SBIR-STTR Award

Autonomous Swarming Hierarchies (ASH)
Award last edited on: 4/27/2024

Sponsored Program
STTR
Awarding Agency
DOD : Navy
Total Award Amount
$139,931
Award Phase
1
Solicitation Topic Code
N23B-T031
Principal Investigator
Marco Montes De Oca

Company Information

Boston Fusion Corporation

70 Westview Street Suite 100
Lexington, MA 02421
   (617) 583-5730
   info@bostonfusion.com
   www.bostonfusion.com

Research Institution

Rutgers University

Phase I

Contract Number: N68335-23-C-0709
Start Date: 9/13/2023    Completed: 3/11/2024
Phase I year
2023
Phase I Amount
$139,931
Boston Fusion Corp. and the Cyber-Physical Systems Laboratory at Rutgers University propose Autonomous Swarming Hierarchies (ASH), a platform-agnostic multi-robot system (MRS) design software suite with three components: 1) a coordination module (CASH) that uses artificial intelligence/machine learning to automatically generate control policies for the robots comprising the system, 2) a networking module (NASH) that automatically synthesizes the MRS cyber topology, while enforcing connectivity constraints, modalities, encoding options, etc., and 3) an optimization module (OASH) that uses an optimization engine to search for the best physical and logical robot configurations that meet specific performance bounds. With CASH, a user can train an MRS to best coordinate the accomplishment of a mission; however, the user needs to specify a priori the types of robots in the system, their software configuration, and the system’s cyber topology. With CASH and NASH together, the user still needs to specify the types of robots that comprise the system, but the cyber topology is automatically synthesized. If OASH is also enabled, the types of robots or their software configuration will be optimized for the desired mission. ASH’s modularity affords maximum flexibility in MRS mission design and deployment.

Phase II

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Start Date: 00/00/00    Completed: 00/00/00
Phase II year
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