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首页> 外文期刊>Wear: an International Journal on the Science and Technology of Friction, Lubrication and Wear >Frequency-wise correlation of the power spectral density of asphalt surface roughness and tire wet friction
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Frequency-wise correlation of the power spectral density of asphalt surface roughness and tire wet friction

机译:沥青表面粗糙度功率谱密度与轮胎湿摩擦的频率相关性

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摘要

Modern rubber friction theories predict the friction coefficient of rubber sliding against a rough surface. The key inputs of these theories are the roughness of the surface, the viscoelastic properties of the rubber, and the operating parameters like contact pressure, sliding speed and temperature. With regard to the surface roughness, it is important to know how road surface roughness should be analyzed. To increase the understanding on this topic, the surface topographies of different asphalt surfaces were measured and the roughness results at different spatial frequencies were correlated with wet tire friction results. The surface topographies were analyzed using a top-cutting technique and calculating the power spectral densities, or C(q) functions of the resulting data. The value of the C(q) function at each evaluated spatial frequency was then correlated individually to the friction results using linear regression. The results showed that the highest correlation was found at the highest evaluated frequencies, as limited by the spatial resolution of the measurement. When building a linear least-square fit model with the surface data and road surface temperature information, a good fit between the model parameters and the friction results could be achieved.
机译:现代橡胶摩擦理论预测橡胶在粗糙表面上滑动的摩擦系数。这些理论的关键输入是表面的粗糙度,橡胶的粘弹性和操作参数,如接触压力,滑动速度和温度。关于表面粗糙度,重要的是要知道应该如何分析道路表面粗糙度。为了增加对该主题的理解,测量了不同沥青表面的表面形貌,并将在不同空间频率下的粗糙度结果与湿轮胎摩擦结果相关联。使用顶部切割技术分析表面形貌,并计算功率谱密度或所得数据的C(q)函数。然后,使用线性回归将每个评估的空间频率下的C(q)函数值分别与摩擦结果相关。结果表明,最高的相关性出现在最高的评估频率上,这受测量空间分辨率的限制。当使用表面数据和路面温度信息建立线性最小二乘拟合模型时,模型参数与摩擦结果之间可以很好地拟合。

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