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张冰梅, 陈宏滨. 无人机群分簇辅助的无线传感器网络数据采集算法J. 桂林电子科技大学学报, 2026, 46(2): 111-120. DOI: 10.16725/j.1673-808X.2025130
引用本文: 张冰梅, 陈宏滨. 无人机群分簇辅助的无线传感器网络数据采集算法J. 桂林电子科技大学学报, 2026, 46(2): 111-120. DOI: 10.16725/j.1673-808X.2025130
ZHANG Bingmei, CHEN Hongbin. Unmanned aerial vehicle swarm cluster-based data collection algorithm for wireless sensor networkJ. Journal of Guilin University of Electronic Technology, 2026, 46(2): 111-120. DOI: 10.16725/j.1673-808X.2025130
Citation: ZHANG Bingmei, CHEN Hongbin. Unmanned aerial vehicle swarm cluster-based data collection algorithm for wireless sensor networkJ. Journal of Guilin University of Electronic Technology, 2026, 46(2): 111-120. DOI: 10.16725/j.1673-808X.2025130

无人机群分簇辅助的无线传感器网络数据采集算法

Unmanned aerial vehicle swarm cluster-based data collection algorithm for wireless sensor network

  • 摘要: 在大规模物联网场景中,无线传感器网络常因空间地理分布特征而形成多个互相隔离的子区域,这种地理分割特性为传统数据收集带来了挑战。无人机凭借其高度的机动性和部署灵活性,为解决这一问题提供了新的思路。然而,现有的无人机辅助数据采集方案中,各无人机独立工作且需分别返回基站交付数据,这种工作模式导致了显著的路径冗余和能量浪费。为此,提出了一种无人机群分簇辅助的无线传感器网络数据采集(USCDC)算法。该算法采用双层无人机架构:底层部署协作无人机,负责各区域的数据收集;顶层配置汇聚无人机,统一传输数据至基站。为实现这一架构的高效运行,设计了无人机时序协同调度(UTCS)算法,通过统一时间坐标系和事件触发机制解决无人机之间的协同问题。在此基础上,分别设计了基于改进蚁群(IACO)算法的区域内路径优化方法和基于改进粒子群(IPSO)算法的汇聚无人机访问顺序优化策略。这种分层协作机制使得协作无人机无需返回基站,即可完成数据传输,显著降低了路径开销和能量消耗。仿真结果表明,与现有数据采集算法相比,USCDC算法的路径长度和能耗分别降低了52%和35%,验证了该方案在大规模传感器网络数据采集中的有效性。

     

    Abstract: In large-scale Internet of Things scenarios, Wireless Sensor Network (WSN) often form multiple isolated sub-regions due to their spatial geographical distribution characteristics, and this geographical segmentation poses challenges to traditional data collection. Unmanned aerial vehicle (UAV), with their high mobility and flexible deployment, provide new insights into solving this problem. However, in existing UAV-assisted data collection schemes, UAV work independently and need to return to the base station separately to deliver data, leading to significant path redundancy and energy waste. To address this issue, a UAV Swarm Cluster-based Data Collection (USCDC) algorithm for wireless sensor networks was proposed. This algorithm adopts a two-layer UAV architecture: cooperative UAV are deployed at the bottom layer for data collection in each region, while sink UAV are configured at the top layer to uniformly transmit data to the base station. To achieve efficient operation of this architecture, a UAV Temporal Cooperative Scheduling (UTCS) algorithm was designed, which solves the coordination problem among UAV through a unified time coordinate system and event-triggered mechanism. Based on this, a regional path optimization method based on the Improved Ant Colony Optimization (IACO) algorithm and a sink UAV visiting sequence optimization strategy based on the Improved Particle Swarm Optimization (IPSO) algorithm were designed respectively. This hierarchical cooperation mechanism enables cooperative UAV to complete data transmission without returning to the base station, significantly reducing path overhead and energy consumption. Simulation results show that compared with existing data collection algorithms, the USCDC algorithm reduces path length and energy consumption by 52% and 35% respectively, verifying the effectiveness of this scheme in large-scale sensor networks data collection.

     

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