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Physics-inspired integrated space–time artificial neural networks for regional groundwater flow modeling

机译:物理启发综合时空人工神经网络,用于区域地下水模型

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An integrated space–time artificial neural network (ANN) model inspired by the governing groundwater flow equation was developed to test whether a single ANN is capable of modeling regional groundwater flow systems. Model-independent entropy measures and random forest (RF)-based feature selection procedures were used to identify suitable inputs for ANNs. L2 regularization, five-fold cross-validation, and an adaptive stochastic gradient descent (ADAM) algorithm led to a parsimonious ANN model for a 30?691?km 2 agriculturally intensive area in the Ogallala Aquifer of Texas. The model testing at 38 independent wells during the 1956–2008 calibration period showed no overfitting issues and highlighted the model's ability to capture both the observed spatial dependence and temporal variability. The forecasting period (2009–2015) was marked by extreme climate variability in the region and served to evaluate the extrapolation capabilities of the model. While ANN models are universal interpolators, the model was able to capture the general trends and provide groundwater level estimates that were better than using historical means. Model sensitivity analysis indicated that pumping was the most sensitive process. Incorporation of spatial variability was more critical than capturing temporal persistence. The use of the standardized precipitation–evapotranspiration index (SPEI) as a surrogate for pumping was generally adequate but was unable to capture the heterogeneous groundwater extraction preferences of farmers under extreme climate conditions.
机译:开发了一种由控制地下水流动方程启发的集成时空人工神经网络(ANN)模型,以测试单个ANN是否能够建模区域地下水流量系统。基于模型的熵措施和随机森林(RF)基础的特征选择程序用于识别ANNS的合适输入。 L2正规化,五倍交叉验证和自适应随机梯度下降(ADAM)算法导致了德克萨斯州Ogallala含水层的30架791 km 2农业密集型区域的帕斯莫的Ann模型。在1956 - 2008年校准期间,38个独立井的模型测试显示没有过度拟合问题,并突出了模型捕获观察到的空间依赖性和时间变异性的能力。预测期(2009-2015)标志着该地区的极端气候变异性,并提供了评估模型的外推能力。虽然ANN模型是普遍的内插器,但该模型能够捕捉到一般趋势,并提供比使用历史手段更好的地下水位估算。模型敏感性分析表明泵送是最敏感的过程。结合空间变异性比捕获时间持久性更为重要。使用标准化的沉淀蒸馏蒸腾指数(SPEI)作为替代物用于泵送的替代物通常是足够的,但在极端气候条件下无法捕获农民的异质地下水提取偏好。

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