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

被引:6
|
作者
Ghaseminejad, Ali [1 ]
Uddameri, Venkatesh [1 ]
机构
[1] Texas Tech Univ, Dept Civil Environm & Construct Engn, Lubbock, TX 79409 USA
基金
美国食品与农业研究所;
关键词
CLIMATE VARIABILITY; VARIABLE IMPORTANCE; WATER-LEVEL; HIGH-PLAINS; AQUIFER; SUSTAINABILITY; IDENTIFICATION; DRIVERS;
D O I
10.5194/hess-24-5759-2020
中图分类号
P [天文学、地球科学];
学科分类号
07 ;
摘要
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.
引用
收藏
页码:5759 / 5779
页数:21
相关论文
共 50 条
  • [1] Physics-Inspired Graph Neural Networks
    Bronstein, Michael
    MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES: APPLIED DATA SCIENCE AND DEMO TRACK, ECML PKDD 2023, PT VII, 2023, 14175
  • [2] Physics-Inspired Neural Networks for Efficient Device Compact Modeling
    Li, Mingda
    Irsoy, Ozan
    Cardie, Claire
    Xing, Huili Grace
    IEEE JOURNAL ON EXPLORATORY SOLID-STATE COMPUTATIONAL DEVICES AND CIRCUITS, 2016, 2 : 44 - 49
  • [3] Graph coloring with physics-inspired graph neural networks
    Schuetz, Martin J. A.
    Brubaker, J. Kyle
    Zhu, Zhihuai
    Katzgraber, Helmut G.
    PHYSICAL REVIEW RESEARCH, 2022, 4 (04):
  • [4] Combinatorial optimization with physics-inspired graph neural networks
    Martin J. A. Schuetz
    J. Kyle Brubaker
    Helmut G. Katzgraber
    Nature Machine Intelligence, 2022, 4 : 367 - 377
  • [5] Combinatorial optimization with physics-inspired graph neural networks
    Schuetz, Martin J. A.
    Brubaker, J. Kyle
    Katzgraber, Helmut G.
    NATURE MACHINE INTELLIGENCE, 2022, 4 (04) : 367 - 377
  • [6] Heterogeneous Space-Time Artificial Neural Networks for Space-Time Series Prediction
    Deng, Min
    Yang, Wentao
    Liu, Qiliang
    Jin, Rui
    Xu, Feng
    Zhang, Yunfei
    TRANSACTIONS IN GIS, 2018, 22 (01) : 183 - 201
  • [7] PRINCIPLE AND APPLICATION OF PHYSICS-INSPIRED NEURAL NETWORKS FOR ELECTROMAGNETIC PROBLEMS
    Liu, Zhuoyang
    Xu, Feng
    2022 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS 2022), 2022, : 5244 - 5247
  • [8] Intelligent Beamforming via Physics-Inspired Neural Networks on Programmable Metasurface
    Li, Shangyang
    Liu, Zhuoyang
    Fu, Shilei
    Wang, Yan
    Xu, Feng
    IEEE TRANSACTIONS ON ANTENNAS AND PROPAGATION, 2022, 70 (06) : 4589 - 4599
  • [9] Efficient Prediction of Human Motion for Real-Time Robotics Applications With Physics-Inspired Neural Networks
    Antonucci, Alessandro
    Papini, Gastone Pietro Rosati
    Bevilacqua, Paolo
    Palopoli, Luigi
    Fontanelli, Daniele
    IEEE ACCESS, 2022, 10 : 144 - 157
  • [10] Physics-Inspired Neural Networks for Parameter Learning of Adaptive Cruise Control Systems
    Apostolakis T.
    Ampountolas K.
    IEEE Transactions on Vehicular Technology, 2024, 73 (10) : 1 - 11