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Chemical & Biological Warfare Defense
Chemical and biological defense (CBD) programs at SRI have been ongoing since 1978 and include pioneering work to detect and identify, neutralize, and protect against CW and BW agents in a variety of environments. Work ranges from basic research, applied science and engineering, database and signal processing, algorithm development, modeling, and concept feasibility demonstrations to hardware integration and field testing of systems. Multidisciplinary approaches involve physical, analytical, and polymer chemists; molecular and microbiologists; material scientists; physicists; and chemical, mechanical, and electronics engineers. Owing to the resident technical strengths and markets served, the expertise that SRI brings to bear in these multidisciplinary approaches to CBD problems is not found elsewhere.
Supporting Chemical & Biological Warfare Defense
- Development of new sensors including nucleic acid-based and tissue based sensors
- Pathogen countermeasures
- Medical treatment(s) and evaluation of long term effects
- Vaccine and drug development
- Protection and decontamination systems
- Domestic preparedness/incident response evaluation
- Collection and information systems development
History of Contributions To CB Defense
1975 to 1980 Demonstrated feasibility of laser remote CB sensing
1970 to 1979 Established that bacteria fluoresce in the 300 to 400 nm region when excited by light in the 260 to 290 nm region
1979 Developed first UV biofluorescence lidar sensor
1992 First quantitative measurements of the fluorescent scattering cross sections of biological simulant aerosols and interferents
1997 Established UV-LIF spectroscopic database for biological materials
1990 Developed first portable near real-time biofluoro-sensor system for point detection of biological aerosols
1995 to Present Discovery and development of the use of upconverting phosphors for biosensors
A Technology Base That Spans All Aspects of
CB Defense
- Development of new sensors including nucleic acid-based and tissue based sensors
- Remote sensing, instrumentation, microfabrication, microsensors, optical materials, taggants
- Materials and coatings, chemistry and chemical engineering Platform technologies including ROVs and UAVs
- Specialized robotic systems for collection, analysis and countermeasures
- Testing facilities and instrumentation suitable for testing weapons effects against CB warheads and facilities
- Situational awareness information systems development including intelligent decision tools, C4I, and sensor fusion
- Molecular and cellular biology including target detection based on protein and nucleic acid detection, identification of gene mechanisms and tissue-based detection technologies
- Assay and drug development including vaccine therapy development
- Development of sample collectors including aerosols
Discovery & Development of Upconverting
Phosphor Technology for Biological Sensors
Key advantages of the UCP technology include:
- High sensitivity (single-phosphor particle)
- Many colors for multiplexing (10 unique colors currently)
- Robust, no photobleaching
- Diode laser excitation (compact sensors)
Upconverting Phosphor Technology
SRI International's Upconverting Phosphor Technology (UPT) has the
following superior advantages for BW agent detection and identification:
- High sensitivity due to zero optical background because no other materials
in nature upconvert
- Many unique colors excited by the same laser for multiplexing
- Robust--no photobleaching
- Diode laser readout providing for compact, long lifetime sensors.
Samples can be archived at room temperature for subsequent analysis. Two
instrument platforms are at the prototype stage of development.
SRI, under DARPA support, developed a battery operated, handheld
sensor that allows highly sensitive, rapid detection of multiple pathogens
(bacteria, viruses, and toxins) simultaneously. The system uses UPT to color-code
different pathogens in a test strip. Prototype units are being tested.
Also, a compact UPT-based flow cytometer capable
of simultaneous detection and identification of multiple antigens is being
developed under co-sponsorship of DARPA and the Defense Threat Reduction
Agency. Increased sensitivities with significantly improved assay reaction
times have been demonstrated. Prototype units are undergoing testing.
Standoff Detection Systems (Lidar)
SRI International developed and proved the feasibility of using
infrared Differential Absorption Lidar (DIAL) with CO2 lasers
to remotely detect CW agent vapors at ranges up to tens of kilometers. Both
airborne and ground-based standoff detection systems for CW agents have
been developed and tested for the U.S. and French Governments. Work on standoff
detection using lidar systems is continuing with the development of newer
laser transmitters and more robust detection algorithms.
The detection and identification of biological warfare agents presents a
more challenging problem. Under U.S. Army sponsorship, SRI investigated
the fluorescence spectra of biological agents to measure critical spectral
parameters for BW detection. Under a DARPA SBIR Phase II contract, EOO Inc.
(269 N. Mathilda Ave., Sunnyvale, CA 94086, 408-738-5390), with SRI International
as a subcontractor, tested a breadboard hybrid biological weapons (BW) agent
light-detection-and-ranging (lidar) system at the Summer 98 Standoff Detection
Joint Field Trials (JFT). These tests, sponsored by the Joint Program Office
for Biological Defense, occurred at the U.S. Army's Dugway Proving Ground
(DPG).
This hybrid system is the smallest, first ever standoff detector that combines:
- Aerosol cloud mapping based on infrared (IR) elastic backscatter detection;
- Ultraviolet (UV) induced fluorescence measurements to determine whether
the cloud is biological or not; and
- Determination of the wind field (speed and direction) using edge-filter
Doppler information.
These capabilities are essential for early warning of a BW attack and assessment
of downwind hazard conditions. A common IR laser source is used for all
three measurements with nonlinear shifting to obtain the UV. Where expedient,
commercial-off-the-shelf components were used in the breadboard that was
mounted in a van to show concept feasibility. Follow-on improvements at
EOO with SRI support brought the system performance up to the design criteria.
Parametric studies provided performance vs. form/fit trade-offs that show
the design pathway for mounting a hybrid system on a UAV.
Right: Hybrid Lidar Image
Signal Processing/Algorithm Development
With the frequency agile laser (FAL) advantage of tuning to more than 60
wavelengths in less than a second, the opportunity exists to improve upon
traditional two-wave-length DIAL for CW detection. To address shortcomings
in traditional pattern recognition algorithms based on linear or quadratic
discriminants, SRI has developed compelling multivariate statistical inference
techniques, particularly estimation and hypothesis testing, that can be
used to construct optimal detection algorithms based on the likelihood ratio
test methodology. Maximum likelihood estimates of vapor concentration pathlength
(CL) and its uncertainty are derived as byproducts of the detection test.
This approach has been successfully applied to multicomponent CL detection
and estimation using lidar with FAL sources.
Specifically, methods to optimally detect and estimate vapor concentration
from FAL lidar data addressed signals with a fluctuating component caused
by the shot-to-shot variations in the transmitted energy for situations
where a local measurement of this energy is made. Previous methods, in which
the received lidar signal is ratioed to the energy monitor data, are not
only suboptimal, but can degrade lidar performance below that obtained without
normalization. This optimal approach, exercised on simulated and actual
FAL data, is a linear correction to the received signal that is proportional
to the monitor data. The estimated correlation between the transmitted and
received signals serves as the optimal proportionality factor for each wavelength.
This work, which was performed in fixed-size data, has been extended to
address the time series aspects of data collection. The vapor CL is modeled
as a simple random walk process in time, thereby leading to a replacement
of the maximum likelihood estimates with extended Kalman filter estimates.
Not only is the CL estimation variance reduced, but also the Kalman filter
approach is better suited to real-time implementation because it does not
require the iterative solution of nonlinear likelihood equations encountered
in the earlier approach. These techniques are being applied in the Department
of Defense's Joint Service Chemical Warning and Identification Lidar Detector
(JSCWILD) program.
In a complementary SRI thrust, it is important to note that traditional
pattern recognition algorithms based on linear or quadratic discriminants
force the data into linear vector space frameworks that are amenable to
convenient linear processing. This strategy, however, is only valid for
weak absorption conditions. Strongly absorbing components can lead to higher
false alarms, both negative (missed detection) and positive (interference
detection). To address this type of shortcoming, signal models can be constructed
for the data that recognize the essentially nonlinear mapping between the
path-integrated concentration (CL) and the observed spectral signature.
Using such models, the aforementioned estimation and hypothesis testing
techniques can be used to construct optimal detection algorithms. As in
the case of multicomponent CL detection and estimation for FAL sources,
maximum likelihood estimates of vapor CL and its uncertainty are obtained.
These techniques may be useful in passive infrared remote sensing applications.
For Further
Information on Chem/Bio Defense Applications: Contact Us
Dr. David E. Cooper, Director
Sensor Systems Laboratory
Physical Sciences Division
650-859-3742
david.cooper@sri.com
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