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New Graph-Based and Transformer Deep Learning Models for River Dissolved Oxygen Forecasting

Environments 2023 15 citations ? Citation count from OpenAlex, updated daily. May differ slightly from the publisher's own count. Score: 55 ? 0–100 AI score estimating relevance to the microplastics field. Papers below 30 are filtered from public browse.
Paulo Alexandre Costa Rocha, Paulo Alexandre Costa Rocha, Victor Oliveira Santos, Victor Oliveira Santos, Jesse Van Griensven Thé, Jesse Van Griensven Thé, Bahram Gharabaghi Bahram Gharabaghi Bahram Gharabaghi

Summary

Researchers developed new deep learning models using graph neural networks and transformer architectures to predict dissolved oxygen levels in rivers, a key indicator of water quality. Their models outperformed traditional forecasting methods by better capturing complex patterns in environmental data over time. While focused on water quality monitoring, this type of predictive tool could help detect environmental changes linked to pollution, including from microplastics.

Body Systems
Study Type Environmental

Dissolved oxygen (DO) is a key indicator of water quality and the health of an aquatic ecosystem. Aspiring to reach a more accurate forecasting approach for DO levels of natural streams, the present work proposes new graph-based and transformer-based deep learning models. The models were trained and validated using a network of real-time hydrometric and water quality monitoring stations for the Credit River Watershed, Ontario, Canada, and the results were compared with both benchmarking and state-of-the-art approaches. The proposed new Graph Neural Network Sample and Aggregate (GNN-SAGE) model was the best-performing approach, reaching coefficient of determination (R2) and root mean squared error (RMSE) values of 97% and 0.34 mg/L, respectively, when compared with benchmarking models. The findings from the Shapley additive explanations (SHAP) indicated that the GNN-SAGE benefited from spatiotemporal information from the surrounding stations, improving the model’s results. Furthermore, temperature has been found to be a major input attribute for determining future DO levels. The results established that the proposed GNN-SAGE model outperforms the accuracy of existing models for DO forecasting, with great potential for real-time water quality management in urban watersheds.

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