智能轮胎的监督机器学习框架

S. Strano, M. Terzo, C. Tordela
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引用次数: 2

摘要

由于人工智能技术具有分析大数据和识别关键特征的能力,因此它是未来最重要的挑战之一。在运输方面,越来越多的车辆和基础设施数据构成了对能源、安全和环境可持续性有用的大量信息。本文提出了一种应用于智能轮胎的监督式机器学习方法。从轮胎内部传感器的定义开始,展示了如何通过生成虚拟数据集将预测模型用于学习阶段。在学习阶段之后,给出了机器学习算法的体系结构和功能方案。该方法能够估计轮胎运行的关键变量,从车辆上的常见测量开始。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A supervised machine learning framework for smart tires
Artificial intelligence techniques are today among the most important challenges for the future due to their ability to analyze big data and identify key characteristics. In transportation, the growing amount of data measured on vehicles and infrastructures constitute a wealth of information useful for energy, safety and environmental sustainability. In this paper, a supervised machine learning methodology applied to smart tires is presented. Starting from the definition of sensors inside the tire, it is shown how a predictive model can be used for the learning phase through the generation of virtual datasets. Following the learning phase, the architecture and the functional scheme of the machine learning algorithm is presented. The methodology is capable to estimate key variables of the tire operation starting from common measurements on the vehicle.
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