云计算
云量
云层高度
中尺度气象学
云分数
环境科学
短波
形态学(生物学)
亮度
大气科学
辐射传输
遥感
材料科学
气象学
地质学
物理
计算机科学
光学
操作系统
古生物学
作者
Isabel L. McCoy,Daniel T. McCoy,Robert Wood,Paquita Zuidema,Frida A.‐M. Bender
摘要
Abstract A supervised neural network algorithm is used to categorize near‐global satellite retrievals into three mesoscale cellular convective (MCC) cloud morphology patterns. At constant cloud amount, morphology patterns differ in brightness associated with the amount of optically thin cloud features. Environmentally driven transitions from closed MCC to other morphology patterns, typically accompanied by more optically thin cloud features, are used as a framework to quantify the morphology contribution to the optical depth component of the shortwave cloud feedback. A marine heat wave is used as an out‐of‐sample test of closed MCC occurrence predictions. Morphology shifts in optical depth between 65°S and 65°N under projected environmental changes (i.e., from an abrupt quadrupling of CO 2 ) assuming constant cloud cover contributes between 0.04 and 0.07 W m −2 K −1 (aggregate of 0.06) to the global mean cloud feedback.
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