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Regression of binary interaction parameters for thermodynamic models using an inside-variance estimation method (IVEM)

机译:使用内方差估计方法(IVEM)对热力学模型的二元相互作用参数进行回归

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摘要

An inside-variance estimation method (IVEM) for binary interaction parameter regression in thermodynamic models is proposed. This maximum likelihood method involves the re-computation of the variance for each iteration of the optimization procedure, automatically re-weighting the objective function. Most of the maximum likelihood approaches currently used to regress the parameters of thermodynamic models fix the variances, converting the problem into a traditional weighted least squares minimization. However, such approaches lead to residual variances (between measured and calculated values) that are inconsistent with the fixed variances and, thus, do not necessarily produce optimum parameters for prediction purposes. The new method (IVEM) substantially improves fluid phase equilibria predictions (as shown by the examples presented) by maintaining consistency between the residual variances and the variance used in the objective function. This results in better parameter estimation and to a direct measure of the uncertainty in the model prediction. (C) 2000 Elsevier Science B.V. All rights reserved. [References: 20]
机译:提出了一种用于热力学模型中二元相互作用参数回归的内方差估计方法。该最大似然方法涉及对优化过程的每次迭代重新计算方差,并自动对目标函数进行加权。当前用于回归热力学模型参数的大多数最大似然方法可修复方差,将问题转换为传统的加权最小二乘最小化。但是,这样的方法会导致残留的方差(在测量值和计算值之间)与固定方差不一致,因此,不一定会出于预测目的而产生最佳参数。通过保持残差方差和目标函数中使用的方差之间的一致性,新方法(IVEM)大大改善了液相平衡预测(如所提供的示例所示)。这样可以实现更好的参数估计,并可以直接测量模型预测中的不确定性。 (C)2000 Elsevier Science B.V.保留所有权利。 [参考:20]

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