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Explosives and Related Threats: Frontiers in Prediction and Detection  (EXP)  Crosscutting Programs

Name Dir/Div Name Dir/Div
Lenore  Clesceri   Radhakishan  Baheti ENG/ECCS 
Debasish  Dutta   Michael  Ellis  
Anne  Emig OD/OISE  Michael  Foster  
Bruce  Hamilton   Helen  Hansma  
Leland  Jameson MPS/DMS  Ashwani  Kapila  
Bradley  Keister MPS/PHY  Shih  Liu  
Eduardo  Misawa ENG/EEC  David  Nelson  
Lucille  Nowell   Eric  Peterson  
Zeev  Rosenzweig   Sandra  Schneider  
Sylvia  Spengler CISE/IIS  Amber  Story  


Solicitation  07-528

Important Information for Proposers

A revised version of the NSF Proposal & Award Policies & Procedures Guide (PAPPG) (NSF 17-1), is effective for proposals submitted, or due, on or after January 30, 2017. Please be advised that, depending on the specified due date, the guidelines contained in NSF 17-1 may apply to proposals submitted in response to this funding opportunity.

SYNOPSIS In FY 2007, NSF will invest in leading edge, frontier research on sensors and other areas, including social and behavioral sciences, that are potentially relevant to the prediction and detection of explosives and related threats. This is an NSF-wide effort, in coordination with the efforts of other agencies, which seeks to advance fundamental knowledge in new technologies for sensors and sensor networks, and in the use of sensor data in control and decision making, particularly in relation to the prediction and detection of explosives and related threats. This research is seen as critical to our nation's ability to deploy effective homeland security measures, and to protect civilians and our military forces throughout the world.

Proposals outside of the scope described in this solicitation will be returned without review. 

Research on prediction and detection of biological, toxic chemical, and nuclear weapons is excluded from the scope of this solicitation.

What Has Been Funded (Recent Awards Made Through This Program, with Abstracts)

Map of Recent Awards Made Through This Program