Data-driven modeling of hydraulic head time series: results and lessons learned from the 2022 groundwater modeling challenge
This paper presents the results of the 2022 Groundwater Time Series Modelling Challenge, where 15 teams from different institutes applied various data-driven models to simulate hydraulic-head time series at four monitoring wells. Three of the wells were located in Europe and one was located in the U...
Main Authors: | , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , , |
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Format: | Article in Journal/Newspaper |
Language: | English |
Published: |
European Geophysical Society
2024
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Subjects: | |
Online Access: | https://lup.lub.lu.se/record/571536d2-1815-4e36-a203-a65de24b81c2 https://doi.org/10.5194/hess-2024-111 |
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author | Collenteur, Raoul Haaf, Ezra Bakker, Mark Liesch, Tanja Wunsch, Andreas Soonthornrangsan, Jenny White, Jeremy Martin, Nick Hugman, Rui de Sousa, Ed Vanden Berghe, Didier Fan, Xinyang Peterson, Tim Bikše, Jānis Di Ciacca, Antoine Wang, Xinyue Zheng, Yang Nölscher, Maximilian Koch, Julian Schneider, Raphael Benavides Höglund, Nikolas Krishna Reddy Chidepudi, Sivarama Henriot, Abel Massei, Nicolas Jardani, Abderrahim Gustav Rudolph, Max Rouhani, Amir Gómez-Hernández, J. Jaime Jomaa, Seifeddine Pölz, Anna Franken, Tim Behbooei, Morteza Lin, Jimmy Meysami, Rojin |
author_facet | Collenteur, Raoul Haaf, Ezra Bakker, Mark Liesch, Tanja Wunsch, Andreas Soonthornrangsan, Jenny White, Jeremy Martin, Nick Hugman, Rui de Sousa, Ed Vanden Berghe, Didier Fan, Xinyang Peterson, Tim Bikše, Jānis Di Ciacca, Antoine Wang, Xinyue Zheng, Yang Nölscher, Maximilian Koch, Julian Schneider, Raphael Benavides Höglund, Nikolas Krishna Reddy Chidepudi, Sivarama Henriot, Abel Massei, Nicolas Jardani, Abderrahim Gustav Rudolph, Max Rouhani, Amir Gómez-Hernández, J. Jaime Jomaa, Seifeddine Pölz, Anna Franken, Tim Behbooei, Morteza Lin, Jimmy Meysami, Rojin |
author_sort | Collenteur, Raoul |
collection | Lund University Publications (LUP) |
description | This paper presents the results of the 2022 Groundwater Time Series Modelling Challenge, where 15 teams from different institutes applied various data-driven models to simulate hydraulic-head time series at four monitoring wells. Three of the wells were located in Europe and one was located in the USA in different hydrogeological settings in temperate, continental, or subarctic climates. Participants were provided with approximately 15 years of measured heads at (almost) regular time intervals and daily measurements of weather data starting some 10 years prior to the first head measurements and extending around 5 years after the last head measurement. The participants were asked to simulate the measured heads (the calibration period), to provide a prediction for around 5 years after the last measurement (the validation period for which weather data were provided but not head measurements), and to include an uncertainty estimate. Three different groups of models were identified among the submissions: lumped-parameter models (three teams), machine learning models (four teams), and deep learning models (eight teams). Lumped-parameter models apply relatively simple response functions with few parameters, while the artificial intelligence models used models of varying complexity, generally with more parameters and more input, including input engineered from the provided data (e.g. multi-day averages).The models were evaluated on their performance in simulating the heads in the calibration period and in predicting the heads in the validation period. Different metrics were used to assess performance, including metrics for average relative fit, average absolute fit, fit of extreme (high or low) heads, and the coverage of the uncertainty interval. For all wells, reasonable performance was obtained by at least one team from each of the three groups. However, the performance was not consistent across submissions within each group, which implies that the application of each method to individual sites requires significant ... |
format | Article in Journal/Newspaper |
genre | Subarctic |
genre_facet | Subarctic |
id | ftulundlup:oai:lup.lub.lu.se:571536d2-1815-4e36-a203-a65de24b81c2 |
institution | Open Polar |
language | English |
op_collection_id | ftulundlup |
op_doi | https://doi.org/10.5194/hess-2024-111 |
op_source | Hydrology and Earth System Sciences; 28(23), pp 5193-5208 (2024) ISSN: 1607-7938 |
publishDate | 2024 |
publisher | European Geophysical Society |
record_format | openpolar |
spelling | ftulundlup:oai:lup.lub.lu.se:571536d2-1815-4e36-a203-a65de24b81c2 2025-04-06T15:07:18+00:00 Data-driven modeling of hydraulic head time series: results and lessons learned from the 2022 groundwater modeling challenge Collenteur, Raoul Haaf, Ezra Bakker, Mark Liesch, Tanja Wunsch, Andreas Soonthornrangsan, Jenny White, Jeremy Martin, Nick Hugman, Rui de Sousa, Ed Vanden Berghe, Didier Fan, Xinyang Peterson, Tim Bikše, Jānis Di Ciacca, Antoine Wang, Xinyue Zheng, Yang Nölscher, Maximilian Koch, Julian Schneider, Raphael Benavides Höglund, Nikolas Krishna Reddy Chidepudi, Sivarama Henriot, Abel Massei, Nicolas Jardani, Abderrahim Gustav Rudolph, Max Rouhani, Amir Gómez-Hernández, J. Jaime Jomaa, Seifeddine Pölz, Anna Franken, Tim Behbooei, Morteza Lin, Jimmy Meysami, Rojin 2024-12-04 https://lup.lub.lu.se/record/571536d2-1815-4e36-a203-a65de24b81c2 https://doi.org/10.5194/hess-2024-111 eng eng European Geophysical Society Hydrology and Earth System Sciences; 28(23), pp 5193-5208 (2024) ISSN: 1607-7938 Environmental Management Water Engineering Computational Mathematics Oceanography Hydrology Water Resources Time series forecasting Groundwater level prediction Artificial neural network (ANN) Deep learning contributiontojournal/article info:eu-repo/semantics/article text 2024 ftulundlup https://doi.org/10.5194/hess-2024-111 2025-03-11T14:07:57Z This paper presents the results of the 2022 Groundwater Time Series Modelling Challenge, where 15 teams from different institutes applied various data-driven models to simulate hydraulic-head time series at four monitoring wells. Three of the wells were located in Europe and one was located in the USA in different hydrogeological settings in temperate, continental, or subarctic climates. Participants were provided with approximately 15 years of measured heads at (almost) regular time intervals and daily measurements of weather data starting some 10 years prior to the first head measurements and extending around 5 years after the last head measurement. The participants were asked to simulate the measured heads (the calibration period), to provide a prediction for around 5 years after the last measurement (the validation period for which weather data were provided but not head measurements), and to include an uncertainty estimate. Three different groups of models were identified among the submissions: lumped-parameter models (three teams), machine learning models (four teams), and deep learning models (eight teams). Lumped-parameter models apply relatively simple response functions with few parameters, while the artificial intelligence models used models of varying complexity, generally with more parameters and more input, including input engineered from the provided data (e.g. multi-day averages).The models were evaluated on their performance in simulating the heads in the calibration period and in predicting the heads in the validation period. Different metrics were used to assess performance, including metrics for average relative fit, average absolute fit, fit of extreme (high or low) heads, and the coverage of the uncertainty interval. For all wells, reasonable performance was obtained by at least one team from each of the three groups. However, the performance was not consistent across submissions within each group, which implies that the application of each method to individual sites requires significant ... Article in Journal/Newspaper Subarctic Lund University Publications (LUP) |
spellingShingle | Environmental Management Water Engineering Computational Mathematics Oceanography Hydrology Water Resources Time series forecasting Groundwater level prediction Artificial neural network (ANN) Deep learning Collenteur, Raoul Haaf, Ezra Bakker, Mark Liesch, Tanja Wunsch, Andreas Soonthornrangsan, Jenny White, Jeremy Martin, Nick Hugman, Rui de Sousa, Ed Vanden Berghe, Didier Fan, Xinyang Peterson, Tim Bikše, Jānis Di Ciacca, Antoine Wang, Xinyue Zheng, Yang Nölscher, Maximilian Koch, Julian Schneider, Raphael Benavides Höglund, Nikolas Krishna Reddy Chidepudi, Sivarama Henriot, Abel Massei, Nicolas Jardani, Abderrahim Gustav Rudolph, Max Rouhani, Amir Gómez-Hernández, J. Jaime Jomaa, Seifeddine Pölz, Anna Franken, Tim Behbooei, Morteza Lin, Jimmy Meysami, Rojin Data-driven modeling of hydraulic head time series: results and lessons learned from the 2022 groundwater modeling challenge |
title | Data-driven modeling of hydraulic head time series: results and lessons learned from the 2022 groundwater modeling challenge |
title_full | Data-driven modeling of hydraulic head time series: results and lessons learned from the 2022 groundwater modeling challenge |
title_fullStr | Data-driven modeling of hydraulic head time series: results and lessons learned from the 2022 groundwater modeling challenge |
title_full_unstemmed | Data-driven modeling of hydraulic head time series: results and lessons learned from the 2022 groundwater modeling challenge |
title_short | Data-driven modeling of hydraulic head time series: results and lessons learned from the 2022 groundwater modeling challenge |
title_sort | data-driven modeling of hydraulic head time series: results and lessons learned from the 2022 groundwater modeling challenge |
topic | Environmental Management Water Engineering Computational Mathematics Oceanography Hydrology Water Resources Time series forecasting Groundwater level prediction Artificial neural network (ANN) Deep learning |
topic_facet | Environmental Management Water Engineering Computational Mathematics Oceanography Hydrology Water Resources Time series forecasting Groundwater level prediction Artificial neural network (ANN) Deep learning |
url | https://lup.lub.lu.se/record/571536d2-1815-4e36-a203-a65de24b81c2 https://doi.org/10.5194/hess-2024-111 |