Liu Zhouzhou, Zhang Yangmei, Bi Yang, Wang Jingxuan, Hou Yuanyuan, Liu Chao, Jiang Guangyi, Li Shan
School of Computer Science, Xihang University, Xi'an, China.
School of Electronic Engineering, Xihang University, Xi'an, China.
PLoS One. 2025 Jun 17;20(6):e0326078. doi: 10.1371/journal.pone.0326078. eCollection 2025.
To tackle the challenges of extensive data transmission and high redundancy in wireless sensor networks (WSNs), this study proposes a novel data collection scheme based on expected network coverage and clustered compressive sensing (CS). First, the K-medoids clustering algorithm organizes nodes within the WSN coverage area into clusters. Combined with an optimized network coverage algorithm, a node scheduling strategy is introduced to focus on critical observation areas while minimizing overall energy consumption. Next, by analyzing the relationship between network clustering and node deployment, a weakly correlated observation matrix is designed to mitigate the impact of packet loss on data collection. Finally, the sparrow search algorithm is employed to enhance the accuracy of CS data reconstruction at the cluster head. Simulation results demonstrate that, compared to existing data collection schemes, the proposed approach significantly reduces WSN transmission overhead, ensures accurate recovery of raw data, decreases data reconstruction error, and extends network lifetime.
为应对无线传感器网络(WSN)中大量数据传输和高冗余的挑战,本研究提出了一种基于预期网络覆盖和聚类压缩感知(CS)的新型数据收集方案。首先,K-中心点聚类算法将WSN覆盖区域内的节点组织成簇。结合优化的网络覆盖算法,引入节点调度策略,在关注关键观测区域的同时尽量减少总体能耗。接下来,通过分析网络聚类与节点部署之间的关系,设计了一个弱相关观测矩阵,以减轻数据包丢失对数据收集的影响。最后,采用麻雀搜索算法提高簇头处CS数据重建的准确性。仿真结果表明,与现有数据收集方案相比,所提方法显著降低了WSN的传输开销,确保了原始数据的准确恢复,减少了数据重建误差,并延长了网络寿命。