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Application of a data-driven monitoring technique to diagnose air leaks in an automotive diesel engine: A case study

机译:数据驱动的监测技术在诊断汽车柴油机漏气中的应用:案例研究

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This paper presents a case study of the application of a data-driven monitoring technique to diagnose air leaks in an automotive diesel engine. Using measurement signals taken from the sensors/actuators which are present in a modern automotive vehicle, a data-driven diagnostic model is built for condition monitoring purposes, Detailed investigations have shown that measured signals taken from the experimental test-bed often contain redundant information and noise due to the nature of the process. In order to deliver a clear interpretation of these measured signals, they therefore need to undergo a 'compression' and an 'extraction' stage in the modelling process. It is at this stage that the proposed data-driven monitoring technique plays a significant role by taking only the important information of the original measured signals for fault diagnosis purposes. The status of the engine's performance is then monitored using this diagnostic model. This condition monitoring process involves two separate stages of fault detection and root-cause diagnosis. The effectiveness of this diagnostic model was validated using an experimental automotive 1.9 L four-cylinder diesel engine embedded in a chassis dynamometer in an engine test-bed. Two joint diagnostics plots were used to provide an accurate and sensitive fault detection process. Using the proposed model, small air leaks in the inlet manifold plenum chamber with a diameter size of 2-6 mm were accurately detected. Further analyses using contribution to T{sup}2 and Q statistics show the effect of these air leaks on fuel consumption. It was later discovered that these air leaks may contribute to emissions fault. In comparison to the existing model-based approaches, the proposed method has several benefits: (i) it makes no simplifying assumptions, as the model is built entirely from the measured signals; (ii) it is simple and straight-forward; (iii) there is no additional hardware required for modelling; (iv) it is a time and cost-efficient way to deliver condition monitoring (i.e. fault diagnosis application); (v) it is capable of pin-pointing the root-cause and the effect of the problem; and (vi) it is feasible to be implemented in practice.
机译:本文介绍了一个案例研究,该案例应用了数据驱动的监测技术来诊断汽车柴油机中的漏气。利用从现代汽车中存在的传感器/执行器获取的测量信号,建立用于状态监测的数据驱动诊断模型。详细研究表明,从实验测试台获取的测量信号通常包含冗余信息,并且由于过程的性质而产生噪音。为了清楚地解释这些测量信号,因此它们需要在建模过程中经历“压缩”和“提取”阶段。正是在这个阶段,所提出的数据驱动监视技术通过仅获取原始测量信号的重要信息以进行故障诊断而发挥了重要作用。然后,使用此诊断模型监视发动机性能的状态。此状态监视过程涉及故障检测和根本原因诊断两个单独的阶段。该诊断模型的有效性通过嵌入在发动机试验台底盘测功机中的实验性汽车1.9升四缸柴油发动机进行了验证。使用两个联合诊断图来提供准确而敏感的故障检测过程。使用提出的模型,可以准确地检测到进气歧管增压室中直径为2-6 mm的小空气泄漏。利用对T {sup} 2和Q统计量的贡献进行的进一步分析表明,这些漏气对燃料消耗的影响。后来发现这些漏气可能导致排放故障。与现有的基于模型的方法相比,所提出的方法具有以下优点:(i)不做任何简化的假设,因为该模型完全由测量的信号构建而成; (ii)简单明了; (iii)建模不需要额外的硬件; (iv)这是进行状态监视(即故障诊断应用)的一种省时又省钱的方法; (v)有能力查明问题的根本原因和影响; (vi)在实践中可行。

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