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SBC: AKELA INC Topic: A16AT004
Laboratory investigations have suggested that acoustically or vibrationally inducing motion in buried targets can aid in improving target detectability through a characteristic response related to differential target motion. This gain is realized by adding an additional degree of freedom, modulation due to motion in the GPR return signal, to use as a discriminating feature. The AKELA team is propo ...STTR Phase I 2016 Department of DefenseArmy
SBC: Information Systems Laboratories, Inc. Topic: N09T012
Information Systems Laboratories (ISL) and Florida Atlantic University (FAU) propose to develop and test a system that uses existing signal processing algorithms coupled with innovative construction technology developed ISL under our E-Field sensor programs and FAU under UUV programs. The Challenge is to develop a small system package with the capability to intercept active threat emissions early ...STTR Phase II 2010 Department of DefenseNavy
SBC: Knite Inc Topic: N14AT004
The proposed research for Phase II of topic N14A-T004, Active Combustion Control of Augmentor Dynamics, has the objective of maturing the Augmentor Screech Active Suppression technology demonstrated successfully during Phase I by Knite, Inc. and the University of Cincinnati Gas Dynamics and Propulsion Laboratory. The work plan is intended to provide continued progress focusing on increasing knowle ...STTR Phase II 2016 Department of DefenseNavy
SBC: NEXTGEN AERONAUTICS, INC. Topic: AF17AT018
The focus of this STTR program is the development and maturation of a novel, room-temperature process to fabricate multi-layer metal-polymer (including PVDF and other smart materials) composites in an additive approach. This overcomes the limitation arising from the large temperature difference between metal and polymer manufacturing processes, and presents a new technology for additive manufactur ...STTR Phase II 2019 Department of DefenseAir Force
SBC: KAB LABORATORIES INC. Topic: N10AT044
Synthetic scenario-based training of Navy personnel in the use of Navy SIGINT/IO systems has helped to reduce training costs, and it has enabled the personnel to be trained in an environment that sufficiently approximates real-world situations that could not otherwise be accomplished within the class room. However, scenario development is highly complex and involves a great deal of human effo ...STTR Phase I 2010 Department of DefenseNavy
SBC: POLARIS SENSOR TECHNOLOGIES INC Topic: AF08BT02
Nanoscale infrared detectors are emerging as a potentially powerful alternative to traditional infrared detector technologies. The University of New Mexico has developed dots in a double well (DDWELL) quantum dot infrared photodetectors which have a spectral responsivity that can be tuned by controlling the bias voltage applied. In this Phase II effort, Polaris Sensor and UNM would fabricate a g ...STTR Phase II 2010 Department of DefenseAir Force
SBC: Frontier Technology Inc. Topic: N10AT008
Frontier Technology, Inc. (FTI) and Northeastern University propose to investigate and develop an innovative approach to predict stall events of aircraft engines prior to occurrence and in sufficient time to allow the FADEC controller to adjust engine variables. The team will utilize vector quantization and neural network techniques to develop accurate models of engine behavior that will be used t ...STTR Phase I 2010 Department of DefenseNavy
SBC: METRON INCORPORATED Topic: AF12BT14
ABSTRACT: Existing machine learning algorithms have difficulty using all available data about a problem. This STTR will develop a new algorithm that can make full use of all available data, whether that data is labeled or not, and even when some data types or data resolutions are not available during operation. BENEFIT: This STTR will develop a novel machine learning algorithm for reasoning abo ...STTR Phase I 2013 Department of DefenseAir Force
SBC: AURORA FLIGHT SCIENCES CORPORATION Topic: N10AT008
Aurora Flight Sciences and MIT propose to develop a model-based adaptive health estimation and real-time proactive control to identify gas turbine engine stability risks and avoid them through control action. In this concept, the engine control system actively monitors sensors and actuators, compares them against physical models, and infers which components may be performing poorly and may need to ...STTR Phase I 2010 Department of DefenseNavy
SBC: RADIABEAM TECHNOLOGIES, LLC Topic: N16AT010
The Department of the Navy has a need for the development of an additive manufacturing (AM) process for key vacuum electronic device components to meet on-demand, flexible, and affordable manufacturing requirements. The developed manufacturing method has a potential to reduce cost of vacuum electronics by as much as 70% as well as simplify and hence expedite production process of these devices by ...STTR Phase I 2016 Department of DefenseNavy