Zsigmond Tibor, Bakacsi Zsófia, Horel Ágota
Institute for Soil Sciences, Centre for Agricultural Research, Department of Soil Physics and Water Management, Budapest, 1116, Hungary.
National Laboratory for Water Science and Water Security, Institute for Soil Sciences, Centre for Agricultural Research, Fehérvári út 132-144, Budapest, 1116, Hungary.
Sci Rep. 2025 Aug 27;15(1):31586. doi: 10.1038/s41598-025-16967-6.
The present study aimed to investigate specific vegetation indices (VI) at three research sites - one grassland and two vineyards - and evaluate the potential of grassland remote sensing (RS) data to refine Normalized Difference Vegetation Index (NDVI) values in grass-covered inter-row vineyards. The vineyards differed in soil texture, with silt loam at BCS and clay at GB, located on 8-15% slopes. Field monitoring included NDVI, Photochemical Reflectance Index (PRI), and Photosynthetically Active Radiation (PAR) data at different slope positions. We also downloaded spectral data from Sentinel-2 (S2; n = 124) to see how well the NDVI field and S2 data correlate. Afterward, different machine learning techniques were used to refine the accuracy of the measurements, such as linear regression (LR), random forest (RF), and XGBoost. Significant differences in VI were observed between the research sites, mainly correlating with soil chemistry. While NDVI is an indicator of overall canopy vigor, PRI was more responsive to short-term physiological changes, showing higher sensitivity under stress conditions. Ground truth and RS NDVI were well correlated (r = 0.68), with RF providing the best accuracy when trained with day of year and the grassland data (r = 0.787). Each model moderately predicted grapevine VI using basic inputs (r > 0.61), however, all three models performed well when grassland NDVI included in the training.
本研究旨在调查三个研究地点(一个草地和两个葡萄园)的特定植被指数(VI),并评估草地遥感(RS)数据对细化草地覆盖的行间葡萄园归一化植被指数(NDVI)值的潜力。葡萄园的土壤质地不同,BCS为粉砂壤土,GB为黏土,位于8%-15%的斜坡上。实地监测包括不同斜坡位置的NDVI、光化学反射指数(PRI)和光合有效辐射(PAR)数据。我们还下载了哨兵-2(S2;n = 124)的光谱数据,以了解NDVI实地数据与S2数据的相关性。之后,使用了不同的机器学习技术来提高测量精度,如线性回归(LR)、随机森林(RF)和XGBoost。研究地点之间的VI存在显著差异,主要与土壤化学相关。虽然NDVI是总体冠层活力的指标,但PRI对短期生理变化更敏感,在胁迫条件下表现出更高的敏感性。地面实测数据与RS NDVI相关性良好(r = 0.68),当使用一年中的日期和草地数据进行训练时,RF的精度最高(r = 0.787)。每个模型使用基本输入对葡萄树VI进行适度预测(r > 0.61),然而,当训练中包含草地NDVI时,所有三个模型的表现都很好。