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用于站点迁移研究中并行监测的精确臭氧传感节点网络的开发。

Development of a Network of Accurate Ozone Sensing Nodes for Parallel Monitoring in a Site Relocation Study.

机构信息

South Coast Air Quality Management District, Air Quality Sensor Performance Evaluation Center (AQ-SPEC), Diamond Bar, CA 91765, USA.

Department of Chemical & Environmental Engineering, University of California-Riverside, Riverside, CA 92521, USA.

出版信息

Sensors (Basel). 2019 Dec 18;20(1):16. doi: 10.3390/s20010016.

Abstract

Recent technological advances in both air sensing technology and Internet of Things (IoT) connectivity have enabled the development and deployment of remote monitoring networks of air quality sensors. The compact size and low power requirements of both sensors and IoT data loggers allow for the development of remote sensing nodes with power and connectivity versatility. With these technological advancements, sensor networks can be developed and deployed for various ambient air monitoring applications. This paper describes the development and deployment of a monitoring network of accurate ozone (O) sensor nodes to provide parallel monitoring in an air monitoring site relocation study. The reference O analyzer at the station along with a network of three O sensing nodes was used to evaluate the spatial and temporal variability of O across four Southern California communities in the San Bernardino Mountains which are currently represented by a single reference station in Crestline, CA. The motivation for developing and deploying the sensor network in the region was that the single reference station potentially needed to be relocated due to uncertainty that the lease agreement would be renewed. With the implication of siting a new reference station that is also a high O site, the project required the development of an accurate and precise sensing node for establishing a parallel monitoring network at potential relocation sites. The deployment methodology included a pre-deployment co-location calibration to the reference analyzer at the air monitoring station with post-deployment co-location results indicating a mean absolute error (MAE) < 2 ppb for 1-h mean O concentrations. Ordinary least squares regression statistics between reference and sensor nodes during post-deployment co-location testing indicate that the nodes are accurate and highly correlated to reference instrumentation with R values > 0.98, slope offsets < 0.02, and intercept offsets < 0.6 for hourly O concentrations with a mean concentration value of 39.7 ± 16.5 ppb and a maximum 1-h value of 94 ppb. Spatial variability for diurnal O trends was found between locations within 5 km of each other with spatial variability between sites more pronounced during nighttime hours. The parallel monitoring was successful in providing the data to develop a relocation strategy with only one relocation site providing a 95% confidence that concentrations would be higher there than at the current site.

摘要

近年来,空气传感技术和物联网 (IoT) 连接技术的进步使得空气质量传感器远程监测网络的开发和部署成为可能。传感器和物联网数据记录器的紧凑尺寸和低功耗要求使得具有多功能电源和连接性的远程感测节点的开发成为可能。有了这些技术进步,就可以开发和部署传感器网络,用于各种环境空气监测应用。本文描述了准确臭氧 (O) 传感器节点监测网络的开发和部署,以提供空气监测站重新选址研究中的并行监测。该站的参考 O 分析仪以及三个 O 传感节点网络用于评估南加州圣贝纳迪诺山脉四个社区的 O 跨时空变异性,这些社区目前由加利福尼亚州克莱斯特林的一个单一参考站代表。在该地区开发和部署传感器网络的动机是,由于不确定租赁协议是否会续签,该单一参考站可能需要重新选址。由于有一个新的参考站也是一个高 O 站点,因此该项目需要开发一个准确和精确的传感节点,以在潜在的重新选址站点建立一个并行监测网络。部署方法包括在空气监测站的参考分析仪上进行预部署共定位校准,以及部署后共定位结果表明,1 小时平均 O 浓度的平均绝对误差 (MAE) < 2 ppb。部署后共定位测试中参考和传感器节点之间的最小二乘回归统计数据表明,这些节点准确且与参考仪器高度相关,R 值 > 0.98,斜率偏移 < 0.02,截距偏移 < 0.6,每小时 O 浓度的平均值为 39.7 ± 16.5 ppb,最大 1 小时值为 94 ppb。在彼此相距 5 公里以内的位置之间发现了日间 O 趋势的空间变异性,而站点之间的空间变异性在夜间更为明显。该并行监测成功提供了数据,以制定重新选址策略,只有一个重新选址地点有 95%的置信度,认为那里的浓度将高于当前地点。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/72a1/6982912/ad20fdaa2187/sensors-20-00016-g001.jpg

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