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Energy-Efficient Analog Sensing for Large-Scale and High-Density Persistent Wireless Monitoring

机译:用于大型和高密度持久性无线监控的节能模拟感测

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摘要

The research challenge of current wireless sensor networks (WSNs) is to design energy-efficient, low-cost, high-accuracy, self-healing, and scalable systems for applications such as environmental monitoring. Traditional WSNs consist of low density, power-hungry digital motes that are expensive and cannot remain functional for long periods on a single power charge. In order to address these challenges, a dumb-sensing and smart-processing architecture that splits sensing and computation capabilities is proposed. Sensing is exclusively the responsibility of analog substrate-consisting of low-power, low-cost all-analog sensors-that sits beneath the traditional WSN comprising of digital nodes, which does all the processing of the sensor data received from analog sensors. A low-power and low-cost solution for substrate sensors has been proposed using analog joint source-channel coding (AJSCC) realized via the characteristics of metal-oxide-semiconductor field-effect transistor (MOSFET). Digital nodes (receiver) also estimate the source distribution at the analog sensors (transmitter) using machine learning techniques so as to find the optimal parameters of AJSCC that are communicated back to the analog sensors to adapt their sensing resolution as per the application needs. The proposed techniques have been validated via simulations from MATLAB and LTSpice to show promising performance and indeed prove that our framework can support large-scale high density and persistent WSN deployment.
机译:目前无线传感器网络(WSN)的研究挑战是为环境监测等应用设计节能,低成本,高精度,自愈和可扩展系统。传统的WSN由低密度,功率饥饿的数字电机组成,昂贵,并且在单个电力充电上长时间不能保持功能。为了解决这些挑战,提出了一种愚蠢的传感和智能处理架构,用于分离感应和计算能力。感应专门负责模拟基板 - 由低功耗,低成本的全模体传感器组成 - 该传统WSN包括数字节点的传统WSN,这是从模拟传感器接收的传感器数据的所有处理。使用通过通过金属氧化物 - 半导体场效应晶体管(MOSFET)的特性实现的模拟接合源通道编码(AJSCC)来提出用于基板传感器的低功耗和低成本解决方案。数字节点(接收器)还使用机器学习技术估算模拟传感器(变送器)的源分布,以便找到AJSCC的最佳参数,该参数被传递回模拟传感器,以根据应用需求调整它们的感测分辨率。通过来自Matlab和LTSPICE的模拟验证了所提出的技术,以显示有希望的性能,并且确实证明我们的框架可以支持大规模的高密度和持久的WSN部署。

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