Center for Satellite Applications and Research (STAR) Review 09 – 11 March 2010 Image: MODIS Land Group, NASA GSFC March 2000 Presented by Menghua Wang.

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Presentation transcript:

Center for Satellite Applications and Research (STAR) Review 09 – 11 March 2010 Image: MODIS Land Group, NASA GSFC March 2000 Presented by Menghua Wang Presented by Menghua Wang Water Quality and Optical Property Characterizations for China’s Lake Taihu

Center for Satellite Applications and Research (STAR) Review 09 – 11 March Requirement, Science, and Benefit Requirement/Objective Weather and Water –Serve society’s needs for weather and water information Better, quicker, and more valuable weather and water information to support improved decisions Increase lead time and accuracy for weather and water warnings and forecasts Improve predictability of the onset, duration, and impact of hazardous and high-impact severe weather and water events Increase coordination of weather and water information and services with integration of local, regional, and global observation systems Ecosystems –Protect, restore and manage the use of coastal and ocean resources through ecosystem- based management Healthy and productive coastal and marine ecosystems that benefit society A well informed public that acts as a steward of coastal and marine ecosystems Science How to provide accurate water optical, biological, and biogeochemical property data in coastal and inland regions from satellite measurements? Benefit Improve water resources forecasting capabilities Protect and monitor water resources Understand the effect of environmental factors on human health and well-being

Center for Satellite Applications and Research (STAR) Review 09 – 11 March Challenges and Path Forward Science Challenges –Accurate remote sensing of the water properties is still challenges for: (a) complex coastal and inland waters and (b) for absorbing aerosols. Next Steps –Continue efforts for improving the remote sensing data products for coastal and inland waters. –Demonstrate various applications for using the improve data products. Transition Path –We will implement research results into NOAA operational data processing, e.g., the NOAA SWIR project, which will be operation in this year.

Center for Satellite Applications and Research (STAR) Review 09 – 11 March Improved Water Optical Property Data in Coastal and Inland Regions  SWIR-based Atmospheric Correction Algorithm: the shortwave infrared (SWIR) atmospheric correction algorithm has been developed and demonstrated to provide improved ocean color products in coastal and inland waters.  Inland Lake Taihu: contains consistently highly turbid waters, and the derivation of MODIS lake property data requires using the SWIR method, due to significant water-leaving radiance contributions at the near-infrared (NIR) bands.  Standard Satellite Ocean Color Data Processing: often fails to produce any valid products in very turbid waters, e.g., in Lake Taihu, due to an incorrect assumption and/or computation of the NIR water contributions.  Quantitative Characterization of Aquatic Optical and Biological Property: for Lake Taihu is demonstrated using the SWIR-based algorithm from MODIS-Aqua measurements.  Research Results Demonstrate: an application of satellite-derived imagery for inland water quality monitoring, assessment, and management.

Center for Satellite Applications and Research (STAR) Review 09 – 11 March SWIR-based Ocean Color Products for Various Applications  Coastal Phytoplankton Bloom Study: Observations of Hurricane Katrina-induced phytoplankton bloom in the Gulf of Mexico (Shi and Wang, 2007; Liu et al., 2009).  Ecosystem Responses to Major Weather Event: Three-dimension observations from MODIS and CALIPSO for ocean responses to Cyclone Nargis in the Gulf of Martaban (Shi and Wang, 2008).  River Estuary, River Dynamics and River Plume: Satellite observations of flood- driven Mississippi River plume in the spring 2008 (Shi and Wang, 2009).  Stormwater Plume Detection: Stormwater plume detection in the southern California coastal ocean (Nezline et al., 2008).  Coastal and Inland-water Hazard Monitoring: Satellite-observed blue-green algae blooms in China’s Lake Taihu (Wang and Shi, 2008).  Environmental Responses to a Land Reclamation Project: Satellite-observed drastic changes in marine environment in response to the Saemangeum Reclamation Project in South Korea (Son and Wang, 2009).  Monitoring Green Macroalgae Blooms in Yellow Sea: Satellite observation and monitoring of green macroalgae blooms in the Yellow Sea during the spring and summer of 2008 (Shi and Wang, 2009).

Center for Satellite Applications and Research (STAR) Review 09 – 11 March Blue-Green Algae Bloom Crisis in Lake Taihu (Spring 2007)

Center for Satellite Applications and Research (STAR) Review 09 – 11 March The work was featured in the NASA 2008 Sensing Our Planet ( Satellite (MODIS) Observed Blue-Green Algae (Microcystis) Bloom MODIS Images: True Color, Chlorophyll-a, and Radiance Quantitative Measurements

Center for Satellite Applications and Research (STAR) Review 09 – 11 March Diffuse Attenuation Coefficient K d (490): Water Turbidity and Water Quality

Center for Satellite Applications and Research (STAR) Review 09 – 11 March Radiance nL w (443): Algae Absorption

Center for Satellite Applications and Research (STAR) Review 09 – 11 March Radiance nL w (645): Sediment Amount

Center for Satellite Applications and Research (STAR) Review 09 – 11 March Significant NIR radiance nL w (859) contributions in Lake Taihu

Center for Satellite Applications and Research (STAR) Review 09 – 11 March Validation Results for MODIS-derived Water-leaving Radiance Spectra

Center for Satellite Applications and Research (STAR) Review 09 – 11 March Challenges and Path Forward Science Challenges –Accurate remote sensing of the water properties is still challenges for: (a) complex coastal and inland waters and (b) for absorbing aerosols. Next Steps –Continue efforts for improving the remote sensing data products for coastal and inland waters. –Demonstrate various applications for using the improve data products. Transition Path –We will implement research results into NOAA operational data processing, e.g., the NOAA SWIR project, which will be operation in this year.