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Cyclone Alert

Very rare and strange indeed. The Depression which is smashing Oman with heavy rains is expected to move inland and get stronger and stronger. Never seen a Depression intensifying into a possible Cyclone over land in Oman. Lets see if it will be a named cyclone or not. Must be one of the rarest of the rarest if it gets named as cyclone over land.

981 mb inland and it moves into Yemen too as a Cyclone. ECMWF shows gusts of 143 km/hr and historic rains of over 500 mm accumulation in Oman over next 3 to 4 days is huge for Oman. Yemen too is going to get huge rains.

The arabian belt kills even a super cyclone with its dry air in few hours. Here constant moisture supply from cross equatorial flow is seen. Could not see any other reason for it to sustain over land. Shear is less too.


....

Vineesh V
Assistant Professor of Geography,
Directorate of Education,
Government of Kerala.
https://g.page/vineeshvc
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