School of Mechanical Engineering, Nanjing University of Science and Technology, Nanjing 210018, China.
North Information Control Research Academy Group Co., Ltd., Nanjing 211153, China.
Sensors (Basel). 2023 Jun 17;23(12):5673. doi: 10.3390/s23125673.
This paper is concerned with the estimation of correlated noise and packet dropout for information fusion in distributed sensing networks. By studying the problem of the correlation of correlated noise in sensor network information fusion, a matrix weight fusion method with a feedback structure is proposed to deal with the interrelationship between multi-sensor measurement noise and estimation noise, and the method can achieve optimal estimation in the sense of linear minimum variance. Based on this, a method is proposed using a predictor with a feedback structure to compensate for the current state quantity to deal with packet dropout that occurs during multi-sensor information fusion, which can reduce the covariance of the fusion results. Simulation results show that the algorithm can solve the problem of information fusion noise correlation and packet dropout in sensor networks, and effectively reduce the fusion covariance with feedback.
本文研究了分布式传感网络中信息融合的相关噪声和分组丢失估计问题。通过研究传感器网络信息融合中相关噪声的相关性问题,提出了一种具有反馈结构的矩阵权融合方法,用于处理多传感器测量噪声和估计噪声之间的相互关系,该方法可以在线性最小方差意义上实现最优估计。在此基础上,提出了一种利用具有反馈结构的预测器补偿当前状态量的方法来处理多传感器信息融合过程中发生的分组丢失问题,从而可以降低融合结果的协方差。仿真结果表明,该算法能够解决传感器网络中信息融合噪声相关性和分组丢失问题,并有效地降低反馈融合的协方差。