Should Reversible Convective Inhibition be Used when Determining the Inflow Layer of a Convective Storm?

Author:

Murdzek Shawn S.1,Markowski Paul M.1,Richardson Yvette P.1,Kumjian Matthew R.1

Affiliation:

1. a Department of Meteorology and Atmospheric Science, The Pennsylvania State University, University Park, Pennsylvania

Abstract

AbstractConvective inhibition (CIN) is one of the parameters used by forecasters to determine the inflow layer of a convective storm, but little work has examined the best way to compute CIN. One decision that must be made is whether to lift parcels following a pseudoadiabat (removing hydrometeors as the parcel ascends) or reversible moist adiabat (retaining hydrometeors). To determine which option is best, idealized simulations of ordinary convection are examined using a variety of base states with different reversible CIN values for parcels originating in the lowest 500 m. Parcel trajectories suggest that ascent over the lowest few kilometers, where CIN is typically accumulated, is best conceptualized as a reversible moist adiabatic process instead of a pseudoadiabatic process. Most inflow layers do not contain parcels with substantial reversible CIN, despite these parcels possessing ample convective available potential energy and minimal pseudoadiabatic CIN. If a stronger initiation method is used, or hydrometeor loading is ignored, simulations can ingest more parcels with large amounts of reversible CIN. These results suggest that reversible CIN, not pseudoadiabatic CIN, is the physically relevant way to compute CIN and that forecasters may benefit from examining reversible CIN instead of pseudoadiabatic CIN when determining the inflow layer.

Funder

National Science Foundation

Pennsylvania State University

national science foundation

Publisher

American Meteorological Society

Subject

Atmospheric Science

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