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基于边缘计算的物联网架构用于低成本空气污染监测系统:全面系统分析、设计考虑因素与开发。

Edge Computing Based IoT Architecture for Low Cost Air Pollution Monitoring Systems: A Comprehensive System Analysis, Design Considerations & Development.

机构信息

School of Information Science and Engineering, Fudan University, Shanghai 200433, China.

出版信息

Sensors (Basel). 2018 Sep 10;18(9):3021. doi: 10.3390/s18093021.

Abstract

With the swift growth in commerce and transportation in the modern civilization, much attention has been paid to air quality monitoring, however existing monitoring systems are unable to provide sufficient spatial and temporal resolutions of the data with cost efficient and real time solutions. In this paper we have investigated the issues, infrastructure, computational complexity, and procedures of designing and implementing real-time air quality monitoring systems. To daze the defects of the existing monitoring systems and to decrease the overall cost, this paper devised a novel approach to implement the air quality monitoring system, employing the edge-computing based Internet-of-Things (IoT). In the proposed method, sensors gather the air quality data in real time and transmit it to the edge computing device that performs necessary processing and analysis. The complete infrastructure & prototype for evaluation is developed over the Arduino board and IBM Watson IoT platform. Our model is structured in such a way that it reduces the computational burden over sensing nodes (reduced to 70%) that is battery powered and balanced it with edge computing device that has its local data base and can be powered up directly as it is deployed indoor. Algorithms were employed to avoid temporary errors in low cost sensor, and to manage cross sensitivity problems. Automatic calibration is set up to ensure the accuracy of the sensors reporting, hence achieving data accuracy around 75⁻80% under different circumstances. In addition, a data transmission strategy is applied to minimize the redundant network traffic and power consumption. Our model acquires a power consumption reduction up to 23% with a significant low cost. Experimental evaluations were performed under different scenarios to validate the system's effectiveness.

摘要

随着现代文明中商业和交通的迅速发展,人们越来越关注空气质量监测,但现有的监测系统无法提供具有成本效益和实时性的足够空间和时间分辨率的数据。本文研究了设计和实现实时空气质量监测系统的问题、基础设施、计算复杂性和程序。为了克服现有监测系统的缺陷,降低总体成本,本文设计了一种新的方法来实现基于边缘计算的物联网(IoT)空气质量监测系统。在提出的方法中,传感器实时采集空气质量数据,并将其传输到边缘计算设备,该设备执行必要的处理和分析。完整的基础设施和原型是在 Arduino 板和 IBM Watson IoT 平台上开发的。我们的模型结构能够减轻传感器节点的计算负担(降低到 70%),这些传感器由电池供电,并通过具有本地数据库的边缘计算设备来平衡,该设备可以直接在室内部署时供电。采用算法避免低成本传感器的临时误差,并管理交叉灵敏度问题。自动校准用于确保传感器报告的准确性,因此在不同情况下实现了约 75-80%的数据准确性。此外,还应用了一种数据传输策略来最小化冗余的网络流量和功耗。我们的模型实现了高达 23%的功耗降低,成本显著降低。在不同场景下进行了实验评估,以验证系统的有效性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/0ac5/6163730/5ee9432d8abc/sensors-18-03021-g001.jpg

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