Durum wheat is an important crop in semi-arid Mediterranean regions as Andalusia, an autonomous community in the southern part of Spain. Accurate early predictions of durum wheat yield can provide precious information for within-season adjustment of crop managing as well as for economical and political stakeholders. In this study, an alternative methodology to mechanistic crop models is proposed for within-season early prediction of durum wheat yield in Spain based on estimates for its larger producer community, Andalusia. The proposed Radial Basis Functions (RBF) interpolation models are based on the sown area and a large number of climatic variables. Global warming and increasing occurrence of extreme weather events are only two of the factors that make crop yield forecast extremely difficult as they can lead to an increased interannual yield variability. Nevertheless, the RBF models proposed presented good quality yield predictions clearly outperforming multivariate linear models used as benchmark. Moreover, RBF models' predictions made four months prior to harvest are able to capture the trend of the yield series as well as near-harvest predictions.
1.CeBER, Av Dias da Silva 165, P-3004512 Coimbra, Portugal 2.FEUC, Av Dias da Silva 165, P-3004512 Coimbra, Portugal 3.INESCC, Rua Silvio Lima,Polo 2, P-3030290 Coimbra, Portugal
Recommended Citation:
Rocha, H.,Dias, J. M.. Early prediction of durum wheat yield in Spain using radial basis functions interpolation models based on agroclimatic data[J]. COMPUTERS AND ELECTRONICS IN AGRICULTURE,2019-01-01,157:427-435