Data-driven fault diagnosis in a hybrid electric vehicle regenerative braking system

C. Sankavaram, B. Pattipati, K. Pattipati, Yilu Zhang, Mark N Howell, M. Salman
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引用次数: 15

Abstract

Regenerative braking is one of the most promising and environmentally friendly technologies used in electric and hybrid electric vehicles to improve energy efficiency and vehicle stability. In this paper, we discuss a systematic data-driven process for detecting and diagnosing faults in the regenerative braking system of hybrid electric vehicles. The process involves data reduction techniques, exemplified by multi-way partial least squares, multi-way principal component analysis, for implementation in memory-constrained electronic control units and well-known fault classification techniques based on reduced data, such as support vector machines, k-nearest neighbor, partial least squares, principal component analysis and probabilistic neural network, to isolate faults in the braking system. The results demonstrate that highly accurate fault diagnosis is possible with the pattern recognition-based techniques. The process can be employed for fault analysis in a wide variety of systems, ranging from automobiles to buildings to aerospace systems.
混合动力汽车再生制动系统的数据驱动故障诊断
再生制动是一种最有前途和最环保的技术,用于电动和混合动力汽车,以提高能源效率和车辆的稳定性。本文讨论了一种基于数据驱动的混合动力汽车再生制动系统故障检测与诊断方法。该过程涉及数据约简技术,例如多路偏最小二乘、多路主成分分析,用于内存受限的电子控制单元,以及基于约简数据的知名故障分类技术,如支持向量机、k近邻、偏最小二乘、主成分分析和概率神经网络,以隔离制动系统中的故障。结果表明,基于模式识别的故障诊断方法可以实现高精度的故障诊断。该过程可用于各种系统的故障分析,从汽车到建筑物再到航空航天系统。
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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