Dynamic Maize Yield Predictions Using Machine Learning on Multi-Source Data

被引:13
|
作者
Croci, Michele [1 ,2 ]
Impollonia, Giorgio [1 ,2 ]
Meroni, Michele [3 ]
Amaducci, Stefano [1 ,2 ]
机构
[1] Univ Cattolica Sacro Cuore, Dept Sustainable Crop Prod, I-29122 Piacenza, Italy
[2] Univ Cattolica Sacro Cuore, Remote Sensing & Spatial Anal Res Ctr CRAST, I-29122 Piacenza, Italy
[3] European Commiss, Joint Res Ctr JRC, Via E Fermi 2749, I-21027 Ispra, Italy
关键词
Sentinel-2; yield prediction; phenology; machine learning; multi-source data; dimensionality reduction; WINTER-WHEAT; CORN YIELD; TEMPORAL RESOLUTION; GAUSSIAN-PROCESSES; VEGETATION INDEX; DECISION-SUPPORT; CROSS-VALIDATION; TIME-SERIES; MODIS DATA; PHENOLOGY;
D O I
10.3390/rs15010100
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Timely yield prediction is crucial for the agri-food supply chain as a whole. However, different stakeholders in the agri-food sector require different levels of accuracy and lead times in which a yield prediction should be available. For the producers, predictions during the growing season are essential to ensure that information is available early enough for the timely implementation of agronomic decisions, while industries can wait until later in the season to optimize their production process and increase their production traceability. In this study, we used machine learning algorithms, dynamic and static predictors, and a phenology approach to determine the time for issuing the yield prediction. In addition, the effect of data reduction was evaluated by comparing results obtained with and without principal component analysis (PCA). Gaussian process regression (GPR) was the best for predicting maize yield. Its best performance (nRMSE of 13.31%) was obtained late in the season and with the full set of predictors (vegetation indices, meteorological and soil predictors). In contrast, neural network (NNET) and support vector machines linear basis function (SVMl) achieved their best accuracy with only vegetation indices and at the tasseling phenological stage. Only slight differences in performance were observed between the algorithms considered, highlighting that the main factors influencing performance are the timing of the yield prediction and the predictors with which the machine learning algorithms are fed. Interestingly, PCA was instrumental in increasing the performances of NNET after this stage. An additional benefit of the application of PCA was the overall reduction between 12 and 30.20% in the standard deviation of the maize yield prediction performance from the leave one-year outer-loop cross-validation, depending on the feature set.
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页数:20
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