Surrogate Optimization of Deep Neural Networks for Groundwater Predictions
Sustainable management of groundwater resources under changing climatic conditions require an application of reliable and accurate predictions of groundwater levels. Mechanistic multi-scale, multi-physics simulation models are often too hard to use for this purpose, especially for groundwater manage...
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Zusammenfassung: | Sustainable management of groundwater resources under changing climatic
conditions require an application of reliable and accurate predictions of
groundwater levels. Mechanistic multi-scale, multi-physics simulation models
are often too hard to use for this purpose, especially for groundwater managers
who do not have access to the complex compute resources and data. Therefore, we
analyzed the applicability and performance of four modern deep learning
computational models for predictions of groundwater levels. We compare three
methods for optimizing the models' hyperparameters, including two surrogate
model-based algorithms and a random sampling method. The models were tested
using predictions of the groundwater level in Butte County, California, USA,
taking into account the temporal variability of streamflow, precipitation, and
ambient temperature. Our numerical study shows that the optimization of the
hyperparameters can lead to reasonably accurate performance of all models (root
mean squared errors of groundwater predictions of 2 meters or less), but the
''simplest'' network, namely a multilayer perceptron (MLP) performs overall
better for learning and predicting groundwater data than the more advanced long
short-term memory or convolutional neural networks in terms of prediction
accuracy and time-to-solution, making the MLP a suitable candidate for
groundwater prediction. |
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DOI: | 10.48550/arxiv.1908.10947 |