Crop Yield Estimation Using Sentinel-3 SLSTR, Soil Data, and Topographic Features Combined with Machine Learning Modeling: A Case Study of Nepal

Ghada Sahbeni, Balázs Székely, Peter K. Musyimi, Gábor Timár, Ritvik Sahajpal
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Abstract

Effective crop monitoring and accurate yield estimation are fundamental for informed decision-making in agricultural management. In this context, the present research focuses on estimating wheat yield in Nepal at the district level by combining Sentinel-3 SLSTR imagery with soil data and topographic features. Due to Nepal’s high-relief terrain, its districts exhibit diverse geographic and soil properties, leading to a wide range of yields, which poses challenges for modeling efforts. In light of this, we evaluated the performance of two machine learning algorithms, namely, the gradient boosting machine (GBM) and the extreme gradient boosting (XGBoost). The results demonstrated the superiority of the XGBoost-based model, achieving a determination coefficient (R2) of 0.89 and an RMSE of 0.3 t/ha for training, with an R2 of 0.61 and an RMSE of 0.42 t/ha for testing. The calibrated model improved the overall accuracy of yield estimates by up to 10% compared to GBM. Notably, total nitrogen content, slope, total column water vapor (TCWV), organic matter, and fractional vegetation cover (FVC) significantly influenced the predicted values. This study highlights the effectiveness of combining multi-source data and Sentinel-3 SLSTR, particularly proposing XGBoost as an alternative tool for accurately estimating yield at lower costs. Consequently, the findings suggest comprehensive and robust estimation models for spatially explicit yield forecasting and near-future yield projection using satellite data acquired two months before harvest. Future work can focus on assessing the suitability of agronomic practices in the region, thereby contributing to the early detection of yield anomalies and ensuring food security at the national level.
利用Sentinel-3 SLSTR、土壤数据和地形特征结合机器学习建模进行作物产量估算:以尼泊尔为例
有效的作物监测和准确的产量估计是农业管理决策的基础。在此背景下,本研究的重点是通过将Sentinel-3 SLSTR图像与土壤数据和地形特征相结合,估算尼泊尔地区的小麦产量。由于尼泊尔的高起伏地形,其地区表现出多样化的地理和土壤特性,导致了广泛的产量,这给建模工作带来了挑战。鉴于此,我们评估了两种机器学习算法的性能,即梯度增强机(GBM)和极端梯度增强(XGBoost)。结果表明基于xgboost的模型具有优越性,训练的决定系数(R2)为0.89,RMSE为0.3 t/ha,测试的决定系数(R2)为0.61,RMSE为0.42 t/ha。与GBM相比,校准后的模型将产量估算的总体精度提高了10%。总氮含量、坡度、总水柱水汽(twv)、有机质和植被覆盖度(FVC)对预测值有显著影响。该研究强调了将多源数据与Sentinel-3 SLSTR相结合的有效性,特别是提出了XGBoost作为以较低成本准确估计产量的替代工具。因此,研究结果为利用收获前两个月获得的卫星数据进行空间明确的产量预测和近未来产量预测提供了全面而稳健的估计模型。未来的工作可以侧重于评估该地区农艺做法的适宜性,从而有助于早期发现产量异常,并确保国家层面的粮食安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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