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THE RESEARCH OF GRADATION FUSION ALGORITHM BASED ON MULTISENSOR ASYNCHRONOUS SAMPLING SYSTEM 被引量:3

THE RESEARCH OF GRADATION FUSION ALGORITHM BASED ON MULTISENSOR ASYNCHRONOUS SAMPLING SYSTEM
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摘要 This letter explores the distributed multisensor dynamic system, which has uniform sampling velocity and asynchronous sampling data for different sensors, and puts forward a new gradation fusion algorithm of multisensor dynamic system. As the total forecasted increment value between the two adjacent moments is the forecasted estimate value of the corresponding state increment in the fusion center, the new algorithm models the state and the forecasted estimate value of every moment. Kalman filter and all measurements arriving sequentially in the fusion period are employed to update the evaluation of target state step by step, on the condition that the system has obtained the target state evaluation that is based on the overall information in the previous fusion period. Accordingly, in the present period, the fusion evaluation of the target state at each sampling point on the basis of the overall information can be obtained. This letter elaborates the form of this new algorithm. Computer simulation demonstrates that this new algorithm owns greater precision in estimating target state than the present asynchronous fusion algorithm calibrated in time does. This letter explores the distributed multisensor dynamic system, which has uniform sampling velocity and asynchronous sampling data for different sensors, and puts forward a new gradation fusion algorithm of multisensor dynamic system. As the total forecasted increment value between the two adjacent moments is the forecasted estimate value of the corresponding state increment in the fusion center, the new algorithm models the state and the forecasted estimate value of every moment. Kalman filter and all measurements arriving sequentially in the fusion period are employed to update the evaluation of target state step by step, on the condition that the system has obtained the target state evaluation that is based on the overall information in the previous fusion period. Accordingly, in the present period, the fusion evaluation of the target state at each sampling point on the basis of the overall information can be obtained. This letter elaborates the form of this new algorithm. Computer simulation demonstrates that this new algorithm owns greater precision in estimating target state than the present asynchronous fusion algorithm calibrated in time does.
出处 《Journal of Electronics(China)》 2005年第5期534-545,共12页 电子科学学刊(英文版)
基金 Supported by the National Natural Science Foundation of China (No.60434020, 60374020)International Cooperation Item of Henan (No.0446650006)Henan Outstanding Youth Science Fund (No.0312001900).
关键词 传感器 异步取样系统 滤波器 分布式动态系统 估计值 Multisensor system Gradation fusion Asynchronous sampling Kalman filtering
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  • 1A. T. Alouani,T. R. Rice.Performance analysis of an asynchronous track fusion and architecture, Proc[].of SPIE Orlando.1997

同被引文献21

  • 1文成林,吕冰,葛泉波.一种基于分步式滤波的数据融合算法[J].电子学报,2004,32(8):1264-1267. 被引量:31
  • 2段战胜,韩崇昭.相关量测噪声情况下多传感器集中式融合跟踪[J].系统工程与电子技术,2005,27(7):1160-1163. 被引量:14
  • 3葛泉波,汪国安,汤天浩,文成林.基于有理数倍采样的异步数据融合算法研究[J].电子学报,2006,34(3):543-548. 被引量:9
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  • 6Alouani A T, Rice T R. On optimal synchronous and asynchronous track fusion[J]. Optical Engineering, 1998, 37(2): 427 - 433.
  • 7Blair W D, Rice T R, Alouani A T, et al. Asynchronous data fusion for target tracking with a multitasking radar and optical sensor[C]//Proc. Of acquisition, tracking, and Pointing V, SPIE, Orland, FL, 1991, 1482:234-245.
  • 8Yan L Y, Liu B S, Zhou D H. The modeling and estimation of asynchronous multirate multisensor dynamic systems[J]. Aerospace Science and Technology, 2006(10) : 63 - 71.
  • 9Bahador Khaleghi, Alaa Khamis, Fakhreddine O Karray, et al. Multisensor data fusion:A review of the state-of-the-art[ J]. Infor- mation Fusion,2013,14:28 -44.
  • 10Sajjad Safari, Faridoon Shabani, Dan Simon, Muhirate multisensor data fusion for linear systems using Kalman filters and a neural network [ J ]. Aerospace Science and Technology ,2014,39:465 - 471.

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