Interpretable deep learning for spatial analysis of severe hailstorms
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| Resource Type | publication |
|---|---|
| Temporal Range Begin | N/A |
| Temporal Range End | N/A |
| Temporal Resolution | N/A |
| Bounding Box North Lat | N/A |
| Bounding Box South Lat | N/A |
| Bounding Box West Long | N/A |
| Bounding Box East Long | N/A |
| Spatial Representation | N/A |
| Spatial Resolution | N/A |
| Related Links |
Related Dataset #1 : Interpretable Deep Learning for Spatial Analysis of Severe Hailstorms: Storm and Analysis Data Related Service #1 : Cheyenne: SGI ICE XA Cluster |
| Additional Information | N/A |
| Resource Format |
PDF |
| Standardized Resource Format |
PDF |
| Asset Size | N/A |
| Legal Constraints |
Copyright 2019 American Meteorological Society (AMS). |
| Access Constraints |
None |
| Software Implementation Language | N/A |
| Resource Support Name | N/A |
|---|---|
| Resource Support Email | opensky@ucar.edu |
| Resource Support Organization | UCAR/NCAR - Library |
| Distributor | N/A |
| Metadata Contact Name | N/A |
| Metadata Contact Email | opensky@ucar.edu |
| Metadata Contact Organization | UCAR/NCAR - Library |
| Author |
Gagne, David John Haupt, Sue Ellen Nychka, Douglas Thompson, Gregory |
|---|---|
| Publisher |
UCAR/NCAR - Library |
| Publication Date | 2019-08-01T00:00:00 |
| Digital Object Identifier (DOI) | Not Assigned |
| Alternate Identifier | N/A |
| Resource Version | N/A |
| Topic Category |
geoscientificInformation |
| Progress | N/A |
| Metadata Date | 2025-07-11T19:26:45.246068 |
| Metadata Record Identifier | edu.ucar.opensky::articles:22651 |
| Metadata Language | eng; USA |
| Suggested Citation | Gagne, David John, Haupt, Sue Ellen, Nychka, Douglas, Thompson, Gregory. (2019). Interpretable deep learning for spatial analysis of severe hailstorms. UCAR/NCAR - Library. https://n2t.org/ark:/85065/d7q243c1. Accessed 06 December 2025. |
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- ISO-19139 ISO-19139 Metadata