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首页> 外文期刊>Vadose Zone Journal >Comparing Nonlinear Regression and Markov Chain Monte Carlo Methods for Assessment of Prediction Uncertainty in Vadose Zone Modeling
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Comparing Nonlinear Regression and Markov Chain Monte Carlo Methods for Assessment of Prediction Uncertainty in Vadose Zone Modeling

机译:非线性回归和马尔可夫链蒙特卡罗方法的比较,用于评估渗流区建模中的预测不确定性

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摘要

In vadose zone modeling, parameter estimates and model predictions are inherently uncertain, regardless of quality and quantity of data used in model-data fusion. Accurate quantification of the uncertainty is necessary to design future data collection for improving the predictive capability of models. This study is focused on evaluating predictive performance of two commonly used methods of uncertainty quantification: nonlinear regression and Bayesian methods. The former quantifies predictive uncertainty using the regression confidence interval (RCI), whereas the latter uses the Bayesian credible interval (BCI); neither RCI nor BCI includes measurement errors. When measurement errors are considered, the counterparts of RCI and BCI are regression prediction interval (RPI) and Bayesian prediction interval (BPI), respectively. The predictive performance is examined through a cross-validation study of two-phase flow modeling, and predictive logscore is used as the performance measure. The linear and nonlinear RCI and RPI are evaluated using UCODE_2005. The nonlinear RCI performs better than the linear RCI, and the nonlinear RPI outperforms the linear RPI. The Bayesian intervals are calculated using Markov Chain Monte Carlo (MCMC) techniques implemented with the differential evolution adaptive metropolis (DREAM) algorithm. The BCI/BPI obtained from DREAM has better predictive performance than the linear and nonlinear RCI/RPI. Different from observations in other studies, it is found that estimating nonlinear RCI/RPI is not computationally more efficient than estimating BCI/BPI in this case with low-dimensional parameter space and a large number of predictions. MCMC methods are thus more appealing than nonlinear regression methods for uncertainty quantification in vadose zone modeling.
机译:在渗流区建模中,无论模型数据融合中使用的数据的质量和数量如何,参数估计和模型预测本质上都是不确定的。准确量化不确定性对于设计将来的数据收集以提高模型的预测能力是必要的。这项研究的重点是评估不确定性量化的两种常用方法的预测性能:非线性回归和贝叶斯方法。前者使用回归置信区间(RCI)量化预测不确定性,而后者使用贝叶斯可信区间(BCI)量化; RCI和BCI均不包含测量误差。考虑到测量误差时,RCI和BCI的对应值分别是回归预测间隔(RPI)和贝叶斯预测间隔(BPI)。通过对两相流建模的交叉验证研究来检查预测性能,并将预测对数分数用作性能度量。使用UCODE_2005评估线性和非线性RCI和RPI。非线性RCI的性能优于线性RCI,并且非线性RPI的性能优于线性RPI。贝叶斯区间是使用马尔可夫链蒙特卡洛(MCMC)技术和差分进化自适应大都市(DREAM)算法实现的。从DREAM获得的BCI / BPI比线性和非线性RCI / RPI具有更好的预测性能。与其他研究的观察结果不同,发现在这种情况下使用低维参数空间和大量预测时,估计非线性RCI / RPI的计算效率不比估计BCI / BPI更高。因此,对于渗流区建模中的不确定性量化,MCMC方法比非线性回归方法更具吸引力。

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