An Approach for Combined Vertical Vehicle Model and Road Profile Identification from Heterogeneous Fleet Data

F. Naets, Jeroen Geysen, W. Desmet
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引用次数: 4

Abstract

In this work a novel approach for concurrent vehicle model parameter and road profile identification is proposed which exploits the availability of fleet data. By combining measurement data, obtained from low-cost smartphone sensors, for multiple vehicles, typical identifiability issues present in single-vehicle measurements can be circumvented. Moreover, as the presented approach exploits a low order model where the parameters are identified for a specific asset (i.e. a digital twin), the shared road profile can be identified, rather than just the resulting forces. A computational framework is presented and a first experimental validation is performed where a speed-bump is identified using data from three different vehicles. This approach has the potential to improve the availability of accurate data for a.o. customer correlation durability design, road condition monitoring, and active suspension systems.
基于异构车队数据的垂直车辆模型与道路轮廓相结合识别方法
本文提出了一种利用车队数据的可用性同时识别车辆模型参数和道路轮廓的新方法。通过结合从低成本智能手机传感器获得的多辆车的测量数据,可以规避单辆车测量中存在的典型可识别性问题。此外,由于所提出的方法利用了低阶模型,其中为特定资产(即数字孪生)识别参数,因此可以识别共享道路轮廓,而不仅仅是产生的力。提出了一个计算框架,并进行了第一次实验验证,其中使用来自三辆不同车辆的数据识别减速带。这种方法有可能提高a.o.客户相关性耐久性设计、道路状况监测和主动悬架系统的准确数据的可用性。
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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