04/07/04THE FINNISH METEOROLOGICAL INSTITUTE Wednesday 9.6. 10.00 Opening of meeting Presentations and discussions Case Study of Fog - FMI 12.00-13.00.

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Presentation transcript:

04/07/04THE FINNISH METEOROLOGICAL INSTITUTE Wednesday Opening of meeting Presentations and discussions Case Study of Fog - FMI Lunch Fog detection and nowcasting, state of research - LCRS Tea/Coffee Towards operative cloud classification and future plans-FMI Fog detection with MODIS - LCRS Met Office plans for fog/low cloud detection and nowcasting 17.00

04/07/04THE FINNISH METEOROLOGICAL INSTITUTE Thursday Fog detection with MSG-SEVIRI - LCRS Tea/Coffee Albedo of snow surface - FMI Validating the AVHRR Cloud Top Temperature and Height-FMI Lunch Determination of optical and microphysical properties for water clouds - LCRS Tea/Coffee In-situ microphysical measurements and their use in satellite retrievals - I. Gultepe Special sites in Finland - FMI Current activities at FMI 17.00

04/07/04THE FINNISH METEOROLOGICAL INSTITUTE Friday Canadian plans for upcoming fog studies - I. Gultepe Tea/Coffee Joint session with WMO Nowcasting Working Group Lunch Identification of potential joint-projects, discussions Tea/Coffee