Innovative Model-Free Onboard Diagnostics for Diesel Particulate Filter

IF 1.1 Q3 TRANSPORTATION SCIENCE & TECHNOLOGY SAE International Journal of Engines Pub Date : 2023-11-09 DOI:10.4271/03-17-03-0023
Bilal Youssef
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引用次数: 0

Abstract

Recent legislations require very low soot emissions downstream of the particulate filter in diesel vehicles. It will be difficult to meet the new more stringent OBD requirements with standard diagnostic methods based on differential sensors. The use of inexpensive and reliable soot sensors has become the focus of several academic and industrial works over the past decade. In this context, several diagnostic strategies have been developed to detect DPF malfunction based on the soot sensor loading time. This work proposes an advanced online diagnostic method based on soot sensor signal projection. The proposed method is model-free and exclusively uses soot sensor signal without the need for subsystem models or to estimate engine-out soot emissions. It provides a comprehensive and efficient filter monitoring scheme with light calibration efforts. The proposed diagnostic algorithm has been tested on an experimentally validated simulation platform. 2D signatures are generated from soot sensor signal for nominal and faulty configurations. Gaussian dispersions on soot estimator (30%) and sensor model (15%) have been considered. Based on a statistical analysis, a relevant threshold is defined satisfying a compromise between non-detection and false alarm rates. The selected threshold is then used for online DPF diagnostic using NEDC cycle. The obtained results are promising and clearly show the performance of the proposed method in terms of non-detection and false alarm rates. The resulting diagnostic scheme can be easily integrated in the ECU for onboard DPF monitoring.
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创新的无模型柴油微粒过滤器机载诊断
最近的立法要求柴油车微粒过滤器下游的烟尘排放量非常低。基于差分传感器的标准诊断方法将很难满足新的更严格的OBD要求。在过去的十年中,使用廉价可靠的烟灰传感器已成为学术界和工业界关注的焦点。在这种情况下,已经开发了几种诊断策略来检测基于烟灰传感器加载时间的DPF故障。本文提出了一种基于烟灰传感器信号投影的在线诊断方法。该方法不需要模型,只使用烟尘传感器信号,不需要子系统模型,也不需要估算发动机出烟量。它提供了一个全面而有效的滤光片监测方案,只需少量的校准工作。所提出的诊断算法已在实验验证的仿真平台上进行了测试。二维特征是由烟灰传感器信号产生的标称和故障配置。考虑了烟灰估计器(30%)和传感器模型(15%)上的高斯色散。在统计分析的基础上,定义了满足未检测率和虚警率之间折衷的相关阈值。然后使用NEDC循环将选定的阈值用于在线DPF诊断。得到的结果是有希望的,并且清楚地表明了所提出的方法在未检测率和虚警率方面的性能。由此产生的诊断方案可以很容易地集成到ECU中,用于机载DPF监测。
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来源期刊
SAE International Journal of Engines
SAE International Journal of Engines TRANSPORTATION SCIENCE & TECHNOLOGY-
CiteScore
2.70
自引率
8.30%
发文量
38
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