Huck J J, Whyatt J D, Coulton P, Davison B, Gradinar A
School of Environment, Education and Development, The University of Manchester, Manchester, UK.
Lancaster Environment Centre, Lancaster University, Lancaster, UK.
Environ Monit Assess. 2017 Mar;189(3):114. doi: 10.1007/s10661-017-5817-6. Epub 2017 Feb 16.
This work investigates the potential of combining the outputs of multiple low-cost sensor technologies for the direct measurement of spatio-temporal variations in phenomena that exist at the interface between our bodies and the environment. The example used herein is the measurement of personal exposure to traffic pollution, which may be considered as a function of the concentration of pollutants in the air and the frequency and volume of that air which enters our lungs. The sensor-based approach described in this paper removes the 'traditional' requirements either to model or interpolate pollution levels or to make assumptions about the physiology of an individual. Rather, a wholly empirical analysis into pollution exposure is possible, based upon high-resolution spatio-temporal data drawn from sensors for NO, nasal airflow and location (GPS). Data are collected via a custom smartphone application and mapped to give an unprecedented insight into exposure to traffic pollution at the individual level. Whilst the quality of data from low-cost miniaturised sensors is not suitable for all applications, there certainly are many applications for which these data would be well suited, particularly those in the field of citizen science. This paper demonstrates both the potential and limitations of sensor-based approaches and discusses the wider relevance of these technologies for the advancement of citizen science.
这项工作研究了结合多种低成本传感器技术的输出,以直接测量存在于我们身体与环境界面的现象的时空变化的潜力。本文使用的例子是个人接触交通污染的测量,这可以被视为空气中污染物浓度以及进入我们肺部的空气频率和体积的函数。本文所述的基于传感器的方法消除了对污染水平进行建模或插值或对个体生理状况进行假设的“传统”要求。相反,基于从用于测量一氧化氮、鼻腔气流和位置(全球定位系统)的传感器获取的高分辨率时空数据,对污染暴露进行完全实证分析是可能的。数据通过定制的智能手机应用程序收集并进行映射,以提供对个体层面交通污染暴露的前所未有的洞察。虽然来自低成本小型化传感器的数据质量并不适用于所有应用,但肯定有许多应用非常适合这些数据,特别是公民科学领域的应用。本文展示了基于传感器方法的潜力和局限性,并讨论了这些技术对公民科学发展的更广泛相关性。