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首页> 外文期刊>Journal of Tribology >Application of the Amplitude Reduction Technique Within Probabilistic Rough EHL Models
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Application of the Amplitude Reduction Technique Within Probabilistic Rough EHL Models

机译:降幅技术在概率粗糙EHL模型中的应用

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摘要

Over the years, the deterministic elastohydrodynamic lubrication (EHL) approach has been widely used. This technique is very powerful in capturing details of asperity deformation and interaction. The probabilistic EHL methodology is still used when the main interest of the engineer is directed toward computations of bulk properties. During recent years, the results of many deterministic analyses have been published. The reduction of the waviness amplitude in EHL contacts under rolling-sliding was systematically studied and it was shown that the amplitude reduction is completely described by a single parameter that includes relative wavelength and the operating conditions. This approach, usually referred to as the amplitude reduction technique, has opened the way for developing improved probabilistic EHL models by incorporating the effects of fluid-induced roughness deformation, which is calculated using the fast fourier transform. In this paper we provide a review of the latest developments in the amplitude reduction technique and we present a probabilistic EHL algorithm for the computation of the load supported by the fluid, the elastically deformed asperities and the plastically deformed asperities, in a mixed EHL contact with either isotropic on nonisotropic roughness. The fluid-induced roughness deformation is incorporated into the probabilistic model via the use of the amplitude reduction technique.
机译:多年来,确定性的弹性流体动力润滑(EHL)方法已被广泛使用。该技术在捕获粗糙变形和相互作用的细节方面非常强大。当工程师的主要兴趣是体积性质的计算时,仍会使用概率EHL方法。近年来,已经发布了许多确定性分析的结果。系统地研究了滚动滑动下EHL接触中波纹幅度的减小,并且表明幅度减小完全由包含相对波长和工作条件的单个参数来描述。这种方法通常称为幅度降低技术,它通过结合使用快速傅里叶变换计算的流体引起的粗糙度变形的影响,为开发改进的概率EHL模型开辟了道路。在本文中,我们对降幅技术的最新进展进行了综述,并提出了一种概率EHL算法,用于计算在与EHL混合接触的情况下流体,弹性变形粗糙和塑性变形粗糙所支撑的载荷在各向同性粗糙度上各向同性。通过使用幅度减小技术,将流体引起的粗糙度变形合并到概率模型中。

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