Literature DB >> 33736244

Bayesian machine learning ensemble approach to quantify model uncertainty in predicting groundwater storage change.

Jina Yin1, Josué Medellín-Azuara2, Alvar Escriva-Bou3, Zhu Liu4.   

Abstract

Agricultural water demand, groundwater extraction, surface water delivery and climate have complex nonlinear relationships with groundwater storage in agricultural regions. As an alternative to elaborate computationally intensive physical models, machine learning methods are often adopted as surrogate to capture such complex relationships due to their high computational efficiency. Inevitably, using only one machine learning model is prone to underestimate prediction uncertainty and subjected to poor accuracy. This study presents a novel machine learning-based groundwater ensemble modeling framework in conjunction with a Bayesian model averaging approach to predict groundwater storage change and improve overall model predicting reliability. Three different machine learning models have been developed namely artificial neural network, support vector machine and response surface regression. To explicitly quantify uncertainty from machine learning model parameter and structure, Bayesian model averaging is employed to produce a forecast distribution associated with each machine learning prediction. Model weights and variances are obtained based on model performance to construct ensemble models. Then, the developed individual and Bayesian model averaging machine learning ensemble models are applied, evaluated and validated at different spatial scales including subregional and regional scales in an overdrafted agricultural region-the San Joaquin River Basin, through independent training and testing dataset. Results shows the machine learning models have remarkable predicting capability without sacrificing accuracy but with higher computational efficiency. Compared to a single-model approach, the ensemble model is able to produce consistently reliable predictions across the basin, yet it does not always outperform the best model in the ensemble. Additionally, model results suggest that groundwater pumping for agricultural irrigation is the primary driving force of groundwater storage change across the region. The modeling framework can serve as an alternative approach to simulating groundwater response, especially in those agricultural regions where lack of subsurface data hinders physically-based modeling.
Copyright © 2021 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Bayesian model averaging; Groundwater storage change; Irrigation pumping; Machine learning ensemble; Uncertainty quantification

Year:  2021        PMID: 33736244     DOI: 10.1016/j.scitotenv.2020.144715

Source DB:  PubMed          Journal:  Sci Total Environ        ISSN: 0048-9697            Impact factor:   7.963


  4 in total

1.  UAV-based multi-sensor data fusion and machine learning algorithm for yield prediction in wheat.

Authors:  Shuaipeng Fei; Muhammad Adeel Hassan; Yonggui Xiao; Xin Su; Zhen Chen; Qian Cheng; Fuyi Duan; Riqiang Chen; Yuntao Ma
Journal:  Precis Agric       Date:  2022-08-03       Impact factor: 5.767

2.  Application of UAV Multisensor Data and Ensemble Approach for High-Throughput Estimation of Maize Phenotyping Traits.

Authors:  Meiyan Shu; Shuaipeng Fei; Bingyu Zhang; Xiaohong Yang; Yan Guo; Baoguo Li; Yuntao Ma
Journal:  Plant Phenomics       Date:  2022-08-27

3.  Machine learning-based estimation of riverine nutrient concentrations and associated uncertainties caused by sampling frequencies.

Authors:  Shengyue Chen; Zhenyu Zhang; Juanjuan Lin; Jinliang Huang
Journal:  PLoS One       Date:  2022-07-13       Impact factor: 3.752

4.  An interpretable stacking ensemble learning framework based on multi-dimensional data for real-time prediction of drug concentration: The example of olanzapine.

Authors:  Xiuqing Zhu; Jinqing Hu; Tao Xiao; Shanqing Huang; Yuguan Wen; Dewei Shang
Journal:  Front Pharmacol       Date:  2022-09-27       Impact factor: 5.988

  4 in total

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