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Distributed adaptive direct position determination based on diffusion framework 被引量:2

Distributed adaptive direct position determination based on diffusion framework
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摘要 The conventional direct position determination(DPD) algorithm processes all received signals on a single sensor.When sensors have limited computational capabilities or energy storage,it is desirable to distribute the computation among other sensors.A distributed adaptive DPD(DADPD)algorithm based on diffusion framework is proposed for emitter localization.Unlike the corresponding centralized adaptive DPD(CADPD) algorithm,all but one sensor in the proposed algorithm participate in processing the received signals and estimating the common emitter position,respectively.The computational load and energy consumption on a single sensor in the CADPD algorithm is distributed among other computing sensors in a balanced manner.Exactly the same iterative localization algorithm is carried out in each computing sensor,respectively,and the algorithm in each computing sensor exhibits quite similar convergence behavior.The difference of the localization and tracking performance between the proposed distributed algorithm and the corresponding CADPD algorithm is negligible through simulation evaluations. The conventional direct position determination(DPD) algorithm processes all received signals on a single sensor.When sensors have limited computational capabilities or energy storage,it is desirable to distribute the computation among other sensors.A distributed adaptive DPD(DADPD)algorithm based on diffusion framework is proposed for emitter localization.Unlike the corresponding centralized adaptive DPD(CADPD) algorithm,all but one sensor in the proposed algorithm participate in processing the received signals and estimating the common emitter position,respectively.The computational load and energy consumption on a single sensor in the CADPD algorithm is distributed among other computing sensors in a balanced manner.Exactly the same iterative localization algorithm is carried out in each computing sensor,respectively,and the algorithm in each computing sensor exhibits quite similar convergence behavior.The difference of the localization and tracking performance between the proposed distributed algorithm and the corresponding CADPD algorithm is negligible through simulation evaluations.
出处 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2016年第1期28-38,共11页 系统工程与电子技术(英文版)
基金 supported by the National Natural Science Foundation of China(61101173)
关键词 emitter localization time difference of arrival(TDOA) direct position determination(DPD) distributed adaptive DPD(DADPD) diffusion framework. emitter localization time difference of arrival(TDOA) direct position determination(DPD) distributed adaptive DPD(DADPD) diffusion framework.
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  • 1Y. Norouzi, M. Derakhshani. Joint time difference of arrival/angle of arrival position finding in passive radar, lET Radar, Sensor and Navigation, 2009, 3(2): 167-176.
  • 2H. Godrich, A. M. Haimovich, R. S. Blum. Target localisation techniques and tools for multiple-input multiple-output radar. IET Radar, Sensor and Navigation, 2009, 3(4): 314-327.
  • 3H. Qian, R. S. Blum, A. M. Haimovich. Noncoherent MIMO radar for location and velocity estimation: more antennas means better performance. IEEE Trans. on Signal Processing, 2010, 58(7): 3661-3680.
  • 4M. Jiang, R. Niu, R. S. Blum. Bayesian target location and velocity estimation for multiple-input multiple-output radar, lET Radar, Sensor and Navigation, 2011, 5(6): 666-670.
  • 5S. Simakov. Localization in airborne multistatic sonars. IEEE Journal of Oceanic Engineering, 2008, 33(3): 278-288.
  • 6S. Coraluppi. Multistatic sonar localization. IEEE Journal of Oceanic Engineering, 2006, 31(4): 964-974.
  • 7N. Thanthry, I. Emmuadi, A. Srikumar, et al. svss: intelligent video surveillance system for aircraft. 1EEE Aerospace and Electronic Systems Magazine, 2009, 24(10): 23-29.
  • 8J. M. Gambi, M. C. Rodriguez-Teijeiro, M. L. G. Del Pino, et al. Shapiro time delay within the geolocation problem by TDOA. IEEE Trans. on Aerospace and Electronic Systems, 2011, 47(3): 1948-1962.
  • 9M. Z. Win, A. Conti, S. Mazuelas, et al. Network localization and navigation via cooperation. IEEE Communications Magazine, 2011, 49(5): 56-62.
  • 10E. Y. Xu, Z. Ding, S. Dasgupta. Source localization in wireless sensor networks from signal time-of-arrival measurements. IEEE Trans. on Signal Processing, 2011, 59(6): 2887-2897.

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