Social Intelligence for Cognitive Radios
This dissertation introduces the concept of an artificial society based on the use of an action based social language combined with the behavior-based approach to the construction of multi-agent systems to address the problem of developing decentralized, self-organizing networks that dynamically fit...
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ndltd-VTETD-oai-vtechworks.lib.vt.edu-10919-257862020-09-29T05:37:43Z Social Intelligence for Cognitive Radios Kaminski, Nicholas James Electrical and Computer Engineering Bostian, Charles W. Hsiao, Michael S. Sturges, Robert H. Reed, Jeffrey H. MacKenzie, Allen B. Cognitive Radio Cognitive Engine Social Language Social Learning Behavior Based Approach LTE Organization This dissertation introduces the concept of an artificial society based on the use of an action based social language combined with the behavior-based approach to the construction of multi-agent systems to address the problem of developing decentralized, self-organizing networks that dynamically fit into their environment. In the course of accomplishing this, social language is defined as an efficient method for communicating coordination information among cognitive radios inspired by natural societies. This communication method connects the radios within a network in a way that allows the network to learn in a distributed holistic manner. The behavior-based approach to developing multi-agent systems from the field of robotics provides the framework for developing these learning networks. In this approach several behaviors are used to address the multiple objectives of a cognitive radio society and then combined to achieve emergent properties and behaviors. This work presents a prototype cognitive radio society. This society is implemented, using low complexity hardware, and evaluated. The work does not focus on the development of optimized techniques, but rather the complementary design of techniques and agents to create dynamic, decentralized self-organizing networks Ph. D. 2014-02-27T09:00:13Z 2014-02-27T09:00:13Z 2014-02-26 Dissertation vt_gsexam:2289 http://hdl.handle.net/10919/25786 In Copyright http://rightsstatements.org/vocab/InC/1.0/ ETD application/pdf Virginia Tech |
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Cognitive Radio Cognitive Engine Social Language Social Learning Behavior Based Approach LTE Organization |
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Cognitive Radio Cognitive Engine Social Language Social Learning Behavior Based Approach LTE Organization Kaminski, Nicholas James Social Intelligence for Cognitive Radios |
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This dissertation introduces the concept of an artificial society based on the use of an action based social language combined with the behavior-based approach to the construction of multi-agent systems to address the problem of developing decentralized, self-organizing networks that dynamically fit into their environment. In the course of accomplishing this, social language is defined as an efficient method for communicating coordination information among cognitive radios inspired by natural societies. This communication method connects the radios within a network in a way that allows the network to learn in a distributed holistic manner. The behavior-based approach to developing multi-agent systems from the field of robotics provides the framework for developing these learning networks. In this approach several behaviors are used to address the multiple objectives of a cognitive radio society and then combined to achieve emergent properties and behaviors. This work presents a prototype cognitive radio society.
This society is implemented, using low complexity hardware, and evaluated. The work does not focus on the development of optimized techniques, but rather the complementary design of techniques and agents to create dynamic, decentralized self-organizing networks === Ph. D. |
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Electrical and Computer Engineering |
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Electrical and Computer Engineering Kaminski, Nicholas James |
author |
Kaminski, Nicholas James |
author_sort |
Kaminski, Nicholas James |
title |
Social Intelligence for Cognitive Radios |
title_short |
Social Intelligence for Cognitive Radios |
title_full |
Social Intelligence for Cognitive Radios |
title_fullStr |
Social Intelligence for Cognitive Radios |
title_full_unstemmed |
Social Intelligence for Cognitive Radios |
title_sort |
social intelligence for cognitive radios |
publisher |
Virginia Tech |
publishDate |
2014 |
url |
http://hdl.handle.net/10919/25786 |
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AT kaminskinicholasjames socialintelligenceforcognitiveradios |
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1719344424263090176 |