Data_Sheet_1_Interpreting Deep Machine Learning for Streamflow Modeling Across Glacial, Nival, and Pluvial Regimes in Southwestern Canada.pdf

The interpretation of deep learning (DL) hydrological models is a key challenge in data-driven modeling of streamflow, as the DL models are often seen as “black box” models despite often outperforming process-based models in streamflow prediction. Here we explore the interpretability of a convolutio...

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Main Authors: Sam Anderson, Valentina Radić
Format: Dataset
Language:unknown
Published: 2022
Subjects:
Online Access:https://doi.org/10.3389/frwa.2022.934709.s001
https://figshare.com/articles/dataset/Data_Sheet_1_Interpreting_Deep_Machine_Learning_for_Streamflow_Modeling_Across_Glacial_Nival_and_Pluvial_Regimes_in_Southwestern_Canada_pdf/20155337
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spelling ftfrontimediafig:oai:figshare.com:article/20155337 2023-05-15T16:22:31+02:00 Data_Sheet_1_Interpreting Deep Machine Learning for Streamflow Modeling Across Glacial, Nival, and Pluvial Regimes in Southwestern Canada.pdf Sam Anderson Valentina Radić 2022-06-27T04:16:42Z https://doi.org/10.3389/frwa.2022.934709.s001 https://figshare.com/articles/dataset/Data_Sheet_1_Interpreting_Deep_Machine_Learning_for_Streamflow_Modeling_Across_Glacial_Nival_and_Pluvial_Regimes_in_Southwestern_Canada_pdf/20155337 unknown doi:10.3389/frwa.2022.934709.s001 https://figshare.com/articles/dataset/Data_Sheet_1_Interpreting_Deep_Machine_Learning_for_Streamflow_Modeling_Across_Glacial_Nival_and_Pluvial_Regimes_in_Southwestern_Canada_pdf/20155337 CC BY 4.0 CC-BY Hydrology Natural Resource Management Water Quality Engineering Water Resources Engineering Environmental Politics deep machine learning interpretable machine learning convolutional neural networks long short-term memory neural networks Dataset 2022 ftfrontimediafig https://doi.org/10.3389/frwa.2022.934709.s001 2022-06-29T23:07:05Z The interpretation of deep learning (DL) hydrological models is a key challenge in data-driven modeling of streamflow, as the DL models are often seen as “black box” models despite often outperforming process-based models in streamflow prediction. Here we explore the interpretability of a convolutional long short-term memory network (CNN-LSTM) previously trained to successfully predict streamflow at 226 stream gauge stations across southwestern Canada. To this end, we develop a set of sensitivity experiments to characterize how the CNN-LSTM model learns to map spatiotemporal fields of temperature and precipitation to streamflow across three streamflow regimes (glacial, nival, and pluvial) in the region, and we uncover key spatiotemporal patterns of model learning. The results reveal that the model has learned basic physically-consistent principles behind runoff generation for each streamflow regime, without being given any information other than temperature, precipitation, and streamflow data. In particular, during periods of dynamic streamflow, the model is more sensitive to perturbations within/nearby the basin where streamflow is being modeled, than to perturbations far away from the basins. The sensitivity of modeled streamflow to the magnitude and timing of the perturbations, as well as the sensitivity of day-to-day increases in streamflow to daily weather anomalies, are found to be specific for each streamflow regime. For example, during summer months in the glacial regime, modeled daily streamflow is increasingly generated by warm daily temperature anomalies in basins with a larger fraction of glacier coverage. This model's learning of “glacier runoff” contributions to streamflow, without any explicit information given about glacier coverage, is enabled by a set of cell states that learned to strongly map temperature to streamflow only in glacierized basins in summer. Our results demonstrate that the model's decision making, when mapping temperature and precipitation to streamflow, is consistent with a ... Dataset glacier* Frontiers: Figshare Canada
institution Open Polar
collection Frontiers: Figshare
op_collection_id ftfrontimediafig
language unknown
topic Hydrology
Natural Resource Management
Water Quality Engineering
Water Resources Engineering
Environmental Politics
deep machine learning
interpretable machine learning
convolutional neural networks
long short-term memory neural networks
spellingShingle Hydrology
Natural Resource Management
Water Quality Engineering
Water Resources Engineering
Environmental Politics
deep machine learning
interpretable machine learning
convolutional neural networks
long short-term memory neural networks
Sam Anderson
Valentina Radić
Data_Sheet_1_Interpreting Deep Machine Learning for Streamflow Modeling Across Glacial, Nival, and Pluvial Regimes in Southwestern Canada.pdf
topic_facet Hydrology
Natural Resource Management
Water Quality Engineering
Water Resources Engineering
Environmental Politics
deep machine learning
interpretable machine learning
convolutional neural networks
long short-term memory neural networks
description The interpretation of deep learning (DL) hydrological models is a key challenge in data-driven modeling of streamflow, as the DL models are often seen as “black box” models despite often outperforming process-based models in streamflow prediction. Here we explore the interpretability of a convolutional long short-term memory network (CNN-LSTM) previously trained to successfully predict streamflow at 226 stream gauge stations across southwestern Canada. To this end, we develop a set of sensitivity experiments to characterize how the CNN-LSTM model learns to map spatiotemporal fields of temperature and precipitation to streamflow across three streamflow regimes (glacial, nival, and pluvial) in the region, and we uncover key spatiotemporal patterns of model learning. The results reveal that the model has learned basic physically-consistent principles behind runoff generation for each streamflow regime, without being given any information other than temperature, precipitation, and streamflow data. In particular, during periods of dynamic streamflow, the model is more sensitive to perturbations within/nearby the basin where streamflow is being modeled, than to perturbations far away from the basins. The sensitivity of modeled streamflow to the magnitude and timing of the perturbations, as well as the sensitivity of day-to-day increases in streamflow to daily weather anomalies, are found to be specific for each streamflow regime. For example, during summer months in the glacial regime, modeled daily streamflow is increasingly generated by warm daily temperature anomalies in basins with a larger fraction of glacier coverage. This model's learning of “glacier runoff” contributions to streamflow, without any explicit information given about glacier coverage, is enabled by a set of cell states that learned to strongly map temperature to streamflow only in glacierized basins in summer. Our results demonstrate that the model's decision making, when mapping temperature and precipitation to streamflow, is consistent with a ...
format Dataset
author Sam Anderson
Valentina Radić
author_facet Sam Anderson
Valentina Radić
author_sort Sam Anderson
title Data_Sheet_1_Interpreting Deep Machine Learning for Streamflow Modeling Across Glacial, Nival, and Pluvial Regimes in Southwestern Canada.pdf
title_short Data_Sheet_1_Interpreting Deep Machine Learning for Streamflow Modeling Across Glacial, Nival, and Pluvial Regimes in Southwestern Canada.pdf
title_full Data_Sheet_1_Interpreting Deep Machine Learning for Streamflow Modeling Across Glacial, Nival, and Pluvial Regimes in Southwestern Canada.pdf
title_fullStr Data_Sheet_1_Interpreting Deep Machine Learning for Streamflow Modeling Across Glacial, Nival, and Pluvial Regimes in Southwestern Canada.pdf
title_full_unstemmed Data_Sheet_1_Interpreting Deep Machine Learning for Streamflow Modeling Across Glacial, Nival, and Pluvial Regimes in Southwestern Canada.pdf
title_sort data_sheet_1_interpreting deep machine learning for streamflow modeling across glacial, nival, and pluvial regimes in southwestern canada.pdf
publishDate 2022
url https://doi.org/10.3389/frwa.2022.934709.s001
https://figshare.com/articles/dataset/Data_Sheet_1_Interpreting_Deep_Machine_Learning_for_Streamflow_Modeling_Across_Glacial_Nival_and_Pluvial_Regimes_in_Southwestern_Canada_pdf/20155337
geographic Canada
geographic_facet Canada
genre glacier*
genre_facet glacier*
op_relation doi:10.3389/frwa.2022.934709.s001
https://figshare.com/articles/dataset/Data_Sheet_1_Interpreting_Deep_Machine_Learning_for_Streamflow_Modeling_Across_Glacial_Nival_and_Pluvial_Regimes_in_Southwestern_Canada_pdf/20155337
op_rights CC BY 4.0
op_rightsnorm CC-BY
op_doi https://doi.org/10.3389/frwa.2022.934709.s001
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