board an Electronic Control Unit (ECU) requiring minimum computational resources. Potential benefits include reduction in maintenance costs, improved asset reliability and availability and longer life of critical components.
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