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Closed-Loop Extracranial Activation using Reinforcement-learning (CLEAR)

Award Information
Agency: Department of Defense
Branch: Air Force
Contract: FA8650-19-C-6039
Agency Tracking Number: F17B-002-0019
Amount: $749,964.00
Phase: Phase II
Program: STTR
Solicitation Topic Code: AF17B-T002
Solicitation Number: 17.B
Timeline
Solicitation Year: 2017
Award Year: 2019
Award Start Date (Proposal Award Date): 2019-03-12
Award End Date (Contract End Date): 2021-03-12
Small Business Information
625 Mount Auburn Street
Cambridge, MA 02138
United States
DUNS: 115243701
HUBZone Owned: No
Woman Owned: No
Socially and Economically Disadvantaged: No
Principal Investigator
 Aaron Winder
 Scientist
 (617) 491-3474
 awinder@cra.com
Business Contact
 Yvonne Fuller
Phone: (617) 491-3474
Email: yfuller@cra.com
Research Institution
 The University of New Mexico
 Ms. Lindsay Britt Ms. Lindsay Britt
 
Logan Hall, MSC03-2220 One University of New Mexico
Albuquerque, NM 87131
United States

 (505) 277-0035
 Nonprofit College or University
Abstract

High workloads and operational pressures can degrade human analysts’ cognitive performance, jeopardizing their ability to carry out mission-critical tasks. To maximize the potential of human analysts, a method is required to enhance performance across a broad array of human analysts, tasks, and contexts. Real-time evaluation of cognitive state and novel technologies for closed-loop feedback control of non-invasive brain stimulation can provide reliable and effective augmentation of dynamic brain information processing capacities (dBIPC). Assessments of electrical and hemodynamic brain activity, combined with behavioral measures, can evaluate state and optimize performance using stimulation. Charles River Analytics conducted a Phase I effort to demonstrate the feasibility of a system for Closed-Loop Extracranial Activation using Reinforcement Learning (CLEAR), a hardware agnostic, closed-loop system that monitors, detects, and safely manages individual stimulation parameters using reinforcement learning with flexible reward and policy mechanisms. Based on our successful Phase I results, we now propose a Phase II effort to refine and demonstrate CLEAR. CLEAR combines real-time electroencephalography (EEG) and functional near-infrared spectroscopy (fNIRS) to unobtrusively assess cognitive state. CLEAR uses reinforcement learning techniques to optimize stimulation parameters, delivering targeted modulation to reliably enhance performance for extended periods.

* Information listed above is at the time of submission. *

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