Machine-learning approaches reveal biogeomorphological niche and geographical distribution of nebhkas
ID:2469 View Protection:PRIVATE Updated Time:2023-04-21 21:14:22 Hits:2061 快闪报告

Start Time:2023-05-07 17:53(Asia/Shanghai)

Duration:3min

Session:12 12、地表过程与地貌 » 12-312-3 地表过程与地貌

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Abstract
Nebkhas are a unique biogeomorphological landform found across global drylands and coastal environments, providing crucial habitat for biodiversity and preventing land desertification. In this study, for the first time machine-learning based models were used to quantify the biogeomorphological niche of nebkhas and simulate the geographical distribution of Nitraria nebkhas in northern China under climate change. The results indicate that climate variables impact the growth of formative shrub species on nebkhas, while both climate, soil and geomorphological conditions, and their spatial configuration determine the probability of nebkha occurrence in northern China. Under medium and high greenhouse gas emission scenarios, the potential distribution of nebkhas in the study area is projected to shift northward but decrease in the south by the end of the century due to rising temperatures. Given the potential impact of nebkha field degradation on biodiversity and soil hydrological conditions, comprehensive land-use strategies should be designed to protect nebkhas and mitigate the impact of future climate change.
 
Keywords
灌丛沙丘,机器学习,生物地貌格局,潜在分布,气候环境变化
Speaker
张昊辰
南京大学

Submission Author
张昊辰 南京大学
徐志伟 南京大学
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Important Date
  • Conference Date

    May 05

    2023

    to

    May 08

    2023

  • Mar 31 2023

    Draft paper submission deadline

  • May 25 2023

    Registration deadline

Sponsored By
青年地学论坛理事会
中国科学院青年创新促进会地学分会
Organized By
武汉大学
中国科学院精密测量科学与技术创新研究院
中国地质大学(武汉)
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