2023
DOI: 10.1038/s41598-023-41113-5
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Short-term streamflow modeling using data-intelligence evolutionary machine learning models

Alfeu D. Martinho,
Henrique S. Hippert,
Leonardo Goliatt

Abstract: Accurate streamflow prediction is essential for efficient water resources management. Machine learning (ML) models are the tools to meet this need. This paper presents a comparative research study focusing on hybridizing ML models with bioinspired optimization algorithms (BOA) for short-term multistep streamflow forecasting. Specifically, we focus on applying XGB, MARS, ELM, EN, and SVR models and various BOA, including PSO, GA, and DE, for selecting model parameters. The performances of the resulting hybrid m… Show more

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Cited by 3 publications
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