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Neighbor-Aided Spatial-Temporal Compressive Data Gathering in Wireless Sensor Networks

机译:无线传感器网络中的邻居辅助时空压缩数据收集

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摘要

The integration between data collection methods in wireless sensor networks (WSNs) and compressive sensing (CS) provides energy efficient paradigms. Single-dimensional CS approaches are inapplicable in spatial and temporal correlated WSNs while the Kronecker compressive sensing (KCS) model suffers performance degradation along with the increasing data dimensions. In this letter, a neighbor-aided compressive sensing (NACS) scheme is proposed for efficient data gathering in spatial and temporal correlated WSNs. During every sensing period, the sensor node just sends the raw readings within the sensing period to a randomly and uniquely selected neighbor. Then, the CS measurements created by the neighbor are sent to the sink node directly. The equivalent sensing matrix is proved to satisfy both structured random matrix (SRM) and generalized KCS models. And, by introducing the idea of SRM to KCS, the recovery performance of KCS is significantly improved. Simulation results demonstrate that compared with the conventional KCS models, the proposed NACS model can achieve vastly superior recovery performance and receptions with much fewer transmissions.
机译:无线传感器网络(WSN)和压缩传感(CS)中的数据收集方法之间的集成提供了节能的范例。一维CS方法不适用于与空间和时间相关的WSN,而Kronecker压缩感测(KCS)模型随着数据尺寸的增加而性能下降。在这封信中,提出了一种在空间和时间相关的WSN中有效收集数据的邻居辅助压缩感知(NACS)方案。在每个感测周期内,传感器节点仅将感测周期内的原始读数发送给随机且唯一选择的邻居。然后,将邻居创建的CS测量直接发送到宿节点。等效感测矩阵被证明可以同时满足结构化随机矩阵(SRM)和广义KCS模型。并且,通过将SRM的思想引入KCS,KCS的恢复性能得到了显着提高。仿真结果表明,与传统的KCS模型相比,所提出的NACS模型可以以极少的传输获得非常优异的恢复性能和接收效果。

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