| Literature DB >> 32012932 |
Gonçalo Marques1,2, Nuno Miranda1, Akash Kumar Bhoi3, Begonya Garcia-Zapirain4, Sofiane Hamrioui5, Isabel de la Torre Díez6.
Abstract
This paper presents a real-time air quality monitoring system based on Internet of Things. Air quality is particularly relevant for enhanced living environments and well-being. The Environmental Protection Agency and the World Health Organization have acknowledged the material impact of air quality on public health and defined standards and policies to regulate and improve air quality. However, there is a significant need for cost-effective methods to monitor and control air quality which provide modularity, scalability, portability, easy installation and configuration features, and mobile computing technologies integration. The proposed method allows the measuring and mapping of air quality levels considering the spatial-temporal information. This system incorporates a cyber-physical system for data collection and mobile computing software for data consulting. Moreover, this method provides a cost-effective and efficient solution for air quality supervision and can be installed in vehicles to monitor air quality while travelling. The results obtained confirm the implementation of the system and present a relevant contribution to enhanced living environments in smart cities. This supervision solution provides real-time identification of unhealthy behaviours and supports the planning of possible interventions to increase air quality.Entities:
Keywords: air quality; enhanced living environments; internet of things; mobile computing; mobile health
Year: 2020 PMID: 32012932 PMCID: PMC7038467 DOI: 10.3390/s20030720
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576
Figure 1System architecture.
Figure 2Cyber-physical system.
MH-Z14 sensor specification.
| Specification | Value |
|---|---|
| Operating Voltage | 4.5 ~ 5.5V DC |
| Average Current | <60mA at 5V |
| Peak Current | 150mA at 5V |
| Output Signal | 0.4–2 V |
| Measuring Range | 0~5000 ppm |
| Accuracy | ± (50ppm 3% reading) |
| Preheating Time | 3 min |
| Response Time | 120s |
| Working Temperature | 0 ~ 50 ℃ |
| Working Humidity | 0 ~ 95% |
| Sensor lifespan | >5 years |
| Size | 37 mm × 69 mm |
Cost of the system.
| Component | Cost |
|---|---|
| ESP32 | 24.15 € |
| MH-Z14 | 52.11 € |
| Cables and box | 9.50 € |
| Total | 85.76 € |
Figure 3System communication architecture.
Figure 4(a) CO2 collected data; (b) corresponding map view.
Figure 5Mapping of CO2 concentrations during the tests performed.
Measurement of CO2 concentrations during the tests performed.
| Marker | Latitude | Longitude | CO2 (ppm) | Date and Time |
|---|---|---|---|---|
| 1 | 40.41641 | −7.70737 | 511 | 14 December 2019 17:02 |
| 2 | 40.41651 | −7.70725 | 481 | 14 December 2019 17:04 |
| 3 | 40.41663 | −7.70712 | 484 | 14 December 2019 17:06 |
| 4 | 40.41663 | −7.70712 | 439 | 14 December 2019 17:08 |
| 5 | 40.41684 | −7.70684 | 460 | 14 December 2019 17:10 |
| 6 | 40.41692 | −7.7067 | 424 | 14 December 2019 17:12 |
| 7 | 40.41701 | −7.70654 | 510 | 14 December 2019 17:14 |
| 8 | 40.41707 | −7.7064 | 501 | 14 December 2019 17:16 |
| 9 | 40.41715 | −7.70627 | 511 | 14 December 2019 17:18 |
| 10 | 40.4172 | −7.70617 | 670 | 14 December 2019 17:20 |
| 11 | 40.41725 | −7.70605 | 716 | 14 December 2019 17:22 |
| 12 | 40.4173 | −7.70594 | 531 | 14 December 2019 17:24 |
| 13 | 40.41736 | −7.70586 | 453 | 14 December 2019 17:26 |
Summarised comparison review of air quality monitoring solutions.
| MCU | Sensors | Architecture | Low Cost | Open-Source | Connectivity | Data Consulting | GPS | Portability |
|---|---|---|---|---|---|---|---|---|
| ESP8266 [ | CO2 | IoT | √ | √ | Wi-Fi | Web/Mobile | × | × |
| ESP8266 [ | NH3, CO, NO2 C3H8, C4H10, CH4, H2 and C2H5OH | IoT | √ | √ | Wi-Fi | Mobile | × | × |
| Arduino UNO [ | CO2, PM, light, temperature and relative humidity | IoT | √ | √ | Wi-Fi/BLE | Smartwatch | × | × |
| ESP8266 [ | PM, CH2O, temperature and relative humidity | IoT | √ | √ | Wi-Fi | Web/Mobile | × | × |
| Raspberry Pi 2 [ | air quality index, temperature, relative humidity | IoT | √ | √ | Wi-Fi | Web | × | × |
| Waspmote (sensor node) | CO2, CO, SO2, NO2, O3, Cl2, | WSN/IoT | √ | √ | Wi-Fi | Web | × | × |
| Proposed method | CO2 | IoT | √ | √ | BLE | Mobile | √ | √ |
MCU: microcontroller; √: support; ×: does not support.
Portable CO2 monitoring systems available on the market.
| Solution name | Range (ppm) | Resolution (ppm) | Error (ppm) | Price (EUR) |
|---|---|---|---|---|
| DZSF AR8200 [ | 350–9999 | 5 | ± (30 + 5% reading) | 377.38 |
| Reeseiy CO2 [ | 0–9999 | 1 | ± (30 + 5% reading) | 111.42 |
| VOLTCRAFT CM 100 [ | 0–4000 | 1 | ±5% of reading | 302.78 |
| ROTRONIC CP11 [ | 0–5000 | 1 | ± (30 + 5% reading) | 373.39 |
| Extech CO230 [ | 0–9999 | 1 | ± (50 + 5% reading) | 239.00 |