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Evaluation of Different Modelling Techniques with Fusion of Satellite, Soil and Agro-Meteorological Data for the Assessment of Durum Wheat Yield under a Large Scale Application

Author

Listed:
  • Emmanuel Lekakis

    (AgroApps P.C., Koritsas 34, 55133 Thessaloniki, Greece)

  • Athanasios Zaikos

    (Big Blue Data Academy, Gennadiou 14, 13343 Fyli, Greece)

  • Alexios Polychronidis

    (Big Blue Data Academy, Gennadiou 14, 13343 Fyli, Greece)

  • Christos Efthimiou

    (Big Blue Data Academy, Gennadiou 14, 13343 Fyli, Greece)

  • Ioannis Pourikas

    (Melissa Kikizas, Larisas-Farsalon Rd, 41110 Larisa, Greece)

  • Theano Mamouka

    (AgroApps P.C., Koritsas 34, 55133 Thessaloniki, Greece)

Abstract

Food and feed production must be increased or maintained in order to meet the demands of the earth’s population. Under this scenario, the question that arises is how to address the demand for agricultural products given that the pressures on land use have already increased. In addition, it is obvious that climate change will have a serious negative impact and threaten the productivity and sustainability of food production systems. Therefore, understanding and predicting the outcome of crop production, while considering adaptation and sustainability, is essential. The need for information on decision making at all levels, from crop management to adaptation strategies, is constantly increasing and methods for providing such information are urgently needed in a relatively short period of time. Thus arises the need to use effective data, such as satellite and meteorological data, but also operational tools, to assess crop yields over local, regional, national, and global scales. In this work, three modeling approaches built on a fusion of satellite-derived vegetation indices, agro-meteorological indicators, and crop phenology are tested and evaluated in terms of data intensiveness for the prediction of wheat yields in large scale applications. The obtained results indicated that medium input data intensity methods are effective tools for yield assessments. The methods, namely, a semi-empirical regression model, a machine learning regression model, and a process-based model, provided high to moderate accuracies by fully relying on freely available datasets as sources of input data. The findings are comparable with those reported in the literature for detailed field experiments, thereby introducing a promising framework that can support operational platforms for dynamic yield forecasting, operating at the administrative or regional unit scale.

Suggested Citation

  • Emmanuel Lekakis & Athanasios Zaikos & Alexios Polychronidis & Christos Efthimiou & Ioannis Pourikas & Theano Mamouka, 2022. "Evaluation of Different Modelling Techniques with Fusion of Satellite, Soil and Agro-Meteorological Data for the Assessment of Durum Wheat Yield under a Large Scale Application," Agriculture, MDPI, vol. 12(10), pages 1-23, October.
  • Handle: RePEc:gam:jagris:v:12:y:2022:i:10:p:1635-:d:936134
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    References listed on IDEAS

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    1. Lu, Yang & Wei, Chunzhu & McCabe, Matthew F. & Sheffield, Justin, 2022. "Multi-variable assimilation into a modified AquaCrop model for improved maize simulation without management or crop phenology information," Agricultural Water Management, Elsevier, vol. 266(C).
    2. Iqbal, M. Anjum & Shen, Yanjun & Stricevic, Ruzica & Pei, Hongwei & Sun, Hongyoung & Amiri, Ebrahim & Penas, Angel & del Rio, Sara, 2014. "Evaluation of the FAO AquaCrop model for winter wheat on the North China Plain under deficit irrigation from field experiment to regional yield simulation," Agricultural Water Management, Elsevier, vol. 135(C), pages 61-72.
    3. Abedinpour, M. & Sarangi, A. & Rajput, T.B.S. & Singh, Man & Pathak, H. & Ahmad, T., 2012. "Performance evaluation of AquaCrop model for maize crop in a semi-arid environment," Agricultural Water Management, Elsevier, vol. 110(C), pages 55-66.
    4. Gina Ziervogel & Mark New & Emma Archer van Garderen & Guy Midgley & Anna Taylor & Ralph Hamann & Sabine Stuart‐Hill & Jonny Myers & Michele Warburton, 2014. "Climate change impacts and adaptation in South Africa," Wiley Interdisciplinary Reviews: Climate Change, John Wiley & Sons, vol. 5(5), pages 605-620, September.
    5. Toumi, J. & Er-Raki, S. & Ezzahar, J. & Khabba, S. & Jarlan, L. & Chehbouni, A., 2016. "Performance assessment of AquaCrop model for estimating evapotranspiration, soil water content and grain yield of winter wheat in Tensift Al Haouz (Morocco): Application to irrigation management," Agricultural Water Management, Elsevier, vol. 163(C), pages 219-235.
    6. Ahmed M. S. Kheir & Hiba M. Alkharabsheh & Mahmoud F. Seleiman & Adel M. Al-Saif & Khalil A. Ammar & Ahmed Attia & Medhat G. Zoghdan & Mahmoud M. A. Shabana & Hesham Aboelsoud & Calogero Schillaci, 2021. "Calibration and Validation of AQUACROP and APSIM Models to Optimize Wheat Yield and Water Saving in Arid Regions," Land, MDPI, vol. 10(12), pages 1-16, December.
    7. Foster, T. & Brozović, N. & Butler, A.P. & Neale, C.M.U. & Raes, D. & Steduto, P. & Fereres, E. & Hsiao, T.C., 2017. "AquaCrop-OS: An open source version of FAO's crop water productivity model," Agricultural Water Management, Elsevier, vol. 181(C), pages 18-22.
    8. Araya, A. & Habtu, Solomon & Hadgu, Kiros Meles & Kebede, Afewerk & Dejene, Taddese, 2010. "Test of AquaCrop model in simulating biomass and yield of water deficient and irrigated barley (Hordeum vulgare)," Agricultural Water Management, Elsevier, vol. 97(11), pages 1838-1846, November.
    9. Mkhabela, Manasah S. & Bullock, Paul R., 2012. "Performance of the FAO AquaCrop model for wheat grain yield and soil moisture simulation in Western Canada," Agricultural Water Management, Elsevier, vol. 110(C), pages 16-24.
    10. A. J. Challinor & J. Watson & D. B. Lobell & S. M. Howden & D. R. Smith & N. Chhetri, 2014. "A meta-analysis of crop yield under climate change and adaptation," Nature Climate Change, Nature, vol. 4(4), pages 287-291, April.
    11. Lisa Dilling & Meaghan E. Daly & William R. Travis & Olga V. Wilhelmi & Roberta A. Klein, 2015. "The dynamics of vulnerability: why adapting to climate variability will not always prepare us for climate change," Wiley Interdisciplinary Reviews: Climate Change, John Wiley & Sons, vol. 6(4), pages 413-425, July.
    12. Lu, Yang & Chibarabada, Tendai P. & Ziliani, Matteo G. & Onema, Jean-Marie Kileshye & McCabe, Matthew F. & Sheffield, Justin, 2021. "Assimilation of soil moisture and canopy cover data improves maize simulation using an under-calibrated crop model," Agricultural Water Management, Elsevier, vol. 252(C).
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