Air Pollution Exposure Estimation and Finding Association with Human Activity using Wearable Sensor Network

MLSDA'14 Pub Date : 2014-12-02 DOI:10.1145/2689746.2689749
Ke Hu, Timothy Davison, Ashfaqur Rahman, V. Sivaraman
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引用次数: 21

Abstract

Air quality and pollution monitoring services are provided by many countries and cities. However, individuals are more concerned about personal exposure and dosage, which can rarely be estimated due to the low spatial resolution of air pollution data and lack of personal data. In recent years, an increasing number of research groups, including ours, have focused on increasing the spatial resolution of air pollution data using ubiquitous sensor networks. These works did raise the spatial granularity compared with data from fixed air pollution monitoring sites. In this paper, we combine air pollution and human energy expenditure data to give individuals real-time personal air pollution exposure estimates. In particular, this paper describes our experiences with developing a personal air pollution exposure estimation system utilising participatory air pollution monitoring system and energy expenditure data collected from wearable activity sensors. Our system and applications will benefit the understanding of the relationship between air pollution exposure and personal health. We also conducted a trial to get a full day's air pollution inhalation dosage for one participant, and applied multiple data mining techniques to find out associations between activity mode, location, and the inhaled pollution. Results show that sleep, having meals, working in a campus, and general home activities like reading books will lead to a low air pollution dosage, while working out, walking and driving will cause higher inhaled dose. Furthermore, classification results in our study based on activity modes, locations and dosage data which is collected in the trial show that up to 94% classification accuracy can be achieved.
基于可穿戴传感器网络的空气污染暴露评估及其与人类活动的关联
许多国家和城市都提供空气质量和污染监测服务。然而,个人更关心的是个人暴露量和剂量,由于空气污染数据空间分辨率低,缺乏个人数据,个人暴露量和剂量很难估算。近年来,越来越多的研究小组,包括我们的研究小组,都致力于利用无处不在的传感器网络来提高空气污染数据的空间分辨率。与固定空气污染监测点的数据相比,这些工作确实提高了空间粒度。在本文中,我们将空气污染和人类能量消耗数据结合起来,为个人提供实时的个人空气污染暴露估计。特别是,本文描述了我们利用参与式空气污染监测系统和从可穿戴活动传感器收集的能量消耗数据开发个人空气污染暴露估计系统的经验。我们的系统和应用将有助于了解空气污染暴露与个人健康之间的关系。我们还进行了一项试验,以获得一位参与者全天的空气污染吸入剂量,并应用多种数据挖掘技术来发现活动模式、地点和吸入污染之间的关联。结果表明,睡觉、吃饭、在校园里工作、看书等一般家庭活动会导致较低的空气污染剂量,而锻炼、步行和开车会导致较高的吸入剂量。此外,根据试验收集的活性模式、位置和剂量数据进行分类的结果表明,我们的研究可以达到高达94%的分类准确率。
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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