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contributor authorChen, Yonghua
contributor authorAires, Filipe
contributor authorFrancis, Jennifer A.
contributor authorMiller, James R.
date accessioned2017-06-09T17:02:11Z
date available2017-06-09T17:02:11Z
date copyright2006/08/01
date issued2006
identifier issn0894-8755
identifier otherams-78305.pdf
identifier urihttp://onlinelibrary.yabesh.ir/handle/yetl/4220960
description abstractA neural network technique is used to quantify relationships involved in cloud?radiation feedbacks based on observations from the Surface Heat Budget of the Arctic (SHEBA) project. Sensitivities of longwave cloud forcing (CFL) to cloud parameters indicate that a bimodal distribution pattern dominates the histogram of each sensitivity. Although the mean states of the relationships agree well with those derived in a previous study, they do not often exist in reality. The sensitivity of CFL to cloud cover increases as the cloudiness increases with a range of 0.1?0.9 W m?2 %?1. There is a saturation effect of liquid water path (LWP) on CFL. The highest sensitivity of CFL to LWP corresponds to clouds with low LWP, and sensitivity decreases as LWP increases. The sensitivity of CFL to cloud-base height (CBH) depends on whether the clouds are below or above an inversion layer. The relationship is negative for clouds higher than 0.8 km at the SHEBA site. The strongest positive relationship corresponds to clouds with low CBH. The dominant mode of the sensitivity of CFL to cloud-base temperature (CBT) is near zero and corresponds to warm clouds with base temperatures higher than ?9°C. The low and high sensitivity regimes correspond to the summer and winter seasons, respectively, especially for LWP and CBT. Overall, the neural network technique is able to separate two distinct regimes of clouds that correspond to different sensitivities; that is, it captures the nonlinear behavior in the relationships. This study demonstrates a new method for evaluating nonlinear relationships between climate variables. It could also be used as an effective tool for evaluating feedback processes in climate models.
publisherAmerican Meteorological Society
titleObserved Relationships between Arctic Longwave Cloud Forcing and Cloud Parameters Using a Neural Network
typeJournal Paper
journal volume19
journal issue16
journal titleJournal of Climate
identifier doi10.1175/JCLI3839.1
journal fristpage4087
journal lastpage4104
treeJournal of Climate:;2006:;volume( 019 ):;issue: 016
contenttypeFulltext


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