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State Predictor of Classification Cognitive Engine Applied to Channel FadingThis study presents the application of machine learning (ML) to a space-to-ground communication link, showing how ML can be used to detect the presence of detrimental channel fading. Using this channel state information, the communication link can be used more efficiently by reducing the amount of lost data during fading. The motivation for this work is based on channel fading observed during on-orbit operations with NASA's Space Communication and Navigation (SCaN) testbed on the International Space Station (ISS). This paper presents the process to extract a target concept (fading and not-fading) from the raw data. The pre-processing and data exploration effort is explained in detail, with a list of assumptions made for parsing and labelling the dataset. The model selection process is explained, specifically emphasizing the benefits of using an ensemble of algorithms with majority voting for binary classification of the channel state. Experimental results are shown, highlighting how an end-to-end communication system can utilize knowledge of the channel fading status to identity fading and take appropriate action. With a laboratory testbed to emulate channel fading, the overall performance is compared to standard adaptive methods without fading knowledge, such as adaptive coding and modulation.
Document ID
20190029014
Acquisition Source
Glenn Research Center
Document Type
Conference Paper
Authors
Roche, Rigoberto
(NASA Glenn Research Center Cleveland, OH, United States)
Downey, Joseph A.
(NASA Glenn Research Center Cleveland, OH, United States)
Koch, Mick V.
(NASA Glenn Research Center Cleveland, OH, United States)
Date Acquired
August 13, 2019
Publication Date
June 25, 2019
Subject Category
Cybernetics, Artificial Intelligence And Robotics
Communications And Radar
Report/Patent Number
GRC-E-DAA-TN68646
Meeting Information
Meeting: Cognitive Communications for Space Applications Workshop
Start Date: June 25, 2019
Sponsors: Ohio Aerospace Inst., Institute of Electrical and Electronics Engineers, NASA Glenn Research Center
Funding Number(s)
WBS: 553323.04.10.08.01.01
Distribution Limits
Public
Copyright
Work of the US Gov. Public Use Permitted.
Technical Review
Single Expert
Keywords
Fading
Mitigation
Kernel Methods
Supervised Learning
Machine Learning
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