Comparative Evaluation of Remote Sensing Platforms for Almond Yield Prediction

Nathalie Guimarães, H. Fraga, J. J. Sousa, Luís Pádua, Albino Bento, P. Couto
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Abstract

Almonds are becoming a central element in the gastronomic and food industry worldwide. Over the last few years, almond production has increased globally. Portugal has become the third most important producer in Europe, where this increasing trend is particularly evident. However, the susceptibility of almond trees to changing climatic conditions presents substantial risks, encompassing yield reduction and quality deterioration. Hence, yield forecasts become crucial for mitigating potential losses and aiding decisionmakers within the agri-food sector. Recent technological advancements and new data analysis techniques have led to the development of more suitable methods to model crop yields. Herein, an innovative approach to predict almond yields in the Trás-os-Montes region of Portugal was developed, by using machine learning regression models (i.e., the random forest regressor, XGBRegressor, gradient boosting regressor, bagging regressor, and AdaBoost regressor), coupled with remote sensing data obtained from different satellite platforms. Satellite data from both proprietary and free platforms at different spatial resolutions were used as features in the study (i.e., the GSMP: 11.13 km, Terra: 1 km, Landsat 8: 30 m, Sentinel-2: 10 m, and PlanetScope: 3 m). The best possible combination of features was analyzed and hyperparameter tuning was applied to enhance the prediction accuracy. Our results suggest that high-resolution data (PlanetScope) combined with irrigation information, vegetation indices, and climate data significantly improves almond yield prediction. The XGBRegressor model performed best when using PlanetScope data, reaching a coefficient of determination (R2) of 0.80. However, alternative options using freely available data with lower spatial resolution, such as GSMaP and Terra MODIS LST, also showed satisfactory performance (R2 = 0.68). This study highlights the potential of integrating machine learning models and remote sensing data for accurate crop yield prediction, providing valuable insights for informed decision support in the almond sector, contributing to the resilience and sustainability of this crop in the face of evolving climate dynamics.
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用于杏仁产量预测的遥感平台比较评估
杏仁正在成为全球美食和食品工业的核心要素。在过去几年中,全球杏仁产量不断增加。葡萄牙已成为欧洲第三大杏仁生产国,这一增长趋势在葡萄牙尤为明显。然而,杏仁树易受气候条件变化的影响,这就带来了巨大的风险,包括产量减少和质量下降。因此,产量预测对于减轻潜在损失和帮助农业食品行业的决策者至关重要。最近的技术进步和新的数据分析技术促使人们开发出更合适的作物产量建模方法。在此,通过使用机器学习回归模型(即随机森林回归模型、XGBRegressor、梯度提升回归模型、bagging 回归模型和 AdaBoost 回归模型),结合从不同卫星平台获得的遥感数据,开发了一种预测葡萄牙 Trás-os-Montes 地区杏仁产量的创新方法。研究中使用了不同空间分辨率的专有和免费平台的卫星数据作为特征(即 GSMP:11.13 千米、Terra:1 千米、Landsat 8:30 米、Sentinel-2:10 米和 PlanetScope:3 米):3 m).我们分析了可能的最佳特征组合,并应用超参数调整来提高预测精度。我们的结果表明,高分辨率数据(PlanetScope)与灌溉信息、植被指数和气候数据相结合,可显著提高杏仁产量预测。XGBRegressor 模型在使用 PlanetScope 数据时表现最佳,判定系数 (R2) 达到 0.80。不过,使用空间分辨率较低的免费数据(如 GSMaP 和 Terra MODIS LST)的替代方案也显示出令人满意的性能(R2 = 0.68)。这项研究凸显了将机器学习模型与遥感数据相结合进行精确作物产量预测的潜力,为杏仁行业的知情决策支持提供了宝贵的见解,有助于提高这种作物在不断变化的气候动态中的适应力和可持续性。
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