Development and Application of a Next Generation Air Sensor Network for the Hong Kong Marathon 2015 Air Quality Monitoring
Abstract
:1. Introduction
2. Methodology
2.1. Sensor Platform Development
- Two electrochemical sensors (NO2-B4 and CO-B4, Alphasense Ltd, Great Notley, UK), assembled on individual sensor boards supplied by the manufacturer, were selected for NO2 and CO gas measurements. The system was designed to host, at most, 6 sensors. To provide traffic-related criteria gas pollutants here, only two sensors were employed. The NO2 sensor was fitted by the manufacturer with an ozone filter to minimize the interference of the ozone on the sensor response. A laboratory test also confirmed little impact of ozone on NO2 sensor performance.
- A photometer (ES-642, Metone Ltd, Grants Pass, OR, USA) with a PM2.5 cyclone inlet was used for monitoring PM2.5 concentration. This photometer is equipped with a controlled, heated inlet to condition incoming air, but it was found to consume excessive battery power in the humid conditions found in Hong Kong. The heater was disconnected, and humidity correction was applied, as discussed later.
- A digital temperature and humidity sensor (SHT-25, Sensirion, Staefa, Switzerland), with a vendor-specified accuracy of ±1.8% for relative humidity (RH) and ±0.2 °C for temperature, was used to monitor the ambient environment and also to provide data needed to compensate their influence on the performance of the pollutant sensors.
- An Arduino micro MCU board (MEGA ADK, Arduino), mounted with a custom-made shield board with GPS and GSM modules, served to control basic communication functions for the systems: (1) data acquisition from the electrochemical sensors, the photometer, the humidity and temperature sensor and GPS; (2) data transmission from the location to a server at the lab of City University of Hong Kong; (3) data storage on an SD card was included to ensure data storage; (4) data display on a screen mounted on the case of the system.
- A 24-V 20-Ah lithium ion battery pack was used as the power supply for the system. This pack was capable of powering continuous operation of the entire system for a minimum of 24 h.
Pollutant | Sensor | Sensitivity | Response Time | Measurement Range | Zero Drift |
---|---|---|---|---|---|
NO2 | NO2-B4 | −250 to −600 nA/ppm at 2 ppm NO2 | <25 s from zero to 10 ppm NO2 | 0–20 ppm | 0–20 ppb change/year in lab air |
CO | CO-B4 | 420 to 650 nA/ppm at 2 ppm CO | <15 s from zero to 10 ppm CO | 0–1000 ppm | <100 ppb change/year in lab air |
PM2.5 | ES642-PM2.5 | 0.001 mg/m3 | NA | 0–100 mg/m3 | Automatic zero every hour |
O3 | POM | 2 ppb | 20 s for 100% of step change | 2 ppb–10 ppm | <2 ppb/day |
2.2. Sensor Performance
2.2.1. Laboratory Performance Tests
2.2.2. Field Performance Tests
2.2.3. Correction Algorithms
3. Sensor Network Development and Monitoring
3.1. Marathon Route Monitoring Sites
- Start point in Tsim Sha Tsui (TST): The TST site (22°18'09.8"N 114°10'18.2"E) was close to the starting line of the marathon full/half route along Nathan Road, which is normally a busy urban street with a high traffic flow. The station was deployed on the curbside of the running route. The other side of roadway was traffic-controlled at different times during the event.
- Split point in Sham Shui Po (SSP): The SSP site (22°19'48.4"N 114°08'49.5"E) was the point where the full and half marathon route split. The station was located on the south curbside of a highway with adjacent lanes closed for the Marathon route, while there was constant traffic flow on the north side of the highway throughout the monitoring period. The distance between the MAS and north side traffic is about 12 m, and there was dominant offshore wind during the day; thus, the MAS site was upwind of local traffic emissions.
- West Harbor Crossing (WHC): The WHC site (22°17'41.8"N 114°09'03.5"E) was located at the middle point inside the tunnel of Western Harbor Crossing, which is a dual three-lane tunnel connecting Hong Kong island with Kowloon. The MAS was deployed on the curbside along the running route.
- Causeway Bay AQMS roadside point (CWB): The CWB site (22°16'48.0"N 114°11'07.3"E) was along the course;
- Eastern AQMS in Sai Wan Ho (Eastern Point, EP): The EP site (22°16'58.5"N 114°13'09.5"E) was at a 300 m distance from the 10-km route.
3.2. Green Marathon AQHI
4. Results and Discussions
4.1. Laboratory Performance Tests
Sensor | Equation | R2 | Lower Detection Limit |
---|---|---|---|
NO2-B4 (NO2) | Y = 1.08X − 15.14 | 0.99 | 6 ppb |
CO-B4 (CO) | Y = 0.0026X − 0.99 | 0.99 | 0.02 ppm |
POM (O3) | Y = 1.14X + 2.06 | 0.99 | 4 ppb |
4.2. Field Performance Tests
Pollutant | Equation | a | b | c | d |
---|---|---|---|---|---|
NO2 | Conc. = (V − a × RH − b)/(c × RH + d) | 10.97 | −3.96 | −0.17 | 0.33 |
CO | Y = aX + b | 0.0025 | 0.099 | ||
PM2.5 | PM = PMreading × k × [1 + f × RH^2/(1 − RH)] | 0.75 (k) | 0.25 (f) |
4.3. Air Quality along the Marathon Route
4.3.1. Overview
Date and Time | Half/Full Marathon | 10 km | General AQHI | Roadside AQHI | |||
---|---|---|---|---|---|---|---|
25 January 2015 | TST | SSP | WHC | CWB | EP | Sham Shui Po | Mong Kok |
03:00 to 04:00 | 4 | NA | NA | 5 | 4 | 4 | 5 |
04:00 to 05:00 | 4 | 4 | NA | 5 | 4 | 4 | 5 |
05:00 to 06:00 | 3 | 4 | 4 | 5 | 4 | 4 | 5 |
06:00 to 07:00 | 4 | 4 | 4 | 5 | 4 | 4 | 5 |
07:00 to 08:00 | 4 | 5 | 4 | 5 | 4 | 4 | 5 |
08:00 to 09:00 | 4 | 5 | 4 | 5 | 4 | 5 | 5 |
09:00 to 10:00 | 4 | 5 | 4 | 5 | 4 | 5 | 5 |
10:00 to 11:00 | NA | 5 | 4 | 5 | 4 | 5 | 5 |
4.3.2. Tsim Sha Tsui Site
4.3.3. Sham Shui Po Site
4.3.4. West Harbor Crossing Tunnel
5. Conclusion and Future Work
Acknowledgments
Author Contributions
Conflicts of Interest
Disclaimer
References
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Sun, L.; Wong, K.C.; Wei, P.; Ye, S.; Huang, H.; Yang, F.; Westerdahl, D.; Louie, P.K.K.; Luk, C.W.Y.; Ning, Z. Development and Application of a Next Generation Air Sensor Network for the Hong Kong Marathon 2015 Air Quality Monitoring. Sensors 2016, 16, 211. https://doi.org/10.3390/s16020211
Sun L, Wong KC, Wei P, Ye S, Huang H, Yang F, Westerdahl D, Louie PKK, Luk CWY, Ning Z. Development and Application of a Next Generation Air Sensor Network for the Hong Kong Marathon 2015 Air Quality Monitoring. Sensors. 2016; 16(2):211. https://doi.org/10.3390/s16020211
Chicago/Turabian StyleSun, Li, Ka Chun Wong, Peng Wei, Sheng Ye, Hao Huang, Fenhuan Yang, Dane Westerdahl, Peter K.K. Louie, Connie W.Y. Luk, and Zhi Ning. 2016. "Development and Application of a Next Generation Air Sensor Network for the Hong Kong Marathon 2015 Air Quality Monitoring" Sensors 16, no. 2: 211. https://doi.org/10.3390/s16020211
APA StyleSun, L., Wong, K. C., Wei, P., Ye, S., Huang, H., Yang, F., Westerdahl, D., Louie, P. K. K., Luk, C. W. Y., & Ning, Z. (2016). Development and Application of a Next Generation Air Sensor Network for the Hong Kong Marathon 2015 Air Quality Monitoring. Sensors, 16(2), 211. https://doi.org/10.3390/s16020211