Jianxi Huang , Jianjian Song , Hai Huang , Wen Zhuo , Quandi Niu , Shangrong Wu , Han Ma , Shunlin Liang
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引用次数: 0
摘要
数据同化(DA)结合了作物生长模型和遥感观测的优势,已成为作物生长监测和早季作物产量预测的重要工具。随着相关研究的不断深入,用于遥感和作物生长模型的数据同化系统也日益成熟。然而,在此背景下,数据同化算法作为数据同化系统的核心组成部分,其研究潜力亟待挖掘。在本综述中,我们以贝叶斯定理为基础,讨论了各种数据同化算法的本质区别和内在联系。在此基础上,我们回顾了不同数据同化算法在遥感和作物模型数据同化方面的应用进展。此外,我们还指出了当前数据同化算法在作物实际应用中所面临的挑战和局限性,并提出了未来研究的潜在方向。作为整篇论文的总结,我们结合具体的应用场景,为 DA 算法的选择策略提供了建议。
Progress and perspectives in data assimilation algorithms for remote sensing and crop growth model
Combining the advantages of crop growth models and remote sensing observations, data assimilation (DA) has emerged as a vital tool for crop growth monitoring and early-season crop yield forecasting. As an increasing number of related studies have been conducted, data assimilation systems for remote sensing and crop growth models have grown increasingly sophisticated. However, within this context, the research on data assimilation algorithms, as a core component of data assimilation system, highly need investigating the potential. In this review, we discuss the essential differences and inherent connections of various data assimilation algorithms based on Bayes's Theorem. Building upon this foundation, we review the application progress of different DA algorithms data assimilation of remote sensing and crop models. Additionally, we identify the challenges and limitations faced by current data assimilation algorithms in crop practical applications and propose potential directions for future study. As a summary of the entire paper, we provide recommendations for DA algorithm choice strategy in conjunction with specific application scenarios.