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Least-squares Regression Of Adsorption Equilibrium Data: comparing The Options

机译:吸附平衡数据的最小二乘回归:比较选项

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摘要

Experimental and simulated adsorption equilibrium data were analyzed by different methods of least-squares regression. The methods used were linear regression, nonlinear regression, and orthogonal distance regression. The results of the regression analysis of the experimental data showed that the different regression methods produced different estimates of the adsorption isotherm parameters, and consequently, different conclusions about the surface properties of the adsorbent and the mechanism of adsorption. A Langmuir-type simulated data set was calculated and several levels of random error were added to the data set. The results of regression analysis of the simulated data set showed that orthogonal distance regression gives the most accurate and efficient estimates of the isotherm parameters. Nonlinear regression and one form of the linearized Langmuir isotherm also gave accurate estimates, but only at low levels of random error.
机译:用最小二乘回归的不同方法分析了实验和模拟的吸附平衡数据。使用的方法是线性回归,非线性回归和正交距离回归。实验数据的回归分析结果表明,不同的回归方法对吸附等温线参数产生了不同的估计,因此,关于吸附剂的表面性质和吸附机理的结论也不同。计算了Langmuir类型的模拟数据集,并将若干级别的随机误差添加到了数据集中。对模拟数据集进行回归分析的结果表明,正交距离回归可以最准确,最有效地估算等温线参数。非线性回归和线性化Langmuir等温线的一种形式也给出了准确的估计值,但仅在较低的随机误差水平下。

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