Intelligent tires can be used for a wide array of applications ranging from tire pressure monitoring to analyzing tire/road interactions, wheel loading, and tread wear monitoring. In this article, we develop a measurement system for intelligent tires equipped with a 3-D piezoresistive force sensor. The output of the sensor is segmented into tire revolution cycles, which are then represented by a transformation relying on adaptive Hermite functions. The underlying idea behind this step is to extract relevant features which capture tire dynamics. Then we evaluate the proposed measurement system in a potential vehicle application, that is, abnormal road surface detection. We deal with the corresponding binary classification problem by developing both low-complexity analytical and data-driven machine learning algorithms, which are tested on real-world measurement data. Our experiments showed that the proposed methods are able to detect abnormalities on the road surface with a mean accuracy of over 97%.
翻译:智能轮胎可用于从轮胎压力监测到分析轮胎/公路相互作用、车轮装载和胎面磨损监测等一系列广泛的应用。 在本条中,我们开发了一个智能轮胎测量系统,配有3D派分裂性感应器。传感器的输出被分割成轮胎革命周期,然后通过依赖适应性Hermite功能的转化来体现。这一步骤背后的基本想法是提取能够捕捉轮胎动态的相关特征。然后我们评估一个潜在车辆应用中的拟议测量系统,即异常的公路表面探测。我们通过开发低兼容性分析和数据驱动机学习算法来处理相应的二进制分类问题,这些算法都是在现实世界测量数据中测试的。我们的实验表明,拟议方法能够以超过97%的平均精度探测到道路表面的异常现象。