2024
DOI: 10.1038/s41598-024-63908-w
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Integrated metaheuristic algorithms with extreme learning machine models for river streamflow prediction

Nguyen Van Thieu,
Ngoc Hung Nguyen,
Mohsen Sherif
et al.

Abstract: Accurate river streamflow prediction is pivotal for effective resource planning and flood risk management. Traditional river streamflow forecasting models encounter challenges such as nonlinearity, stochastic behavior, and convergence reliability. To overcome these, we introduce novel hybrid models that combine extreme learning machines (ELM) with cutting-edge mathematical inspired metaheuristic optimization algorithms, including Pareto-like sequential sampling (PSS), weighted mean of vectors (INFO), and the R… Show more

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