青藏高原地表温度主导因素的季节比较探索

Qinghong Sheng, Yuejie Zhang, Kerui Li, Xiao Ling, Jun Li
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摘要

摘要陆面温度(LST)是代表地面能量平衡的一个重要参数,在理解气候变化方面起着至关重要的作用。青藏高原的地表温度直接影响青藏高原的气候和环境变化,对全球气候和大气环流也有重要影响。尽管青藏高原 LST 的时空分布受多种因素的影响,但其主要驱动力及其季节变化尚未得到充分认识。本研究专门针对大埔地区,选取三类 LST 数据,利用地球探测仪模型,分析影响不同季节 LST 空间格局的驱动因素。结果表明,气温(AT)、海拔(Ele)和冻土热稳定性(PTS)这三个因素在所有季节都对 LST 有显著影响,而其他变量在不同季节对 LST 的影响则各不相同。这项研究有助于了解地表热状况的空间变化及其驱动因素之间错综复杂的关系。它还强调了这些关系在全年中的潜在变化。
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Exploring the Seasonal Comparison of Land Surface Temperature Dominant Factors in the Tibetan Plateau
Abstract. LST (Land Surface Temperature) is a significant parameter that represents the ground energy balance and plays a crucial role in understanding climate change. The LST of the Tibetan Plateau (TP) has a direct influence on the climate and environmental changes of the TP, and it also has a significant impact on global climate and atmospheric circulation. Although there are various factors that drive the spatial and temporal distribution of LST on the TP, the primary driving forces and its seasonal variations of LST are not yet well understood. The research focuses specifically on the TP region, selecting three types of LST data, using geodetector model, to analyze the driving factors affecting the spatial pattern of LST in different seasons. The results indicate that the three factors, Air Temperature (AT), Elevation (Ele), and Permafrost Thermal Stability (PTS), have a significant influence on LST throughout all seasons, whereas other variables demonstrate varying contributions to LST depending on the season. This study contributes to the understanding of the spatial variability of surface thermal conditions and the intricate relationships between their driving factors. It also emphasizes the potential changes in these relationships throughout the year.
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