J Sreekanth, D. Pagendam, Dan MacKinlay, T. Pickett, Petra Ku hn ert
{"title":"Calibration and uncertainty analysis of groundwater models assisted by machine learning surrogates","authors":"J Sreekanth, D. Pagendam, Dan MacKinlay, T. Pickett, Petra Ku hn ert","doi":"10.36334/modsim.2023.janardhanan","DOIUrl":null,"url":null,"abstract":": Numerical groundwater models are widely used for environmental decision support. They are often used for predictive analysis to evaluate the consequences of management decisions. Such modelling workflow involves history matching to calibrate the model parameters and predictive analysis including quantification of prediction uncertainties. Sometimes, groundwater models are also used in a simulation-optimization framework to identify optimal values of groundwater management decision variables that meet multiple constraints. Algorithms for model inversion (calibration), non-linear uncertainty and simulation-optimization analyses typically require hundreds to millions of forward runs of the numerical groundwater models. When complex groundwater models need to be used for such analyses, long run-times and numerical instabilities limit their applicability for such computationally demanding analys es. Many studies have demonstrated the applicability of machine learning (ML) surrogate models for approximating the responses of groundwater flow and transport models (Yu et al, 2020). More recent studies have also demonstrated the applicability of ML approaches for stochastic inversion of biophysical models (MacKinlay et al, 2023). In this study we explore potential applicability of surrogate models in assisting computationally demanding inversion, optimization and uncertainty analysis. In our first application, limited runs of a complex numerical groundwater model based on the MODFLOW code were used to train a surrogate model developed using Genetic Programming. The surrogate model was developed to approximate the functional relationship between the uncertain parameters of the model and its prediction of groundwater flow and head changes induced by extraction of groundwater for coal seam gas (CSG) development. The trained and validated surrogate model was used in a simulation-optimization framework to evaluate the trade-off between predicted maximum flow and groundwater head changes and CSG water extraction. The surrogate model trained and tested using 920 forward runs of the numerical groundwater model was used to evaluate 1.5 million combinations of model parameters to approximately evaluate the predictions using the simulation-optimization framework. The analysis showed that, within plausible range of model parameters and expected rates of CSG water extraction, CSG-induced maximum flow changes increase linearly with increases in water extraction volume and are directly proportional to the CSG-induced groundwater head drawdown.","PeriodicalId":390064,"journal":{"name":"MODSIM2023, 25th International Congress on Modelling and Simulation.","volume":"2 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"2023-08-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"MODSIM2023, 25th International Congress on Modelling and Simulation.","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.36334/modsim.2023.janardhanan","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 0
Abstract
: Numerical groundwater models are widely used for environmental decision support. They are often used for predictive analysis to evaluate the consequences of management decisions. Such modelling workflow involves history matching to calibrate the model parameters and predictive analysis including quantification of prediction uncertainties. Sometimes, groundwater models are also used in a simulation-optimization framework to identify optimal values of groundwater management decision variables that meet multiple constraints. Algorithms for model inversion (calibration), non-linear uncertainty and simulation-optimization analyses typically require hundreds to millions of forward runs of the numerical groundwater models. When complex groundwater models need to be used for such analyses, long run-times and numerical instabilities limit their applicability for such computationally demanding analys es. Many studies have demonstrated the applicability of machine learning (ML) surrogate models for approximating the responses of groundwater flow and transport models (Yu et al, 2020). More recent studies have also demonstrated the applicability of ML approaches for stochastic inversion of biophysical models (MacKinlay et al, 2023). In this study we explore potential applicability of surrogate models in assisting computationally demanding inversion, optimization and uncertainty analysis. In our first application, limited runs of a complex numerical groundwater model based on the MODFLOW code were used to train a surrogate model developed using Genetic Programming. The surrogate model was developed to approximate the functional relationship between the uncertain parameters of the model and its prediction of groundwater flow and head changes induced by extraction of groundwater for coal seam gas (CSG) development. The trained and validated surrogate model was used in a simulation-optimization framework to evaluate the trade-off between predicted maximum flow and groundwater head changes and CSG water extraction. The surrogate model trained and tested using 920 forward runs of the numerical groundwater model was used to evaluate 1.5 million combinations of model parameters to approximately evaluate the predictions using the simulation-optimization framework. The analysis showed that, within plausible range of model parameters and expected rates of CSG water extraction, CSG-induced maximum flow changes increase linearly with increases in water extraction volume and are directly proportional to the CSG-induced groundwater head drawdown.
地下水数值模型广泛用于环境决策支持。它们通常用于预测分析,以评估管理决策的后果。这种建模工作流程包括历史匹配以校准模型参数和预测分析,包括预测不确定性的量化。有时,地下水模型也用于模拟-优化框架中,以识别满足多个约束条件的地下水管理决策变量的最优值。模型反演(校准)、非线性不确定性和模拟优化分析的算法通常需要对数值地下水模型进行数亿次前演。当需要使用复杂的地下水模型进行此类分析时,较长的运行时间和数值不稳定性限制了它们对此类计算要求很高的分析的适用性。许多研究已经证明了机器学习(ML)替代模型在近似地下水流动和运输模型响应方面的适用性(Yu et al ., 2020)。最近的研究也证明了ML方法在生物物理模型随机反演中的适用性(MacKinlay et al, 2023)。在本研究中,我们探讨了代理模型在协助计算要求高的反演、优化和不确定性分析方面的潜在适用性。在我们的第一个应用中,基于MODFLOW代码的复杂数值地下水模型的有限运行用于训练使用遗传规划开发的代理模型。建立代理模型,拟合模型不确定参数与其预测煤层气开采地下水流量和水头变化之间的函数关系。将经过训练和验证的代理模型用于模拟优化框架,以评估预测最大流量和地下水水头变化与CSG水提取之间的权衡关系。利用920次地下水数值模型正演训练和测试的代理模型,对150万组模型参数组合进行了评估,对模拟优化框架下的预测结果进行了近似评估。分析表明,在合理的模型参数范围和预期抽水量范围内,CSG诱导的最大流量变化随抽水量的增加而线性增加,与CSG诱导的地下水水头下降成正比。