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Assimilation of remote sensing into crop growth models: Current status and perspectives

机译:遥感进入作物增长模型的同化:当前状态和观点

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摘要

Timely monitoring of crop lands is important in order to make agricultural activities more sustainable, as well as ensuring food security. The use of Earth Observation (EO) data allows crop monitoring at a range of spatial scales, but can be hamperedby limitations in the data. Crop growth modelling, on the other hand, can be used to simulate the physiological processes that result in crop development. Data assimilation (DA) provides a way of blending the monitoring properties of EO data with the predictive and explanatory abilities of crop growth models. In this paper, we first provide a critique of both the advantages and disadvantages of both EO data and crop growth models. We use this to introduce a solid and robust framework for DA, where different DA methods are shown to be derived from taking different assumptions in solving for the a posteriori probability density function (pdf) using Bayes’ rule. This treatment allows us to provide some recommendation on the choice of DA method for particular applications. We comment on current computational challenges in scaling DA applications to large spatial scales. Future areas of research are sketched, with an emphasis on DA as an enabler for blending different observations, as well as facilitatingdifferent approaches to crop growth models. We have illustrated this review with a large number of examples from the literature.
机译:及时监测作物土地对于使农业活动更加可持续,以及确保粮食安全,这是重要的。地球观测(EO)数据的使用允许在一系列空间尺度处进行裁剪监控,但可以是数据中的限制。另一方面,作物生长建模可用于模拟导致作物发展的生理过程。数据同化(DA)提供了一种将EO数据的监测属性与作物生长模型的预测和解释能力混合。在本文中,我们首先提供了EO数据和作物生长模型的优点和缺点的批评。我们使用它来引入DA的实体和强大的框架,其中示出了不同的DA方法,从而从使用贝叶斯规则解决了对后验概率密度函数(PDF)的不同假设。这种处理允许我们提供一些关于特定应用程序的DA方法的建议。我们对大型空间尺度的缩放DA应用中的当前计算挑战评论。将来的研究领域进行了勾勒出来,强调DA作为混合不同观察的推动者,以及促进种类的作物生长模式的方法。我们已经通过文献中的大量例子说明了本次审查。

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