基于压缩感知理论的低功耗无线传感器网络

Mohammadreza Balouchestani
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引用次数: 8

摘要

无线传感器网络(WSNs)应用于各种领域,包括医院、军事、交通自动化、家庭和工业自动化。wsn还用于监视需要定期收集数据的同步或异步事件。无线传感器网络由大量小型设备或无线节点(Wireless node, WNs)组成,负责感知、收集、处理和监测现实环境的信息。无线传感器网络由数据采集网络(DAN)和数据分发网络(DDN)组成,由管理中心进行监控。无线传感器网络寿命的主要限制因素是电源。对于无线传感器网络的应用,通常不可能获得物理访问来更换或充电电池。因此我们可以设计出低功耗的无线传感器网络。在无线传感器网络中,与源的数量相比,事件是稀疏的信号。这就是为什么;压缩感知理论有望降低功耗。压缩感知表明,可以从少量随机线性测量数据中精确地重构出诸如传感器网络信号之类的星形信号。压缩感知理论可以减少整个网络的信息位数,从而减少从电源中吸取的电流。为此,我们引入了一种基于压缩感知理论的低功耗无线传感器网络设计新机制。本文首先介绍了压缩感知理论的研究背景,然后介绍了无线传感器网络中的重要概念,最后介绍了将压缩感知理论应用于无线传感器网络的仿真。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Low-power wireless sensor network with compressed sensing theory
Wireless Sensor Networks (WSNs) have application in a variety of fields including inhospital locations, military purposes, transportation automation, home and industrial automation. WSNs also are used in monitoring synchronous or asynchronous events that require periodic data collection. WSNs consist of a large number small device or Wireless Nodes (WNs) and are responsible for sensing, collecting, processing and monitoring information of real world environments. WSNs consist of a Data Acquisition Network (DAN) and a Data distribution Network (DDN) which monitored and controlled by a management center. The primary limiting factor for the lifetime of a WSN is the power supply. Regarding the applications of WSNs it is often impossible to obtain physical access to replace or charge battery. Therefore we can design low power WSNs. In WSNs, the events are sparse signal compared with the number of sources. That is why; the compressed sensing theory holds promising to reduce power consumption. Compressed Sensing shows that spars signals such as signals of WSNs can be exactly reconstructed from a small number of random linear measurements. Compressed Sensing theory can reduce number of bits information through whole of the network and consequently decrease amount of current that drawn from power supply. With this in mind, we introduce a new mechanism to design low-power WSN with compressed sensing theory. This paper gives a background of compressed sensing theory, and then describes important concepts in wireless sensor networks, and finally our simulation by applying compressed sensing in WSNs theory is described.
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