机器学习和深度神经网络在地下水硝酸盐浓度空间预测中的应用,以改善土地利用管理实践

IF 2.6 Q2 WATER RESOURCES
D. Karimanzira, J. Weis, Andreas Wunsch, Linda Ritzau, T. Liesch, M. Ohmer
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引用次数: 0

摘要

预测地下水硝酸盐浓度对地质环境和人类影响因素的响应,对于更好地恢复地下水质量和改善土地利用管理实践至关重要。在本文中,我们使用不同的机器学习方法(随机森林(RF)、单峰2D和3D卷积神经网络(CNN)以及多流早期和晚期融合2D CNN)对地下水硝酸盐浓度进行了区域化,以便可以预测未观测区域的硝酸盐状况。细胞神经网络不仅考虑了观察井网格细胞的硝酸盐值,还考虑了它们周围的值。这还有一个额外的好处,那就是让他们能够直接了解周围环境的影响。在德国试点地区的数据集上测试了模型的预测性能,结果表明,与之前基于克里格和数值模型的研究相比,一般来说,所有机器学习模型在贝叶斯优化超参数搜索和训练后,都实现了良好的空间预测性能。基于平均绝对误差(MAE),随机森林模型和2DCNN后期融合模型表现最好,MAE(STD)分别为9.55(0.367)mg/l,R2=0.43和10.32(0.27)mg/l,R2=0.27。MAE(STD)为11.66(0.21)mg/l且资源消耗最大的3DCNN是性能最差的模型。模型中的特征重要性学习与最重要特征的部分相关性分析结合使用,以更好地了解解释硝酸盐空间变异性的主要因素。先前的研究表明,硝酸盐预测存在很大的不确定性。因此,模型被扩展为使用自举导出的预测区间(PI)来量化不确定性。对不确定性的了解有助于水务经理降低风险并更可靠地制定计划。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of machine learning and deep neural networks for spatial prediction of groundwater nitrate concentration to improve land use management practices
The prediction of groundwater nitrate concentration's response to geo-environmental and human-influenced factors is essential to better restore groundwater quality and improve land use management practices. In this paper, we regionalize groundwater nitrate concentration using different machine learning methods (Random forest (RF), unimodal 2D and 3D convolutional neural networks (CNN), and multi-stream early and late fusion 2D-CNNs) so that the nitrate situation in unobserved areas can be predicted. CNNs take into account not only the nitrate values of the grid cells of the observation wells but also the values around them. This has the added benefit of allowing them to learn directly about the influence of the surroundings. The predictive performance of the models was tested on a dataset from a pilot region in Germany, and the results show that, in general, all the machine learning models, after a Bayesian optimization hyperparameter search and training, achieve good spatial predictive performance compared to previous studies based on Kriging and numerical models. Based on the mean absolute error (MAE), the random forest model and the 2DCNN late fusion model performed best with an MAE (STD) of 9.55 (0.367) mg/l, R2 = 0.43 and 10.32 (0.27) mg/l, R2 = 0.27, respectively. The 3DCNN with an MAE (STD) of 11.66 (0.21) mg/l and largest resources consumption is the worst performing model. Feature importance learning from the models was used in conjunction with partial dependency analysis of the most important features to gain greater insight into the major factors explaining the nitrate spatial variability. Large uncertainties in nitrate prediction have been shown in previous studies. Therefore, the models were extended to quantify uncertainty using prediction intervals (PIs) derived from bootstrapping. Knowledge of uncertainty helps the water manager reduce risk and plan more reliably.
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来源期刊
Frontiers in Water
Frontiers in Water WATER RESOURCES-
CiteScore
4.00
自引率
6.90%
发文量
224
审稿时长
13 weeks
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