| Authors | محمد احترام,فاطمه پناهی,Ali Najah Ahmed,Amir H. Mosavi,Ahmed El.Shafie |
| Journal | Frontiers in Environmental Science |
| Page number | 1 |
| Volume number | 789995 |
| IF | ثبت نشده |
| Paper Type | Full Paper |
| Published At | 2022-01-12 |
| Journal Grade | Scientific - research |
| Journal Type | Electronic |
| Journal Country | Iran, Islamic Republic Of |
| Journal Index | JCR |
Abstract
Predicting evaporation is essential for managing water resources in basins. Improvement
of the prediction accuracy is essential to identify adequate inputs on evaporation. In this
study, artificial neural network (ANN) is coupled with several evolutionary algorithms,
i.e., capuchin search algorithm (CSA), firefly algorithm (FFA), sine cosine algorithm (SCA),
and genetic algorithm (GA) for robust training to predict daily evaporation of seven synoptic
stations with different climates. The inclusive multiple model (IMM) is then used to predict
evaporation based on established hybrid ANN models. The adjusting model parameters of
the current study is a major challenge. Also, another challenge is the selection of the best
inputs to the models. The IMM model had significantly improved the root mean square
error (RMSE) and Nash Sutcliffe efficiency (NSE) values of all the proposed models. The
results for all stations indicated that the IMM model and ANN-CSA could outperform other
models. The RMSE of the IMM was 18, 21, 22, 30, and 43% lower than those of the ANNCSA, ANN-SCA, ANN-FFA, ANN-GA, and ANN models in the Sharekord station. The MAE
of the IMM was 0.112 mm/day, while it was 0.189 mm/day, 0.267 mm/day, 0.267 mm/
day, 0.389 mm/day, 0.456 mm/day, and 0.512 mm/day for the ANN-CSA, ANN-SCA, and
ANN-FFA, ANN-GA, and ANN models, respectively, in the Tehran station. The current
study proved that the inclusive multiple models based on improved ANN models
considering the fuzzy reasoning had the high ability to predict evaporation