The authors acknowledge others on the Cyclone Center science team: Paula Hennon, Michael Kruk, Jared Rennie, Carl Schreck, Scott Stevens, and Peter Thorne. We are also extremely grateful for the support of the Citizen Science Alliance development team. Funding and support for Dr. Hennon was provided in part by the Risk Prediction Initiative of the Bermuda Institute of Ocean Sciences and the Cooperative Institute for Climate and Satellites–North Carolina (CICS-NC). Dr. Matthews is supported by NOAA through the CICS-NC under Cooperative Agreement NA14NES432003. We also appreciate the constructive comments from Christopher Landsea, Matthew Eastin, and anonymous reviewers. Lastly, we are grateful for the contributions from the numerous citizen scientists who have contributed countless hours in providing more than half a million classifications. In particular, we thank baha23, bretarn, shocko61, and skl6284, who have each provided more than 6500 classifications—the equivalent of 1 year of HURSAT data.
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