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首页> 外文期刊>Applied Ergonomics >Linear regression models of floor surface parameters on friction between Neolite and quarry tiles
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Linear regression models of floor surface parameters on friction between Neolite and quarry tiles

机译:地表参数对Neolite和采石场砖之间摩擦的线性回归模型

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For slips and falls, friction is widely used as an indicator of surface slipperiness. Surface parameters, including surface roughness and waviness, were shown to influence friction by correlating individual surface parameters with the measured friction. A collective input from multiple surface parameters as a predictor of friction, however, could provide a broader perspective on the contributions from all the surface parameters evaluated. The objective of this study was to develop regression models between the surface parameters and measured friction. The dynamic friction was measured using three different mixtures of glycerol and water as contaminants. Various surface roughness and waviness parameters were measured using three different cut-off lengths. The regression models indicate that the selected surface parameters can predict the measured friction coefficient reliably in most of the glycerol concentrations and cut-off lengths evaluated. The results of the regression models were, in general, consistent with those obtained from the correlation between individual surface parameters and the measured friction in eight out of nine conditions evaluated in this experiment. A hierarchical regression model was further developed to evaluate the cumulative contributions of the surface parameters in the final iteration by adding these parameters to the regression model one at a time from the easiest to measure to the most difficult to measure and evaluating their impacts on the adjusted R2 values. For practical purposes, the surface parameter R_a alone would account for the majority of the measured friction even if it did not reach a statistically significant level in some of the regression models.
机译:对于滑倒,摩擦被广泛用作表面滑爽度的指标。包括表面粗糙度和波纹度在内的表面参数通过将各个表面参数与测得的摩擦系数相关联而显示出对摩擦的影响。但是,来自多个表面参数的集体输入作为摩擦的预测指标,可以对所有评估的表面参数的贡献提供更广阔的视野。这项研究的目的是建立表面参数和测得的摩擦之间的回归模型。使用甘油和水的三种不同混合物作为污染物来测量动摩擦。使用三种不同的截止长度来测量各种表面粗糙度和波纹度参数。回归模型表明,所选表面参数可以在评估的大多数甘油浓度和截止长度中可靠地预测测得的摩擦系数。通常,回归模型的结果与从该实验评估的九种条件中的八种中各个表面参数与测得的摩擦之间的相关性得出的结果一致。进一步开发了一种层次回归模型,以评估表面参数在最终迭代中的累积贡献,方法是一次将这些参数从最容易测量到最难测量的一次添加到回归模型中,并评估它们对调整后的影响。 R2值。出于实际目的,即使在某些回归模型中表面参数R_a未达到统计显着水平,也仅靠表面参数R_a即可解决。

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