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Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0711 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0716 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0721 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0726 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0731 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0736 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0741 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0746 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0751 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0756 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0801 UTC
Air Mass - RGB based on data from IR & water vapor - 30 Oct 2024 - 0806 UTC
Key for AirMass RGB:
1 - Jet stream / potential vorticity (PV) / deformation zones / dry upper level (dark red / orange)
2 - Cold air mass (dark blue/purple)
3 - Warm air mass (green)
4 - Warm air mass, less moisture (olive/dark orange)
5 - High thick cloud (white)
6 - Mid level cloud (tan/salmon)
7 - Low level cloud (green, dark blue)
8 - Limb effects (purple/blue)
Air Mass RGB is used to diagnose the environment surrounding synoptic systems by enhancing temperature and moisture characteristics of airmasses. Cyclogenesis can be inferred by the identification of warm, dry, ozone-rich descending stratospheric air associated with jet streams and potential vorticity (PV) anomalies. The RGB can be used to validate the location of PV anomalies in model data. Additionally, this RGB can distinguish between polar and tropical airmasses, especially along upper-level frontal boundaries and identify high-, mid-, and low-level clouds.