Smart IoT Communication: Circuits and Systems

Wadood Ahmad Khan, Payali Das, Sushmita Ghosh, M. R. Chowdhury, Sharda Tripathi, S. Kaur, S. Chatterjee, S. De
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引用次数: 12

Abstract

In a smart IoT system, multi-sensing at a field node is a typical scenario. The examples considered in this study are pollution monitoring and smart energy metering. In such applications, energy sustainability and communication and storage resource usage optimization are two of the key issues of interest. In this study, on one hand it is intended to develop indigenous beyond state of the art multi-sensing boards with the inherent smartness in energy replenishment and sensing/communication activities. On the other hand, smart data collection and processing at the end node (fog node or edge node) is of interest primarily from efficient communication bandwidth usage perspective. On the first exercise towards energy sustainable IoT sensing and communication board design, we have designed a prototype for a 5G capable environmental air pollution monitoring system. The system measures concentrations of NO2, ozone, CO and SO2 using semiconductor sensors. Further, the system gathers other environmental parameters like temperature, humidity, PM1, PM2.5 and PM10. The prototype is equipped with a GPS sub-system for accurate geo-tagging. The board communicates through Wi-Fi and NB-IoT. The board is also equipped with energy harvesting power management, and is powered through solar energy and battery backup. On the second exercise, a working model of a smart IoT device with a data pruning subsystem is designed, where a smart energy meter is considered for an example application. As a proof of concept we plan to demonstrate data compression at the edge to save bandwidth required for data transmission to a remote cloud. At each smart meter, sparsity of data is exploited to devise an adaptive data reduction algorithm using compressive sampling technique such that the bandwidth requirement for smart meter data transmission is reduced with minimum loss of information. The Smart Energy Meter is WiFi and NB-IoT enabled. This meter is capable of logging multiple energy consumption parameters. The overall objective has been demonstrating the ability of beyond state of the art circuits and system design for IoT communications, wherein context specific intelligence is applied at the at the node. The broad philosophy in this study can be readily extended to any chosen IoT application.
智能物联网通信:电路和系统
在智能物联网系统中,现场节点的多传感是一种典型场景。本研究考虑的例子是污染监测和智能能源计量。在这些应用中,能源可持续性和通信和存储资源使用优化是两个关键问题。在本研究中,一方面,它旨在开发具有能量补充和传感/通信活动固有智能的本土先进多传感板。另一方面,终端节点(雾节点或边缘节点)的智能数据收集和处理主要是从高效通信带宽使用的角度考虑的。在能源可持续物联网传感和通信板设计的第一个练习中,我们设计了一个支持5G的环境空气污染监测系统的原型。该系统使用半导体传感器测量NO2、臭氧、CO和SO2的浓度。此外,该系统还会收集其他环境参数,如温度、湿度、PM1、PM2.5和PM10。原型机配备了GPS子系统,用于精确的地理标记。单板通过Wi-Fi和NB-IoT进行通信。该板还配备了能量收集电源管理,并通过太阳能和备用电池供电。在第二个练习中,设计了具有数据修剪子系统的智能物联网设备的工作模型,其中考虑了智能电表作为示例应用。作为概念验证,我们计划在边缘演示数据压缩,以节省向远程云传输数据所需的带宽。在每个智能电表中,利用数据的稀疏性设计一种使用压缩采样技术的自适应数据缩减算法,使智能电表数据传输的带宽要求降低,同时信息损失最小。智能电能表支持WiFi和NB-IoT。该仪表可记录多种能耗参数。总体目标是展示超越最先进的电路和物联网通信系统设计的能力,其中在节点上应用特定于上下文的智能。本研究中的广泛理念可以很容易地扩展到任何选择的物联网应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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