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A prediction method for wheel tread wear

机译:车轮胎面磨损预测方法

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Purpose The increasing demands of high-speed railway transportation aggravate the wheel and rail surface wear. It is of great significance to repair the worn wheel timely by predicting the wheel and rail surface wear, which will improve both the service life of the wheel and rail and the safe operation of the train. The purpose of this study is to propose a new prediction method of wheel tread wear, which can provide some reference for selecting proper re-profiling period of wheel. Design/methodology/approach The standard and worn wheel profiles were first matched with the standard 60N rail profile, and then the wheel/rail finite element models (FEMs) were established for elastic-plastic contact calculation. A calculation method of the friction work was proposed based on contact analysis. Afterwards, a simplified method for calculating wheel tread wear was presented and the wear with different running mileages was predicted. Findings The wheel tread wear increased the relative displacement and friction of contact spots. There was obvious fluctuation in the wheel tread friction work curve of the worn model. The wear patterns predicted in the present study were in accordance with the actual situation, especially in the worn model. Originality/value In summary, the simplified method based on FEM presented in this paper could effectively calculate wheel tread wear and predict the wear patterns. It would provide valuable clews for the wheel repair work.
机译:目的,高速铁路运输的日益增长的需求加剧了车轮和轨道表面磨损。通过预测车轮和轨道表面磨损来修复破旧的车轮是具有重要意义,这将改善车轮和轨道的使用寿命以及火车的安全操作。本研究的目的是提出一种新的车轮胎面磨损预测方法,这可以为选择适当的重新分析轮廓提供一些参考。设计/方法/接近标准和磨损的轮廓首先与标准的60N轨道轮廓匹配,然后建立了轮轨有限元模型(FEMS)用于弹性塑料接触计算。基于接触分析提出了一种摩擦工作的计算方法。之后,提出了一种用于计算轮胎磨损的简化方法,并预测了具有不同运行里程的磨损。发现车轮胎面磨损增加了接触点的相对位移和摩擦。磨损模型的车轮胎面摩擦工作曲线中存在明显的波动。本研究预测的磨损模式符合实际情况,尤其是在磨损的模型中。总结中的原始性/值,基于本文提出的FEM的简化方法可以有效地计算轮子胎面磨损并预测磨损图案。它将为车轮维修工作提供有价值的线索。

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