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Lightweight mixture faults detection method for gasoline engine using on-line trend analysis

机译:基于在线趋势分析的汽油机轻量化混合料故障检测方法

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摘要

Mixture faults detection is meaningful for gasoline engines because proper mixture is the basic prerequisite for healthy running of a combustion engine. Among existing methods for faults detection, the data-driven trend analysis technique is widely used due to the simplicity and efficiency in time-domain. The CUSUM (Cumulative Sum Of Errors) algorithm is good at real-time trend extraction, but it's easy to be costly on the fuel trim signal during the engine in normal working conditions, which will increase battery energy consumption because engine failure is rarely occurs. Hence, the conventional treatment methods of artifacts in the CUSUM algorithm are modified by means of decay function and detection time analysis. The thresholds are tuned according to the characteristics of artifacts instead of residual variability, which leads to better results of trend extraction and less computation. Then, the revised CUSUM algorithm is used for monitoring the mixture abnormal behaviors, and the mixture faults can be detected in real time through analyzing the variation features of fuel trim signal. The lightweight faults detector using the advanced CUSUM algorithm (FD-A-CUSUM) is evaluated on the experimental data collected from a Ford engine. The validation results show that while engine works under normal conditions, the computation of FD-A-CUSUM has decreased by 72.79 in comparison with the detection method using the original CUSUM algorithm (FD-O-CUSUM), and the false alarm ratio of FD-A-CUSUM is 3.37 . Futhermore, the detection results of FD-A-CUSUM for two leakage faults have achieved 91.18 test accuracy.
机译:混合故障检测对汽油发动机很有意义,因为适当的混合是内燃机健康运行的基本先决条件。在现有的故障检测方法中,数据驱动的趋势分析技术因其时域的简单性和高效性而被广泛应用。CUSUM(Cumulative Sum Of Errors)算法擅长实时趋势提取,但在正常工况下,发动机在燃油配平信号上容易产生高昂的成本,由于发动机故障很少发生,因此会增加电池能耗。因此,通过衰减函数和检测时间分析对CUSUM算法中伪影的常规处理方法进行了修改。阈值根据伪影的特征而不是残差变异性进行调整,从而获得更好的趋势提取结果和更少的计算。然后,利用修正后的CUSUM算法对混合气异常行为进行监测,通过分析燃油配平信号的变化特征,实时检测混合料故障。使用先进的CUSUM算法(FD-A-CUSUM)的轻量级故障检测器在从福特发动机收集的实验数据上进行评估。验证结果表明,当发动机在正常条件下工作时,FD-A-CUSUM的计算量减少了72。与使用原始CUSUM算法(FD-O-CUSUM)的检测方法相比,79%,FD-A-CUSUM的误报率为3.37%。此外,FD-A-CUSUM对两个泄漏故障的检测结果达到了91.18%的测试精度。

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