A novel approach for snow depth retrieval in forested areas by integrating horizontal and vertical canopy structures information
ID:2489 View Protection:ATTENDEE Updated Time:2024-04-12 13:31:09 Hits:1785 Oral Presentation

Start Time:2024-05-20 11:05(Asia/Shanghai)

Duration:10min

Session:S17 主题17、冰冻圈科学 » S17-4主题17、冰冻圈科学 专题17.8、专题17.11(20日上午,209)

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Abstract
Snow cover in forests plays a crucial role in protecting the forest ecosystem, maintaining stability, and providing essential resources, particularly in snow-affected regions at mid- to high-latitudes. However, the presence of forests significantly impacts the accuracy of snow depth retrievals from passive microwave remote sensing. A new index, called normalized difference maximum stem volume (NDMSV), has been constructed by integrating the canopy height and tree cover to develop a novel algorithm for passive microwave snow depth retrieval. By considering both the vertical and horizontal canopy structures, NDMSV can depicts forest density in a more detailed manner than just fraction of forest cover. The validation and comparison of our work in forest perspective demonstrate that the accuracy of snow depth retrieval algorithm developed by us is higher than the algorithm which only consider forest cover fraction, especially in moderately dense or sparsely forested areas, against in situ snow depth data. In addition, our results exhibit high accuracy regardless of canopy height. Spatial-temporal comparison results indicate that our study exhibits the higher retrieval accuracy in the Northeast China and Eastern Siberian Mountains when validated and compared against in situ snow depth, as well as other algorithms and datasets such as ERA5, ERA5-Land and Globsnow. For different snow season, our results perform well during the months with more stable snowpack in the Northeast China, the Central Siberia Plateau, and Eastern Siberian Mountains. Moreover, the accuracy of our algorithm is significantly accurate not only in forested areas, but also in other land types, including farmland and grassland. In conclusion, NDMSV index can effectively capture the forest characteristics and helpful in enhancing snow depth retrieval accuracy.
 
Keywords
Snow depth; Forest; Passive microwave remote sensing; CETB;
Speaker
岳珊娜
博士研究生 中国科学院西北生态环境资源研究院

Submission Author
岳珊娜 中国科学院西北生态环境资源研究院
车涛 中国科学院西北生态环境资源研究院
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Important Date
  • Conference Date

    May 17

    2024

    to

    May 20

    2024

  • Mar 31 2024

    Draft paper submission deadline

  • Mar 31 2024

    Contribution Submission Deadline

  • May 20 2024

    Registration deadline

Sponsored By
青年地学论坛理事会
Organized By
厦门大学近海海洋环境科学国家重点实验室
中国科学院城市环境研究所
自然资源部第三海洋研究所
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