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Analysis of grinding mechanics and improved predictive force model based on material-removal and plastic-stacking mechanisms

机译:基于材料去除和塑料堆垛机构的研磨力学和改进预测力模型分析

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摘要

Numerous researchers have developed theoretical and experimental approaches to force prediction in surface grinding under dry conditions. Nevertheless, the combined effect of material removal and plastic stacking on grinding force model has not been investigated. In addition, predominant lubricating conditions, such as flood, minimum quantity lubrication, and nanofluid minimum quantity lubrication, have not been considered in existing force models. This work presents an improved theoretical force model that considers material-removal and plastic-stacking mechanisms. Grain states, including cutting and ploughing, are determined by cutting efficiency (beta). The influence of lubricating conditions is also considered in the proposed force model. Simulation is performed to obtain the cutting depth (a(g)) of each "dynamic active grain." Parameter beta is introduced to represent the plastic-stacking rate and determine the force algorithms of each grain. The aggregate force is derived through the synthesis of each single-grain force. Finally, pilot experiments are conducted to test the theoretical model. Findings show that the model's predictions are consistent with the experimental results, with average errors of 4.19% and 4.31% for the normal and tangential force components, respectively.
机译:许多研究人员开发了在干燥条件下的表面磨削中强制预测的理论和实验方法。然而,尚未研究材料去除和塑料堆叠在研磨力模型上的综合效果。此外,在现有的力模型中尚未考虑诸如洪水,最小量润滑和纳米流体最低量润滑的优势润滑条件。该工作提出了一种改进的理论力模型,其考虑了材料去除和塑料堆叠机构。通过切割效率(β)确定谷物状态,包括切割和耕作。在所提出的力模型中也考虑了润滑条件的影响。进行模拟以获得每个“动态活性晶粒”的切割深度(A(g))。引入参数β以表示塑料堆叠速率并确定每个谷物的力算法。通过合成每种单粒力来衍生聚集力。最后,进行了试验实验以测试理论模型。调查结果表明,该模型的预测与实验结果一致,平均误差分别为正常和切向力组分的平均误差为4.19%和4.31%。

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