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Surrogate optimization of deep neural networks for groundwater predictions

机译:地下水预测深神经网络的替代优化

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摘要

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.
机译:变化气候条件下的地下水资源可持续管理需要应用可靠和准确的地下水位预测。机械多尺度,多物理仿真模型往往太难用于此目的,特别是对于无权访问复杂的计算资源和数据的地下水管理器。因此,我们分析了四种现代深度学习计算模型的适用性和性能,以便预测地下水位。我们比较三种方法来优化模型的“超参数,包括两个基于代理模型的算法和随机采样方法。考虑到STEMLFLF,降水和环境温度的时间可变性,在美国布尔特县的地下水位的预测测试了该模型。我们的数值研究表明,封锁的优化可以导致所有型号的合理性能(地下水预测的根均线误差为2米或更小),但“最简单”网络,即多层的Perceptron(MLP)总体执行更好地用于学习和预测地下水数据,而不是在预测精度和时间溶液方面比更先进的长短期记忆或卷积神经网络,使MLP成为地下水预测的合适候选者。

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