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Acoustic Sensor Network Node Self-localization Based on Adaptive Particle Swarm Optimization
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  • 作者:Jinjie Yao (23)
    Yan Han (23)
    Liming Wang (23)
    Jinxiao Pan (23)
    Peirui Bai (24)
    Jianhui Zhou (25)
  • 关键词:Self ; localization ; Particle swarm optimization ; Comprehensive learning ; Adaptive mutation
  • 刊名:Lecture Notes in Computer Science
  • 出版年:2012
  • 出版时间:2012
  • 年:2012
  • 卷:7530
  • 期:1
  • 页码:714-720
  • 全文大小:216KB
  • 参考文献:1. Chu, H.C., Jan, R.H.: A GPS-less, outdoor, self-positioning method for wireless sensor networks. Ad Hoc Networks聽5, 547鈥?57 (2007) CrossRef
    2. Mao, G.Q., Fidan, B., Anderson, B.D.O.: Wireless sensor network localization technique. Computer Networks聽51, 2529鈥?553 (2007) CrossRef
    3. Bahi Jacques, M., Abdallah, M., Mostefaoui, A.: Localization and Coverage for high density sensor networks. Computer Communications聽31, 770鈥?81 (2008) CrossRef
    4. Vemula, M., Bugallo, M.F., Djuric, P.M.: Sensor self-localization with beacon position uncertainty. Signal Processing聽89, 1144鈥?154 (2009) CrossRef
    5. Zhou, Z., Cui, J.H., Zhou, S.L.: Efficient localization for large-scale underwater sensor networks. Ad Hoc Networks聽8, 267鈥?79 (2010) CrossRef
    6. Cai, X.J., Cui, Z.H., Zeng, J.C., Tan, Y.: Dispersed particle swarm optimization. Information Processing Letters聽105, 231鈥?35 (2008) CrossRef
    7. Chatterjee, A., Siarry, P.: Nolinear inertia weight variation for dynamic adaptation in particle swarm optimization. Computers & Operations Research聽33, 859鈥?71 (2006) CrossRef
    8. Jiao, B., Lian, Z.G., Gu, X.S.: A dynamic inertia weight particle optimization algorithm. Chaos, Solutions and Fractals聽37, 698鈥?05 (2008) CrossRef
    9. Wu, Q.: Power load forecasts based on hybrid PSO with Gaussian and adaptive mutation and Wv-SVM. Expert Systems with Applications聽37(1), 94鈥?01 (2010)
    10. Zheng, X.W., Liu, H.: A hybrid vertical mutation and self-adaptation based MOPSO. Computers and Mathematics with Applications聽57, 2030鈥?038 (2009) CrossRef
  • 作者单位:Jinjie Yao (23)
    Yan Han (23)
    Liming Wang (23)
    Jinxiao Pan (23)
    Peirui Bai (24)
    Jianhui Zhou (25)

    23. National Key Laboratory of Electronic Testing Technology, North University of China, 030051, Taiyuan, China
    24. College of Information & Electrical Engineering, Shandong University of Science and Technology, 266510, Qingdao, China
    25. Sichuan of Institute Aerospace Electronic Equipment, 610100, Chengdu, China
文摘
It is quite important to obtain the sensor nodes location information in the underwater acoustic sensor networks localization. A method of acoustic sensor network node self-localization based on adaptive particle swarm optimization is proposed aiming at the stringent difficulties of the underwater acoustic sensor node localization and the shortage of standard particle swarm optimization (PSO) algorithm which is easily trapped into the local optimum. In the method, the global search ability and the local performance of the PSO algorithm are effectively improved by balancing the stochastic inertia weight. At the same time, the proposed method finds easy and elegant solutions to get rid of the local optimization by adopting the adaptive mutation strategy. The experimental results indicated that the new method can effectively solve the current problem in the underwater acoustic sensor node localization, and the pointing accuracy achieves 0.605m.

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