Lin Joyce J Y, Buehler Colby, Datta Abhirup, Gentner Drew R, Koehler Kirsten, Zamora Misti Levy
Johns Hopkins University Bloomberg School of Public Health, Environmental Health and Engineering Baltimore MD 21205-2103 USA.
SEARCH (Solutions for Energy, Air, Climate and Health) Center, Yale University New Haven CT 06520 USA.
Environ Sci Atmos. 2023 Feb 21;3(4):683-694. doi: 10.1039/d2ea00100d. eCollection 2023 Apr 13.
Low-cost sensors enable finer-scale spatiotemporal measurements within the existing methane (CH) monitoring infrastructure and could help cities mitigate CH emissions to meet their climate goals. While initial studies of low-cost CH sensors have shown potential for effective CH measurement at ambient concentrations, sensor deployment remains limited due to questions about interferences and calibration across environments and seasons. This study evaluates sensor performance across seasons with specific attention paid to the sensor's understudied carbon monoxide (CO) interferences and environmental dependencies through long-term ambient co-location in an urban environment. The sensor was first evaluated in a laboratory using chamber calibration and co-location experiments, and then in the field through two 8 week co-locations with a reference CH instrument. In the laboratory, the sensor was sensitive to CH concentrations below ambient background concentrations. Different sensor units responded similarly to changing CH, CO, temperature, and humidity conditions but required individual calibrations to account for differences in sensor response factors. When deployed in-field, co-located with a reference instrument near Baltimore, MD, the sensor captured diurnal trends in hourly CH concentration after corrections for temperature, absolute humidity, CO concentration, and hour of day. Variable performance was observed across seasons with the sensor performing well ( = 0.65; percent bias 3.12%; RMSE 0.10 ppm) in the winter validation period and less accurately ( = 0.12; percent bias 3.01%; RMSE 0.08 ppm) in the summer validation period where there was less dynamic range in CH concentrations. The results highlight the utility of sensor deployment in more variable ambient CH conditions and demonstrate the importance of accounting for temperature and humidity dependencies as well as co-located CO concentrations with low-cost CH measurements. We show this can be addressed Multiple Linear Regression (MLR) models accounting for key covariates to enable urban measurements in areas with CH enhancement. Together with individualized calibration prior to deployment, the sensor shows promise for use in low-cost sensor networks and represents a valuable supplement to existing monitoring strategies to identify CH hotspots.
低成本传感器能够在现有的甲烷(CH)监测基础设施内进行更精细尺度的时空测量,并有助于城市减少CH排放以实现其气候目标。虽然对低成本CH传感器的初步研究已显示出在环境浓度下有效测量CH的潜力,但由于存在关于不同环境和季节中的干扰及校准问题,传感器的部署仍然有限。本研究通过在城市环境中进行长期的环境共置,评估了传感器在不同季节的性能,并特别关注了传感器研究较少的一氧化碳(CO)干扰和环境依赖性。该传感器首先在实验室中通过气室校准和共置实验进行评估,然后在实地与一台参考CH仪器进行了两次为期8周的共置。在实验室中,该传感器对低于环境背景浓度的CH浓度敏感。不同的传感器单元对CH、CO、温度和湿度条件的变化反应相似,但需要进行单独校准以考虑传感器响应因子的差异。当在实地部署并与位于马里兰州巴尔的摩附近的一台参考仪器共置时,该传感器在对温度、绝对湿度、CO浓度和时间进行校正后,捕捉到了每小时CH浓度的日变化趋势。不同季节观察到了不同的性能表现,该传感器在冬季验证期表现良好( = 0.65;偏差百分比3.12%;均方根误差0.10 ppm),而在夏季验证期表现较差( = 0.12;偏差百分比3.01%;均方根误差0.08 ppm),夏季CH浓度的动态范围较小。结果突出了在更具变化性的环境CH条件下部署传感器的实用性,并证明了在低成本CH测量中考虑温度和湿度依赖性以及共置CO浓度的重要性。我们表明这可以通过考虑关键协变量的多元线性回归(MLR)模型来解决,以便在CH浓度升高的地区进行城市测量。连同部署前的个性化校准,该传感器显示出在低成本传感器网络中使用的前景,并代表了对现有监测策略的有价值补充,以识别CH热点。