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Machine learning modeling of plant phenology based on coupling satellite and gridded meteorological dataset

机译:基于耦合卫星和网流气象数据集的植物素材机械学习建模

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Changes in the timing of plant phenological phases are important proxies in contemporary climate research. However, most of the commonly used traditional phenological observations do not give any coherent spatial information. While consistent spatial data can be obtained from airborne sensors and preprocessed gridded meteorological data, not many studies robustly benefit from these data sources. Therefore, the main aim of this study is to create and evaluate different statistical models for reconstructing, predicting, and improving quality of phenological phases monitoring with the use of satellite and meteorological products. A quality-controlled dataset of the 13 BBCH plant phenophases in Poland was collected for the period 2007-2014. For each phenophase, statistical models were built using the most commonly applied regression-based machine learning techniques, such as multiple linear regression, lasso, principal component regression, generalized boosted models, and random forest. The quality of the models was estimated using a k-fold cross-validation. The obtained results showed varying potential for coupling meteorological derived indices with remote sensing products in terms of phenological modeling; however, application of both data sources improves models' accuracy from 0.6 to 4.6 day in terms of obtained RMSE. It is shown that a robust prediction of early phenological phases is mostly related to meteorological indices, whereas for autumn phenophases, there is a stronger information signal provided by satellite-derived vegetation metrics. Choosing a specific set of predictors and applying a robust preprocessing procedures is more important for final results than the selection of a particular statistical model. The average RMSE for the best models of all phenophases is 6.3, while the individual RMSE vary seasonally from 3.5 to 10 days. Models give reliable proxy for ground observations with RMSE below 5 days for early spring and late spring phenophases. For other phenophases, RMSE are higher and rise up to 9-10 days in the case of the earliest spring phenophases.
机译:植物职业阶段时机的变化是当代气候研究中的重要代理。然而,大多数常用的传统候选观察不给出任何相干的空间信息。虽然可以从机载传感器获得一致的空间数据和预处理的网格气象数据,但研究并非很多研究都从这些数据来源中受益匪浅。因此,本研究的主要目的是创造和评估与使用卫星和气象产品的重建,预测和提高鉴别阶段监测质量的不同统计模型。 2007 - 2014年期间收集了波兰13个BBCH植物苯虫酸的质量控制数据集。对于每种苯磷酸,使用最常用的基于回归的机器学习技术构建统计模型,例如多个线性回归,套索,主成分回归,广义提升模型和随机林。使用K折叠交叉验证估计模型的质量。所获得的结果表明,在鉴别鉴别方面,通过遥感产品耦合气象衍生指标的不同电位;但是,在获得的RMSE方面,两个数据源的应用会从0.6到4.6天提高模型'精度。结果表明,早期鉴别阶段的稳健预测大多数与气象指数相关,而对于秋季苯酚,则存在卫星源性植被度量提供的更强大的信息信号。选择特定的预测器集并应用鲁棒预处理程序对于最终结果比选择特定统计模型更重要。所有苯虫种的最佳模型的平均RMSE是6.3,而个别RMSE从3.5到10天季节性差别。模型可用于接地观测可靠的代理,用于早春和晚春季酚类酶在5天以下的地面观察。对于其他苯面蛋白酶,RMSE在最早的春季磷酸酶的情况下高达9-10天。

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