建立室内空气质量监测系统用例

R. Kureshi, D. Thakker, B. Mishra, Baseer Ahmad
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引用次数: 3

摘要

我们平均有90%的时间是在室内度过的。室内空气质量(IAQ)越来越受到环境机构、地方当局和公民的关注,因为室内空气质量差对公共健康的影响越来越明显。因此,监测室内环境并让公民参与进来对于提高室内空气质量和通过提高意识来管理室内环境至关重要——这是许多公民科学项目的目标。在这项工作中,我们提出了一个欧洲项目中室内空气质量监测的用例,重点是公民参与和参与的智慧城市。众所周知,空气质量(AQ)监测站通常是固定的,通常产生可靠的高质量数据,由于成本限制了部署的规模和公民参与,因此对于CS项目来说,成本是不可能的。另一方面,人们普遍认为,用于AQ的低成本设备虽然大量可用,但往往产生低质量的数据,这使得基于低成本传感器的任何分析都不可信。越来越多的研究工作着眼于如何确定这些传感器的数据质量,以便它们仍然可以可靠地使用,通常用于提供指示性读数和分析。在这项工作中,我们介绍了基于数据科学的技术,该技术已被用于根据其数据质量指标选择低成本传感器,以及一个综合可视化系统,该系统利用室内空气质量的结构数据来支持CS项目中的多城市试验。采用不同的方法,如统计分析和图形图,分析一段时间内传感器的一致性后选择传感器。
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Use Case of Building an Indoor Air Quality Monitoring System
On average, we spend around 90% of the time in indoor environments. Indoor Air Quality (IAQ) has been receiving increased attention from the environmental bodies, local authorities and citizens as it is becoming clearer that poor IAQ has public health implications. Therefore, monitoring of indoor environment and involving citizens becomes crucial to enhance IAQ and managing their indoor environments by raising awareness – a goal of many Citizen Science (CS) projects. In this work, we present a use case of IAQ monitoring in a European project with a focus on Smart Cities with citizen engagement and involvement. It is well known that the cost of Air Quality (AQ) monitoring stations, which are often stationary, and generally produce reliable, and high-quality data is a non-starter for CS projects as cost prohibits the scaling of deployment and citizen involvement. On the other hand, it is widely assumed that low-cost devices for AQ, although available in abundance, often produce low-quality data, putting the credibility of basing any analysis on low-cost sensors. There is an increasing number of research efforts that look at how to ascertain the data quality of such sensors so that they could still be used reliably, often to provide indicative readings, and for analytics. In this work, we present data science-based techniques that have been utilised for selecting low-cost sensors based on their data quality indicators, and an integrated visualisation system that utilises structure data for IAQ to support multi-city trials in a CS project. The sensors are selected after analysing their consistency over a period by applying different approaches such as statistical analysis and graphical plots.
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