NASA SBIR 2021-I Solicitation

Proposal Summary

Proposal Number:          21-1- H9.07-2088
Subtopic Title:
      Cognitive Communication
Proposal Title:
      Delay/Disruption Tolerant Reinforcement Learning and Aurora Based Communication System

Small Business Concern

Stottler Henke Associates, Inc.
1650 South Amphlett Boulevard, Suite 300, San Mateo, CA 94402
(650) 931-2700                                                                                                                                                                                

Principal Investigator:

Richard Stottler
1650 South Amphlett Boulevard, Suite 300, CA 94402 - 2516
(650) 931-2714                                                                                                                                                                                

Business Official:

Nate Henke
1650 South Amphlett Boulevard, Suite 300, CA 94402 - 2516
(650) 931-2719                                                                                                                                                                                

Summary Details:

Estimated Technology Readiness Level (TRL) :                                                                                                                                                          
Begin: 2
End: 4
Technical Abstract (Limit 2000 characters, approximately 200 words):

Stottler Henke proposes DREAMS, the Delay/disruption tolerant REinforcement learning and Aurora based coMmunication System, to address NASA’s need for distributed autonomous adaptive network communications technology, including planning and scheduling. DREAMS-equipped devices will sense and receive data and utilize the latest advances in Reinforcement Learning to discover optimal link parameters (e.g., frequency, modulation scheme) to improve various metrics (focusing on maximizing throughput and minimizing BER). The best links are combined to form potential communications paths from a start node to an end node. When feasible, these paths are aggregated by a nearby scheduling node which consolidates the network state and then allocates communications through the network. The proposed work builds on a series of our relevant research efforts (including several NASA-funded efforts) involving resource planning and scheduling, machine learning, low-SWaP algorithms, and distributed algorithms. We have already built a graphical satellite communications simulator which uses NASA’s WorldWind to display satellites and shifting communications links. In addition, we have already integrated our core planning and scheduling algorithm into NASA’s core Flight System. For these reasons, we propose aggressive Phase I objectives culminating in a Phase I Prototype of TRL 4.

Potential NASA Applications (Limit 1500 characters, approximately 150 words):

Distributed autonomous network communication optimization will become increasingly important as our activity and ambitions in space increase. Optimizing network communications by hand is becoming increasingly challenging; there is a clear need for machine-to-machine fully autonomous network optimization. Stottler Henke’s proposed technology can uniquely fulfill this gap, leveraging past successes with intelligent scheduling, machine learning, and distributed algorithms.

Potential Non-NASA Applications (Limit 1500 characters, approximately 150 words):

A clear transition opportunity is communications for military operations to coordinate mobile and stationary assets in real time in potentially denied environments. Improving situational awareness by increasing data flow in adversarial environments will significantly improve mission outcomes. Commercial networks with intermittent/variable links (including commercial space networks) could benefit.

Duration:     6

Form Generated on 04/06/2021 12:10:41