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Generation of a diagnosis model for hybrid-electric vehicles using machine learning

机译:用机器学习生成混合动力汽车的诊断模型

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Online fault-diagnosis on system level for complex mechatronic systems takes multiple sensor measurements of the various components into account and contributes to a significantly increased system reliability by tracking down faults in the system at run time, enabling fault-specific recovery actions, such as reconfigurations. Ongoing efforts in the technological development of automobiles, especially in the field of driver assistance systems, yield more and more safety-critical systems, e.g., breaking control systems, and thus generate a high demand for reliable online diagnosis systems. In order to perform faultdiagnosis on system level, the interrelations between all measurements must be determined, which is a challenging and often demanding task done by human system experts. In this paper we present a systematic approach based on machine learning to establish online diagnosis for a hybrid-electric vehicle model in the context of the DAKODIS research project. With this paper we publish the Matlab/Simulink HEV research platform including a fault injection framework and data processing algorithms for active fault-diagnosis and recovery evaluations. (C) 2020 Elsevier B.V. All rights reserved.
机译:在线故障诊断复杂机电系统的系统级别考虑了各种组件的多个传感器测量,并通过在运行时跟踪系统中的故障,从而有效地增加了系统可靠性,从而实现了特定于故障特定的恢复操作,例如重新配置。持续努力在汽车的技术开发中,特别是在驾驶员辅助系统领域,产生越来越多的安全关键系统,例如打破控制系统,从而产生对可靠的在线诊断系统的高需求。为了对系统级进行故障诊断,必须确定所有测量之间的相互关系,这是人类系统专家完成的具有挑战性和经常要求的任务。本文介绍了一种基于机器学习的系统方法,在Dakodis研究项目的背景下建立混合动力汽车模型的在线诊断。有了本文,我们发布了MATLAB / SIMULINK HEV研究平台,包括故障注入框架和数据处理算法,用于有源故障诊断和恢复评估。 (c)2020 Elsevier B.v.保留所有权利。

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