A Gradient Boosting Model Optimized by a Genetic Algorithm for Short-term Riverflow Forecast

Tales Lima Fonseca, Yulia Gorodetskaya, Gisele Goulart Tavares, Celso Bandeira de Melo Ribeiro, Leonardo Goliatt da Fonseca
2019 Revista Mundi Engenharia Tecnologia e Gestão (ISSN 2525-4782)  
The short-term streamflow forecast is an important parameter in studies related to energy generation and the prediction of possible floods. Flowing through three Brazilian states, the Paraíba do Sul river is responsible for the supply and energy generation in several municipalities. Machine learning techniques have been studied with the aim of improving these predictions through the use of hydrological and hydrometeorological parameters. Furthermore, the predictive performance of the machine
more » ... rning techniques are directly related to the quality of the training base and, moreover, to the set of hyperparameters used. The present study explores the combination of the Gradient Boosting technique coupled with a Genetic Algorithm to found the best set of hyperparameter to maximize the predicting performance of the Paraíba do Sul river streamflow.
doi:10.21575/25254782rmetg2019vol4n3845 fatcat:vwygdl4krbbdjkpitjq6hcbnce