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首页> 外文期刊>Journal of Contaminant Hydrology >A predictive estimation method for carbon dioxide transport by data-driven modeling with a physically-based data model
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A predictive estimation method for carbon dioxide transport by data-driven modeling with a physically-based data model

机译:基于物理数据模型的数据驱动建模的二氧化碳迁移预测估算方法

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摘要

In this study, a data-driven method for predicting CO2 leaks and associated concentrations from geological CO2 sequestration is developed. Several candidate models are compared based on their reproducibility and predictive capability for CO2 concentration measurements from the Environment Impact Evaluation Test (EIT) site in Korea. Based on the data mining results, a one-dimensional solution of the advective dispersive equation for steady flow (i.e., Ogata-Banks solution) is found to be most representative for the test data, and this model is adopted as the data model for the developed method. In the validation step, the method is applied to estimate future CO2 concentrations with the reference estimation by the Ogata-Banks solution, where a part of earlier data is used as the training dataset. From the analysis, it is found that the ensemble mean of multiple estimations based on the developed method shows high prediction accuracy relative to the reference estimation. In addition, the majority of the data to be predicted are included in the proposed quantile interval, which suggests adequate representation of the uncertainty by the developed method. Therefore, the incorporation of a reasonable physically-based data model enhances the prediction capability of the data-driven model. The proposed method is not confined to estimations of CO2 concentration and may be applied to various real-time monitoring data from subsurface sites to develop automated control, management or decision-making systems.
机译:在这项研究中,开发了一种数据驱动的方法,用于通过地质二氧化碳封存来预测CO2泄漏和相关浓度。根据韩国环境影响评估测试(EIT)站点对CO2浓度测量的可重复性和预测能力,对几种候选模型进行了比较。根据数据挖掘结果,发现对流稳态对流扩散方程的一维解(即,Ogata-Banks解)对于测试数据最具代表性,并且该模型被用作模型的数据模型。发达的方法。在验证步骤中,该方法用于通过Ogata-Banks解决方案与参考估算值一起估算未来的CO2浓度,其中一部分较早的数据用作训练数据集。从分析中发现,基于改进方法的多重估计的集合均值相对于参考估计显示出较高的预测精度。此外,大多数要预测的数据都包含在建议的分位数间隔中,这表明通过开发的方法可以充分表示不确定性。因此,合理的基于物理的数据模型的合并增强了数据驱动模型的预测能力。所提出的方法不限于CO 2浓度的估计,并且可以应用于地下场所的各种实时监测数据,以开发自动化的控制,管理或决策系统。

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