Wireless channel extraction analyzing based on graph theory
- Authors: Yao B.1, Yin J.1, Li H.1, Wu W.2
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Affiliations:
- College of Information Science and Technology
- Institute of Deep-sea Science and Engineering
- Issue: Vol 50, No 4 (2016)
- Pages: 233-243
- Section: Article
- URL: https://journal-vniispk.ru/0146-4116/article/view/174411
- DOI: https://doi.org/10.3103/S014641161604009X
- ID: 174411
Cite item
Abstract
Wireless channels comprise various signal characteristics that correspond to different features. This research applies digital signal processing to first excavate and categorize various features found in the channel data. Then, borrowing from graph theory, fast clustering analysis and decision tree modeling are introduced to identify unique “fingerprint” characteristics. Finally, two scenarios were tested using artificial neural networks to identify and verify their applicability in different geographical locations.
About the authors
Biyuan Yao
College of Information Science and Technology
Author for correspondence.
Email: yaobiyuanyy@163.com
China, Haikou, 570228
Jianhua Yin
College of Information Science and Technology
Email: yaobiyuanyy@163.com
China, Haikou, 570228
Hui Li
College of Information Science and Technology
Email: yaobiyuanyy@163.com
China, Haikou, 570228
Wei Wu
Institute of Deep-sea Science and Engineering
Email: yaobiyuanyy@163.com
China, Sanya, 572000
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