大气不稳定性
分层(种子)
潜热
显热
涡度相关法
大气科学
环境科学
风速
失效率
水蒸气
理论(学习稳定性)
气候学
气象学
地质学
地理
生态系统
生态学
种子休眠
发芽
计算机科学
休眠
机器学习
生物
植物
作者
Xiaoni Meng,Huizhi Liu,Qun Du,Yang Liu,Lujun Xu
标识
DOI:10.1080/16742834.2020.1769450
摘要
The stratification of the atmospheric surface layer (ASL) plays an important role in regulating the water vapor and heat exchange across the lake–air interface. Based on one year of data measured by the eddy covariance technique over Erhai Lake in 2015, the ASL stability ($${\rm{\zeta }}$$) was divided into six ranges, including unstable ($$ - 1 \le {\rm{\zeta }} \lt - 0.1$$), weakly unstable ($$ - 0.1 \le {\rm{\zeta }} \lt - 0.01$$), near-neutral1 ($$ - 0.01 \le {\rm{\zeta }} \lt 0$$), near-neutral2 ($$0 \le {\rm{\zeta }} \lt 0.01$$), weakly stable ($$0.01 \le {\rm{\zeta }} \lt 0.1$$), and stable ($$0.1 \le {\rm{\zeta }} \lt 1$$). The characteristics of ASL stability conditions and factors controlling the latent ($$\rm LE$$) and sensible heat ($$H$$) fluxes under different stability conditions were analyzed in this study. The stability conditions of Erhai Lake have noticeably seasonal and diurnal variation, with the near-neutral and (weakly) stable stratification usually occurring before July, with frequencies of 51.7% and 23.3%, respectively, but most of the (weakly) unstable stratification was observed after July, with a frequency of 59.8%. Large evaporation occurred even in stable atmospheric conditions, due to the coupled effects of the relatively larger lake–air vapor pressure difference and wind speed. The relative controls of $$\rm LE$$ and $$H$$ by different atmospheric variables are largely dependent on the stability conditions. In stable and unstable ranges, $$\rm LE$$ is closely correlated with the vapor pressure difference, whereas in weakly unstable to weakly stable ranges, it is primarily controlled by wind speed. $$H$$ is related to wind speed and the lake–air temperature difference under stable conditions, but shows no obvious relationship under unstable conditions.
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