论文:2020,Vol:38,Issue(2):333-340
引用本文:
刘洲洲, 程徐, 张杨梅, 彭寒. 采用压缩感知与智能优化的大规模WSNs移动稀疏数据收集[J]. 西北工业大学学报
LIU Zhouzhou, CHENG Xu, ZHANG Yangmei, PENG Han. Data Collection Method of Large Scale WSNS Mobile Node Based on Compressed Sensing and Intelligent Optimization[J]. Northwestern polytechnical university

采用压缩感知与智能优化的大规模WSNs移动稀疏数据收集
刘洲洲1,3, 程徐2, 张杨梅3, 彭寒3
1. 西安航空学院 计算机学院, 陕西 西安 710077;
2. 挪威科技大学 信息与工程科学学院, 挪威 奥勒松 6009;
3. 西北工业大学 计算机学院, 陕西 西安 710072
摘要:
针对大规模无线传感网数据处理网络流量大、任务时延高的缺陷,提出了一种基于自适应块压缩感知与离散弹性碰撞优化算法的移动节点数据收集方案。首先,通过分析网络分块与节点部署之间的关系,提出自适应块压缩感知数据采集策略,实现传感器节点基于自适应网络块压缩感知数据采集;设计移动节点数据采集路径规划策略和多移动节点协同计算机制,通过采用适应度值约束变换处理技术和并行离散弹性碰撞优化算法,达到均衡网络节点能耗和降低数据处理任务时延的目的。最后,仿真结果表明,该数据收集方案能够有效实现大规模传感网数据高效处理,而且降低了网络流量和网络任务时延,更好均衡了网络节点能耗。
关键词:    无线传感器网络    压缩感知    离散弹性碰撞优化    数据收集   
Data Collection Method of Large Scale WSNS Mobile Node Based on Compressed Sensing and Intelligent Optimization
LIU Zhouzhou1,3, CHENG Xu2, ZHANG Yangmei3, PENG Han3
1. School of Computer Science, Xi'an Aeronautical University, Xi'an 710077, China;
2. School of information and Engineering Sciences, Norwegian University of Science and Technology, Alesund;
3. School of Computer Science, Northwestern Polytechnical University, Xi'an 710072, China
Abstract:
Aiming at the defects of large-scale large scale wireless sensor network data processing network traffic and high task latency, a data collection scheme of mobile node based on discrete elastic collision optimization algorithm and adaptive block compression sensing is proposed. Firstly, by analyzing the relationship between the network partitioning and the node deployment, an adaptive block compressed sensing data collection strategy is proposed to realize sensor node based on adaptive network block compressed sensing data collection. Designing mobile node data acquisition path planning strategy and multiple mobile nodes The collaborative computer system adopts the fitness value constraint transformation processing technology and the parallel discrete elastic collision optimization algorithm to achieve the purpose of balancing network node energy consumption and reducing data processing task delay. Finally, the simulation results show that the data collection scheme can effectively realize high-efficiency processing of large-scale sensor network data, and reduce network traffic and network task delay, and better balance network node energy consumption.
Key words:    wireless sensor networks    compressive sensing    discrete elastic collision optimization    data collection   
收稿日期: 2019-01-13     修回日期:
DOI: 10.1051/jnwpu/20203820333
基金项目: 中国博士后科学基金(2018M633573)、陕西省博士后科学基金(2018BSHQYXM2211)与陕西省重点研发计划一般项目(2020GY-084)资助
通讯作者:     Email:
作者简介: 刘洲洲(1981-),西安航空学院教授、西北工业大学博士后,主要从事无线传感器网络研究。
相关功能
PDF(961KB) Free
打印本文
把本文推荐给朋友
作者相关文章
刘洲洲  在本刊中的所有文章
程徐  在本刊中的所有文章
张杨梅  在本刊中的所有文章
彭寒  在本刊中的所有文章

参考文献:
[1] RAWAT P, SINGH K D, CHAOUCHI H, et al. Wireless Sensor Networks:a Survey on Recent Developments and Potential Synergies[J]. The Journal of Supercomputing, 2014, 68(1):1-48
[2] XUE Y, CHANG X, ZHONG S, et al. An Efficient Energy Hole Alleviating Algorithm for Wireless Sensor Networks[J]. IEEE Trans on Consumer Electronics, 2014, 60(3):347-355
[3] EBRAHIMI D, ASSI C. Network Coding-Aware Compressive Data Gathering for Energy-Efficient Wireless Sensor Networks[J]. ACM Trans on Sensor Networks, 2015, 11(4):1-24
[4] ABBASI A Z, ISLAM N, SHAIKH Z A. A Review of Wireless Sensors and Network's Applications in Agriculture[J]. Computer Standards & Interfaces, 2014, 36(2):263-270
[5] 李鹏,王建新,丁长松. WSN中基于压缩感知的高效能数据收集方案[J]. 自动化学报,2016,42(11):1648-1656 LI Peng, WANG Jianxin, DING Changsong. Efficient Data Collection Scheme Based on Compression Perception in WSN[J]. Journal of Automation, 2016, 42(11):1648-1656(in Chinese)
[6] 杨浩,王喜玮. 基于区域化压缩感知的无线传感器网络数据收集方法[J]. 计算机学报,2017,40(8):1933-1945 YANG Hao, WANG Xiwei. Data Collection Method of Wireless Sensor Network Based on Regional Compressed Sensing[J]. Journal of Computer Science, 2017, 40(8):1933-1945(in Chinese)
[7] OSAMY W, SALIM A, AZIZ A. Efficient Compressive Sensing Based Technique for Routing in Wireless Sensor Networks[J]. INFOCOMP Journal of Computer Science, 2013,12(1):1-9
[8] WU X, Xiong Y, Huang W, et al. An Efficient Compressive Data Gathering Routing Scheme for Large Scale Wireless Sensor Networks[J]. Computers & Electrical Engineering, 2013, 39(6):1935-1946
[9] 俸皓,罗蕾,王勇,等. 无线传感网中基于时变多旅行商和遗传算法的多目标数据采集策略[J]. 通信学报,2017,38(3):112-123 FENG Hao, LUO Lei, WANG Yong, et al. Multi Objective Data Acquisition Strategy Based on Time-Varying Multi-Agent and Genetic Algorithm in Wireless Sensor Network[J]. Journal of Communications, 2017, 38(3):112-123(in Chinese)
[10] 刘洲洲, 李士宁, 李彬,等. 基于弹性碰撞优化算法的传感云资源调度[J]. 浙江大学学报, 2018, 52(8):1431-1443 LIU Zhouzhou, LI Shining, LI Bin, et al. Resource Scheduling of Sensor Cloud Based on Elastic Collision Optimization Algorithm[J]. Journal of Zhejiang University, 2018, 52(8):1431-1443(in Chinese)
[11] 刘盼盼,李雷,王浩宇. 压缩感知中基于变尺度法的贪婪重构算法的研究[J]. 通信学报,2014,35(12):98-105,115 LIU Panpan, LI Lei, WANG Haoyu. Research on Greedy Reconstruction Algorithm Based on Variable Scale Method in Compressed Sensing[J]. Journal of Communications, 2014, 35(12):98-105,115(in Chinese)
[12] SUN Bo, SHAN Xuemei, WU Kui, et al. Anomaly Detection Based Secure In-Network Aggregation for Wireless Sensor Networks[J]. IEEE Systems Journal, 2013, 7(1):13-25
[13] 李鹏,王建新. 无线传感器网络中基于稀疏投影的数据收集方案[J]. 中南大学学报,2016,47(10):3445-3453 LI Peng, WANG Jianxin. Data Collection Scheme Based on Sparse Projection in Wireless Sensor Networks[J]. Journal of Central South University, 2016, 47(10):3445-3453(in Chinese)
[14] 何秀丽,任智源,史晨华,等. 面向医疗大数据的云雾网络及其分布式计算方案[J]. 西安交通大学学报,2016,50(10):71-77 HE Xiuli, REN Zhiyuan, SHI Chenhua, et al. Cloud Network and Its Distributed Computing Scheme for Medical Big Data[J]. Journal of Xi'an Jiaotong University, 2016, 50(10):71-77(in Chinese)
[15] 田瑾. 高维多峰函数的量子行为粒子群优化算法改进研究[J]. 控制与决策,2016,31(11):1967-1972 TIAN Jin. Study on the Improvement of Particle Swarm Optimization Algorithm, for High Dimensional Multimodal Functions[J]. Control and Decision, 2016, 31(11):1967-1972(in Chinese)
[16] MINI S, UDGATA S, SABAT S. Sensor Deployment and Scheduling for Target Coverage Problem in Wireless Sensor Networks[J]. IEEE Sensors Journal, 2014, 14(3):636-644