NA24OARX021G0005
Project Grant
Overview
Grant Description
Purpose: Understanding the coupling among drought, water content of the soil, and forest fires is essential in the fire risk study framework.
In this context, improved wildfires prediction tools, such as risk, severity, burnt area, are urgently needed.
In this work, the use of remotely sensed and in-situ sensed soil moisture (SM) data, as well as land surface temperature (LST) as key variables in the climate-wildfires relationship is explored.
Therefore, a vital need is to increase the quantity and quality of available information at relevant spatiotemporal scales, which will be accomplished through an integrated space and ground sensing grid for estimating SM, LST, and other climate variables.
Space data will consist of commercial data spanning superspectral, thermal IR, hyperspectral, SAR (microwave radar) as well as data provided by NASA.
Use of funding:
1. Understand the relationship between soil moisture and land surface temperature on wildfire risk and burnt area through statistical and AI / deep learning methods.
2. Determine stakeholder information requirements.
3. Develop a real-time simulation window to disseminate ensembled model results to the users.
Deliverables: Analytical software, report & training to fire agencies.
In this context, improved wildfires prediction tools, such as risk, severity, burnt area, are urgently needed.
In this work, the use of remotely sensed and in-situ sensed soil moisture (SM) data, as well as land surface temperature (LST) as key variables in the climate-wildfires relationship is explored.
Therefore, a vital need is to increase the quantity and quality of available information at relevant spatiotemporal scales, which will be accomplished through an integrated space and ground sensing grid for estimating SM, LST, and other climate variables.
Space data will consist of commercial data spanning superspectral, thermal IR, hyperspectral, SAR (microwave radar) as well as data provided by NASA.
Use of funding:
1. Understand the relationship between soil moisture and land surface temperature on wildfire risk and burnt area through statistical and AI / deep learning methods.
2. Determine stakeholder information requirements.
3. Develop a real-time simulation window to disseminate ensembled model results to the users.
Deliverables: Analytical software, report & training to fire agencies.
Awardee
Funding Goals
18 CLIMATE ADAPTATION AND MITIGATION 19 WEATHER-READY NATION 20 HEALTHY OCEANS 21 RESILIENT COASTAL COMMUNITIES AND ECONOMIES
Grant Program (CFDA)
Awarding / Funding Agency
Place of Performance
New York,
New York
100041372
United States
Geographic Scope
Single Zip Code
Related Opportunity
Vega Mx was awarded
Project Grant NA24OARX021G0005
worth $174,790
from National Oceanic and Atmospheric Administration in August 2024 with work to be completed primarily in New York New York United States.
The grant
has a duration of 5 months and
was awarded through assistance program 11.021 NOAA Small Business Innovation Research (SBIR) Program.
The Project Grant was awarded through grant opportunity NOAA SBIR FY 2024 Phase I.
SBIR Details
Research Type
SBIR Phase I
Title
Space based and In-situ measurement of pre-season soil moisture and land surface temperature to estimate wildfire extent and risk
Abstract
Understanding the coupling among drought, water content of the soil, and forest fires is essential in the fire risk study framework. In this context, improved wildfires prediction tools, such as risk, severity, burnt area, are urgently needed and in this work, the use of remotely sensed and in-situ sensed Soil Moisture (SM) data, as well as Land Surface Temperature (LST) as key variables in the climate-wildfires relationship is explored. Therefore a vital need is to increase the quantity and quality of available information at relevant spatiotemporal scales, which will be accomplished through an integrated Space and Ground Sensing grid for estimating SM, LST, and other climate variables. Space data will consist of commercial data spanning Superspectral, Thermal IR, hyperspectral, SAR (microwave radar) as well as data provided by NASA Use of Funding: 1.Understand the relationship between soil moisture and land surface temperature on wildfire risk and burnt area through statistical and AI / Deep learning methods 2. Determine stakeholder information requirements 3. Develop a real-time simulation window to disseminate ensembled model results to the users. Deliverables: Analytical Software, Report & Training to Fire Agencies Target Markets : Power and Utilities, Insurance and Banking, Wildfire Agencies, Space Agencies, Government & Land Management. There are adjacent markets such as Agriculture, Meteorology, Military Mobility that will gain from the development of this subject.
Topic Code
9.1
Solicitation Number
NOAA-OAR-TPO-2024-2008184
Status
(Complete)
Last Modified 11/19/24
Period of Performance
8/1/24
Start Date
1/31/25
End Date
Funding Split
$174.8K
Federal Obligation
$0.0
Non-Federal Obligation
$174.8K
Total Obligated
Activity Timeline
Transaction History
Modifications to NA24OARX021G0005
Additional Detail
Award ID FAIN
NA24OARX021G0005
SAI Number
NA24OARX021G0005-001
Award ID URI
None
Awardee Classifications
Small Business
Awarding Office
1305N2 DEPT OF COMMERCE NOAA
Funding Office
1333BR OFC OF PROG.PLANNING&INTEGRATION
Awardee UEI
VMASRMVXA3J3
Awardee CAGE
8GZV2
Performance District
NY-10
Senators
Kirsten Gillibrand
Charles Schumer
Charles Schumer
Modified: 11/19/24