A Low Power System for Synchronising Buffered Air Quality Data

Ingram Weeks, Ben Holden, Aleksandar Stanoev
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Abstract

Air quality is becoming an increasingly recognised public health issue, with a strong focus on particulate matters (PMs) which have been shown to be a cause of respiratory problems. In addition to this carbon dioxide (CO2) concen-tration has been found to impact cognitive ability at higher levels. Bristol Research and Innovation Laboratory (BRIL), have designed, developed and deployed an Internet-of- Things (IoT) system to perform low-power, distributed monitoring of indoor environmental conditions within the Cardiff University School of Engineering building using LoRaWAN as the communication protocol. This paper discusses the significant design choices behind the platform, focusing on the compromises that were made to both minimize the power consumption and adhere with regional LoRaWAN data-rate limits; through a custom scheme of encoding timestamped, buffered sensor data. In addition to this, results from the system are presented and discussed where it is shown that the method adopted, a real-time clock (RTC) for achieving synchronization across the embedded devices, is adequate for scenarios where higher frequency readings across a range of sensors are required.
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同步缓冲空气质量数据的低功耗系统
空气质量正日益成为一个公认的公共卫生问题,人们强烈关注颗粒物(pm),它已被证明是呼吸系统疾病的原因。除此之外,人们还发现,二氧化碳浓度会在较高水平上影响认知能力。布里斯托尔研究与创新实验室(BRIL)设计、开发并部署了一个物联网(IoT)系统,该系统使用LoRaWAN作为通信协议,对卡迪夫大学工程学院大楼内的室内环境条件进行低功耗、分布式监测。本文讨论了平台背后的重要设计选择,重点是为了最小化功耗和遵守区域LoRaWAN数据速率限制而做出的妥协;通过自定义方案的编码时间戳,缓冲传感器数据。除此之外,还介绍和讨论了系统的结果,其中表明所采用的方法,用于实现跨嵌入式设备同步的实时时钟(RTC),足以满足需要跨一系列传感器的更高频率读数的场景。
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