利用机器学习将Sentinel-1和Sentinel-2与气候数据融合,用于作物物候估算

IF 5.7 Q1 ENVIRONMENTAL SCIENCES
Shahab Aldin Shojaeezadeh , Abdelrazek Elnashar , Tobias Karl David Weber
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引用次数: 0

摘要

作物物候学描述了作物从种植到收获的生理发育阶段,为决策者规划和调整农业经营策略提供了有价值的信息。在地球观测大数据无处不在的时代,人们试图利用遥感(RS)和高分辨率天气数据准确地检测作物物候。然而,大多数研究都集中在物候的大规模预测或开发的方法上,这些方法不足以帮助作物建模社区利用哨兵1号和哨兵2号数据,并使用新的框架将它们与高分辨率气候数据融合在一起。为此,我们训练了一个机器学习(ML) LightGBM模型来预测德国8种主要作物在20米尺度上的13个物候阶段。观测物候资料来自德国国家物候网(German Meteorological Service;2017年至2021年间的DWD)。我们提出了一个全面的特征选择分析,以找到RS和气候数据的最佳组合来检测物候阶段。在国家尺度上,物候预测的R2 >具有合理的精度;0.43和6天的低平均绝对误差,平均在所有物候阶段和作物。模型预测的时空分析证明了其在德国不同时空背景下的可转移性。结果表明,将雷达传感器与气候数据相结合,在许多实际应用中产生了非常有前途的性能。此外,预计这些改进将有助于为作物模型校准和评估提供非常有价值的投入,促进知情的农业决策,并有助于可持续粮食生产,以应对日益增长的全球粮食需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel fusion of Sentinel-1 and Sentinel-2 with climate data for crop phenology estimation using Machine Learning
Crop phenology describes the physiological development stages of crops from planting to harvest which is valuable information for decision makers to plan and adapt agricultural management strategies. In the era of big Earth observation data ubiquity, attempts have been made to accurately detect crop phenology using Remote Sensing (RS) and high resolution weather data. However, most studies have focused on large scale predictions of phenology or developed methods which are not adequate to help crop modeler communities on leveraging Sentinel-1 and Sentinal-2 data and fusing them with high resolution climate data, using a novel framework. For this, we trained a Machine Learning (ML) LightGBM model to predict 13 phenological stages for eight major crops across Germany at 20 m scale. Observed phenologies were taken from German national phenology network (German Meteorological Service; DWD) between 2017 and 2021. We proposed a thorough feature selection analysis to find the best combination of RS and climate data to detect phenological stages. At national scale, predicted phenology resulted in a reasonable precision of R2 > 0.43 and a low Mean Absolute Error of 6 days, averaged over all phenological stages and crops. The spatio-temporal analysis of the model predictions demonstrates its transferability across different spatial and temporal context of Germany. The results indicated that combining radar sensors with climate data yields a very promising performance for a multitude of practical applications. Moreover, these improvements are expected to be useful to generate highly valuable input for crop model calibrations and evaluations, facilitate informed agricultural decisions, and contribute to sustainable food production to address the increasing global food demand.
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CiteScore
12.20
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