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Metabrain for Embedded Cognition (MBEC)This study presents the application of Hidden Markov Models (HMM) to determine specialized features without expert input. Specifically, the application of such a method for classification of high multi-path fading is targeted, for demonstrating the feasibility of such an approach. This is the first step in the development of a meta-brain for embedded cognition (M-BEC) suite that can be used to apply machine learning to various communication systems at NASA GRC. The project explores the concept of fading and how it affects communication systems in a negative way. Currently, supervised learning methods are used to study the effects of fading on space links. However, such models rely on expert features to make predictions as to the state of a link and whether fading is present. This project offers the possibility of having the HMM learn what characteristics are important and make predictions based on those characteristics. This project explores Hidden Markov Models, their theory and applications to various problems, as well as the underlying equations and assumptions. A preliminary result is presented and recommendations are made as to the use of such an approach for communications systems.
Document ID
20180006437
Acquisition Source
Glenn Research Center
Document Type
Technical Memorandum (TM)
Authors
Roche, Rigoberto
(NASA Glenn Research Center Cleveland, OH, United States)
Briones, Janette C.
(NASA Glenn Research Center Cleveland, OH, United States)
Kowalewski, Brittany N.
(Towson Univ. Towson, MD, United States)
Date Acquired
October 18, 2018
Publication Date
August 1, 2018
Subject Category
Communications And Radar
Report/Patent Number
GRC-E-DAA-TN54156
E-19519
NASA/TM-2018-219877
Funding Number(s)
WBS: WBS 553323.04.10.09.01.01
Distribution Limits
Public
Copyright
Public Use Permitted.
Keywords
Propagation
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