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Fault detection for modern Diesel engines using signal- and process model-based methods

机译:使用基于信号和过程模型的方法对现代柴油机进行故障检测

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摘要

Modern Diesel engines with direct fuel injection and turbo charging have shown a significant progress in fuel consumption, emissions and driveability. Together with exhaust gas recirculation and variable geometry turbochargers they became complicated and complex processes. Therefore, fault detection and diagnosis is not easily done and need to be improved. This contribution shows a systematic development of fault detection and diagnosis methods for two system components of Diesel engines, the intake system and the injection system together with the combustion process. By applying semiphysical dynamic process models, identification with special neural networks, signal models and parity equations residuals are generated. Detectable deflections of these residuals lead to symptoms which are the basis for the detection of several faults. Experiments with a 2.0 1 Diesel engine on a dynamic test bench as well as in the vehicle have demonstrated the detection and diagnosis of several implemented faults in real time with reasonable calculation effort.
机译:具有直接燃油喷射和涡轮增压功能的现代柴油发动机在燃油消耗,排放和可驾驶性方面已显示出显着进步。再加上废气再循环和可变几何涡轮增压器,它们变得复杂而复杂。因此,故障检测和诊断不容易完成,需要改进。这一贡献显示了柴油机两个系统组件,进气系统和喷射系统以及燃烧过程的故障检测和诊断方法的系统开发。通过应用半物理动态过程模型,可以生成具有特殊神经网络,信号模型和奇偶校验方程残差的识别。这些残留物的可检测偏斜会导致出现症状,这些症状是检测多个故障的基础。在动态测试台以及车辆上使用2.0 1柴油机进行的实验表明,可以通过合理的计算工作来实时检测和诊断多个已实施的故障。

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