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contributor authorKnighton, James
contributor authorPleiss, Geoff
contributor authorCarter, Elizabeth
contributor authorLyon, Steven
contributor authorWalter, M. Todd
contributor authorSteinschneider, Scott
date accessioned2019-10-05T06:52:14Z
date available2019-10-05T06:52:14Z
date copyright3/25/2019 12:00:00 AM
date issued2019
identifier otherJHM-D-18-0196.1.pdf
identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4263685
description abstractAbstractCurrent generation general circulation models (GCMs) simulate synoptic-scale climate state variables such as geopotential heights, specific humidity, and integrated vapor transport (IVT) more reliably than mesoscale precipitation. Statistical downscaling methods that condition precipitation on GCM-based, synoptic-scale climate features have shown promise in the reproduction of local precipitation. However, current approaches to climate-state-informed downscaling impose some limitations on the skill of precipitation reproduction, including hard clustering of climate modes into a discrete set of states, utilization of numerical clustering methodologies poorly suited to nonnormal data, and a tendency to focus on relationships to a limited set of large-scale climate modes. This study presents a methodology based on emerging machine learning techniques to develop global approximators of regional precipitation and discharge extremes given a suite of synoptic-scale climate state variables. Archetypal analysis is first used to define regional modes of winter and summer extreme precipitation and discharge across the eastern contiguous United States. A 2D convolution neural network (NN) is then used to predict the co-occurrence of the archetypes using 300- and 700-hPa geopotential heights, 300- and 700-hPa specific humidity, and IVT. Results suggest that 300-hPa geopotential height, 700-hPa specific humidity, and IVT yield the most reliable predictions, although with some important differences by season and region. Finally, we demonstrate that the trained activations of NN convolutional layers can be used to infer the causal pathways between synoptic-scale climate features and regional extremes.
publisherAmerican Meteorological Society
titlePotential Predictability of Regional Precipitation and Discharge Extremes Using Synoptic-Scale Climate Information via Machine Learning: An Evaluation for the Eastern Continental United States
typeJournal Paper
journal volume20
journal issue5
journal titleJournal of Hydrometeorology
identifier doi10.1175/JHM-D-18-0196.1
journal fristpage883
journal lastpage900
treeJournal of Hydrometeorology:;2019:;volume 020:;issue 005
contenttypeFulltext


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