NSSI Science Technical Group, Remote Sensing & GIS Subcommittee Meeting November 13, 2006.

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Presentation transcript:

NSSI Science Technical Group, Remote Sensing & GIS Subcommittee Meeting November 13, 2006

2 Agenda 9:30 – 10:00 A.M. Informal discussions 10:00 – 10:15 A.M.Introductions and review of agenda and expected outcomes 10:15 – 11:00 A.M.Identify overall goals for GIS-specific objectives 11:00 – 12:00 P.M.Examine, critique, and prioritize Suggested NSSI GIS Layer List 12:00 – 1:30 P.M.Lunch 1:30 – 2:00 P.M.Review remote sensing list 2:00 – 2:30 P.M. Prioritize list of remote sensing information 2:30 – 3:00 P.M.Examine GIS NSSI Data Management System Potential Functionality 3:00 – 3:30 P.M.Discuss role of decision support in NSSI GIS 3:30 – 4:00 P.M.Summarize unresolved issues and discuss agenda for January 2007 Stakeholder Focus Group Meeting 4:00 P.M.Adjourn

3 Meeting Purpose Create a straw-man of the proposed NSSI GIS/Remote Sensing Information system to be shared with a stakeholder focus group in late January 2007

4 Meeting Topics Identify overall goal and objectives of the GINA based information sharing system. Address how this proposed system is different from the ARCUS data management system. How do they compliment each other? Examine, critique, and prioritize suggested NSSI GIS content list. Identify and prioritize a set of remote sensing data that should be available via the GINA delivery system. Generate a list of suggested derived remote sensing products (i.e. geophysical quantities) that should be part of a standard GINA offering.

5 Meeting Topics (cont.) Discuss and approve, if possible, the requirement list for the NSSI GIS functionality and hardware/software. Discuss and generate a wish list for Decision Support Systems (DSS) that need to be part of GINA. What generic types of DSS are needed? For example, statistical decision theory, ecological risk assessment, decision tree model, or others such as sea ice cover or ice road approval. Identify unresolved issues that should be discussed at the January stakeholder meeting.

6 Agenda 9:30 – 10:00 A.M. Informal discussions 10:00 – 10:15 A.M.Introductions and review of agenda and expected outcomes 10:15 – 11:00 A.M.Identify overall goals for GIS-specific objectives 11:00 – 12:00 P.M.Examine, critique, and prioritize Suggested NSSI GIS Layer List 12:00 – 1:30 P.M.Lunch 1:30 – 2:00 P.M.Review remote sensing list 2:00 – 2:30 P.M. Prioritize list of remote sensing information 2:30 – 3:00 P.M.Examine GIS NSSI Data Management System Potential Functionality 3:00 – 3:30 P.M.Discuss role of decision support in NSSI GIS 3:30 – 4:00 P.M.Summarize unresolved issues and discuss agenda for January 2007 Stakeholder Focus Group Meeting 4:00 P.M.Adjourn

7 Goals and Objectives of a NSSI GIS Goal of NSSI: to provide a consistent approach to high-caliber science across the North Slope –A NSSI GIS should support this goal –Provide the baseline data inputs for science investigations Provide data needs for the diverse NSSI stakeholder group (federal, state, local, native, industry, academia, NGOs) Dedicated information management system that specifically encompasses the biotic and abiotic stressors/receptors related to oil and gas development –Legally defensible –Security Manage the data and provide information –A data storage system in and of itself is not enough –Decision support

8 Agenda 9:30 – 10:00 A.M. Informal discussions 10:00 – 10:15 A.M.Introductions and review of agenda and expected outcomes 10:15 – 11:00 A.M.Identify overall goals for GIS-specific objectives 11:00 – 12:00 P.M.Examine, critique, and prioritize Suggested NSSI GIS Layer List 12:00 – 1:30 P.M.Lunch 1:30 – 2:00 P.M.Review remote sensing list 2:00 – 2:30 P.M. Prioritize list of remote sensing information 2:30 – 3:00 P.M.Examine GIS NSSI Data Management System Potential Functionality 3:00 – 3:30 P.M.Discuss role of decision support in NSSI GIS 3:30 – 4:00 P.M.Summarize unresolved issues and discuss agenda for January 2007 Stakeholder Focus Group Meeting 4:00 P.M.Adjourn

9 North Slope Baseline Data Layer List A preliminary list of North Slope Baseline GIS Data Layers was generated during the March 2006 North Slope Data Management Meeting (hosted by GINA) Meeting participants represented a diverse set of North Slope stakeholders and expertise (UAF-GINA, EVOSTC, USGS, ADNR, BLM-NSTC, BLM-FDO, BLM-ASO, UAF- Toolik Lake, MTRI (formerly Altarum), Resources Data, Inc., ConocoPhillips, NSSI) The list that resulted from this meeting has been expanded and reorganized

10 Expansion/Reorganization of the North Slope Baseline Data Layer List Baseline data layers list has be reorganized using the ISO (International Organization for Standardization) for Geographic Information Metadata Topic Category Code List –A high-level geographic data thematic classification –Contains metadata topic category code listing to assist in the grouping and search of available geographic data sets Additions to the North Slope baseline data layers list were the result of inputs from GIS professionals

11 Suggested NSSI GIS Layer List

12 Agenda 9:30 – 10:00 A.M. Informal discussions 10:00 – 10:15 A.M.Introductions and review of agenda and expected outcomes 10:15 – 11:00 A.M.Identify overall goals for GIS-specific objectives 11:00 – 12:00 P.M.Examine, critique, and prioritize Suggested NSSI GIS Layer List 12:00 – 1:30 P.M.Lunch 1:30 – 2:00 P.M.Review remote sensing list 2:00 – 2:30 P.M. Prioritize list of remote sensing information 2:30 – 3:00 P.M.Examine GIS NSSI Data Management System Potential Functionality 3:00 – 3:30 P.M.Discuss role of decision support in NSSI GIS 3:30 – 4:00 P.M.Summarize unresolved issues and discuss agenda for January 2007 Stakeholder Focus Group Meeting 4:00 P.M.Adjourn

13 Types of Remote Sensing Data Satellite, aircraft, ground and sea based Active and passive Electro-optical  Microwave Synoptic/coarse resolution  local/fine resolution Civil, DOD, commercial, and NTM U.S. and international sources Historical (circa 1970)  present

14 Sources of Remote Sensing Data Earth Observing System Data Gateway –Radar RADARSAT ERS-1 & ERS-2 GLAS/ICESat –ASTER & ASTER Derived Products –MODIS & MODIS Derived Products –AVHRR & AVHRR Derived Products Land Processes Distributed Active Archive Center Data Pool –ASTER & ASTER Derived Products –MODIS & MODIS Derived Products USGS EarthExplorer –Landsat TM & ETM+ –Hyperion –Corona –Several different series of aerial photography

15 Sources of Remote Sensing Data (cont.) Global Land Cover Facility –Orthorectified Landsat TM & ETM+ Digital Globe –Quickbird National Snow and Ice Data Center –Hundreds of data sets from all over the world dealing with snow and ice National Ice Center –Global Ice edges –Alaskan Ice Charts MDA –RADARSAT –ERS-1 & ERS-2

16 Available Remote Sensing Data Landsat – 16 to 17 scenes are required for full coverage of North Slope –Landsat MSS from mid 1970’s to 1980 – limited available – mosaic is better –Landsat TM from early 1980’s to 1990’s – limited coverage –Landsat 7 (ETM+) 1999 to 2003 – very good coverage, but sensor problems beginning in 2003 continue at present. –Landsat MSS Mosaic Circa 1978 – Covers entire North Slope, three spectral bands (green, red, near-ir); 50 m pixel spacing. 2 scenes from –Landsat TM – 4-scene mosaic of Prudhoe Bay and east. 30 m resolution –Landsat ETM+ images of portion of NPRA-northwest – 2 adjacent scenes from 2002

17 Available Remote Sensing Data (cont.) AVHRR – one or two scenes required for full coverage. Composite data more useful than raw images. –AVHRR composite images – bi-monthly composites of Alaska for summers 1990 to km resolution. May be available for 1993/4. –AVHRR imagery – available at least 2X per day from 1981 to present – difficult to use “raw” data (see composite images above) Synthetic Aperture Radar (SAR) – many data collections from each sensor –ERS-1/2 SAR – 300+ scenes needed for full NS coverage 1991 to present. –JERS SAR – 300+ scenes needed for full NS coverage 1994 To 1998 –Radarsat standard beam – 300+ scenes needed for full coverage –Radarsat ScanSAR – 4 to 6 scenes needed to cover NS 1995 to present

18 Available Remote Sensing Data (cont.) TERRA/AQUA sensors: –MODIS – multi-spectral system – data collected on 2 satellites – at least one morning and one afternoon collection each day. 250m to 1km resolution. Many data products being created (see below). –MISR & ASTER – multi-spectral sensors with small coverage per scene (smaller than Landsat). Targeted collections can be requested as a NASA investigator.

19 QuickBird High Resolution Data Availability

20 Agenda 9:30 – 10:00 A.M. Informal discussions 10:00 – 10:15 A.M.Introductions and review of agenda and expected outcomes 10:15 – 11:00 A.M.Identify overall goals for GIS-specific objectives 11:00 – 12:00 P.M.Examine, critique, and prioritize Suggested NSSI GIS Layer List 12:00 – 1:30 P.M.Lunch 1:30 – 2:00 P.M.Review remote sensing list 2:00 – 2:30 P.M. Prioritize list of remote sensing information 2:30 – 3:00 P.M.Examine GIS NSSI Data Management System Potential Functionality 3:00 – 3:30 P.M.Discuss role of decision support in NSSI GIS 3:30 – 4:00 P.M.Summarize unresolved issues and discuss agenda for January 2007 Stakeholder Focus Group Meeting 4:00 P.M.Adjourn

21 Available Remote Sensing Products Remote sensing products: –Vegetation index (NDVI) – AVHRR-derived; 15-day composite; 8- km resolution; global product for 1982 to 2000 available. –Vegetation index (NDVI/EVI) – MODIS-derived 16-day composite; 250 or 500 m resolution; global product for 2000 to present. –Snow cover – MODIS-derived; 8-day composite; 500 m resolution; global product, composite used to eliminate clouds. Algorithm is well tested and robust. Combination of MODIS snow cover product with passive microwave (AMSR on AQUA) can yield snow-water equivalent. –Active layer/thaw depth – Data from the CALM project – may not be RS-derived –Sea ice type and concentration – weekly maps from National Ice Center (NIC) as well as National Snow and Ice Data Center

22 Land Cover Information Obtainable from Satellite Data FeatureSatellite(s)Spatial Resolution North Slope Coverage Remarks Land CoverLandsat MODIS 15m 250m 170 x 170km Daily (all) Cloud cover and seasonal (light) dependent Vegetation Cover & Index Landsat ASTER MODIS AVHRR 15m 250m 1km 170 x 170km 60km swath Daily (all) Cloud cover and seasonal (light) dependent Snow CoverMODIS (Aqua) SSMI NOAA/AVHRR 250m 12k 1km 1200km swath 1500km swath 1200km swath MODIS and AVHRR weather dependent Topography (DEM)Stereo from commercial EO InSAR RADARSAT (2) 1m 10m 16 x 16km frame 100km swath EO weather and light dependent; InSAR course resolution HydrologyRADARSAT Landsat ASTER 25m 15m 500km swath 170 x 170km 60 km swath When visible, surface extent only Water DepthLandsat Commercial 15m 1m 170 x 170km 16 x 16km frame 20% accuracy InfrastructureCommercial60cm – 2m16 x 16km patchesExpensive and data intensive

23 Sea Ice Information Obtainable from Satellite Data FeatureSatellite(s)Spatial Resolution North Slope CoverageRemarks Sea ice concentration DMSP SMM/I 12-25kmDaily (All)Synoptic sea ice maps coverage back to 1979 Sea ice dynamicsDMSP SMM/I 12-25kmDaily (All)Generalized ice movement Ice type (age)DMSP SMM/I 12-25kmDailySynoptic historical data Detailed ice movement and reology RADARSAT (SAR) Envisat (SAR) Palsar (SAR) m km swathDetailed ice surface and movement; limited coverage LeadsRADARSAT (SAR) Envisat (SAR) Palsar DMSP/NOAA m 1km km Daily (all) Limited coverage; EO cloud free only with multi-looks each day Marginal ice zone (MIZ) SSM/I RADARSAT Envisat Palsar 5km m Daily km swath Historical data available back to 1990s for SAR Land fast iceRADARSAT (SAR) Envisat Palsar m km swathHistorical data back to 1990s Ice edge Ice free-board (.3 m) Geosat Envisat Others? 2.5 kmNadir view 10km swath Historical data set to 1990s exist

24 Oceanographic Information Obtainable from Satellite Data FeatureSatellite(s)Spatial Resolution North Slope Coverage Remarks Surface wind speeds (2m/s) Windscat (quickscat) 12km grid2-4 times daily Historical data back to approx Wave height (.5m)Geosat, Envisat, etc.2km nadirStrip of coverage Historical coverage back to 1990s Ocean currents dynamic height method Geosat, Envisat, etc.2km nadirFull coverage over 36 Hv period Data assimilated into GLMS Wavelength and direction RADARSAT (SAR) Envisat (SAR) Palsar (SAR) 25m – 100m 100km swathAlaska SAR (Satellite) Facility archive back to 1991 Ocean frontal boundaries RADARSAT (SAR) Envisat (SAR) Palsar (SAR) 25m – 100m 100km swathAlaska SAR (Satellite) Facility back to 1991 Ocean temperatureNOAA AVHRR1 km2-4 timesCoverage back to 1970s Color Chl, doc, sm Aqua MODIS1km2 times dailyTen years with SeaWiFS Oil spills and surfactantsRADARSAT (SAR) Envisat (SAR) Palsar (SAR) 25m – 100m 100km swathDynamic tasking needed; integration into models

25 Agenda 9:30 – 10:00 A.M. Informal discussions 10:00 – 10:15 A.M.Introductions and review of agenda and expected outcomes 10:15 – 11:00 A.M.Identify overall goals for GIS-specific objectives 11:00 – 12:00 P.M.Examine, critique, and prioritize Suggested NSSI GIS Layer List 12:00 – 1:30 P.M.Lunch 1:30 – 2:00 P.M.Review remote sensing list 2:00 – 2:30 P.M. Prioritize list of remote sensing information 2:30 – 3:00 P.M.Examine GIS NSSI Data Management System Potential Functionality 3:00 – 3:30 P.M.Discuss role of decision support in NSSI GIS 3:30 – 4:00 P.M.Summarize unresolved issues and discuss agenda for January 2007 Stakeholder Focus Group Meeting 4:00 P.M.Adjourn

26 Distributed Data Architecture A data system that allows for distributed dataset hosting decreases the cost and effort needed to create, maintain, and share geographic datasets The content and metadata of each dataset is maintained by the dataset’s owner. Dataset owners provide their dataset to users by –Providing access through web services –Providing copies of the dataset Example: USGS DOQQ imagery –Web Service Access TerraServer USA ( –Dataset downloads Earth Explorer (

27 Geographic Web Services Enable organizations to share their geographic datasets using established standards Data exchange standards enable aggregations of geographic data from multiple sources Web service specifications are developed by the Open Geospatial Consortium (OGC). Important OGC specifications include: –Web Map Service (WMS) –Web Feature Service (WFS) –Web Coverage Service (WCS)

28 Open Geospatial Consortium Open Geospatial Consortium (OGC) is an international voluntary consensus standards organization. OGC encourages the development and implementation of standards for geographical content and services, GIS data processing, and exchange. OGC publishes: technical specifications, best practices documents, and discussion papers

29 Issues Related to Distributed Data Systems Storage capacity need is reduced, since datasets accessed through web services do not need to be copied. Data access to data through web services is generally slower, due to network speeds. High bandwidth connectivity between user groups is beneficial. Client applications need to be tolerant of ‘unavailable’ datasets, due to network or other issues. Not all client applications currently support OCG Web Services as data sources.

30 Agenda 9:30 – 10:00 A.M. Informal discussions 10:00 – 10:15 A.M.Introductions and review of agenda and expected outcomes 10:15 – 11:00 A.M.Identify overall goals for GIS-specific objectives 11:00 – 12:00 P.M.Examine, critique, and prioritize Suggested NSSI GIS Layer List 12:00 – 1:30 P.M.Lunch 1:30 – 2:00 P.M.Review remote sensing list 2:00 – 2:30 P.M. Prioritize list of remote sensing information 2:30 – 3:00 P.M.Examine GIS NSSI Data Management System Potential Functionality 3:00 – 3:30 P.M.Discuss role of decision support in NSSI GIS 3:30 – 4:00 P.M.Summarize unresolved issues and discuss agenda for January 2007 Stakeholder Focus Group Meeting 4:00 P.M.Adjourn

31 Data Needs for an Effective GIS-based DSS

32 Data Needs for an Effective GIS-based DSS (cont.)

33 Agenda 9:30 – 10:00 A.M. Informal discussions 10:00 – 10:15 A.M.Introductions and review of agenda and expected outcomes 10:15 – 11:00 A.M.Identify overall goals for GIS-specific objectives 11:00 – 12:00 P.M.Examine, critique, and prioritize Suggested NSSI GIS Layer List 12:00 – 1:30 P.M.Lunch 1:30 – 2:00 P.M.Review remote sensing list 2:00 – 2:30 P.M. Prioritize list of remote sensing information 2:30 – 3:00 P.M.Examine GIS NSSI Data Management System Potential Functionality 3:00 – 3:30 P.M.Discuss role of decision support in NSSI GIS 3:30 – 4:00 P.M.Summarize unresolved issues and discuss agenda for January 2007 Stakeholder Focus Group Meeting 4:00 P.M.Adjourn

34 Issues for Stakeholder Focus Group Meeting List of participants –Provide suggested attendees to Ken Taylor and John Payne –Diverse stakeholder participation Meeting details –Full day or multiple days? –Meeting date(s)? –Anchorage/Fairbanks? Plenary and breakout sessions? Is there a need for facilitators, recorders, chairs, co-chairs? Additional considerations