Deep learning modeling framework for multi-resolution streamflow generation

Author:

Custodio Pereira do Carmo Fernanda1,John Jeenu1ORCID,Sushama Laxmi1,Khaliq Muhammad Naveed2

Affiliation:

1. a Department of Civil Engineering, Trottier Institute for Sustainability in Engineering and Design, McGill University, Montreal, QC, Canada

2. b Ocean, Coastal and River Engineering Research Centre, National Research Council Canada, Ottawa, ON, Canada

Abstract

ABSTRACT Generating continuous streamflow information through integrated climate-hydrology modeling at fine spatial scales of the order of a few kilometers is often challenged by computational costs associated with running high-resolution (HR) climate models. To address this challenge, the present study explores deep learning approaches to generate HR streamflow information from that at low resolution (LR), based on runoff generated by climate models. Two sets of daily streamflow simulations spanning 10 years (2011–2020), at LR (50 km) and HR (5 km), for the Ottawa River basin, Canada, are employed. The proposed deep learning model is trained using upscaled features derived from LR streamflow simulation for the 2011–2018 period as input and the corresponding HR streamflow simulation as the target; data for 2019 are used for validation. The model estimates for the year 2020, when compared with unseen HR data for the same year, suggest good performance, with differences in monthly mean values for different accumulation area categories in the −0.7–5% range and correlation coefficients for streamflow values for the same accumulation area categories in the 0.92–0.96 range. The developed framework can be ported to other watersheds for generating similar information, which is required in climate change adaptation studies.

Funder

Canadian Space Agency

Publisher

IWA Publishing

Reference43 articles.

1. Impact of multi-resolution analysis of artificial intelligence models inputs on multi-step ahead river flow forecasting

2. Comparison of different ANN (FFBP, GRNN, RBF) algorithms and multiple linear regression for daily streamflow prediction in Kocasu River, Turkey;Burgan;Fresenius Environmental Bulletin,2022

3. Deep Learning for the Earth Sciences

4. A spatially adaptive multi-resolution generative algorithm: Application to simulating flood wave propagation

5. Real-time video super-resolution with spatio-temporal networks and motion compensation;Caballero; In Proceedings of the IEEE conference on computer vision and pattern recognition,2017

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