Araştırma Makalesi

Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye

Cilt: 12 Sayı: 3 31 Ekim 2025
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Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye

Öz

This study aims to develop a phenology-aware machine learning framework for accurately predicting wheat yields in Türkiye’s Central Anatolia Region. The research integrates provincial wheat yield data from the Turkish Statistical Institute (TurkStat) (2004-2023) with fourteen agro-climatic and soil parameters retrieved from the National Aeronautics and Space Administration’s Prediction of Worldwide Energy Resources (NASA POWER) platform (2003-2023). To enhance model sensitivity, all variables were segmented into five key phenological stages of wheat growth, and for each stage, the minimum, maximum, and mean values were calculated. Three classical machine learning algorithms-Gradient Boosting (GB), Random Forest (RF), and Multilayer Perceptron (MLP)-were implemented using Python (Scikit-learn and TensorFlow libraries) under a “global training-local testing” strategy. The results show that GB consistently achieved the highest predictive accuracy across all provinces, with R2 values ranging from 0.96 to 0.99, mean absolute error (MAE) between 3.6 and 6.8 kg da-1, and root mean square error (RMSE) below 7.1 kg da-1. The RF model performed slightly lower (R2= 0.81-0.90) yet remained robust in most regions. In contrast, the global MLP model exhibited heterogeneous performance, particularly in Karaman Province, where non-climatic management factors dominate (R2= -1.25; MAE ≈ 26 kg da-1). When retrained with local data, the MLP model’s accuracy improved substantially, raising R2 to 0.79 and reducing MAE to approximately 10-15 kg da-1. These findings confirm that integrating phenological segmentation within ensemble learning approaches-particularly Gradient Boosting-substantially enhances wheat yield forecasting performance. The study highlights the importance of local calibration to capture irrigation and management effects and provides a robust methodological foundation for developing climate-resilient agricultural decision-support systems.

Anahtar Kelimeler

Kaynakça

  1. Anonymous, 2007. Climate Change 2007: Impacts, Adaptation and Vulnerability. Contribution of Working Group II to the Fourth Assessment Report of the Intergovernmental Panel on Climate Change, Cambridge University Press, Cambridge, UK.
  2. Anonymous, 2008. Agro-Meteorological Crop Yield Forecast Bulletin. No: 2008/1 Ankara, Türkiye, (https://arastirma.tarimorman.gov.tr/tarlabitkileri/Belgeler/bulten/B%C3%BClten%20No%202008-1%20(3 1%20Mart%202008)%20Agro-Meteorolojik%20%C 3%9Cr%C3%BCn%20Verim%20Tahmini%20B%C3%BClteni.pdf), (Accessed Date: 06.01.2025). (In Turkish).
  3. Anonymous, 2025. Agricultural Statistics Database, (TÜİK), (https://biruni.tuik.gov.tr/medas/?kn=76), (Accessed Date: 06.01.2025). (In Turkish).
  4. Breiman, L., 2001. Random forests. Machine Learning, 45(1): 5-32.
  5. Eddamiri, S., Bassine, F.Z., Ongoma, V., Epule, T., Chehbouni, A., 2024. An automatic ensemble machine learning for wheat yield prediction in Africa. Multimedia Tools and Applications, 83(25): 66433-66459.
  6. Hatfield, J.L., Prueger, J.H., 2015. Temperature extremes: effect on plant growth and development. Weather and Climate Extremes, 10(1): 4-10.
  7. Jägermeyr, J., Müller, C., Ruane, A.C., Elliott, J., Balkovic, J., Castillo, O., Faye, B., Foster, I., Folberth, C., Franke, J.A., Fuchs, K., Guarin, J.R., Heinke, J., Hoogenboom, G., Iizumi, T., Jain, A.K., Kelly, D., Khabarov, N., Lange, S., Lin, T.-S., Liu, W., Mialyk, O., Minoli, S., Moyer, E.J., Okada, M., Phillips, M., Porter, C., Rabin, S.S., Scheer, C., Schneider, J.M., Schyns, J.F., Skalsky, R., Smerald, A., Stella, T., Stephens, H., Webber, H., Zabel, F., Rosenzweig, C., 2021. Climate impacts on global agriculture emerge earlier in new generation of climate and crop models. Nature Food, 2(11): 873-885.
  8. Jeong, J.H., Resop, J.P., Mueller, N.D., Fleisher, D.H., Yun, K., Butler, E.E., Timlin, D.J., Shim, K., Gerber, J.S., Reddy, V.R., Kim, S., 2016. Random forests for global and regional crop yield predictions. PLoS One, 11(6): e0156571.

Ayrıntılar

Birincil Dil

İngilizce

Konular

Hassas Tarım Teknolojileri

Bölüm

Araştırma Makalesi

Yayımlanma Tarihi

31 Ekim 2025

Gönderilme Tarihi

11 Temmuz 2025

Kabul Tarihi

28 Ekim 2025

Yayımlandığı Sayı

Yıl 2025 Cilt: 12 Sayı: 3

Kaynak Göster

APA
Güngüneş, R., Ateş, V., Erol, T., & Özek, R. (2025). Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye. Türkiye Tarımsal Araştırmalar Dergisi, 12(3), 287-295. https://doi.org/10.19159/tutad.1740059
AMA
1.Güngüneş R, Ateş V, Erol T, Özek R. Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye. TÜTAD. 2025;12(3):287-295. doi:10.19159/tutad.1740059
Chicago
Güngüneş, Ramazan, Volkan Ateş, Taşkın Erol, ve Rojin Özek. 2025. “Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye”. Türkiye Tarımsal Araştırmalar Dergisi 12 (3): 287-95. https://doi.org/10.19159/tutad.1740059.
EndNote
Güngüneş R, Ateş V, Erol T, Özek R (01 Ekim 2025) Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye. Türkiye Tarımsal Araştırmalar Dergisi 12 3 287–295.
IEEE
[1]R. Güngüneş, V. Ateş, T. Erol, ve R. Özek, “Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye”, TÜTAD, c. 12, sy 3, ss. 287–295, Eki. 2025, doi: 10.19159/tutad.1740059.
ISNAD
Güngüneş, Ramazan - Ateş, Volkan - Erol, Taşkın - Özek, Rojin. “Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye”. Türkiye Tarımsal Araştırmalar Dergisi 12/3 (01 Ekim 2025): 287-295. https://doi.org/10.19159/tutad.1740059.
JAMA
1.Güngüneş R, Ateş V, Erol T, Özek R. Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye. TÜTAD. 2025;12:287–295.
MLA
Güngüneş, Ramazan, vd. “Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye”. Türkiye Tarımsal Araştırmalar Dergisi, c. 12, sy 3, Ekim 2025, ss. 287-95, doi:10.19159/tutad.1740059.
Vancouver
1.Ramazan Güngüneş, Volkan Ateş, Taşkın Erol, Rojin Özek. Phenology-Aware Machine Learning for Wheat Yield Prediction under Climate Variability: Central Anatolia, Türkiye. TÜTAD. 01 Ekim 2025;12(3):287-95. doi:10.19159/tutad.1740059

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