Author
Listed:
- Mohammed Majeed Hameed
- Mohamed Khalid AlOmar
- Siti Fatin Mohd Razali
- Mohammed Abd Kareem Khalaf
- Wajdi Jaber Baniya
- Ahmad Sharafati
- Mohammed Abdulhakim AlSaadi
- Honglei Xu
Abstract
Reference evapotranspiration ETo  is one of the most significant factors in the hydrological cycle since it has a great influence on water resource planning and management, agriculture and irrigation management, and other processes in the hydrological sector. In this study, an efficient and local predictive model was established to forecast the monthly mean ETo t over Turkey based on the data collected from 35 locations. For this purpose, twenty input combinations including hydrological and geographical parameters were introduced to three different approaches called multiple linear regression MLR, random forest RF, and extreme learning machine ELM. Moreover, in this study, large investigation was done, involving the establishment of 60 models and their assessment using ten statistical measures. The outcome of this study revealed that the ELM approach achieved high accurate estimation in accordance with the Penman–Monteith formula as compared to other models such as MLR and RF. Moreover, among the 10 statistical measures, the uncertainty at 95% U95 indicator showed an excellent ability to select the best and most efficient forecast model. The superiority of ELM in the prediction of mean monthly ETo  over MLR and RF approaches is illustrated in the reduction of the U95 parameter to 49.02% and 34.07% for RF and MLR models, respectively. Furthermore, it is possible to develop a local predictive model with the help of computer to estimate the ETo using the simplest and cheapest meteorological and geographical variables with acceptable accuracy.
Suggested Citation
Mohammed Majeed Hameed & Mohamed Khalid AlOmar & Siti Fatin Mohd Razali & Mohammed Abd Kareem Khalaf & Wajdi Jaber Baniya & Ahmad Sharafati & Mohammed Abdulhakim AlSaadi & Honglei Xu, 2021.
"Application of Artificial Intelligence Models for Evapotranspiration Prediction along the Southern Coast of Turkey,"
Complexity, Hindawi, vol. 2021, pages 1-20, August.
Handle:
RePEc:hin:complx:8850243
DOI: 10.1155/2021/8850243
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Citations
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Cited by:
- Karbasi, Masoud & Jamei, Mehdi & Ali, Mumtaz & Malik, Anurag & Chu, Xuefeng & Farooque, Aitazaz Ahsan & Yaseen, Zaher Mundher, 2023.
"Development of an enhanced bidirectional recurrent neural network combined with time-varying filter-based empirical mode decomposition to forecast weekly reference evapotranspiration,"
Agricultural Water Management, Elsevier, vol. 290(C).
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