Diagnosing Vehicles with Automotive Batteries

Liang He, L. Kong, Ziyang Liu, Yuanchao Shu, Cong Liu
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引用次数: 4

Abstract

The automotive industry is increasingly employing software- based solutions to provide value-added features on vehicles, especially with the coming era of electric vehicles and autonomous driving. The ever-increasing cyber components of vehicles (i.e., computation, communication, and control), however, incur new risks of anomalies, as demonstrated by the millions of vehicles recalled by different manufactures. To mitigate these risks, we design B-Diag, a battery-based diagnostics system that guards vehicles against anomalies with a cyber-physical approach, and implement B-Diag as an add-on module of commodity vehicles attached to automotive batteries, thus providing vehicles an additional layer of protection. B-Diag is inspired by the fact that the automotive battery operates in strong dependency with many physical components of the vehicle, which is observable as correlations between battery voltage and the vehicle's corresponding operational parameters, e.g., a faster revolutions-per-minute (RPM) of the engine, in general, leads to a higher battery voltage. B-Diag exploits such physically-induced correlations to diagnose vehicles by cross-validating the vehicle information with battery voltage, based on a set of data-driven norm models constructed online. Such a design of B-Diag is steered by a dataset collected with a prototype system when driving a 2018 Subaru Crosstrek in real-life over 3 months, covering a total mileage of about 1, 400 miles. Besides the Crosstrek, we have also evaluated B-Diag with driving traces of a 2008 Honda Fit, a 2018 Volvo XC60, and a 2017 Volkswagen Passat, showing B-Diag detects vehicle anomalies with >86% (up to 99%) averaged detection rate.
用汽车电池诊断车辆
汽车行业越来越多地采用基于软件的解决方案,为车辆提供增值功能,特别是随着电动汽车和自动驾驶时代的到来。然而,汽车中不断增加的网络组件(即计算、通信和控制)带来了新的异常风险,不同制造商召回的数百万辆汽车就证明了这一点。为了降低这些风险,我们设计了B-Diag,一种基于电池的诊断系统,通过网络物理方法保护车辆免受异常情况的影响,并将B-Diag作为附加模块安装在汽车电池上,从而为车辆提供额外的保护层。B-Diag的灵感来自于这样一个事实,即汽车电池的运行与车辆的许多物理部件都有很强的依赖性,这可以从电池电压与车辆相应的运行参数之间的相关性中观察到,例如,通常情况下,发动机每分钟转速(RPM)越快,电池电压就越高。B-Diag基于一组在线构建的数据驱动规范模型,通过交叉验证车辆信息和电池电压,利用这种物理相关性来诊断车辆。这种设计的B-Diag是由一个原型系统收集的数据集引导的,该数据集是在实际驾驶一辆2018年的斯巴鲁Crosstrek时收集的,行驶了3个多月,总里程约为1400英里。除了Crosstrek,我们还利用2008年本田飞度、2018年沃尔沃XC60和2017年大众帕萨特的驾驶痕迹对B-Diag进行了评估,结果显示B-Diag对车辆异常的平均检测率>86%(最高99%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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