Deep learning models for groundwater level prediction based on delay penalty

Water Supply Pub Date : 2024-01-19 DOI:10.2166/ws.2024.009
Chenjia Zhang, Tianxin Xu, Yan Zhang, Daokun Ma
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Abstract

In irrigation agriculture, predicting groundwater level (GWL) using deep learning models can help decision-makers coordinate surface water and groundwater usage, thus aiding in the sustainable development and utilization of groundwater. However, when making a long sequence prediction, prediction sequences often have severe delays affecting the availability of prediction results. In this paper, a new loss function is proposed to minimize the lag and oversmoothing on the prediction of GWLs. GWL, meteorology, and pumping data are collected via an irrigation Internet of Things system in Hutubi County, Xinjiang. Through Pearson's correlation analysis, historical potential evapotranspiration (ET0), groundwater extraction, and GWL were chosen to predict GWLs. Datasets were constructed through the proposed spatiotemporal data fusion method; then, the best model from the six deep learning models was selected by comparing the prediction capability of the datasets. Finally, the mean-squared error (MSE) loss function is replaced by the proposed loss function. Compared to the mean absolute error, MSE, and predicted sequence graphs, the new loss function significantly depresses the time delay with similar prediction accuracy.
基于延迟惩罚的地下水位预测深度学习模型
在农业灌溉领域,利用深度学习模型预测地下水位(GWL)可以帮助决策者协调地表水和地下水的使用,从而有助于地下水的可持续开发和利用。然而,在进行长序列预测时,预测序列往往会出现严重的延迟,影响预测结果的可用性。本文提出了一种新的损失函数,以尽量减少 GWL 预测的滞后和过平滑。本文通过新疆呼图壁县的灌溉物联网系统收集 GWL、气象和抽水数据。通过皮尔逊相关分析,选择历史潜在蒸散量(ET0)、地下水开采量和 GWL 来预测 GWL。通过提出的时空数据融合方法构建数据集,然后通过比较数据集的预测能力,从六个深度学习模型中选出最佳模型。最后,提出的损失函数取代了均方误差(MSE)损失函数。与平均绝对误差、MSE 和预测序列图相比,新的损失函数在预测精度相似的情况下显著降低了时间延迟。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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