Measurement-converted Kalman filter tracking with Gaussian intensity attenuation signal in wireless sensor networks

Author:

Wen Sha12,Xing Liqiang1,Hu Xiaoqing3,Zhang Hui4

Affiliation:

1. China National Institute of Standardization (CNIS), Beijing, China

2. Electronic Technology Information Research Institute, Ministry of Industry and Information Technology of China, Beijing, China

3. Institute of Acoustics, Chinese Academy of Sciences, Beijing, China

4. Department of Engineering Physics, Tsinghua University, Beijing, China Sha Wen, China National Institute of Standardization (CNIS), Beijing 100191, China

Abstract

In this article, the target tracking problem in a wireless sensor network with nonlinear Gaussian signal intensity attenuation model is considered. A Bayesian filter tracking algorithm is presented to estimate the locations of moving source that has unknown central signal intensity. This approach adopts a measurement conversion method to remove the measurement nonlinearity by the maximum likelihood estimator, and a linear estimate of the target position and its associated noise statistics obtained by the Newton–Raphson iterative optimization steps are applied into the standard Kalman filter. The Monte Carlo simulations have been conducted in comparison with the commonly used extended Kalman filter with an augmented state that consists of both the original target state and the augmentative central signal intensity. It is observed that the proposed measurement-converted Kalman filter can yield higher accurate estimate and nicer convergence performance over existing methods.

Funder

Foundation of President of the China National Institute of Standardization

Strategic Priority Research Program

National Natural Science Foundation of China

Publisher

SAGE Publications

Subject

Computer Networks and Communications,General Engineering

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