Design of an adaptive framework with compressive sensing for spatial data in wireless sensor networks

被引:0
作者
C. Sureshkumar
S. Sabena
机构
[1] Anna University Chennai - Regional Office Tiruchirappalli,
来源
Wireless Networks | 2023年 / 29卷
关键词
Wireless sensor network; Adjacent node; Compressive sensing; Sparse matrix; Fuzzy logic; Throughput; End-to-end delay;
D O I
暂无
中图分类号
学科分类号
摘要
Wireless Sensor Networks (WSNs) gather active sensor data within a specified period to the sink node. The data transmission in restricted resource utilization in wireless surroundings is a primary issue. Compressive sensing enables resource utilization based on spatial data by exploiting the transfer of limited measurements according to the original signals. In this paper, an Adaptive Adjacent based Compressive Sensing (AACS) methodology is proposed for effective data construction in spatial-related wireless sensor networks. A sparse Matrix is constructed with the coordinates of location and position for data transmission. The fuzzy logic is used to find the best forwarder among the sensor nodes in the network using the parameters of Mobility, Energy, and Fuzzy cost. Within a sensing time, the sensor node forwards the data around the time to the adjacent node according to a correlation. The communication time provides proficient enhancement with compressed data with AACS and sparse index. Therefore, AACS gives a reduced amount of communication and maximizes accuracy. AACS is compared with the related techniques and the results prove that the proposed methodology performed well in the performance metrics. The performance analysis shows that the proposed technique has produced 54.7% of network throughput than the relevant technique, 76.9% lesser routing overhead, and 44% of minimized relative error.
引用
收藏
页码:2203 / 2216
页数:13
相关论文
共 121 条
  • [1] Donoho DL(2006)Compressed sensing IEEE Transactions on Information Theory 52 1289-1306
  • [2] Alwan NAS(2018)Compressive sensing for localization in wireless sensor networks: An approach for energy and error control IET Wireless Sensor Systems 8 116-120
  • [3] Zahir M(2018)Nature inspired algorithm-based improved variants of DV-hop algorithm for randomly deployed 2D and 3D wireless sensor networks Wireless Personal Communications 101 567-582
  • [4] Kaur A(2006)Algorithms for simultaneous sparse approximation part I: Greedy pursuit Signal Processing 86 572-588
  • [5] Kumar P(2017)Energy-aware constrained relay node deployment for sustainable wireless sensor networks IEEE Transactions on Sustainable Computing 2 30-42
  • [6] Gupta GP(2018)Energy balancing RPL protocol with multipath for wireless sensor networks Peer-to-Peer Networking and Applications 11 1085-1100
  • [7] Tropp JA(2018)WPO-EECRP: Energy-efficient clustering routing protocol based on weighting and parameter optimization in WSN Wireless Personal Communications 98 1171-1205
  • [8] Gilbert AC(2020)Fog-based optimized kronecker-supported compression design for industrial IoT IEEE Transactions on Sustainable Computing 5 95-106
  • [9] Strauss MJ(2018)Sparse representation for wireless communications: A compressive sensing approach IEEE Signal Processing Magazine 35 40-58
  • [10] Djenouri D(1973)Downlink cooperative broadcast transmission based on superposition coding in a relaying system for future wireless sensor networks Sensors 2018 18-63