Biogeomorphological niche of a landform: Machine learning approaches reveal controls on the geographical distribution of Nitraria tangutorum nebkhas
ID:633 View Protection:ATTENDEE Updated Time:2024-04-10 22:12:51 Hits:1856 Oral Presentation

Start Time:2024-05-19 11:22(Asia/Shanghai)

Duration:7min

Session:S11 主题11、地表过程与地貌 » S11-3主题11、地表过程与地貌 专题11.3、专题11.4(19日上午,204)

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Abstract
Nebkhas are distinctive biogeomorphological landforms prevalent in global drylands and coastal environments. They play a crucial role in supporting local biodiversity and preventing land desertification, and often serve as an indicator of local environmental change. Despite their significance, the environmental factors that affect their geographical distribution and how they respond to climate change have not been fully explored. This study represents a novel application of machine-learning models to quantifying the biogeomorphological niche of Nitraria nebkhas in northern China and simulating their geographical distribution under future climate change conditions. Findings underscore that climatic variables influence the growth of formative shrub species on nebkhas, while climate, soil and geomorphological conditions, along with their spatial configuration, determine the probability of nebkha occurrence. Predictions under medium and high greenhouse gas emission scenarios indicate a northward shift in the potential distribution of nebkhas in northern China by the end of the century, accompanied by a decrease in the south due to rising temperatures. Given the potential impact of nebkha field degradation on biodiversity and soil hydrological conditions, adaptive land-use strategies should be designed to protect nebkhas and mitigate the impact of climate change. Our study not only provides valuable insights for informing policy-making and conservation initiatives, but also serves as an example for quantifying the niche of biogeomorphological landforms and simulating their dynamics by integrating machine-learning approaches into empirical geomorphological studies.
Keywords
biogeomorphological niche,climate change,machine learning,nebkha,potential distribution
Speaker
张昊辰
硕士研究生 南京大学

Submission Author
张昊辰 南京大学
李世寒 南京大学
MasonJoseph A. University of Wisconsin–Madison
YizhaqHezi Ben-Gurion University of the Negev
桂东伟 中国科学院新疆生态与地理研究所
徐志伟 南京大学
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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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