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Deep Machine Learning for Forecasting Daily Potential Evapotranspiration in Arid Regions, Case: Atacama Desert Header

Author

Listed:
  • Edwin Pino-Vargas

    (Department of Civil Engineering, Jorge Basadre Grohmann National University, Tacna 23000, Peru)

  • Edgar Taya-Acosta

    (Department of Computer Engineering and Systems, Jorge Basadre Grohmann National University, Tacna 23000, Peru)

  • Eusebio Ingol-Blanco

    (Department of Water Resources, National Agrarian University La Molina, Lima 15012, Peru)

  • Alfonso Torres-Rúa

    (Utah Water Research Laboratory, Civil and Environmental Department, Utah State University, Logan, UT 84322, USA)

Abstract

Accurately estimating and forecasting evapotranspiration is one of the most important tasks to strengthen water resource management, especially in desert areas such as La Yarada, Tacna, Peru, a region located at the head of the Atacama Desert. In this study, we used temperature, humidity, wind speed, air pressure, and solar radiation from a local weather station to forecast potential evapotranspiration (ETo) using machine learning. The Feedforward Neural Network (Multi-Layered Perceptron) algorithm for prediction was used under two approaches: “direct” and “indirect”. In the first one, the ETo is predicted based on historical records, and the second one predicts the climate variables upon which the ETo calculation depends, for which the Penman-Monteith, Hargreaves-Samani, Ritchie, and Turc equations were used. The results were evaluated using statistical criteria to calculate errors, showing remarkable precision, predicting up to 300 days of ETo. Comparing the performance of the approaches and the machine learning used, the results obtained indicate that, despite the similar performance of the two proposed approaches, the indirect approach provides better ETo forecasting capabilities for longer time intervals than the direct approach, whose values of the corresponding metrics are MAE = 0.033, MSE = 0.002, RMSE = 0.043 and RAE = 0.016.

Suggested Citation

  • Edwin Pino-Vargas & Edgar Taya-Acosta & Eusebio Ingol-Blanco & Alfonso Torres-Rúa, 2022. "Deep Machine Learning for Forecasting Daily Potential Evapotranspiration in Arid Regions, Case: Atacama Desert Header," Agriculture, MDPI, vol. 12(12), pages 1-15, November.
  • Handle: RePEc:gam:jagris:v:12:y:2022:i:12:p:1971-:d:980310
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    References listed on IDEAS

    as
    1. Samuel Chucuya & Alissa Vera & Edwin Pino-Vargas & André Steenken & Jürgen Mahlknecht & Isaac Montalván, 2022. "Hydrogeochemical Characterization and Identification of Factors Influencing Groundwater Quality in Coastal Aquifers, Case: La Yarada, Tacna, Peru," IJERPH, MDPI, vol. 19(5), pages 1-21, February.
    2. Torres, Alfonso F. & Walker, Wynn R. & McKee, Mac, 2011. "Forecasting daily potential evapotranspiration using machine learning and limited climatic data," Agricultural Water Management, Elsevier, vol. 98(4), pages 553-562, February.
    3. Yang, Yong & Chen, Rensheng & Han, Chuntan & Liu, Zhangwen, 2021. "Evaluation of 18 models for calculating potential evapotranspiration in different climatic zones of China," Agricultural Water Management, Elsevier, vol. 244(C).
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    1. Han Chen & Ziqi Zhou & Han Li & Yizhao Wei & Jinhui (Jeanne) Huang & Hong Liang & Weimin Wang, 2023. "Evaluation the Performance of Three Types of Two-Source Evapotranspiration Models in Urban Woodland Areas," Sustainability, MDPI, vol. 15(12), pages 1-18, June.

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