cs.AI updates on arXiv.org 07月08日 12:33
Time Distributed Deep Learning Models for Purely Exogenous Forecasting: Application to Water Table Depth Prediction using Weather Image Time Series
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本文探讨了利用深度学习模型预测地下水位的有效方法。由于水文数据获取的局限性,研究重点是使用更易获取且质量更高的气象数据。研究者在意大利Grana-Maira流域构建了两个深度学习模型,TDC-LSTM和TDC-UnPWaveNet,用于预测地下水位。这两个模型均基于时间分布卷积神经网络(TDC),分别结合LSTM层和改进的WaveNet架构。研究结果表明,两种模型均取得了显著成果,TDC-LSTM侧重于降低偏差,而TDC-UnPWaveNet更注重时间动态特性。

💧 地下水资源是水循环中的关键要素,准确预测地下水位对可持续资源管理至关重要。

🌦️ 由于水文数据获取的难度,研究采用气象数据作为输入,气象数据通常更容易获取且质量更高。

🏞️ 研究在意大利Grana-Maira流域构建了两个深度学习模型,分别是TDC-LSTM和TDC-UnPWaveNet。

🧠 TDC-LSTM模型结合了LSTM层,侧重于降低预测偏差;TDC-UnPWaveNet采用了改进的WaveNet架构,更关注时间动态特性,以实现更高的相关性和KGE。

💡 两种模型均取得了显著成果,表明深度学习在基于气象数据预测地下水位方面具有潜力。

arXiv:2409.13284v2 Announce Type: replace-cross Abstract: Groundwater resources are one of the most relevant elements in the water cycle, therefore developing models to accurately predict them is a pivotal task in the sustainable resource management framework. Deep Learning (DL) models have been revealed to be very effective in hydrology, especially by feeding spatially distributed data (e.g. raster data). In many regions, hydrological measurements are difficult to obtain regularly or periodically in time, and in some cases, the last available data are not up to date. Reversely, weather data, which significantly impacts water resources, are usually more available and with higher quality. More specifically, we have proposed two different DL models to predict the water table depth in the Grana-Maira catchment (Piemonte, IT) using only exogenous weather image time series. To deal with the image time series, both models are made of a first Time Distributed Convolutional Neural Network (TDC) which encodes the image available at each time step into a vectorial representation. The first model, TDC-LSTM uses then a Sequential Module based on an LSTM layer to learn temporal relations and output the predictions. The second model, TDC-UnPWaveNet uses instead a new version of the WaveNet architecture, adapted here to output a sequence shorter and completely shifted in the future with respect to the input one. To this aim, and to deal with the different sequence lengths in the UnPWaveNet, we have designed a new Channel Distributed layer, that acts like a Time Distributed one but on the channel dimension, i.e. applying the same set of operations to each channel of the input. TDC-LSTM and TDC-UnPWaveNet have shown both remarkable results. However, the two models have focused on different learnable information: TDC-LSTM has focused more on lowering the bias, while TDC-UnPWaveNet has focused more on the temporal dynamics, maximizing correlation, and KGE.

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深度学习 地下水 气象数据 TDC-LSTM TDC-UnPWaveNet
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