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BRAINSTACK – A Platform for Artificial Intelligence & Machine Learning Collaborative Experiments on a Nano-Satellite As the space economy continues to expand through increasingly easy access to advanced and inexpensive technology, space missions themselves have become more ambitious with exploration targets growing ever distant while simultaneously requiring larger guidance and communication budgets. These conflicting desires of distance and control drive the need for advanced on-board intelligent decision making to reduce communication and control limitations by automating as many mission functions as possible in-situ. While the amount of research on such Artificial Intelligence and Machine Learning (AI/ML) software modules has grown exponentially, the capacity to experimentally validate such software modules in space in a rapid and inexpensive format has not. To this end, the Nano Orbital Workshop (NOW) group at NASA Ames Research Center has been at the forefront of performing initial flight evaluation tests of ‘commercially’ available bleeding-edge computational platforms via what is programmatically referred to as the BrainStack on the TechEdSat (TES-n) flight series. This on-orbit computational platform provides an evaluation laboratory where advanced software experiments are pre-loaded into memory prior to launch, then executed as payloads during mission operations with results reported back and program tweaks or new training sets uploaded as needed. Processors selected as part of the BrainStack are of ideal size, packaging, and power consumption for easy integration into a cube satellite structure. These experiments have included the evaluation of small, high-performance GPUs and, more recently, neuromorphic processors, in LEO operations. Neuromorphic processors are of particular interest due to their superior power efficiency over GPUs in intelligent automation applications. The first TES-n flight test of an Intel first-generation Loihi neuromorphic processor launched on TES-13, January 13, 2022, and continues to operate in orbit despite no significant modifications to harden the processor against the space environment. The Intel Loihi Gen-1 on TES-13 is characterized by a 14nm 128-core Spiking Neural Network (SNN) able to support on-chip training. The processor is packaged in the Kapoho Bay USB module, providing a relatively straight-forward interface to the bus avionics system. The Kapoho Bay was in turn managed by an Intel Pentium single-board computer to handle scheduling of the software application payloads and communications with the satellite’s primary computer. The recently released Intel Loihi Gen-2, able to support integer-valued spike payloads and produced using 7nm process, will form part of the continually evolving BrainStack in the upcoming three TES-n/NOW flights. The Kapoho Point unit will incorporate eight Loihi-2 processors, enabling neural networks of up to one million neurons and one billion synapsis. Additionally, it is planned to measure the radiation environment these processors experience to understand any degradation or computational artifacts caused by long term space radiation exposure on these novel architectures. This evolving flexible and collaborative environment involving various research teams across NASA and other organizations is intended to be a convenient orbital test platform from which many anticipated future space automation applications may be initially tested.
Document ID
20230011460
Acquisition Source
Ames Research Center
Document Type
Conference Proceedings
Authors
Marcus S. Murbach
(Ames Research Center Mountain View, California, United States)
Eric Barszcz
(Ames Research Center Mountain View, California, United States)
L. Seth Schisler
(Ames Research Center Mountain View, California, United States)
Alejandro J. Salas
(Millennium Engineering and Integration (United States) Arlington, Virginia, United States)
Kwabena Boateng
(Millennium Engineering and Integration (United States) Arlington, Virginia, United States)
Gregoire Marty
(Millennium Engineering and Integration (United States) Arlington, Virginia, United States)
Malachi Mooney-Rivkin
(Millennium Engineering and Integration (United States) Arlington, Virginia, United States)
Avery Brock
(KBR Wyle Services Arlington, Virginia, United States)
Stanley M. Krześniak
(Millennium Engineering and Integration (United States) Arlington, Virginia, United States)
Samuel Zuniga
(Millennium Engineering and Integration (United States) Arlington, Virginia, United States)
Date Acquired
August 2, 2023
Publication Date
August 11, 2023
Publication Information
Publication: SmallSat Conference Proceedings
Publisher: SmallSat Organization
Subject Category
Cybernetics, Artificial Intelligence and Robotics
Report/Patent Number
SSC23-X-03
Meeting Information
Meeting: 37th Annual Small Satellite Conference
Location: Logan, Utah
Country: US
Start Date: August 5, 2023
End Date: August 10, 2023
Sponsors: Ames Research Center
Funding Number(s)
WBS: 991444.01.01.49.A373.22
Distribution Limits
Public
Copyright
Public Use Permitted.
Keywords
Artificial Intelligence
Machine Learning
GPU
Neuromorphic
Spaceflight
Cube Satellite
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