Litcius/Paper detail

Daily Water Flow Forecasting via Coupling Between SMAP and Deep Learning

Guilherme de Moura Maciel, Vinícius Albuquerque Cabral, André Luís Marques Marcato, Ivo Chaves da Silva, Leonardo de Mello Honório

2020IEEE Access25 citationsDOIOpen Access PDF

Abstract

Hydrological models are essential tools to forecast daily water resources' availability, which are used to plan the short-term electrical systems' operation. However, there is a trade-off when choosing a given model. Complex models may provide good results depending on very complicated analytical and optimization procedures beyond sophisticated data, whereas simpler models offer reasonable results with much more amenable tuning approaches. To improve the quality of simpler models this article proposes the coupling of the Soil Moisture Accounting Procedure (SMAP) hydrological model with a Deep Learning architecture based on Conv3D-LSTM. In the proposed methodology, the SMAP is first optimized to obtain general parameters of the hydrographic basin. This optimized model's output is used as input to the Conv3D-LSTM estimator to provide the final results. This gray estimator model can generate fast and accurate results. Studies whit the goal of forecast the natural flow seven days ahead are carried out for two large Brazilian hydroelectric plants to validate the method. The results obtained by the architecture are better than those obtained with decoupled techniques.

Topics & Concepts

Computer scienceFlow (mathematics)Coupling (piping)Artificial intelligenceMachine learningPhysicsMaterials scienceMechanicsMetallurgyHydrological Forecasting Using AIHydrology and Watershed Management StudiesFlood Risk Assessment and Management