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GoAmazon2014/5 campaign points to deep-inflow approach to deep convection across scales
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2018
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Source: PNAS 115 (18) 4577-4582; https://doi.org/10.1073/pnas.1719842115
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Journal Title:Proceedings of the National Academy of Sciences of the United States of America
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Description:A substantial fraction of precipitation is associated with meso-scale convective systems (MCSs), which are currently poorly represented in climate models. Convective parameterizations are highly sensitive to the assumptions of an entraining plume model, in which high equivalent potential temperature air from the boundary layer is modified via turbulent entrainment. Here we show, using multiinstrument evidence from the Green Ocean Amazon field campaign (2014-2015; GoAmazon2014/5), that an empirically constrained weighting for inflow of environmental air based on radar wind profiler estimates of vertical velocity and mass flux yields a strong relationship between resulting buoyancy measures and precipitation statistics. This deep-inflow weighting has no free parameter for entrainment in the conventional sense, but to a leading approximation is simply a statement of the geometry of the inflow. The structure further suggests the weighting could consistently apply even for coherent inflow structures noted in field campaign studies for MCSs over tropical oceans. For radar precipitation retrievals averaged over climate model grid scales at the GoAmazon2014/5 site, the use of deep-inflow mixing yields a sharp increase in the probability and magnitude of precipitation with increasing buoyancy. Furthermore, this applies for both mesoscale and smaller-scale convection. Results from reanalysis and satellite data show that this holds more generally: Deep-inflow mixing yields a strong precipitation-buoyancy relation across the tropics. Deep-inflow mixing may thus circumvent inadequacies of current parameterizations while helping to bridge the gap toward representing mesoscale convection in climate models.
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Source:PNAS 115 (18) 4577-4582; https://doi.org/10.1073/pnas.1719842115
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DOI:
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Pubmed ID:29666237
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Pubmed Central ID:PMC5939085
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Rights Information:Other
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Compliance:PMC
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