| Literature DB >> 35458985 |
Zhen Zhang1, Jianfeng Wu1, Yan Zhao1, Ruining Luo1.
Abstract
In the context of distributed defense, multi-sensor networks are required to be able to carry out reasonable planning and scheduling to achieve the purpose of continuous, accurate and rapid target detection. In this paper, a multi-sensor cooperative scheduling model based on the partially observable Markov decision process is proposed. By studying the partially observable Markov decision process and the posterior Cramer-Rao lower bound, a multi-sensor cooperative scheduling model and optimization objective function were established. The improvement of the particle filter algorithm by the beetle swarm optimization algorithm was studied to improve the tracking accuracy of the particle filter. Finally, the improved elephant herding optimization algorithm was used as the solution algorithm of the scheduling scheme, which further improved the algorithm performance of the solution model. The simulation results showed that the model could solve the distributed multi-sensor cooperative scheduling problem well, had higher solution performance than other algorithms, and met the real-time requirements.Entities:
Keywords: distributed defense; intelligent optimization algorithm; multi-sensor scheduling; partially observable Markov decision process
Mesh:
Year: 2022 PMID: 35458985 PMCID: PMC9026490 DOI: 10.3390/s22083001
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.847
Figure 1Multi-sensor collaborative scheduling framework.
Figure 2Online scheduling process.
Figure 3Single task cycle scheduling process.
Operation time comparison.
| Parameter | PF | EKF | PSO-PF | BSO-PF |
|---|---|---|---|---|
| N = 100 | 0.1253 | 0.1185 | 0.2025 | 0.1872 |
| N = 200 | 0.1896 | 0.1809 | 0.2984 | 0.2863 |
Figure 4Target tracking trajectory graph.
Figure 5Algorithm comparison chart.
Figure 6Accuracy variation at different thresholds.
Figure 7Sensor deployment plan.
Figure 8The 25 s and 80 s sensor scheme selection.
Figure 9Comparison of fitness values of three methods.
Figure 10Three algorithm fitness value changes at the 25 s time.
Comparison and analysis of performance of three algorithms.
| Algorithm | Average Fitness | Average Number of Iterations | Average Operation Time |
|---|---|---|---|
| Improved elephant herding optimization algorithm | 172.38 | 18.65 | 0.32 |
| Improved bee colony algorithm | 167.69 | 32.34 | 0.48 |
| Ant colony algorithm | 162.37 | 39.41 | 0.53 |