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Application of Signal Analysis and Data-driven Approaches to Fault Detection and Diagnosis in Automotive Engines

机译:信号分析和数据驱动方法在汽车发动机的故障检测和诊断中的应用

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The modern era of sophisticated automobiles is necessitating the development of generic and automated embedded fault diagnosis tools. Future vehicles are expected to contain more than one hundred complex Electronic Control Units (ECUs) and data acquisition systems to control and monitor large number of system variables in real-time. There exists an abundant amount of literature on fault detection and diagnosis (FDD). However, these techniques are developed in isolation. In order to solve the problem of FDD in complex systems, such as modern vehicles, a hybrid methodology combining different techniques is needed. Here, we apply an approach based on signal analysis that combines various signal processing and statistical learning techniques for real-time FDD in automotive engines. The data under several scenarios is collected from an engine model running in a real-time simulator and controlled by an ECU.
机译:先进的汽车现代化时代需要开发通用和自动嵌入式故障诊断工具。未来的车辆预计包含超过一百多个复杂的电子控制单元(ECU)和数据采集系统,可以实时控制和监控大量系统变量。故障检测和诊断(FDD)存在丰富的文献。然而,这些技术是以隔离开发的。为了解决复杂系统中FDD的问题,如现代车辆,需要结合不同技术的混合方法。在这里,我们应用一种基于信号分析的方法,该方法将各种信号处理和统计学习技术结合在汽车发动机中的实时FDD。从在实时模拟器中运行的发动机模型中收集若干方案下的数据并由ECU控制。

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