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13 Nov 2025 - 16:30 EST
13 Nov 2025 - 21:30 UTC
GOES-West Mesoscale view - Tropospheric Dust Content at 46°N - 110°W - Sweet Grass County, MT
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Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1942 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1943 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1944 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1945 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1946 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1947 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1948 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1949 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1950 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1951 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1952 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1953 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1954 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1955 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1956 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1957 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 1958 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2000 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2001 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2002 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2003 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2004 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2005 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2006 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2007 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2008 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2009 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2010 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2011 UTC
Tropospheric Dust Content - RGB for identifying tropospheric dust - 11 Oct 2025 - 2012 UTC
Dust RGB key:
1 - Dust plume, day (bright magenta, pink) Note: Dust at night becomes purple shades below 3 km
2 - Low, water cloud (light purple)
3 - Desert surface, day (light blue)
4 - Mid, thick clouds (tan shades)
5 - Mid, thin cloud (green)
6 - Cold, thick clouds (red)
7 - High, thin ice clouds (black)
8 - Very thin clouds, over warm surface (blue)
Dust RGB Dust can be hard to see in visible and infrared imagery because it is optically thin, or because it appears similar to other cloud types such as cirrus. The RGB product is able to contrast airborne dust from clouds using band differencing and the IR thermal channel. The IR band differencing allows dust storms to be observed during both daytime and at night.