| Literature DB >> 28481243 |
Quanbo Ge1,2, Zhongliang Wei3, Tianfa Cheng4, Shaodong Chen5, Xiangfeng Wang6.
Abstract
Compared with the fixed fusion structure, the flexible fusion structure with mixed fusion methods has better adjustment performance for the complex air task network systems, and it can effectively help the system to achieve the goal under the given constraints. Because of the time-varying situation of the task network system induced by moving nodes and non-cooperative target, and limitations such as communication bandwidth and measurement distance, it is necessary to dynamically adjust the system fusion structure including sensors and fusion methods in a given adjustment period. Aiming at this, this paper studies the design of a flexible fusion algorithm by using an optimization learning technology. The purpose is to dynamically determine the sensors' numbers and the associated sensors to take part in the centralized and distributed fusion processes, respectively, herein termed sensor subsets selection. Firstly, two system performance indexes are introduced. Especially, the survivability index is presented and defined. Secondly, based on the two indexes and considering other conditions such as communication bandwidth and measurement distance, optimization models for both single target tracking and multi-target tracking are established. Correspondingly, solution steps are given for the two optimization models in detail. Simulation examples are demonstrated to validate the proposed algorithms.Entities:
Keywords: combinatorial optimization; flexible fusion structure; mixed fusion method; sensor subsets selection; system survivability; tracking accuracy
Year: 2017 PMID: 28481243 PMCID: PMC5469650 DOI: 10.3390/s17051045
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1The basic information fusion structure.
Figure 2The change curve of s.
Figure 3Radar map of enemy and friend initial states.
Figure 4Trace of fusion error covariance of target .
Figure 5Optimal allocation trace of fusion error covariance of target .
Figure 6Radar map of enemy and friend instantaneous states.
Figure 7Trace of fusion error covariance of target and .
Figure 8Optimal allocation trace of fusion error covariance of target and .