Smiths Detection and Riskaware join forces to develop next generation CBRN solution
‘UrbanAware’ collects and analyses data to deliver critical incident intelligence straight to the tactical edge
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This joint solution not only closes the gap between data collection, analysis and strategic awareness of CBRN threats, it also brings insights closer to the tactical edge, enabling stakeholders to quickly identify and understand chemical and other hazards in the field. Threats can be seen in real time on a map in relation to the team’s position, thus providing critical and potentially life-saving intelligence. Likely next stages of a chemical attack or accidental industrial release can also be forecast using the simulation capabilities.
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Landscape and population considerations make it challenging to evaluate the potential impact of any incident and determine the best course of action. As the name suggests, UrbanAware is optimised for these complex urban environments where the topography of streets and buildings influences dispersion of airborne hazards. Typical use cases range from planning evacuation routes in a civil emergency to establishing optimal cordon areas based on predictive hazard modelling.
Underpinning Riskaware’s CBRN system is the Hazard Assessment Simulation and Prediction (HASP) Suite, which was developed over two decades by the
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About Riskaware
Riskaware is a leading incident modelling solutions provider. Using data, systems and software expertise, it creates operational solutions that support organisations to make informed decisions and enhance their resilience. Working primarily with defence and security industries, Riskaware helps its partners address the most complex global challenges and protect people and environments worldwide.
About
HASP Suite Background Information
The Hazard Assessment Simulation and Prediction (HASP) Suite is a software toolset providing superior situational awareness and decision support in the CBRN/HazMat domain. It has been developed by the
The HASP Suite is comprised of a number of individual components, each tackling a different aspect of the CBRN/HazMat challenge to create complete situational awareness. These include:
- Urban Dispersion Model (UDM)
- Urban Subsystem (USS)
- Sensor Placement Tool (SPT)
- Source Term Estimation (STE)
- Geographical and Environmental Database Information System (GEDIS)
A core component of the HASP Suite is the Urban Dispersion Model (UDM). UDM was originally funded by Dstl and the
- 2000 Sydney Olympics
- 2001 US Presidential Inauguration
-
2002 Salt
Lake City Winter Olympics - 2004 Athens Olympics
Throughout its development, the UDM has been validated in a number of field trial experiments including 2:
- Project Prairie Grass
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Urban 2000 Dataset,
Salt Lake City, Utah -
Joint Urban 2003,
Oklahoma City release -
Madison Square Gardens 2005 - Wind tunnel experiments
- MUST Experiment, Conex containers to create mock urban setting
UDM has also undergone independent external reviews, including:
-
Defence Scientific Advisory Council (2006) -
Scientific Review by
Hanna Consultants (2009)
UDM and other components of the HASP Suits have also received significant funding from the
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1 “The UDM A Puff Model for Estimating Dispersion in UrbanAreas”, |
2 “Atmospheric Dispersion Modelling in Support of Civil Emergency Operations”, |
3 “Acceptance of mathematical modelling - a defence science perspective”, |
4 “Acceptance criteria for urban dispersion model evaluation”, |
5 “The Geographical and Environmental Database Information System (GEDIS) as a Tool for Urban Dispersion Modelling”, |
6 “Urban Subsystem CBRN Dispersion Modeling”, CBRNE Central, Urban Subsystem CBRN Dispersion Modeling (cbrnecentral.com) |
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