作者
Ali Danandeh Mehr, Vahid Nourani, Vahid Karimi Khosrowshahi, Moahmmad Ali Ghorbani
发表日期
2019/1/29
期刊
International Journal of Environmental Science and Technology
卷号
16
页码范围
335-346
出版商
Springer Berlin Heidelberg
简介
Long-term prediction of rainfalls is one of the most challenging tasks in stochastic hydrology owing to the highly random characteristics of rainfall events. In this paper, a novel approach is adopted to develop a hybrid regression model for 1-month-ahead rainfall forecasting at two rain gauge locations (namely: Tabriz and Urmia stations), in northwest Iran. The approach is based on the integration of support vector regression (SVR) and firefly algorithm (FFA) that results in truthful rainfall forecasts. The proposed hybrid model was trained and validated using weak stationary state of monthly rainfall data obtained from the gauges. The efficiency results of the model were also cross-validated with those of stand-alone SVR- and genetic programming-based forecasting models developed as the benchmarks in this study. For both rain gauge locations, the results showed that the hybrid model significantly outperforms …
引用总数
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