Modeling the contributions of global air temperature, synoptic-scale phenomena and soil moisture to near-surface static energy variability using artificial neural networks
The static energy content of the atmosphere is increasing on a global scale, but exhibits important subglobal and subregional scales of variability and is a useful parameter for integrating the net effect of changes in the partitioning of energy at the surface and for improving understanding of th...
Main Authors: | , , |
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Format: | Article |
Language: | English |
Published: |
Copernicus Publications
2017-12-01
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Series: | Atmospheric Chemistry and Physics |
Online Access: | https://www.atmos-chem-phys.net/17/14457/2017/acp-17-14457-2017.pdf |
Summary: | The static energy content of the atmosphere is increasing on a global scale, but exhibits important subglobal and subregional
scales of variability and is a useful parameter for integrating the net effect of changes in the partitioning of energy at the surface
and for improving understanding of the causes of so-called <q>warming holes</q> (i.e., locations with decreasing daily maximum air
temperatures (<i>T</i>) or increasing trends of lower magnitude than the global mean). Further, measures of the static energy content
(herein the equivalent potential temperature, <i>θ</i><sub>e</sub>) are more strongly linked to excess human mortality and morbidity
than air temperature alone, and have great relevance in understanding causes of past heat-related excess mortality and making
projections of possible future events that are likely to be associated with negative human health and economic consequences. New
nonlinear statistical models for summertime daily maximum and minimum <i>θ</i><sub>e</sub> are developed and used to advance
understanding of drivers of historical change and variability over the eastern USA. The predictor variables are an index of the daily
global mean temperature, daily indices of the synoptic-scale meteorology derived from <i>T</i> and specific humidity (<i>Q</i>) at 850 and
500 hPa geopotential heights (<i>Z</i>), and spatiotemporally averaged soil moisture (<span style="" class="text">SM</span>). <span style="" class="text">SM</span> is particularly
important in determining the magnitude of <i>θ</i><sub>e</sub> over regions that have previously been identified as exhibiting
warming holes, confirming the key importance of <span style="" class="text">SM</span> in dictating the partitioning of net radiation into sensible and latent
heat and dictating trends in near-surface <i>T</i> and <i>θ</i><sub>e</sub>. Consistent with our a priori expectations, models built using
artificial neural networks (ANNs) out-perform linear models that do not permit interaction of the predictor variables (global <i>T</i>,
synoptic-scale meteorological conditions and <span style="" class="text">SM</span>). This is particularly marked in regions with high variability in minimum and
maximum <i>θ</i><sub>e</sub>, where more complex models built using ANN with multiple hidden layers are better able to capture the
day-to-day variability in <i>θ</i><sub>e</sub> and the occurrence of extreme maximum <i>θ</i><sub>e</sub>. Over the entire domain, the ANN
with three hidden layers exhibits high accuracy in predicting maximum <i>θ</i><sub>e</sub> > 347 K. The median hit rate for
maximum <i>θ</i><sub>e</sub> > 347 K is > 0.60, while the median false alarm rate is ≈ 0.08. |
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ISSN: | 1680-7316 1680-7324 |