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A Comparative Assessment of Regular and Spatial Cross-Validation in Subfield Machine Learning Prediction of Maize Yield from Sentinel-2 Phenology

Dorijan Radočaj, Ivan Plašćak, Mladen Jurišić

2025Eng—Advances in Engineering8 citationsDOIOpen Access PDF

Abstract

The aim of this study is to determine the reliability of regular and spatial cross-validation methods in predicting subfield-scale maize yields using phenological measures derived by Sentinel-2. Three maize fields from eastern Croatia were monitored during the 2023 growing season, with high-resolution ground truth yield data collected using combine harvester sensors. Sentinel-2 time series were used to compute two vegetation indices, Enhanced Vegetation Index (EVI) and Wide Dynamic Range Vegetation Index (WDRVI). These features served as inputs for three machine learning models, including Random Forest (RF) and Bayesian Generalized Linear Model (BGLM), which were trained and evaluated using both regular and spatial 10-fold cross-validation. Results showed that spatial cross-validation produced a more realistic and conservative estimate of the performance of the model, while regular cross-validation overestimated predictive accuracy systematically because of spatial dependence among the samples. EVI-based models were more reliable than WDRVI, generating more accurate phenomenological fits and yield predictions across parcels. These results emphasize the importance of spatially explicit validation for subfield yield modeling and suggest that overlooking spatial structure can lead to misleading conclusions about model accuracy and generalizability.

Topics & Concepts

MathematicsRandom forestBayesian probabilityYield (engineering)Vegetation (pathology)StatisticsPhenologyMachine learningReliability (semiconductor)Ground truthRange (aeronautics)Artificial intelligenceVegetation IndexNormalized Difference Vegetation IndexIndex (typography)Support vector machineImage resolutionCrop yieldSpatial variabilitySeries (stratigraphy)AlgorithmSpatial ecologyTime seriesNaive Bayes classifierLeaf area indexData miningPredictive modellingEnhanced vegetation indexPattern recognition (psychology)Computer scienceCross-validationRemote sensingSpatial analysisGeostatisticsBayesian inferenceRemote Sensing in AgricultureSpectroscopy and Chemometric AnalysesSmart Agriculture and AI
A Comparative Assessment of Regular and Spatial Cross-Validation in Subfield Machine Learning Prediction of Maize Yield from Sentinel-2 Phenology | Litcius