利用本文实验数据拟合了甲基叔丁醚饱和液相粘度方程,方程和实验数据的平均和最大相对偏差分别为0.49%和1.21%,可以满足工程实际应用.。
The experimental data of this work were correlated as a polynomial function of the temperature. The average and maximum relative deviation were 0.49% and 1.21%, respectively.
在大多数情况下,分子的粘度是不重要的,因此采用欧拉方程就足够了。
In most cases, molecular viscosity is unimportant so that the use of Euler equations is sufficient.
该方程显示拉延油的运动粘度与温度呈高度显著的指数关系。
The equation reveals that there lies in an exponential relationship between the viscosity and the temperature.
在加热过程中,胶层粘度随温度和时间的变化可用二重指数方程描述。
The viscosity change of a glue line with temperature and time could be described qualitatively by a dual equation.
通过计算得到的粘度场,由物料的本构方程反推出流道中的剪切速率场和剪切应力场。
Through deduction to the constitutional equation of viscosity, field and shear stress field of the runner were achieved.
通过均匀试验设计得出各指标(峰值粘度、破损值、回生值)的回归方程及相关系数,确定了各指标最高或最低时各因素的组合。
Through the uniform design of the regression equations and the correlation coefficients, of and the combinations when the highest value or highest value were obtained.
通过计算比较发现,基于PR状态方程的粘度预测模型误差较大,而LBC经验关系能较准确地确定酸性气体的粘度。
Calculation shows that the viscosity model based on pr state equation has big error, while LBC empirical relationship can provide more accurate viscosity of acidic gas.
根据酸性气体粘度的预测方法,对比了基于PR状态方程的粘度模型、经验公式和图版法在预测酸性气体粘度时的准确性。
The accuracy of viscosity model based on pr state equation, empirical equation and chart method for predicting acidic gas viscosity is correlated.
对经过不同程度老化的沥青,进行常规的三大指标试验和粘度试验,探讨老化对沥青胶结料常规指标的影响,建立了耦合老化效应的沥青胶结料粘温方程。
It was studied that the effects of aging on conventional index of asphalt binder by testing the penetration, softening point, ductility and viscosity on the PAV residue.
根据表面吸附理论对雷诺方程进行修正,得出适用于全域的粘度修正通用方程。
A universal equation to be applied for the closed - region is derived by the surface adsorption theory to correct Reynolds equation.
根据表面吸附理论对雷诺方程进行修正,得出适用于全域的粘度修正通用方程。
A universal equation to be applied for the closed - region is derived by the surface adsorption theory to correct Reynolds equation.
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