A modern vehicle fitted with sensors, actuators, and Electronic Control Units (ECUs) can be divided into several operational subsystems called Functional Working Groups (FWGs). Examples of these FWGs include the engine system, transmission, fuel system, brakes, etc. Each FWG has associated sensor-channels that gauge vehicular operating conditions. This data rich environment is conducive to the development of Predictive Maintenance (PdM) technologies. Undercutting various PdM technologies is the need for robust anomaly detection models that can identify events or observations which deviate significantly from the majority of the data and do not conform to a well defined notion of normal vehicular operational behavior. In this paper, we introduce the Vehicle Performance, Reliability, and Operations (VePRO) dataset and use it to create a multi-phased approach to anomaly detection. Utilizing Temporal Convolution Networks (TCN), our anomaly detection system can achieve 96% detection accuracy and accurately predicts 91% of true anomalies. The performance of our anomaly detection system improves when sensor channels from multiple FWGs are utilized.
翻译:装有传感器、电动器和电子控制装置的现代车辆可以分为几个操作性次系统,称为功能工作组(FWGs),这些功能工作组的例子包括发动机系统、传输、燃料系统、刹车等。每个FWG都有测量车辆操作条件的相关传感器通道。这种丰富的数据环境有利于预测性维护技术的发展。各种PDM技术的渗透是需要强大的异常现象探测模型,能够识别与大多数数据大不相同的事件或观测,并且不符合正常的车辆操作行为这一明确界定的概念。在本文件中,我们采用了车辆性能、可靠性和操作数据集,并用这些数据建立多阶段性能检测异常现象的方法。利用时变异现象探测系统可以达到96%的检测准确率,并准确预测真实异常现象的91%。在使用多个FWG的传感器频道时,我们异常现象探测系统的性能会得到改善。