Yield Estimation of Winter Wheat in Pre-harvest Season by Satellite Imagery Based Regression Models

Yield Estimation of Winter Wheat in Pre-harvest Season by Satellite Imagery Based Regression Models

Early crop yield estimates could provide up-to-date information on supply, demand, stocks, and export availability through which governing bodies can make better agricultural management plans. This study aims to develop a yield model estimating pre-harvest winter wheat yield at both tillering and flowering stages using a multiple linear regression approach based on the relationship between actual yield and satellite derived crops’ phenological parameters. Four crop parameters (NDVI, Cumulative NDVI, LAI and FPAR) were regressed in combination to find the best applicable model. Regression results showed that correlations for all models among the variables of the flowering period are higher than that of tillering (0.63>0.53). The mean RMSE’s of the observed vs predicted yields for tillering period was 645.9 kg ha-1 and 574.5 kg ha-1 for flowering period. The optimal developed model which consists of NDVI and CNDVI variables provided 76% and 79% of predicting accuracy 3 and 1.5 months before harvest respectively.

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Turkish Journal of Agricultural Engineering Research-Cover
  • Yayın Aralığı: Yılda 2 Sayı
  • Başlangıç: 2020
  • Yayıncı: Ebubekir ALTUNTAŞ
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