Title :
Information weighted consensus-based distributed particle filter for large-scale sparse wireless sensor networks
Author :
Wenjun Tang ; Guoliang Zhang ; Jing Zeng ; Yanan Yue
Author_Institution :
High-Tech Inst. of Xi´an, Xi´an, China
Abstract :
To the problem of information fusion estimation for large-scale sparse wireless sensor networks (WSNs), a novel algorithm, named the information weighted consensus-based distributed particle filter, is presented. The proposed filter can avoid the divergence of the consensus error introduced by the naive nodes in the large-scale sparse WSNs. This is achieved by embedding an information weighted local particle filter (LPF) and a weighted-average consensus filter as the underlying filter and the top filter, respectively in each sensor node. The information weighted LPF will enable the weighted-average consensus filter to be used in the information space to communicate the information matrix and information state in a distributed fashion. And the weighted-average consensus filter will guarantee that a weighted average consensus for all initial states can be reached with some consensus error, which will not be divergent. Moreover, at the same time, the cross correlation between each pair of networked nodes can be approximately computed, which will further inhibit the divergence among the local estimated states of the filters embedded in each node. Finally, some examples are presented to illustrate the reasonability of the theoretical derivation.
Keywords :
matrix algebra; particle filtering (numerical methods); wireless sensor networks; LPF; WSN; consensus error; distributed fashion; information fusion estimation; information matrix; information state; information weighted consensus based distributed particle filter; information weighted local particle filter; large scale sparse wireless sensor networks; naive nodes; sensor node; top filter; underlying filter;
Journal_Title :
Communications, IET
DOI :
10.1049/iet-com.2014.0338