Tire/Road Rolling Resistance Modeling: Discussing the Surface Macrotexture Effect

M. Kane, Ebrahim Riahi, M. Do
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引用次数: 4

Abstract

This paper deals with the modeling of rolling resistance and the analysis of the effect of pavement texture. The Rolling Resistance Model (RRM) is a simplification of the no-slip rate of the Dynamic Friction Model (DFM) based on modeling tire/road contact and is intended to predict the tire/pavement friction at all slip rates. The experimental validation of this approach was performed using a machine simulating tires rolling on road surfaces. The tested pavement surfaces have a wide range of textures from smooth to macro-micro-rough, thus covering all the surfaces likely to be encountered on the roads. A comparison between the experimental rolling resistances and those predicted by the model shows a good correlation, with an R2 exceeding 0.8. A good correlation between the MPD (mean profile depth) of the surfaces and the rolling resistance is also shown. It is also noticed that a random distribution and pointed shape of the summits may also be an inconvenience concerning rolling resistance, thus leading to the conclusion that beyond the macrotexture, the positivity of the texture should also be taken into account. A possible simplification of the model by neglecting the damping part in the constitutive model of the rubber is also noted.
轮胎/道路滚动阻力建模:讨论表面宏观纹理效应
本文对滚动阻力进行建模,并对路面纹理的影响进行了分析。滚动阻力模型(RRM)是对动态摩擦模型(DFM)的无滑移率的简化,该模型基于对轮胎/路面接触的建模,旨在预测轮胎/路面在各种滑移率下的摩擦。通过模拟轮胎在路面上滚动的实验验证了该方法的有效性。测试的路面纹理范围很广,从光滑到宏观-微观粗糙,从而覆盖了道路上可能遇到的所有表面。实验轧辊阻力与模型预测轧辊阻力的相关性较好,R2均大于0.8。表面的平均轮廓深度(MPD)与滚动阻力之间也显示出良好的相关性。还注意到,峰顶的随机分布和尖形也可能给滚动阻力带来不便,从而得出结论,除了宏观织构之外,还应考虑织构的正性。文中还指出了一种通过忽略橡胶本构模型中的阻尼部分来简化模型的可能性。
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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