Enhancing references evapotranspiration forecasting with teleconnection indices and advanced machine learning techniques

After precipitation, reference evapotranspiration (ET O ) plays a crucial role in the hydrological cycle as it quantifies water loss. ET O significantly impacts the water balance and holds great importance at the basin level because of the spatial distribution of managing water resources. Large scal...

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Veröffentlicht in:Applied water science 2024-10, Vol.14 (10), p.219-19, Article 219
Hauptverfasser: Helali, Jalil, Mohammadi Ghaleni, Mehdi, Mianabadi, Ameneh, Asadi Oskouei, Ebrahim, Momenzadeh, Hossein, Haddadi, Liza, Saboori Noghabi, Masoud
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Sprache:eng
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Zusammenfassung:After precipitation, reference evapotranspiration (ET O ) plays a crucial role in the hydrological cycle as it quantifies water loss. ET O significantly impacts the water balance and holds great importance at the basin level because of the spatial distribution of managing water resources. Large scale teleconnection indices (LSTIs) play a vital role by influencing climatic variables and can be pivotal in determining ET O and its predictive variables. This study aimed to model and forecast annual ET O in Iran’s basins by utilizing LSTIs and employing various machine learning models (MLMs) such as least squares support vector machine, generalized regression neural network, multi-linear regression (MLR), and multi-layer perceptron (MLP). Initially, climate data from 122 synoptic stations covering six and 30, main and sub basins were collected, and annual ET O values were computed using the Food and Agriculture Organization 56 (PMF 56) Penman–Monteith equation. The correlations between these values and 37 LSTIs were examined within lead times ranging from 7 to 12 months. Through a stepwise approach, the most influential predictor indices (LSTIs) were selected as input datasets for the MLMs. The findings revealed the significant influence of factors such as carbon dioxide (CO 2 ), Atlantic multidecadal oscillation, Atlantic Meridional Mode, and East Atlantic on annual ET O . Overall, all MLMs performed well in terms of the Scatter Index during both training and testing phases across all sub-basins. Furthermore, the MLP and MLR models displayed superior performance compared to other models in the training and testing evaluations based on various assessment metrics.
ISSN:2190-5487
2190-5495
DOI:10.1007/s13201-024-02289-x