4.6 Article

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

期刊

COATINGS
卷 11, 期 5, 页码 -

出版社

MDPI
DOI: 10.3390/coatings11050538

关键词

dynamic friction model; rolling resistance coefficient; macrotexture

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This paper discusses the modeling of rolling resistance and the analysis of pavement texture effect, with experimental validation showing a good correlation between the model and actual results. The research also highlights the positive correlation between mean profile depth of surfaces and rolling resistance. Furthermore, it suggests the possibility of simplifying the model by neglecting the damping part in the constitutive model of rubber.
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 R-2 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.

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