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Bibliographic Details
Main Authors: Clark IV, William H., Ernst, Joseph M., McGwier, Robert W.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2404.01119
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author Clark IV, William H.
Ernst, Joseph M.
McGwier, Robert W.
author_facet Clark IV, William H.
Ernst, Joseph M.
McGwier, Robert W.
contents Cognitive Radios (CRs) build upon Software Defined Radios (SDRs) to allow for autonomous reconfiguration of communication architectures. In recent years, CRs have been identified as an enabler for Dynamic Spectrum Access (DSA) applications in which secondary users opportunistically share licensed spectrum. A major challenge for DSA is accurately characterizing the spectral environment, which requires blind signal classification. Existing work in this area has focused on simplistic channel models; however, more challenging fading channels (e.g., frequency selective fading channels) cause existing methods to be computationally complex or insufficient. This paper develops a novel blind modulation classification algorithm, which uses a set of higher order statistics to overcome these challenges. The set of statistics forms a signature, which can either be used directly for classification or can be processed using big data analytical techniques, such as principle component analysis (PCA), to learn the environment. The algorithm is tested in simulation on both flat fading and selective fading channel models. Results of this blind classification algorithm are shown to improve upon those which use single value higher order statistical methods.
format Preprint
id arxiv_https___arxiv_org_abs_2404_01119
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Automatic Modulation Classification using a Waveform Signature
Clark IV, William H.
Ernst, Joseph M.
McGwier, Robert W.
Signal Processing
Cognitive Radios (CRs) build upon Software Defined Radios (SDRs) to allow for autonomous reconfiguration of communication architectures. In recent years, CRs have been identified as an enabler for Dynamic Spectrum Access (DSA) applications in which secondary users opportunistically share licensed spectrum. A major challenge for DSA is accurately characterizing the spectral environment, which requires blind signal classification. Existing work in this area has focused on simplistic channel models; however, more challenging fading channels (e.g., frequency selective fading channels) cause existing methods to be computationally complex or insufficient. This paper develops a novel blind modulation classification algorithm, which uses a set of higher order statistics to overcome these challenges. The set of statistics forms a signature, which can either be used directly for classification or can be processed using big data analytical techniques, such as principle component analysis (PCA), to learn the environment. The algorithm is tested in simulation on both flat fading and selective fading channel models. Results of this blind classification algorithm are shown to improve upon those which use single value higher order statistical methods.
title Automatic Modulation Classification using a Waveform Signature
topic Signal Processing
url https://arxiv.org/abs/2404.01119