• Title/Summary/Keyword: 무리 로봇공학

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Control of Multiple UAV's based on Swarm Intelligence (무리지능을 이용한 복수 무인기 제어)

  • Oh, Soo-Hun
    • Current Industrial and Technological Trends in Aerospace
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    • v.7 no.1
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    • pp.141-152
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    • 2009
  • The simultaneous operation of multiple UAV's makes it possible for us to raise the mission accomplishment and cost efficiency. For this we need an easily scalable control algorithm, and swarm intelligence having the characteristics such as flexibility, robustness, decentralized control and self-organization comes into the spotlight as a practical substitute. In this paper the features of swarm intelligence are described, and various research results are introduced which show that the application of swarm intelligence to the control of multiple UAV's enables the missions of surveillance, path planning, target tracking and attack to be accomplished efficiently by simulations and tests.

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Area Search of Multiple UAV's based on Evolutionary Robotics (진화로봇공학 기반의 복수 무인기를 이용한 영역 탐색)

  • Oh, Soo-Hun;Suk, Jin-Young
    • Journal of the Korean Society for Aeronautical & Space Sciences
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    • v.38 no.4
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    • pp.352-362
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    • 2010
  • The simultaneous operation of multiple UAV's makes it possible to enhance the mission accomplishment efficiency. In order to achieve this, easily scalable control algorithms are required, and swarm intelligence having such characteristics as flexibility, robustness, decentralized control, and self-organization based on behavioral model comes into the spotlight as a practical substitute. Recently, evolutionary robotics is applied to the control of UAV's to overcome the weakness of difficulties in the logical design of behavioral rules. In this paper, a neural network controller evolved by evolutionary robotics is applied to the control of multiple UAV's which have the mission of searching limited area. Several numerical demonstrations show the proposed algorithm has superior results to those of behavior based neural network controller which is designed by intuition.