地形对无雪崎岖地形上日平均反照率估算的影响

Yuan Han;Jianguang Wen;Dongqin You;Qing Xiao;Guokai Liu;Yong Tang;Sen Piao;Na Zhao;Qinhuo Liu
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引用次数: 0

摘要

日平均反照率是地表能量收支和气候变化研究中的一个关键变量。目前,基于卫星的日平均反照率通常是利用双向反射分布函数(BRDF)核驱动模型,从多角度反照率观测得到反照率的日变化来估计。然而,该模型假设地形平坦,忽略了地形效应。本研究评估了BRDF核驱动模型在崎岖地形上的日平均反照率估计误差。利用大尺度遥感数据和图像模拟框架(LESS)模型,在500 m和1 km的空间尺度上,对不同平均坡度(10°、20°和30°)和坡向(北、西)的崎岖地形进行了试验。结果表明,地形对BRDF核驱动模型的日平均反照率影响显著,最大相对误差超过50%。估计误差随地形坡度的增大而增大,且受地形坡向的强烈影响。当太阳方位角与崎岖地形的方向一致时,估计误差就变得特别明显。这些发现强调了在估计日平均反照率时考虑地形影响的必要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impacts of Topography on Daily Mean Albedo Estimation Over Snow-Free Rugged Terrain
Daily mean albedo is a critical variable in surface energy budget and climate change studies. Currently, satellite-based daily mean albedo is typically estimated from the diurnal variation of albedo, derived from multiangle reflectance observations using a bidirectional reflectance distribution function (BRDF) kernel-driven model. However, this model assumes flat terrain and neglects topographic effects. This study evaluates the estimation errors of daily mean albedo derived from the BRDF kernel-driven model over rugged terrain. Experiments were conducted for rugged terrains with different mean slopes (10°, 20°, and 30°) and aspects (north and west) at spatial scales of 500 m and 1 km, using the large-scale remote sensing data and the image simulation framework (LESS) model. The results demonstrate that topography significantly influences the daily mean albedo derived from the BRDF kernel-driven model, with the largest relative error exceeding 50%. The estimation error increases as the slope of the terrain becomes steeper and is also strongly influenced by the aspect of the terrain. When the solar azimuth angle aligns with the aspect of the rugged terrain, the estimation error becomes particularly pronounced. These findings highlight the necessity of accounting for topographic effects when estimating daily mean albedo.
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