Design and Development of a Low-cost Sensor IoT Computing Device for Greenhouse Gas Momitor from Selected Industry Locations

IF 0.9 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING Scalable Computing-Practice and Experience Pub Date : 2022-12-23 DOI:10.12694/scpe.v23i4.2047
I. Hamidu, B. Afotey, Zakaria AYATUL-LAHI
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Abstract

The objective of the study is to develop low-cost IoT based sensor to monitor real-time greenhouse gases (GHG) emissions data from selected industry locations (city blocks) in a top-down approach. Three (3) industry locations were selected within the Suame Industrial complex (the largest single cluster of artisanal engineering and light manufacturing in Sub Saharan Africa and even Africa) which has no reported GHG emissions data. A GHG monitor was developed using Atmega328 microcontroller and a sim800I GSM module was used to collect a 24-hour real-time minute-by-minute emissions data from the selected industry locations. A MQ-4 (methane/natural gas sensor), MQ-135 (Nitrous Oxide sensors) and DHT22 (temperature and humidity sensor) were used in the GHG monitor design. The GHG of concern were carbon dioxide, methane and nitrous oxide. A total of 3627 emissions data were collected and analyzed from the three (3) industry locations. Location 3 had the highest average carbon dioxide emissions of 508.11 ppm, followed by location 2 with 477.31 ppm with the least emissions in location 1 with 472.51 ppm which are above the global carbon dioxide average of 414.7 ppm. The average methane emission was highest in location 1 with 0.1599 ppm (1599 ppb), followed by location 3 with 0.1366 ppm (1366 ppb) with the least average methane emission of 0.1358 ppm (1358 ppb) in location 2 which are slightly below the global methane average of 1895.7 ppb. The MQ-135 nitrous oxide sensor reported zero emissions data throughout the deployment at the various industry locations which indicated the nitrous oxides emission in the selected sample site is negligible or below the detectable range of the sensor.
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设计和开发一种低成本的传感器物联网计算设备,用于选定工业地点的温室气体监测仪
该研究的目的是开发基于物联网的低成本传感器,以自上而下的方式监测选定工业地点(城市街区)的实时温室气体(GHG)排放数据。在Suame工业综合体(撒哈拉以南非洲甚至非洲最大的手工工程和轻工业单一集群)内选择了三(3)个工业地点,这些地点没有报告温室气体排放数据。使用Atmega328微控制器和sim800I GSM模块开发了温室气体监测仪,用于收集选定工业地点的24小时实时逐分钟排放数据。温室气体监测仪设计采用MQ-4(甲烷/天然气传感器)、MQ-135(氧化亚氮传感器)和DHT22(温湿度传感器)。受关注的温室气体是二氧化碳、甲烷和一氧化二氮。从三个工业地点共收集和分析了3627个排放数据。地点3的二氧化碳平均排放量最高,为508.11 ppm,其次是地点2,为477.31 ppm,地点1的排放量最少,为472.51 ppm,均高于全球二氧化碳平均排放量414.7 ppm。地点1的平均甲烷排放量最高,为0.1599 ppm (1599 ppb),地点3次之,为0.1366 ppm (1366 ppb),地点2的平均甲烷排放量最低,为0.1358 ppm (1358 ppb),略低于全球甲烷平均值1895.7 ppb。MQ-135氧化亚氮传感器在各个工业地点的部署过程中报告了零排放数据,这表明所选样品地点的氧化亚氮排放可以忽略不计或低于传感器的可检测范围。
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来源期刊
Scalable Computing-Practice and Experience
Scalable Computing-Practice and Experience COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.00
自引率
0.00%
发文量
10
期刊介绍: The area of scalable computing has matured and reached a point where new issues and trends require a professional forum. SCPE will provide this avenue by publishing original refereed papers that address the present as well as the future of parallel and distributed computing. The journal will focus on algorithm development, implementation and execution on real-world parallel architectures, and application of parallel and distributed computing to the solution of real-life problems.
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