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John Brock and John Haines USGS, Coastal and Marine Program Coastal Vulnerability Index and USGS – NOS Cooperation on Coastal Lidar Mapping U.S. Geological.

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Presentation on theme: "John Brock and John Haines USGS, Coastal and Marine Program Coastal Vulnerability Index and USGS – NOS Cooperation on Coastal Lidar Mapping U.S. Geological."— Presentation transcript:

1 John Brock and John Haines USGS, Coastal and Marine Program Coastal Vulnerability Index and USGS – NOS Cooperation on Coastal Lidar Mapping U.S. Geological Survey – U.S. Army Corps of Engineers – National Ocean Service Joint Headquarters Meeting February 2, 2010

2 USGS: Science for Decision-making in response to Sea-Level Rise Explicitly including uncertainty Explicitly including management application Explicitly including management application Extracting information from data/information resources Extracting information from data/information resources

3 Complex Systems + Complex Responses  Comprehensive, Integrated Research Multiple human and natural drivers spanning multiple time scales Multiple human and natural drivers spanning multiple time scales Diversity of systems – glaciated coasts to tropical atolls, wetlands, and barriers responding dynamically Diversity of systems – glaciated coasts to tropical atolls, wetlands, and barriers responding dynamically Observations – Research – Modeling Observations – Research – Modeling Needs span policy/management scales – National and Regional Needs span policy/management scales – National and Regional Modeling/Assessment needs from simple to complex Modeling/Assessment needs from simple to complex

4 Input Data: Coastal Vulnerability Index (Thieler and Hammar-Klose, 1999) Utilized existing data for six geological and physical process variables (~ 8km grid): a) Geomorphology b) Historic shoreline change c) Coastal slope d) Relative sea-level rise rate e) Mean sig. wave height f) Mean tidal range Solve this differential equation? d(state)/dt = funct.(geomorphology, wave-climate, sea level, etc.) OR, solve this probabilistic version P(state | inputs) = Bayes Rule

5 Coastal data sets can be evaluated with Bayesian network. Map probability of critical scenarios. MappingErosionProbabilities Atlantic Ocean Miami D.C. New York Boston Charleston Probability of Erosion > 2 m/yr

6 Prediction Uncertainty We can also map uncertainty which can be used to identify where we need better information. We can also map uncertainty which can be used to identify where we need better information. Areas of low confidence require: Areas of low confidence require: better input data better input data better understanding of processes better understanding of processes Use this map to focus research resources Use this map to focus research resources low confidence high confidence Certainty of most likely outcome (probability)

7 A Schematic of the Process Bathy/Topo ResponseProbability low high + medium Weather Overwash and Erosion models ObservationsProcesses Infrastructure Risk Habitat Risk LowHighMed. LowHighMed. Risk Analysis LIDAR OBS Required Input Evaluate output Area for collaboration: prioritize national observation resources to minimize uncertainty wave/water OBS wave/water MODELS Areas for collaboration 1. Nested modeling using national observation resources and large scale models to support high resolution models— we need accurate Boundary Condition inputs 2. Scenario exploration for likely climate changes and extreme storms Area for collaboration: prioritize national observation resources to provide accurate and up- to-date elevation data

8 Bixby Bridge, Big Sur, CA An Emerging NOS – USGS Collaboration on Lidar Coastal Mapping

9 2004 NOAA-NASA-USGS Collaboration: EAARL Demo Project NOS RSD evaluated the EAARL for use in NOAA/NOS mapping programs:NOS RSD evaluated the EAARL for use in NOAA/NOS mapping programs: –Shoreline mapping –Nautical charting (near-shore bathymetry) –Coral reef mapping –Emergency response (e.g., post-disaster damage assessment projects

10 2004 Collaborative EAARL Demo Project:

11 The EAARL Project: Florida Keys

12 The EAARL Project: Shoreline Extraction (Pensacola)

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14 EAARL 2004 Demo: Shoreline Extraction (Tampa)

15 2004 EAARL Demo Project - Main Finding: EAARL is nearly ideal sensor for NOAA coastal mappingEAARL is nearly ideal sensor for NOAA coastal mapping –Map multiple tidal-datum-based shorelines (e.g., MHW, MLLW) without tide coordination => Big increase in efficiency! –Topography and shallow-water bathymetry from a single data collect Can fill in the shallow-water gap in current hydro, caused by the NALL lineCan fill in the shallow-water gap in current hydro, caused by the NALL line Support storm surge modeling and coastal science applicationsSupport storm surge modeling and coastal science applications Supports (and benefits from) VDatumSupports (and benefits from) VDatum –Coral reef mapping –Meet multiple project and program needs simultaneously IOCM: map once – use many!IOCM: map once – use many!

16 Next Steps in USGS-NOAA EAARL Collaboration: A 2nd EAARL system currently being built by USGS Plan to fly on a new NOAA aircraft, a King Air 350 (N68RF) We are currently working together to optimize the system for this aircraft and to ensure mutually-beneficial data

17 Authority for Collaboration: 2 recent MOUs: 2009-057/7831 & NOAA-USGS MOU2- 052 recent MOUs: 2009-057/7831 & NOAA-USGS MOU2- 05 “The primary objective of this partnership is to cooperate on a variety of technological advancements that may include airborne LiDAR bathymetry and other coastal mapping imaging and charting technologies.”“The primary objective of this partnership is to cooperate on a variety of technological advancements that may include airborne LiDAR bathymetry and other coastal mapping imaging and charting technologies.” “The purpose of this MOU is to establish a framework for cooperation and coordination between the USGS and NOAA…in addressing the Nation’s physical, biological, and ocean science needs.”“The purpose of this MOU is to establish a framework for cooperation and coordination between the USGS and NOAA…in addressing the Nation’s physical, biological, and ocean science needs.”

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19 The EAARL Project: Florida Keys

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21 The EAARL Project: Shoreline Extraction (Pensacola)


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