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"Big Data" Applications

       地球科学领域中,大数据的应用正日益成为研究的核心。随着遥感技术、地质勘探和环境监测技术的进步,科学家们能够收集到大量关于地球的数据,包括气候模式、地质结构、生态系统变化等。这些数据的规模、多样性和复杂性要求采用先进的数据分析技术来揭示其中的模式和趋势。 
       大数据在地球科学中的应用包括气候模型的建立、自然灾害预警系统、资源勘探和环境影响评估等方面。例如,通过对历史气候数据的分析,科学家可以预测未来的气候变化趋势,并为应对极端天气事件制定策略。在环境监测中,大数据分析有助于识别污染源和评估人类活动对生态系统的影响。此外,地质勘探中的大数据技术可以提高矿产资源的探测精度,优化勘探计划。 

       大数据在地球科学中的应用不仅推动了科学发现,也为全球可持续发展提供了强有力的技术支持。

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  • Chunlin HUANG, Jinliang HOU, Weide LI, Juan GU, Ying ZHANG, Weixiao HAN, Weizhen WANG, Xiaohu WEN, Gaofeng ZHU
    Advances in Earth Science. 2023, 38(5): 441-452. https://doi.org/10.11867/j.issn.1001-8166.2023.022

    Data-driven methods with deep learning as their core have been gradually applied in Earth science; however, challenges remain regarding the interpretability of models and physical consistency. With the background of remote sensing big data, combining deep learning and data assimilation methods to develop new techniques for the simulation and prediction of terrestrial water cycle processes has become an important research direction in Earth science. Τhe progress in deep learning in recent years combines improving the quality of observation data of terrestrial water cycle components and reducing the uncertainty of physical models. Furthermore, the key scientific issues regarding data assimilation in terrestrial hydrology based on deep learning fusing remote sensing big data are classified according to the observations, physical models, and system integration: How can the temporal and spatial representativeness of samples be enhanced when deep learning inverts remote sensing products? How can a new physics-guided deep learning method be developed within the framework of data assimilation? How can the predictability of the terrestrial water cycle be improved through the “data-model” dual drive? Relevant research and exploration should help promote the in-depth application of the “data-model” hybrid modeling method in the field of hydrology and improve the simulation and prediction capacity of the terrestrial water cycle process.