tobac v1.5: introducing fast 3D tracking, splits and mergers, and other enhancements for identifying and analysing meteorological phenomena

Author:

Sokolowsky G. Alexander,Freeman Sean W.ORCID,Jones William K.ORCID,Kukulies Julia,Senf FabianORCID,Marinescu Peter J.ORCID,Heikenfeld MaxORCID,Brunner Kelcy N.,Bruning Eric C.ORCID,Collis Scott M.,Jackson Robert C.,Leung Gabrielle R.ORCID,Pfeifer Nils,Raut Bhupendra A.,Saleeby Stephen M.ORCID,Stier PhilipORCID,van den Heever Susan C.ORCID

Abstract

Abstract. There is a continuously increasing need for reliable feature detection and tracking tools based on objective analysis principles for use with meteorological data. Many tools have been developed over the previous 2 decades that attempt to address this need but most have limitations on the type of data they can be used with, feature computational and/or memory expenses that make them unwieldy with larger datasets, or require some form of data reduction prior to use that limits the tool's utility. The Tracking and Object-Based Analysis of Clouds (tobac) Python package is a modular, open-source tool that improves on the overall generality and utility of past tools. A number of scientific improvements (three spatial dimensions, splits and mergers of features, an internal spectral filtering tool) and procedural enhancements (increased computational efficiency, internal regridding of data, and treatments for periodic boundary conditions) have been included in tobac as a part of the tobac v1.5 update. These improvements have made tobac one of the most robust, powerful, and flexible identification and tracking tools in our field to date and expand its potential use in other fields. Future plans for tobac v2 are also discussed.

Funder

Ames Research Center

Science Mission Directorate

Svenska Forskningsrådet Formas

Deutsches Klimarechenzentrum

Department of Energy, Labor and Economic Growth

Directorate for Geosciences

NOAA Research

H2020 European Research Council

European Space Agency

Publisher

Copernicus GmbH

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