A comparative study of machine learning models for predicting the state of reactive mixing

被引:10
作者
Ahmmed, B. [1 ,2 ]
Mudunuru, M. K. [3 ]
Karra, S. [1 ]
James, S. C. [2 ,4 ]
Vesselinov, V. V. [1 ]
机构
[1] Los Alamos Natl Lab, Earth & Environm Sci Div, Computat Earth Sci Grp, Los Alamos, NM 87545 USA
[2] Baylor Univ, Dept Geosci, Waco, TX 76706 USA
[3] Pacific Northwest Natl Lab, Watershed & Ecosyst Sci, Richland, WA 99352 USA
[4] Baylor Univ, Dept Mech Engn, Waco, TX 76706 USA
关键词
Surrogate modeling; Machine learning; Reaction-diffusion equations; Random forests; Ensemble methods; Artificial neural networks; MAXIMUM-PRINCIPLES; TRANSPORT; FRAMEWORK; ALGORITHMS; NETWORKS; SCALE;
D O I
10.1016/j.jcp.2021.110147
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Mixing phenomena are important mechanisms controlling flow, species transport, and reaction processes in fluids and porous media. Accurate predictions of reactive mixing are critical for many Earth and environmental science problems such as contaminant fate and remediation, macroalgae growth, and plankton biomass growth. To investigate the evolution of mixing dynamics under different scenarios (e.g., anisotropy, fluctuating velocity fields), a finite-element-based numerical model was built to solve the fast, irreversible bimolecular reaction-diffusion equations to simulate a range of reactive-mixing scenarios. A total of 2,315 simulations were performed using different sets of model input parameters comprising various spatial scales of vortex structures in the velocity field, time-scales associated with velocity oscillations, the perturbation parameter for the vortex-based velocity, anisotropic dispersion contrast (i.e., ratio of longitudinal-to-transverse dispersion), and molecular diffusion. The outputs comprised concentration profiles of reactants and products. The inputs and outputs from these simulations were concatenated into feature and label matrices, respectively, to train 20 different machine learning (ML) models intended to emulate system behavior. These 20 ML emulators, based on linear methods, Bayesian methods, ensemble learning methods, and multilayer perceptrons (MLPs), were trained to classify the state of mixing and predict three quantities of interest (QoIs) characterizing species production, decay (i.e., average concentration, square of average concentration), and degree of mixing (i.e., variances of species concentration). Unsurprisingly, linear classifiers and regressors failed to reproduce the QoIs; however, ensemble methods (classifiers and regressors) and the MLP model accurately classified the state of reactive mixing and the QoIs. Among ensemble methods, random forest and decision-tree-based AdaBoost faithfully predicted the QoIs. At run time, trained ML emulators produced results approximate to 10(5) times faster than the finite-element simulations. Due to their low computational expense and high accuracy, ensemble and MLP models are excellent emulators for these numerical simulations and great utilities in uncertainty quantification exercises, which can require 1,000s of forward model runs. (C) 2021 Elsevier Inc. All rights reserved.
引用
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页数:26
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