Height sensitive multi-UAV deployment scheme in edge data acquisition system

IF 0.9 4区 工程技术 Q4 COMPUTER SCIENCE, HARDWARE & ARCHITECTURE Journal of Circuits Systems and Computers Pub Date : 2023-10-20 DOI:10.1142/s0218126624501056
Yichuan Liu, Jinbin Tu, Yun Wang
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Abstract

In data acquisition scenario of edge computing, the optimization of UAV (Unmanned Aerial Vehicle) deployment is of great significance for making use of resources of UAV. We establish an optimization model of UAV cluster deployment in the edge data acquisition system. The model takes the height of UAV as the solving variable, which is more in line with the realistic characteristics. DEVIPSK-SA-FWA is proposed according to the characteristics of this model. The algorithm uses a novel coding mechanism, and uses K-Means to accelerate the convergence process of the algorithm. A variety of differential evolution mutation operators are used to form a self-adaptive strategy pool mechanism to carry out variable scale variation of population, which complete the global search well. Then fireworks algorithm searches the population locally after each round of global search. In our algorithm, global search and local search are well balanced and local optimal is effectively escaped. Finally, experimental results indicate that DEVIPSK-SA-FWA is capable of solving the model with good results, and the superiority of DEVIPSK-SA-FWA is verified through the Wilcoxon rank sum test method. In the best case, the proposed algorithm reduces energy consumption of edge data acquisition system by 32.87[Formula: see text].
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边缘数据采集系统中高度敏感多无人机部署方案
在边缘计算的数据采集场景下,优化无人机的部署对充分利用无人机资源具有重要意义。建立了无人机集群部署在边缘数据采集系统中的优化模型。该模型以无人机的高度作为求解变量,更符合实际特点。根据该模型的特点,提出了DEVIPSK-SA-FWA。该算法采用了一种新颖的编码机制,并利用K-Means加速了算法的收敛过程。利用多种差分进化突变算子,形成自适应策略池机制,对种群进行变尺度变异,较好地完成了全局搜索。然后在每一轮全局搜索后,烟花算法局部搜索种群。该算法很好地平衡了全局搜索和局部搜索,有效地避免了局部最优。最后,实验结果表明,DEVIPSK-SA-FWA能够求解该模型并取得较好的结果,并通过Wilcoxon秩和检验方法验证了DEVIPSK-SA-FWA的优越性。在最佳情况下,该算法使边缘数据采集系统能耗降低32.87[公式:见文]。
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来源期刊
Journal of Circuits Systems and Computers
Journal of Circuits Systems and Computers 工程技术-工程:电子与电气
CiteScore
2.80
自引率
26.70%
发文量
350
审稿时长
5.4 months
期刊介绍: Journal of Circuits, Systems, and Computers covers a wide scope, ranging from mathematical foundations to practical engineering design in the general areas of circuits, systems, and computers with focus on their circuit aspects. Although primary emphasis will be on research papers, survey, expository and tutorial papers are also welcome. The journal consists of two sections: Papers - Contributions in this section may be of a research or tutorial nature. Research papers must be original and must not duplicate descriptions or derivations available elsewhere. The author should limit paper length whenever this can be done without impairing quality. Letters - This section provides a vehicle for speedy publication of new results and information of current interest in circuits, systems, and computers. Focus will be directed to practical design- and applications-oriented contributions, but publication in this section will not be restricted to this material. These letters are to concentrate on reporting the results obtained, their significance and the conclusions, while including only the minimum of supporting details required to understand the contribution. Publication of a manuscript in this manner does not preclude a later publication with a fully developed version.
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