Feasibility and Affordability of Low-Cost Air Sensors with Internet of Things for Indoor Air Quality Monitoring in Residential Buildings: Systematic Review on Sensor Information and Residential Applications, with Experience-Based Discussions
Abstract
:1. Introduction
- Karagulian et al. [16] published a non-systematic review in 2019 on the performance of LSC in the 105 papers published between 2010 and 2019, which evaluated the quality of data in results and calibrations with different algorithms, with the cost of sensors included in details. However, this work included more commercial devices with LCS rather than individual sensors, and the cost of devices is based on the price of sensors before 2019. In the included references, there were already many works designed with IoT technology, but this review did focus on this aspect.
- Chojer et al. [13] published a systematic review in 2020 among the 35 papers published between 2012 and 2019, which focused on monitoring devices development and related information such as sensor types and principles, detection range, reference instruments, calibration methods, and accuracy vs. reference. In the discussion and conclusion, they focused more on the performance of the devices’ calibration accuracy and how to improve it.
- Saini et al. published two systematic reviews. The one in 2020 [17] discussed more about the measurement system with IoT applications. It summarized useful information, such as on Micro-Control Unit (MCU), data transmission, reading, storage, notification methods, and system power supply methods, in the 40 papers published from 2015 to 2020. The other one in 2021 [18] reviewed 40 papers published between 2015 and 2021. This one focused on and summarized the sensors applied in the included papers, which are classified according to their target parameters, and found answers for the applied sensors, with their features and costs mentioned.
- Sá et al. [15] published a systematic review in 2022 among the 48 papers published before 2021 (and it is also included in this review). This work summarises the sensor information of those applied in fieldwork applications and makes comparisons of their performances.
- García et al. [19] published a non-systematic review in 2022 without specifying the sources of the included papers. It discussed the pros and cons of LCS devices, their applications, and many key issues based on the findings from many previous reviews and related works.
2. Methods
- What is applied: sensor type, target pollutants, used micro-controllers, used data collection platforms, etc.;
- How it is applied in devices: data reading and collection method, sensor interfaces working condition, power supply, costs, etc.;
- How it is applied in fieldwork: sampling numbers, measurement periods, reading intervals, calibration methods, etc.
3. Results
3.1. The Included Papers
- (a)
- LCS application in residential buildings (n = 16);
- (b)
- Testing specific devices and sensor’s performance (n = 4);
- (c)
- Device and IoT system development logs (n = 2);
- (d)
- Review paper (n = 1).
- The included review focused on the performance of LCS in research from 2013 to 2021, such as their application methods and accuracy of results. It covered the research not just in a specific indoor space and did not focus on the application with IoT [15];
- This review does not focus on the resulting data of LCS in the resulting data, but its application methods, especially those in residential buildings, those with IoT technology, their affordability, calibration methods in detail, advantages and limitations for medium/long-term IAQ monitoring in residential buildings, from papers between 2017 and 2023.
3.2. Monitored Parameters and Corresponding Sensors
3.3. Calibration
3.4. Micro-Control Unit in Device Development
4. Discussion
4.1. Most Measured Parameters, “User-Friendly” and “Low-Cost” Sensors
4.2. Unclear Definition of “Low-Cost” in Gas Sensor
4.3. The Increase from Device Cost to Commercial Price
- Costs on hardware: it includes the cost of selected sensors, other materials such as those for circuits and coatings, device design and tests, assembling and manufacturing, calibration, etc.;
- Costs on software: end user’s app design, data collection platform design, data collection API (Application Programming Interface) and data storage, online server maintenance, etc.;
- Costs on services: marketing and advertising, after-services for device maintenance, Q&A, etc.;
- Other costs on commercial operations: shipment and storage of devices materials, taxes on company, products and shipping, etc.;
- Profits of the products, etc.
4.4. Some Basic Features of All the Mentioned Sensors in the Included Papers
- The detection range is the maximum range to be detected, but most sensors have another small range with higher accuracy.
- Resolution means when the reading changes, the minimum changes in reading values.
- Drift means how much the value will shift from the accurate level during the time, which is based on the result of simulation, such as the 200-h test by SGP30 [51]. And the lifespan is the expected time to provide reliable readings.
- The interface is the protocol for data reading from sensors, including I2C (Inter-Integrated Circuit), UART (universal asynchronous receiver/transmitter), PWM (Pulse-Width Modulation), SPI (Serial Peripheral Interface), Analog signal and other two special methods (USB (Universal Serial Bus) and ALARM (this is not an abbreviation and it is a particular method in S-300 sensor [52])). They are more dependent on the principles of how sensors read from the environment and are selected by the designer of the sensors.
- Supply Voltage is displayed in “typical voltage (minimum~maximum voltage)”. If the supply voltage is outside of this range, the sensor will not start working or get burned.
- Power consumption is the energy consumption of sensors while working, sleeping, or heating period. It is mentioned in units of W (watt) or A (ampere). It is important to know if the devices are designed to be supplied by the batteries.
Sensor | Ref. 1 | Measurement Features 4 | Device Development Features | |||||||
---|---|---|---|---|---|---|---|---|---|---|
Parameters 3 | Detect Range | Resolution | Accuracy | Response Time | Drift/Lifespan | Interface | Supply Voltage (V) | Power Consumption | ||
AHT10 | [53] | T (°C) | −40~85 | 0.01 | ±2 | 5–30 s | <0.04/yr2 | I2C | 3.3 (1.8~3.6) | 3.3 μW(working) 0.9 μW(sleeping) |
RH (%) | 0–100 | 0.024 | ±0.3 | 8 s | <0.5/yr | |||||
AirCO2ntrol Mini | [54] | T (°C) | 0~50 | 0.1 | ±1.5 | 20~30 min | NM 2 | USB | 5 | 300 mA (working) |
CO2 (ppm) | 0~3000 | 1 | ±(100 + 7%) | 2 min | NM | |||||
AirVisual M25b | — | No information found | ||||||||
Amphenol Telaire T6703-5 K | [50] | CO2 (ppm) | 0~5000 | NM | ±75 or ±10% | <3 min | 10yr | I2C, UART | (4.5~5.5) | 25 mA (working) |
BH1750 | [55] | Light (lux) | NM | 1 | NM | NM | NM | I2C | 5 | NM |
BME280 | [56] | T (°C) | −40~85 | 0.01 | ±1 | NM | NM | I2C, SPI | 1.8 (1.7~3.6) | 340~714 μA (working) 0.1~0.2 μA (sleeping) |
RH (%) | 0~100 | 0.008 | ±3% | 1 s | 0.5/yr | |||||
AP(hPa) | 300~1100 | 0.18 | ±1.7 | NM | 1/yr | |||||
BME680 | [57] | T (°C) | −40~85 | 0.01 | ±1 | NM | NM | I2C, SPI | 1.8 (1.7~3.6) | 340~714 μA (working) 0.15~0.29 μA (sleeping) |
RH (%) | 0–100 | 0.008 | ±0.3 | 8 s | 0.5/yr | |||||
AP(hPa) | 300–1100 | 0.18 | ±0.12 | NM | 1/yr | |||||
IAQ index | 0–500 | 1 | ±15 | <1 s | NM | |||||
BMP180 | [58] | AP(hPa) | 300~1100 | 0.01 | ±0.12 | NM | 1/yr | 2.5 (1.8~3.6) | 5 μA (working) | |
BMP280 | [59] | AP(hPa) | 300~1100 | 0.01 | ±1 | NM | 1/yr | 2.5 (1.8~3.6) | 2.8 μA (working) | |
CO-B4 | [60] | CO (ppm) | 0~1000 | 2 | ±5 | <30 | <10/yr | I2C | (1.7~3.6) | <2.15 mA (working) <5 μA (sleeping) |
CSS811 | [61,62] | T (°C) | −5~50 | NM | NM | NM | NM | I2C | 3.3 (1.8~3.6) | 60 mW (working) |
RH (%) | 10~95 | NM | NM | NM | NM | |||||
TVOC (ppb) | 0~1187 | NM | NM | NM | NM | |||||
CO2eq (ppm) | 400~8192 | NM | NM | NM | NM | |||||
DHT22 | [63] | T (°C) | −40~80 | 0.1 | ±0.2 | 2 s | NM | single-bus | (3.3~6) | NM |
RH (%) | 0~100 | 0.1% | ±1 | 2 s | 0.5%/yr | |||||
GP2Y1010AU0F | [64] | dust | 0–0.5(mg/m3) | NM | ±0.5V/(0.1 mg/m3) | NM | NM | NM | 5.0 (4.5–5.5) | 11 mA (working) |
GPY1010AU0F | — | No information found | ||||||||
HPM Series | [65,66] | PM (2.5/10) (μg/m3) | 0~1000 | NM | ±15 | <6 s | 10yr | UART | 5 (4.8~5.2) | 80 mA (working) |
HPMA115S0-XXX | The same sensor as HPM Series above | |||||||||
iAM | — | Product found, but datasheet not found | ||||||||
K30 | [67] | CO2 (ppm) | 0~5000 | NM | ±(30 + 3%) | NM | >15 yr | I2C, UART | (4.5~14) | NM |
Lit92 | [68] | T (°C) | -55~150 | NM | ±0.2 | NM | NM | Analog signal | NM | NM |
MH-Z14 | [69] | CO2 (ppm) | 0~5000 | NM | ±(50 + 5%) | <90 s | >5 yr | UART, Analog signal | (4.5~5.5) | <85 mA (working) |
MH-Z14A | [70] | CO2 (ppm) | 0~10,000 | NM | ±(50 + 5%) | <120 s | >5 yr | UART, Analog signal | (4.5~5.5) | <60 mA (working) |
MH-Z19A | [71] | CO2 (ppm) | 0~5000 | NM | ±(50 + 5%) | <60 s | >5 yr | UART | (3.6~5.5) | <18 mA (working) |
MICS-4514 | [72] | T (°C) | -30~85 | NM | NM | NM | NM | Analog signal | 5 (4.9–5.1) | 76 mW (heating) 8 mW (working) |
RH (%) | 5–95 | NM | NM | NM | NM | |||||
Reducing gas (ppm) | 1–1000 | NM | NM | NM | NM | |||||
Oxiding gas (ppm) | 0.05–10 | NM | NM | NM | NM | |||||
MICS-6814 | [73] | T (°C) | -30~85 | NM | NM | NM | NM | Analog signal | 5 (4.9–5.1) | 88 mW (heating) 8 mW (working) |
RH (%) | 5–95 | NM | NM | NM | NM | |||||
Reducing gas (ppm) | 1–1000 | NM | NM | NM | NM | |||||
Oxiding gas (ppm) | 0.05–10 | NM | NM | NM | NM | |||||
NH3 (ppm) | 1–300 | NM | NM | NM | NM | |||||
MQ7 | [74] | CO (ppm) | 10~500 | NM | NM | NM | NM | Analog signal | 5.0 (4.9–5.1) | <900 mW (heating and working) |
OPC-N3 | [75] | PM (1.0/2.5/10) (μg/m3) | 0~2000 | NM | NM | NM | NM | SPI, Micro USB | (4.8~5.2) | 180 mA (working) |
OPC-R1 | [76] | PM (0.35~12.4) (μg/m3) | NM | NM | NM | NM | NM | SPI | (4.8~5.2) | 95~100 mA (working) |
PASDD Model 11-D | [77] | PM (1/2.5/4/10/coarse) (μg/m3) | 0~100,000 | NM | NM | NM | NM | NA | 13 | 5.4 W (working) |
Particle numbers (total) | NA 2 | NA | NA | NM | NM | |||||
PMS3003 | [78] | PM (0.1/0.3/2.5/1.0) (μg/m3) | 0~500 | 1 | ±10% | 10 s | 3 yr | UART | 5.0 (4.5–5.5) | <100 mA |
Particle numbers (0.3/0.5/1.0) | NA | NA | NA | 10 s | 3 yr | |||||
PMS6003 | [79] | PM (0.1/0.3/2.5/1.0) (μg/m3) | 0~500 | 1 | ±10% | <10 s | >10 yr | UART | 5.0 (4.5–5.5) | <100 mA |
Particle numbers (0.3/0.5/1.0) | NA | NA | NA | <10 s | >10 yr | |||||
PMS7003 | [80] | PM (0.1/0.3/2.5/1.0) (μg/m3) | 0~500 | 1 | ±10% | <10 s | >10 yr | UART | 5.0 (4.5–5.5) | <100 mA |
Particle numbers (0.3/0.5/1.0) | NA | NA | NA | <10 s | >10 yr | |||||
PM-Model-II | — | No information found | ||||||||
Purple Air PA-II | [81,82] | Particle numbers (0.3/0.5/1.0) | 0~500 | 1 | ±10% | <10 s | >3 yr | NA | NA | NA |
S-300 | [52] | CO2 (ppm) | 0~10,000 | NM | ±(30 + 3%) | 60 s | MN | I2C, UART, PWM, Analog signal, ALARM | 5.0 (4.5–5.5) | 25 mA (working) <0.5 mA (sleeping) |
SCD30 | [83] | T (°C) | 0~50 | NM | ±(0.4 + 0.023×(T-25)) | 20 s | 0.03/yr (15 yr) | I2C, UART | (3.3~5.5) | 19 mA (working) |
RH (%) | 0~100 | NM | ±3 | 8 s | 0.25/yr (15 yr) | |||||
CO2 (ppm) | 0~40,000 | NM | ±(30 + 3%) | <10 s | 50/calibration (15 yr) | |||||
SCD40 | [84] | T (°C) | −10~60 | NM | ±0.8 | 120 s | 0.03/yr (>10 yr) | I2C | 3.3/5.0 (2.4~5.5) | 15/11 mA (working) |
RH (%) | 0~100 | NM | ±6 | 90 s | 0.25/yr (>10 yr) | |||||
CO2 (ppm) | 0~40,000 | NM | ±(50 + 5%) | 60 s | (5 + 5%)/calibration (>10 yr) | |||||
SDS018 | [85] | PM (2.5/10) (μg/m3) | 0~999.9 | NM | ±(10 + 15%) | 1 s | NM | UART | 5 (4.7~5.3) | 60 mA (working) <4 mA (sleeping) |
SenseAir S8 | [86] | CO2 (ppm) | 400~10,000 | NM | ±(40 + 3%) | <30 s | >15 yr | UART | (4.5~5.25) | 18 mA (working) |
SGP30 | [51] | TVOC (ppb) | 0–60,000 | 1–32 | NM | NM | 1.3%/10 yr | I2C | 1.8 (1.62–1.98) | 48.8 mA (working) 2 μA (sleeping) |
CO2eq (ppm) | 400–60,000 | 1~31 | NM | NM | NM | |||||
Shinyei ppd42 | [87] | PM (1.0) (pcs/liter) | 0~28,000 | NM | NM | NM | NM | PWM | 5 (4.5~5.5) | 90 mA (working) |
SHT11 | [88] | T (°C) | −40~123.8 | 0.01 | ±0.5 | 5~30 s | <0.5/yr | I2C | 3.3 (2.4~5.5) | 0.55 mA (working) 0.3 μA(sleeping) |
RH (%) | 0~100 | 0.05 | ±4.5 | 8 s | <0.04/yr | |||||
SHT20 | [89] | T (°C) | −40~125 | 0.01~0.04 | ±0.3 | 5~30 s | <0.02/yr | I2C | 3.0 (2.1~3.6) | 0.9 mW (working) 0.5 μW (sleeping) |
RH (%) | 0~100 | 0.04~0.7 | ±3 | 8 s | <0.25/yr | |||||
SHT30 | [90] | T (°C) | −40~125 | 0.01 | ±0.2 | > 2 s | <0.03/yr | I2C | 3.0 (2.1~3.6) | 0.9 mW (working) 0.5 μW (sleeping) |
RH (%) | 0~100 | 0.01 | ±2 | 8 s | <0.25/yr | |||||
SHT31-D | [90] | T (°C) | −40~125 | 0.01 | ±0.2 | > 2 s | <0.03/yr | I2C | 3.0 (2.1~3.6) | 0.9 mW (working) 0.5 μW (sleeping) |
RH (%) | 0~100 | 0.01 | ±2 | 8 s | <0.25/yr | |||||
SPS30 | [91] | PM(1.0/2.5/4/10) (μg/m3) | 0~1000 | 10 | ±10 | 1 s | 10 yr | I2C, UART | 5 (4.5–5.5) | 55 mA (working) 38 μA (sleeping) |
Particle numbers (0.5/1/2.5/4/10) | NA | NA | NA | 1 s | 10 yr | |||||
SPEC DGS-NO2 | [92] | NO2 (ppm) | 0~5 | 0.02 | ±3% | <30 s | >5 yr | UART | 3.3 (2.6~3.6) | 14 mW (working) 100 μW (sleeping) |
SPEC DGS-CO | [93] | CO (ppm) | 0~1000 | 0.1 | ±15% | <30 s | >5 yr | UART | 3.0 (2.6~3.6) | 12 mW (working) |
SVM30 | [94] | T (°C) | 5~55 | 0.01 | ±1 | NM | <0.02/yr | I2C | 5 (4.5–5.5) | 49 mA (working) |
RH (%) | 25~75 | 0.01 | ±5 | 8 s | <0.25/yr | |||||
Ethanol (ppm) | 0~1000 | 0.2% | ±7% | NM | 15%/10 yr | |||||
H2 (ppm) | 0~1000 | 0.2% | ±7% | NM | 10%/10 yr | |||||
TVOC (ppb) | 0~60,000 | 1–32 | ±7% | NM | NM | |||||
CO2eq (ppm) | 400~60,000 | 1~31 | ±7% | NM | NM | |||||
T-110 | [49] | CO2 (ppm) | 400~10,000 | NM | ±(50 + 3%) | 90 s | NM | UART, Analog signal, PWM | 5 (4.5–5.5) | 20 mA (working) |
TSL2591 | [95] | Light (lux) | NM | NM | NM | NM | NM | I2C | 3.0 (2.7~3.6) | 20 mA (working) 3.0 mA (sleeping) |
WZ-S formaldehyde module | [96] | Formaldehyde (ppm) | 0~2 | 0.001 | NM | <40 s | 5 yr | UART | 5 (5~7) | NM |
Y-Pods | — | A device designed by Hannigan Lab, University of Colorado Boulder. No datasheet was found for it. |
4.5. The Skipped Features in Sections 3 (Results) and 4.4
4.6. Calibration Methods of Low-Cost Sensors
- (1)
- Calibration with reference reading sources, whether from research-level devices or local meteorological stations.
- (2)
- Calibration with calibration gas at a confirmed level in the air chamber.
Reference | Parameters | Reference Devices | Calibration Methods | Data Analysis Methods |
---|---|---|---|---|
[24,98] | T | Michell instruments S8000 | Sensors are calibrated with reference devices in a 10 L incubator from 21 to 32 °C. | A linear regression model of the form Yi = α + βXi. |
PM2.5 | TSI Aerodynamic Particle Sizer Model 3321 | 2-step calibration for PM and CO2 in the test house and environmental chamber: In the test house, 20 devices collocated with reference devices. They filled CO2 to 2000 ppm with pressurized gas to calibrate CO2 and used a nebulizer with 3–5 μm particles to calibrate PM separately. In an 8 m3 environmental chamber, they let the research sit inside for 30 min and move out and measure during the increase and decrease period to calibrate CO2; they used a nebulizer again, while PM2.5 lower than 50 μg/m3, to calibrate PM. | Univariate linear models of the form y = b + mx, with b and m calculated from average value in 3 experiments. | |
CO2 | LI-COR Model 6252 | |||
TVOC | No reference devices | Researchers are used as TVOC source in a 27 m3 chamber and calibrated device to output the same values. | By comparing the average, reference curve among test sensors. | |
CO | N/A | Gas standard with Zero Air Gas (ZAG) was applied to achieve levels of 0, 1, 2, and 4 ppm in a 5 L chamber. The data in the 60 min in the middle of the 2 h test at each standard level are used for calibration. | Four data points at each level are used to fit a linear model to correct CO readings. | |
[26,100] | PM10, PM2.5 | Palas Fidas 200 | Machine Learning models are applied to calibrate PM readings with Absolute Humidity and Relative Humidity. Then, the readings are compared with a reference device. | Calibration used 4 Machine learning models: Multivariate Linear Regression (MLR), Multi-Layer Perceptron (MLP), Convolution Neural Network (CNN), and Random Forest (RF). Then, they used a scatter plot with a regression-fitted line to evaluate the performance of calibration. |
[33] | T, RH | meteorological station at the Birmingham International Airport | NM | NM |
PM1, PM2.5, PM10 | TSI-3330 | TSIs were collocated with the sensor in the target rooms during monitoring. LCS are calibrated according to RH level and calculated the correlation with TSIs’ readings. | Pearson correlation (r). | |
[14] | T | Model 425 and 435, Testo | All the devices for test and reference are collocated together to compare the readings together. | Linear regression and Pearson correlation coefficients. |
PM | Grimm Model 1371 (miniWRAS) | |||
CO2 | The LI-COR 850 | |||
VOC | GreyWolf IQ-610 and Aeroqual Photoionization Detector | |||
[34] | PM | Sidepak | The reference device was collocated with one of the devices, and then the data comparison was used to calculate the linear algorithm for the analog reading from the sensors, according to the linear correlation feature between PM level and output voltage. | A linear regression model is provided by the sensor and the calculation for the slope and intercept with comparison to the reference readings. |
[35] | PM | Thermo Scientific FH 62 C14 | Sensors are deployed close together in the living room and calibrated against the reference device for 50 h immediately prior to the experiment. | Linear regression over the origin, and we used the regression coefficients to calibrate individual particle counters. |
4.7. Possible Solutions for Medium/Long-Term IAQ Monitoring Applications in Residential Buildings
4.7.1. Integrated IAQ Monitoring with Building System
4.7.2. Local Network and Data Storage with IoT
4.7.3. Modular Design of Air Sensors and Components
4.7.4. IAQ Data Real-Time Display
4.7.5. Air Quality Monitoring Network
4.8. Limitations to Implementing Medium/Long-Term IAQ Monitoring in Residential Buildings
4.8.1. Awareness of IAQ from Users
4.8.2. Occupants May Not Realize the Need for and Significance of Medium/Long-Term IAQ Monitoring
4.8.3. Limitations on Low-Cost Sensor Types
4.8.4. Limitations on Pollutant Detection Range, Precision and Accuracy
4.8.5. The Misleading Information about Sensors and MCUs from the Internet and Inadequate Instruction from the Manufacturers
- ESP8266 usually refers to the DevKits based on ESP8266 modules or other clones;
- ESP-12E/F is one of the ESP8266 modules developed by a third-party manufacturer (Ai-Thinker) based on ESP8266EX [103];
- ESP8266EX is one of the SoCs developed by Espressif [97] with Wi-Fi communication;
- Xtensa® L106 is its chips as a microprocessor inside ESP8266EX [97].
4.8.6. Commercial Sensor Platform and Open-Source Integrated Development Environment
5. Conclusions
6. Limitations of This Research
- Some sensors actually are able to measure multiple parameters, but those readings are not used or mentioned in their papers;
- Some names or versions of sensors may not be correctly recorded by the authors of the included papers due to the reasons mentioned in Section 4.8.5;
- The costs of sensors in Table 3 are from at least 2~3 years ago; there may be new prices, and the costs also vary from the local markets in different regions.
- The datasheets of all sensors are not verified one by one, so it is not certain if there are more cases of sensor misuse as mentioned in Section 4.4.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Study Types | Ref. | Publication Year | Place of Research 1 | Research Period | Total Period | Samples | Measured Parameters 2 | Sensors Implemented | Measurement Interval | Calibration | Micro-Controller Unit | Internet Connection | Data Transmission Protocol | Data Collection Platform | Data Analysis Platform |
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Devices Application | [20] | 2022 | South Korea | June 2017–May 2019 | 24 months | 10 households | T, RH, CO2, PM2.5 |
| 5 min | NM | NM 3 | Yes | NM | NM | IBM SPSS Statistics software version 27. |
[21] | 2022 | Trondheim, Norway | 8 December 2020—28 February 2021/ 21 May 2021–21 June 2021 | 3 + 1 month | 21 houses | T, RH, CO2, Formaldehyde, TVOC |
| 5 min | Yes |
| No | N/A 3 | Local memory | IBM® SPSS® (Ver. 28.0). | |
[22] | 2023 | Rochester, USA | NM | NM | 1 test lab 6 | PM2.5 |
| 2 min | Yes | NA | Yes | BACnet | Well Living Lab Cloud | Microsoft Azure (Microsoft, Redmond, WA, USA) | |
[23] | 2021 | NM | NM | NM | 1 test lab 6 | VOC |
| NM | NM | NM | NM | Bluetooth | Beacon system | Beacon system | |
[24] | 2022 | California, USA | July 2016–April2018 | 21 months | 93 residences | T. RH, light, CO2, CO, PM2.5, TVOC, NO2 |
| NM | Yes | NM | NM | NM | NM | NM | |
[25] | 2020 | Pyeongtaek, South Korea | June 2017–September 2018 | 15 months | 8 households | T, RH, CO2, PM |
| 5 min | NM | NM | Yes | Ethernet | Honeywell | NM | |
[26] | 2023 | Bradford, UK | September 2021–October 2021 | 2 months | 8 households | T, RH, PM10, PM2.5 |
| 15 min | Yes | NM | Yes | Wi-Fi | NM | NM | |
[27] | 2019 | Colorado, USA | 17 August–10 October 2016/ 28 June–12 September 2017 | 2 + 3 months | 10 houses in 2016, 19 houses in 2017 | T, RH, CO, PM2.5, Other pollutants with passive samplers 4 |
| NM | Yes | NM | No | NM | Local memory | NM | |
[28] | 2020 | Sheffield, UK | Janauary–April 2020 | 4 months | 20 households with fuel stoves | T, RH, light, noise, air pressure, distance, CO, PM2.5, PM1, NO2, NH3 |
| 145 s | Yes |
| Yes | Wi-Fi | Virtual server from the University of Sheffield | NM | |
[29] | 2020 | Cottonwood Heights, USA | 19 May–19 July 2016 | 2 months | 1 house | T, RH, altitude PM, location |
| 1 min | Yes |
| Yes | Ethernet | InfluxDB | NM | |
[30] | 2022 | North Alabama/Texas, USA | May 2019–May 2020 | 305 days | 2 residences | PM |
| NM | Yes | NM | Yes | NM | NM | NM | |
[31] | 2022 | Los Angeles, USA | December 2017–June 2019 | 19 months | 1 community with 30 sensors | PM, NO2, Traffic flow |
| 80–120 s | Yes | NM | Yes | Wi-Fi | PurpleAir SERVER | NM | |
[32] | 2018 | Navajo Nation, USA | February–April 2014 | 3 months | 41 homes | CO |
| 15 s | Yes | NM | No | NA | Local memory | MATLAB | |
[33] | 2023 | Worcestershire, UK | 16 December 2021–2 February 2022 | 1.5 months | 1 house | T, RH, PM |
| 10 min | Yes | NM | No | NM | NM | NM | |
[34] | 2017 | Raipur, India | NM | NM | 2 households | PM |
| NM | Yes |
| No | ZigBee | NM | NM | |
[35] | 2021 | Beijing, China | 14 March–24 March 2020 | 10 days | 14 rooms and 1 outdoor point | PM, particle numbers |
| 1 min | Yes | NM | NM | NM | NM | SPSS Statistics 24 (IBM Corp., NY, USA) | |
Development Log | [36] | 2021 | N/A | N/A | N/A | N/A | CO2, CO, PM2.5 |
| NM | Yes |
| No | Wi-Fi | Home gas detection and monitoring system | Excel |
[37] | 2019 | N/A | 21 March–24 March 2019 | 4 days | 1 house | T, RH, CO2, CO, NO2, dust 7 |
| 1 min | Yes |
| Yes | Wi-Fi | Blynk (2.28.17v) IoT platform | NM | |
Devices Performance Test | [38] | 2019 | NM | N/A | N/A | N/A | T, RH, air pressure, light, CO2, VOC, |
| N/A | Yes |
| Yes | Wi-Fi | PostgreSQL |
|
[39] | 2020 | Salreu/Gafanha/Aveiro, Portual | September 2019–March 2020 | 6 months | 3 houses | T, RH, CO2, CO, PM10, PM2.5, NO2, OX | Sensors not mentioned | 15 min | Yes | NM | NM | NM | NM | NM | |
[14] | 2021 | Fribourg, Switzerland. | N/A | N/A | 1 test chamber 6 | T, RH, CO2, PM, TVOC | Many sensors within commercial products 5 | 10 s to 5 min depending on the devices | Yes | N/A | No | N/A | N/A | NumPy package of Python | |
[40] | 2022 | Manisa, Turkey | 6 Novmber –13 Novmber 2020 | 7 days | 1 house | T, RH, CO2, PM |
| 5 s | Yes |
| Yes | Wi-Fi | Blynk (2.28.17v) IoT platform | NM | |
Review | [15] | 2022 | N/A | N/A | N/A | N/A | N/A | N/A | N/A | N/A | N/A | N/A | N/A | N/A | N/A |
Sensor or Device Code | Manufacturer or Brand 1 | Air Pollutant 2,3 | Environmental Factor 2,3 | Other Parameters | |||||||||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
PM1.0 | PM2.5 | PM10 | dust | CO2 | CH2O | TVOC | VOC | CO | NO2 | NH3 | PN | T | RH | AP | Light | Distance | Altitude | Location | Traffic | ||
AHT10 | |||||||||||||||||||||
AirCO2ntrol Mini | TFA | ||||||||||||||||||||
AirVisual M25b | |||||||||||||||||||||
Amphenol Telaire T6703-5 K | |||||||||||||||||||||
BH1750 4 | |||||||||||||||||||||
BME280 | Bosch | ||||||||||||||||||||
BME680 | Bosch | ||||||||||||||||||||
BMP180 | Bosch | ||||||||||||||||||||
BMP280 | |||||||||||||||||||||
CO-B4 | Alphasense | ||||||||||||||||||||
CSS811 | |||||||||||||||||||||
DHT22 | Aosong Electronics | ||||||||||||||||||||
GP2Y1010AU0F | SHARP | ||||||||||||||||||||
GPY1010AU0F | SHARP | ||||||||||||||||||||
HPM Series | Honeywell | ||||||||||||||||||||
HPMA115S0-XXX | Honeywell | ||||||||||||||||||||
iAM | AMS | ||||||||||||||||||||
K30 | CO2meter | ||||||||||||||||||||
Lit92 | Littelfuse | ||||||||||||||||||||
MH-Z14 | |||||||||||||||||||||
MH-Z14A | |||||||||||||||||||||
MH-Z19A | |||||||||||||||||||||
MICS-4514 | |||||||||||||||||||||
MICS6814 | |||||||||||||||||||||
MQ7 | |||||||||||||||||||||
OPC-N3 | Alphasense | ||||||||||||||||||||
OPC-R1 | Alphasense | ||||||||||||||||||||
PASDD Model 11-D | Grimm Technologies | ||||||||||||||||||||
PMS3003 | Plantower | ||||||||||||||||||||
PMS6003 | Plantower | ||||||||||||||||||||
PMS7003 | Plantower | ||||||||||||||||||||
PM-Model-II | Green Built EnvMent | ||||||||||||||||||||
Purple Air PA-II | PurpleAir | ||||||||||||||||||||
S-300 | ELT Sensor | ||||||||||||||||||||
SCD30 | Sensirion | ||||||||||||||||||||
SCD40 | Sensirion | ||||||||||||||||||||
SDS018 | NovaFitness | ||||||||||||||||||||
SenseAir S8 | SenseAir | ||||||||||||||||||||
SGP30 | Sensirion | ||||||||||||||||||||
Shintei ppd42 | |||||||||||||||||||||
SHT11 | Sensirion | ||||||||||||||||||||
SHT20 | Sensirion | ||||||||||||||||||||
SHT30 | Sensirion | ||||||||||||||||||||
SHT31-D | Sensirion | ||||||||||||||||||||
SPS30 | Sensirion | ||||||||||||||||||||
SPEC DGS-NO2 | |||||||||||||||||||||
SPEC DGS-CO | |||||||||||||||||||||
SVM30 | Sensirion | ||||||||||||||||||||
T-110 | ELT sensor | ||||||||||||||||||||
TSL2591 4 | |||||||||||||||||||||
WZ-S formaldehyde module | DART | ||||||||||||||||||||
Y-Pods | Hannigan Lab | ||||||||||||||||||||
LTR-559 4 | |||||||||||||||||||||
Ultimate GPS breakout 4 | Adafriut | ||||||||||||||||||||
(VDS)-718,297 4 | CalTrans | ||||||||||||||||||||
included sensor numbers | 13 | 16 | 9 | 1 | 11 | 1 | 3 | 1 | 6 | 3 | 1 | 1 | 15 | 13 | 2 | 3 | 1 | 1 | 1 | 1 |
Sensor Type | Ref. | Parameters | Retail Price | ||||||
---|---|---|---|---|---|---|---|---|---|
T | RH | PM | VOC | CO2 | CO | NO2 | |||
Commercial devices with low-cost sensors mentioned in the literature with their cost 1 | |||||||||
Netatmo (I/O unit) | [14] | USD 165 | |||||||
Awair 2nd Edition (Awair) | [14] | USD 199 | |||||||
Foobot | [14] | USD 199 | |||||||
Kaiterra Laser Egg (Kaiterra) | [14] | USD 199 | |||||||
AirU | [29] | USD 200 | |||||||
AirVisual Pro (AirVisual) | [14] | USD 269 | |||||||
uHoo (uHoo) | [14] | USD 329 | |||||||
UMDS | [29] | USD 366 | |||||||
Clarity Node (Clarity) | [14] | USD 1000 | |||||||
Research level devices as reference mentioned in the literature with their cost 1 | |||||||||
TSI Sidepak AM510 | [34] | USD 3500 | |||||||
AirMetrics MiniVol | [29] | USD 3650 | |||||||
TSI DustTrak II | [29] | USD 5000 | |||||||
GRIMM 1.109 | [29] | USD 12,000 | |||||||
Part of the sensors mentioned in the literature with their costs 1 | |||||||||
DHT22 | [37] | USD 3.0 | |||||||
SHT 31 2 | [14] | USD 14.5 | |||||||
LIT 92 | [14] | USD 16.5 | |||||||
GP2Y1010AU | [37] | USD 5.0 | |||||||
PMS7003 | [40] | USD 17.0 | |||||||
Honeywell HPM series | [29] | <USD 20 | |||||||
Sharp GP2Y1010 | [29] | <USD 20 | |||||||
Shinyei PPD42NS | [29] | <USD 20 | |||||||
Plantower PMS series | [29] | <USD 20 | |||||||
SDS018 | [14] | USD 26.8 | |||||||
SPS30 | [14] | USD 46.7 | |||||||
Alphasense OPC-R1 | [14] | USD 116.0 | |||||||
Alphasense OPC-N3 | [14,33] | USD 305.0/GBP 250 | |||||||
MH-Z19A | [40] | USD 15.0 | |||||||
MH-Z14 | [37] | USD 25.0 | |||||||
K30 | [14] | USD 85.0 | |||||||
Alphasense CO-B4 | [32] | USD 80.0 | |||||||
USB-EL-CO300 | [32] | USD 125.0 | |||||||
MICS-4514 | [37] | USD 20.0 |
Ref. | Parameters | Reference Devices | Calibration Methods |
---|---|---|---|
[22] | PM |
| Calibrated at background level, 150, 400, and 900 μg/m3 with the reference device. |
[27] | PN, BC, CO, NO2 | NM | Calibrated with federal reference monitors from the Colorado Department of Public Health and Environment. |
[28] | PM |
| Humidity-based bias correction and k -Köhler theory are methods used to calibrate LCS PM sensors with Palas Findas 200 as reference devices. |
[39] | CO, CO2, NO2, PM10, PM2.5, O3 |
| The two reference devices and the LCS devices had intercomparison as calibration. |
[29] | PM |
| One calibration week with LCS and four research-level devices together in the rooms (door closed). |
[40] | T, RH, PM, CO2 |
| 1-week calibration, T and RH calibrated with Xiaomi Mijia; PM and CO2 calibrated with Dienmern DM72B. |
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Yu, Y.; Gola, M.; Settimo, G.; Buffoli, M.; Capolongo, S. Feasibility and Affordability of Low-Cost Air Sensors with Internet of Things for Indoor Air Quality Monitoring in Residential Buildings: Systematic Review on Sensor Information and Residential Applications, with Experience-Based Discussions. Atmosphere 2024, 15, 1170. https://doi.org/10.3390/atmos15101170
Yu Y, Gola M, Settimo G, Buffoli M, Capolongo S. Feasibility and Affordability of Low-Cost Air Sensors with Internet of Things for Indoor Air Quality Monitoring in Residential Buildings: Systematic Review on Sensor Information and Residential Applications, with Experience-Based Discussions. Atmosphere. 2024; 15(10):1170. https://doi.org/10.3390/atmos15101170
Chicago/Turabian StyleYu, Yong, Marco Gola, Gaetano Settimo, Maddalena Buffoli, and Stefano Capolongo. 2024. "Feasibility and Affordability of Low-Cost Air Sensors with Internet of Things for Indoor Air Quality Monitoring in Residential Buildings: Systematic Review on Sensor Information and Residential Applications, with Experience-Based Discussions" Atmosphere 15, no. 10: 1170. https://doi.org/10.3390/atmos15101170
APA StyleYu, Y., Gola, M., Settimo, G., Buffoli, M., & Capolongo, S. (2024). Feasibility and Affordability of Low-Cost Air Sensors with Internet of Things for Indoor Air Quality Monitoring in Residential Buildings: Systematic Review on Sensor Information and Residential Applications, with Experience-Based Discussions. Atmosphere, 15(10), 1170. https://doi.org/10.3390/atmos15101170