Nicole
Cowell
*a,
Lee
Chapman
a,
William
Bloss
a,
Deepchandra
Srivastava
a,
Suzanne
Bartington
b and
Ajit
Singh
ab
aSchool of Geography, Earth and Environmental Sciences, University of Birmingham, Birmingham, B15 2TT, UK. E-mail: n.h.cowell@bham.ac.uk
bInstitute of Applied Health Research, University of Birmingham, Birmingham, B15 2TT, UK
First published on 22nd November 2022
Exposure to atmospheric particulate matter is associated with a wide array of health impacts. Whilst ambient air pollution exposure is widely discussed both within the scientific literature and media, indoor exposure to pollutants has received less attention. However, humans spend a large amount of time in indoor environments, which increased significantly during the Covid-19 pandemic. This paper tests the application of a low-cost Internet of Things (IoT) enabled indoor sensor network to provide a relative assessment of variations in PM in a lockdown home. The paper validates the low cost, IoT approach via sensor corrections and testing before assessing particulate concentrations for a ∼7 week period within a typical suburban home in the UK. With the caveat that data from low-cost sensors are at best indicative, it was found that particulate matter concentrations in multiple rooms exceeded both 2021 and 2005 WHO Global Air Quality Guidelines, when extrapolated to annual exposure levels, despite relatively low ambient concentrations. Concentrations peaked at 488 μg m−3 (PM2.5) when cooking was occurring within the home.
Environmental significanceExposure to particulate matter can have a wide array of health impacts. Humans spend 60–90% of their time indoors and the modal shift towards hybrid working is increasing the time people spend in residential settings (Guyot et al., 2018,3 Domínguez-Amarillo et al., 2020 (ref. 4)). Capturing exposure to particulates within the home can be challenging-studies can be intrusive on residents lives and can be limited by the expense of monitoring equipment. Low-cost sensor networks provide novel opportunity to monitor pollutants within homes, yet often their performance is questioned due to their price point. This paper presents the successful deployment of a low-cost PM sensor network within a home, highlighting concentrations by room and activity. |
Low-cost air quality sensors provide a novel opportunity for monitoring relative concentrations of particulate matter at previously unattainable spatial resolution, and the Internet of Things (IoT) allows for the development of indoor air quality (IAQ) networks.6,7 There are a number of existing studies that assess indoor particulate matter (PM) pollution, however a frequent limitation of these studies is monitoring is limited to only 1 or 2 locations within a property (often a kitchen or main living area).4,8–21 Shen et al. (2021)35 reported a comprehensive multi-room study with multiple sensors, yet this was limited to PM2.5 (particles with aerodynamic diameters <2.5 μm) as the sensors were not calibrated for the PM1 & PM10 (particles with diameters <1 μm and <10 μm respectively) fractions that they also monitored. Few previous studies have used IoT networks for monitoring, and those that did, tended to use IoT networks that are reliant on gateway or WiFi technology thus limiting deployment.6,15,22
Whilst ambient corrections and calibrations for indicative monitoring devices are starting to become established within the scientific literature, there remains a need for this to be adapted to suit the nuances of indoor monitoring environments. Ambient correction methods are usually based on co-location with a reference grade instrument, taking into account the impact of humidity on hygroscopic particles, and often using ‘buddy’ matching or data validation from nearby ambient regulatory monitors. However, indoor air samples are problematic as indoor humidity levels are typically lower than ambient and indoor environments do not typically have regulatory monitors for comparison outside of a laboratory environment for buddy matching. Some studies have attempted to develop indoor calibrations methods to varying success, but tend to base corrections on a co-location with a reference instrument exposed to a specific particulate source which is not representative of the array of PM sources or activities that normally occur within a home.23–25 The purpose of this study was to address these research gaps by deploying an IoT sensor network of 5 low-cost sensors (AltasensePM-compromised of an IoT enabled Plantower PMS5003) across a single residential property during a period of coronavirus restrictions, accounting for different rooms and the outside/ambient environment. Analysis is driven by the following foci:
(1) Validate the application of IoT low-cost sensor networks for indoor air quality, including the development of a method for correcting and validating low-cost data within an indoor setting.
(2) Evaluate the impact of human activity and different sources on relative real-time PM levels throughout a residential property, inclusive of indoor:outdoor ratios.
There are many sources of PM within the home. Firstly, ambient (outdoor) PM pollution can infiltrate the home however these particles tend to have a limited size distribution as the more coarse and ultrafine particles (UFPs) are typically removed during transmission.19,30 In older properties, infiltration occurs via leakage throughout the property, or by manual ventilation introduced by opening and closing windows and doors, however as building standards have evolved, properties have become increasingly air tight to increase energy efficiency.31 These newer properties tend to rely on mechanical ventilation such as fans and extractors, yet these are not always as effective as promised and can even generate their own pollutants from running (i.e. mechanical wear).32,33 Secondly, everyday activities/interactions within the home can generate and influence PM concentrations, such as daily household activity from household chores and resuspension from movement. Prominent indoor sources include cooking and smoking however other sources such as candles, cleaning, vacuuming, humidifiers, combustion of solid fuels and resuspension have also been discussed within literature.8,30,34–37 The prominence of the sources will vary both spatially and seasonally along with the indoor:outdoor ratio (I:O), and generally it is found that in winter PM from indoor sources contributes proportionately more and is higher in magnitude.11,38
People spend on average 1/3 of their life asleep-yet IAQ studies that assess bedroom and sleeping period particulates are limited to high income settings.39,40 Less than one quarter (23%) of studies reported in a review of field studies of IAQ during sleep41 captured both PM2.5 and PM10 concentrations in bedrooms during the sleeping period. Bedroom PM concentrations will contribute significantly to individuals' total exposure due to the large periods of time spent in them. This is important as pollutant concentrations have been linked to sleep quality which is a major impactor on health. Accinelli et al., 2014 (ref. 42) report lower particulate concentrations relate to better reported sleep quality in children. Poor sleep quality can have impacts on ability to concentrate and decrease cognitive performance, as well as long-term health implications such a links to depression, diabetes and cardiovascular disease,43–47 in addition to the health risks normally associated with prolonged particulate exposure. Ventilation methods can also impact PM concentrations within a bedroom, with air conditioning appearing to reduce concentrations when compared to natural ventilation suggesting that ambient PM concentrations can also affect bedroom air quality.48,49 A review by Canha et al., 2021 (ref. 41) reported daily PM2.5 concentrations in naturally ventilated bedrooms at 35.1 ± 32.4 μg m−3 which exceeds than the WHO daily recommended guideline of 15 μg m−3 (ref. 5) but also highlights great variation between concentrations reported in studies-although some of this variation is likely to be due to seasonal and local ambient PM concentrations between studies. Some of the variations are also likely due to 50% of reported studies capturing homes of smokers where particulates are reported higher than non-smokers. The review also suggests that optical particle counters are best practice for monitoring within bedrooms as compared to gravimetric methods they are much quieter and less disruptive to participants sleep patterns, and therefore arising behaviour changes. The above review highlights the importance of including the bedroom microenvironment in residential monitoring studies of particulate exposure. Not only is this an under-studied area but is also the room where likely most time is spent.
Kitchens are more widely researched when it comes to indoor air quality-there is a large focus on cooking and the effect on particulates within the scientific literature. This literature varies greatly due to the heterogenous nature of cooking globally-in economically developed nations cooking typically involves gas or electric ovens and hobs, in designated areas with mechanical ventilation. However, half of the global population rely on solid biomass fuel is for cooking using open stoves with reliance on natural ventilation, often inside (or if outside, near to entrances of) a multi-purpose or indeed the only room within the home.50–52 Here we focus on households reflective of the setting in which this study took place (cooking with gas/electric oven and stoves in a designated kitchen area in typical UK housing stock). Cooking has been reported to dramatically increase particle concentrations. Patel et al., 2020 (ref. 53) report PM2.5 concentrations exceeding 250 μg m−3 during cooking, with this activity being the single largest source of PM in their test house. O'Leary et al., 2018 (ref. 54) reported that kitchens exceeded daily WHO PM2.5 guideline concentrations for 10–14% of their study weeks. This peak in concentrations can last for some time after cooking, therefore post cooking periods contribute significantly to human particulate exposure as it takes time for particle concentrations to drop.53,55 Whilst unlike NOx, it is reported that gas and electric appliances do not produce statistically different particle concentrations,56 the type of cooking activity (frying/baking/toasting etc.) can influence particle emissions with frying and preparing large meals such as Thanksgiving dinners, being associated with higher concentrations.53,54 When studying the composition of PM Alves et al., 2020 (ref. 56) reported that carbon represented 40% of total PM2.5, mainly comprising soot with a low sulphur content. They also reported kitchen salt abundant in all indoor PM2.5 samples.
Ventilation within kitchens can vary in approach-mechanical extraction methods that either externally vent or recirculate air such extractor hoods directly over a hob/oven or ceiling fans are common within homes. There is also the option for non-mechanical or natural ventilation via opening external windows and doors. Whilst ventilation aims reduce particulate exposure, optimal use of ventilation depends on human behaviour and can often be overlooked as residents are widely unaware of the particulate concentrations they are exposed too, nor the potential risk this poses. O'Leary et al., 2018 (ref. 54) carried out a study which measured concentrations of PM in student kitchens for 1 week with “normal” behaviour, before showing residents the results and allowing them to adjust their activity as they saw fit ahead of a second week of monitoring. Whilst this did increase ventilation efforts made by residents, the actual impact on concentration levels was reported as minimal. Kim et al., 2018 (ref. 55) further reported that natural ventilation led to higher total concentrations due to ambient concentrations infiltrating indoors, but this may be due to the context (pollution level) of the ambient air in the study. Whilst the influence of cooking is more prominent than other indoor sources within the literature, there are still research gaps to address-particularly regarding the impact of cooking across multiple rooms, the length of impact and the effectiveness of ventilation efforts.
It is reported that in the UK £15 billion is lost due to reduced productivity and illness caused by indoor air quality and lack of fresh air.57 According to Office for National Statistics, 2021 (ref. 58) in 2020 an average of 37% of the UKs population worked from home in comparison to 27% doing so in 2019 due to government guidance to work from home if possible. Whilst the number working from home has been declining since March 2021 with the restrictions easing (only 14% reported working from home exclusively during May 2022),59 there is still a modal shift towards hybrid working with an increase in people reporting working from home in Spring 2022 compared to pre-pandemic levels (38% between 27.04.22 and 08.05.22 reported working from home at some point during the last week, compared to 12% before the Covid-19 pandemic).58,59 This means more time spent at home for a section of the UK population of working age and increased time exposed to the typical particulate concentrations associated with home environments. Literature reports that poor IAQ impacts productivity when performing everyday tasks such as text typing, proof reading and mathematics57. Künn et al., 2019 (ref. 60) reported that with a 10 μg m−3 increase of PM2.5 the likelihood of chess players making an erroneous move increased by 26%, indicating cognitive performance impacts from PM concentrations. Shehab and Pope, 2019 (ref. 61) reported that candles, a common household source of particulates can reduce cognitive function and in 2022 the UK Health Security Agency recognised links between particulate exposure and dementia.62 This increases the need to understand the indoor particulate landscape as it will be playing a large part in human health, wellbeing and workplace productivity moving forward.
For relative comparisons between sensors across time and space, or for crude highlighting of high pollution events low-cost sensors measurement error from true value may be less important as long as the inter-sensor correlation of a network during a colocation is strong and consistent. Previous work has shown that when corrected for the impact of humidity and calibrated against reference instrumentation, the PMS5003 was suitable for ambient monitoring for finite periods of time (see Section 2.3 below for ambient correction details).71 However, adjusting sensor corrections and data validation for an indoor monitoring environment presents challenges. Unlike ambient sensors, reference grade base stations are unlikely to be available (and their use may be intrusive). The effect of humidity is likely to be smaller than for ambient sampling due to the more stable and lower humidity experienced indoors. Composition of particulates from different sources varies – for example varying cooking type (pan fry vs. baking), cleaning methods, use of candles. Previous research suggests calibrating sensors in an environment similar to that they will sample in to capture the impact of PM composition and environment (i.e., RH) on the sensor performance within corrections.67 Whilst for ambient measurement this means corrections can be applied at a regional scale or adapted from a similar environment to the sampling site, indoor corrections may vary due to the type of activity that occurs in a home varying greatly by room, by property and by region with human behaviour. Previous research has attempted to calibrate and correct low-cost sensors for indoor air quality and a summary of some of these methods is presented in Table 1.
Low-cost sensor | Data correction, calibration or validation methods | Study |
---|---|---|
PurpleAir | Data were evaluated using systematic quality control-removing values above manufacturers stated sampling range, >75% data completeness, agreement of dual channel readings | 23 |
Indoor data was then corrected using an average of correction factors developed by Kim et al. (ref. 24) when assessing IAQ from pan frying, second hand smoke and urban traffic hotspots | ||
ESCORTAIR & PurpleAir | Developed correction factors for each activity (second hand smoke, pan-frying, urban traffic hotspots) from step-wise linear regression | 24 |
PurpleAir | No formal correction of data but uses data quality checks on particle number counts. This included removing negative/zero values, removing top percentile of each size bin, ensuring at least 30 days of data from a sensor, agreement between dual readings of <10 μg m−3 | 73 |
Sharp GP2Y1010AU0F | Co-location with a SidePak and corrected with a linear correction factor | 72 |
Dylos DC1100 proPlantower PMS3003 | Linear regression models for calibration from colocation against a mass-adjusted DustTrak time series followed by an aerosol specific correction factor (cooking, candle burning or general/unidentified PM events) | 6 |
Sharp GP2Y1010AU0F | Laboratory chamber calibration using an incense stick as a source of particulates and a SidePak for reference. A linear calibration equation was developed | 25 |
The Table 1 suggests that there are similarities between studies – sensors are often corrected using a correction factor derived from colocation with a reference instrument and multiple studies apply further data validation techniques post correction, such as removal of extreme values and checking data capture presence (% of potential data points successfully captured by sensor). Linear corrections have been proposed in multiple studies and sensor models.6,24,25,72 However, these studies also highlight the concern of changing activity and hence composition impacting correction, with both Hegde et al., 2020 (ref. 6) and Kim et al., 2019 (ref. 24) reporting correction factors which varied by activity. Whilst they didn't develop a correction factor Kaliszewski et al., 2020 (ref. 8) and Singer and Delp, 2018 (ref. 13) also indicated that activity may impact low-cost sensor performance in their device comparison study.
Ultimately-a challenge here is to develop a correction factor for the IAQ measurements that is applicable across a household and is representative of not just one activity, but of the range of indoor PM sources that may be encountered. Whilst correction and validation of the data can enable low-cost sensors to provide insightful indicative data, these sensors are not providing absolute values such as regulation instruments and this need to be considered within any analysis.
Semi-detached and terraced houses are the 1st and 2nd most popular property type in the UK respectively, making this property somewhat typical of a UK residence.74 The property has 2 residents who are both non-smokers. 1 resident was working hybrid between home and their usual workplace, and 1 resident was working entirely from their workplace away from the home. Fig. 1 shows the floor plan of the property with approximate sensor locations, whilst Table 2 describes sampling location details.
Fig. 1 Floor plan of house showing approximate sensor locations with sensor code associated with colocation period. |
Room | Sensor ID | Potential particulate sources of particulates | Ventilation | Sampling location details |
---|---|---|---|---|
Master bedroom | A | Vacuuming, cleaning, ensuite shower/bathroom, aerosol cosmetics/toiletries | Windows, ensuite extractor | On top of chest of drawers, near where aerosols are kept. Inlet and exhaust are facing into the room |
Living room | B | Candles, oil burner, cleaning, vacuuming | Window | On top of small cabinet. Inlet and exhaust facing into room |
Kitchen/diner | C | Cooking (frying/boiling/oven), cleaning, vacuuming | Windows, double external door, extractor fan | On windowsill, opposite side of room from hob and extractor, above dining table. Inlet and exhaust facing into the room |
Outside | D | Traffic, nearby agricultural emissions, domestic burning, bbqs, ambient concentration | N/A | Attached to post on edge of property, near to double doors of kitchen. Farm facing side of property |
Bedroom 2/home office | F | Drying laundry | Window | On shelf located against wall in middle of room. Inlet and exhaust are facing into the room |
All indoor sensors were kept between 1–1.5 m height as furniture/fixings allow whilst the exterior sensor was mounted at ∼2 m. Table 2 outlines the key characteristic of each room the sensors were deployed in.
The sensors used are described in detail in Cowell et al. (2022)71 but are briefly covered here. The PMS5003 were connected to a custom PCB with an Arduino MKRFox1200 and SHT21 for Sigfox connectivity and temperature/humidity measurements respectively, creating a custom sensor platform called AltasensePM. The PMS5003 is a nephelometer which converts light from a laser scattered by particles into a voltage pulse and then a particle count using an undisclosed algorithm.67
The PMS5003 is stated by manufacturer to detect particles of diameter >0.5 μm (98% counting efficiency), with a minimum distinguishable particle diameter of 0.3 μm (although at a lower counting efficiency of 50%)75 however Ouimette et al., 2022 (ref. 76) reported the PMS5003 detecting particles smaller than this diameter. It has an uncertainty of ±10 μg m−3 and ±10% for ranges 0–100 μg m−3 and 100–500 μg m−3 respectively.
For the indoor units, the PMS5003 was not placed in an enclosure-the electronic housing protected the PCB and batteries only with the PMS5003 unit resting on top to sample. The outdoor unit housed the PCB, batteries and PMS5003 for weather protection-the enclosure was suspended from a post with the PMS5003 inlet and exhaust located at the base of the enclosure.
The SHT21 has a small cap cover made of a protective mesh to stop the accumulation of condensation on the sensor. Altasense devices are identified and differentiated by letter-with 5 devices labelled A, B, C, D and F throughout the colocation analysis, before being assigned to a room (a 6th sensor, labelled E suffered microcontroller failure so was removed from the study). The Altasense devices record data every 15 minutes. The unit runs for 1 minute to stabilise before taking a reading, takes an instantaneous measurement at the end of the minute and then powers down for the rest of the 15 minutes period. This sampling method enables maximum power efficiency to extend battery life. Data capture is also limited to every 15 minutes by the allowance of message transmission on the Sigfox network. This compromise of frequency allows for deployment of 8–10 weeks+.
Activity | Description/definition |
---|---|
Cooking-oven | The electric oven is in use on a standard oven/baking setting (not grilling) |
Cooking-frying | Frying or using a pan to cook without water on the gas stove |
Cooking-boiling | Boiling/steaming food using a pan and water on the gas stove |
Cooking-other | Use of a grill/toaster or other method of cooking not described above |
Extractor | In the kitchen this refers to the stove top extractor which is manually controlled |
In the bathroom/bedroom this refers to the room extractor which is manually controlled | |
Cleaning | Cleaning of surfaces-including dusting, use of antibacterial products and wiping down work areas. Excludes dishwasher, washing machine or washing dishes |
Vacuuming | Use of a vacuum cleaner to clear floor. A SHARK bag less vacuum cleaner is used in this household |
Window/external ventilation | The opening of a window or in the case of the kitchen external window or door or both opened (external ventilation) |
Candle | Lighting of a candle within the room |
Fire | Outdoors only-a small firepit burning wood is lit |
BBQ | Outdoors only-a coal powered BBQ is in use |
Oil burner | An oil burner which uses a tea light candle to melt scented wax melts into an oil is being used |
Shower | Ensuite bathroom shower is in use |
As this study aims to create a correction factor that encapsulated all of the typical activity within a home, participants were encouraged to proceed with activity as normal – thus ensuring the correction factor captures the majority of typical particulate generating activity that normally occur within the home. Fig. 2 shows activity over the colocation week and the hourly average time series in Fig. 3 shows how the DustTrak and Altasense demonstrate similar patterns in concentrations over time (generated before any data manipulation of the DustTrak data to match the AltasensePM sampling frequency).
The DustTrak is a light scattering laser photometer with an inbuilt pump designed for monitoring in a range of scenarios, including manufacturing and IAQ.78 Although designed for battery powered sampling, this study used mains power to enable continuous measurement for the colocation week as battery life was not able to support this. The DustTrak has a sampling ranging of 1 μg m−3 to 150 mg−3 and a resolution of ±1% or 1 μg m−3 whichever is largest.78 This study used a logging frequency of 1 minute. Whilst not a gravimetric or equivalent reference instrument, the DustTrak has been successfully used to draw conclusions about IAQ; including comparing concentration to WHO guidelines and generating I:O ratios within past literature79,80.Wallace et al., 2011 (ref. 81) report a DustTrak vs. gravimetric r2 of 90%, although they also report issues with multiplicative bias. Overall, this suggests the DustTrak should be suitable for calibrating the sensors to generate indicative and relative concentrations.
As the AltasensePM records an instantaneous measurement every 15 minutes, each AltasensePM reading was matched with its time matched counterpart from the DustTrak for data analysis and correction models with the remainder of the DustTrak data discarded.
Table 4 shows key statistics from the colocation period. Absolute values from the PMS5003 consistently under-read compared to the DustTrak – the slope is low (0.28–0.52) between Altasense vs. DustTrak and the DustTrak also recorded maximum values significantly higher than that of the AltasensePM for all species. 181, 197 & 196 μg m−3 are the maximum values recorded by the AltasensePM's for PM1, PM2.5 and PM10 respectively compared to 507, 508 & 541 μg m−3 for the DustTrak. Initially, it may appear that the sampling range is likely to play some part here as the maximum values from the DustTrak are all >500 μg m−3 stated as max effective range for the PMS5003, however the AltasensePM do not record any maximums within 300 μg m−3 of the stated limit suggesting the Plantower PMS5003 are under-performing well below the stated limits. However, previous literature has shown the PMS5003 can report concentrations much greater than the suggested manufacturer limit.82 Alternatively, the variations in maximum values could be an impact of the intermittent sampling method of the AltasensePM-whilst the DustTrak measurements were compared at the same sampling frequency as the AltasensePM recorded, the DustTrak was sampling continuously whilst the AltasensePM powered down between measurements. This could be an indication that the powering up/down of the sensor is limiting the capture of peaking concentrations.
Sensor ID | Species | Pearson's r | R 2 | Max | Min | Mean | Slope |
---|---|---|---|---|---|---|---|
A | PM1 | 93 | 0.87 | 98.0 | 0 | 11.3 | 0.37 |
PM2.5 | 92 | 0.85 | 127 | 0 | 18.16 | 0.52 | |
B | PM1 | 91 | 0.82 | 171 | 0 | 16.07 | 0.36 |
PM2.5 | 72 | 0.52 | 185 | 0 | 21.13 | 0.32 | |
C | PM1 | 93 | 0.87 | 174 | 0 | 15.22 | 0.34 |
PM2.5 | 79 | 0.62 | 185 | 0 | 22.3 | 0.34 | |
D | PM1 | 88 | 0.78 | 171 | 0 | 15.15 | 0.33 |
PM2.5 | 78 | 0.61 | 197 | 0 | 21.36 | 0.35 | |
F | PM1 | 90 | 0.81 | 168 | 0 | 15.56 | 0.35 |
PM2.5 | 72 | 0.52 | 189 | 0 | 23.04 | 0.32 |
Linear correlation between the reference and low-cost sensors was strong and Pearson's r values between Altasense and TSI DustTrak are 0.84–0.93, 0.72–0.92 and 0.65–0.88 for PM1, PM2.5, and PM10 respectively (see Table 4 for full details) for raw data. Fig. 3 also highlights inter-sensor comparability between the AltasensePM devices, demonstrating good intersensory correlation (Pearson's r = 84–99, 87–99, 86–98 and for PM1, PM2.5, and PM10 respectively). This suggests the sensors are comparable between themselves and therefore suitable for a network deployment which focuses on difference in concentrations by location.
Fig. 4 TSI:Altasense ratio by sensor concentration demonstrations a logarithmic relationship between the 2 device types where the AltasensePM under-estimates concentrations. |
A range of correction models (scaling factors) were explored: linear correction models failed to allow for the concentration-dependent variation in performance between reference and low-cost sensors didn't address the discrepancy in peaks. Polynomial models were plotted for reference: AltasensePM and a quadratic model proved good fit. Fig. 5 shows results of a colocation after correction by an individual quadratic model for each sensor.
(1) Discard data of concentration >500 μg m−3 as this is outside of the manufacturers stated limitations of the sensor. Only 1 value fell beyond this threshold-a reading from the kitchen for PM1.
(2) A completeness criterion-only use sensors with >75% completeness of data. Results from presence are show in Table 6.
PM1 | PM2.5 | |||
---|---|---|---|---|
Slope | r 2 | Slope | r 2 | |
A | 2 | 0.73 | 2.4 | 0.79 |
B | 0.93 | 0.82 | 1.4 | 0.88 |
C | 0.9 | 0.81 | 1.3 | 0.89 |
D | 0.8 | 0.78 | 1.3 | 0.92 |
F | 0.79 | 0.7 | 1.5 | 0.85 |
Location | Bedroom | Living room | Kitchen | Outside | Office |
Presence (%) | 98.4 | 86.5 | 93.6 | 83.3 | 98.5 |
Another important feature to note from the literature is debate around the ability of low-cost sensors to report multiple size fractions. Ouimette et al., 2022 (ref. 76) and Kuula et al., 2020 (ref. 87) report that the PMS5003 is most effective at recording PM1 concentrations and Kuula et al., 2020 (ref. 87) report that it may not accurately distinguish between size fractions well, particularly in unstable ambient air size distributions. Unlike ambient air, there are not large regional events that will drastically change the composition/size distribution of particulates from the from those experienced as part of the calibration and Kuula et al., 2020 (ref. 87) also suggest that with stability, the PMS5003 can be calibrated to report PM2.5 relatively well. Therefore, whilst PM1 is reported in this study, authors also felt it was important to report PM2.5 as this allows for comparison to global guidelines for PM.
Indoor:outdoor (i:o) ratios were calculated from hourly averaged data for each room to allow for data matching. An average indoor concentration hourly time series was also generated from the mean concentrations of all indoor measurements so an average indoor:outdoor ratio could also be analysed.
Activity log data was transformed into a time series so that activities could be plotted and analysed against concentration time series.
Data analysis made use of the OpenAir package in the R programming tool.89,90
This suggests that if the 7 weeks of study were reflective of a typical year in the property, the bedroom, kitchen and living room could be considered as exposure that is harmful to health by WHO guideline levels. Maximum concentrations recorded significantly exceed WHO guidelines-the living room reported highest concentrations (488, 486 & 481 μg m−3 for PM1, PM2.5, and PM10 respectively) followed closely by the kitchen (488, 462 & 478 μg m−3 for PM1, PM2.5, and PM10 respectively). Outside reported the lowest peak concentrations followed by the home office.
Cooking and ventilation (both external via windows and mechanical via extractor fans) proved easier to analyse within this study as these activities all took place over periods time greater than the AltasensePM sampling resolution, whereas activity such as cleaning (spraying of cleaning sprays) and vacuuming occurred in short bursts which may not have been coincident with a sensor measurement. This highlights a notable disadvantage of the low power approach used by the AltasensePM to conserve battery power where readings are only taking for 1 minute of every 15-sensors can capture PM variability over the period of 15 minutes to hours but cannot capture variability that occurs in short bursts.
The following analysis of activity vs. concentrations focuses on cooking and ventilation due to this.
In the living room, maximum PM levels did not coincide with any recorded activity in that room but PM1 and PM2.5 did directly coincide with cooking with the oven in the kitchen. Whilst other max recordings in the kitchen and living room do not directly match with cooking being recorded at that time, the max PM1 and PM2.5 recording in the kitchen also occurred between 18:00 and 19:30 which is during the window that cooking regularly occurred on a daily basis (Fig. 7). Although the measurements didn't directly coincide, this is most likely due to the 15 minutes sampling time of the sensor occurring just outside of the time cooking was occurring. This highlights a compromise of maintaining the battery power and IoT communications by reducing sampling frequency and thus not capturing cooking events at as high resolution as other studies. From the diurnal plot of PM2.5 concentrations, PM levels in the kitchen and living room appear to be correlated particularly in the evening peaks around meal preparation time and this is reflected in the hourly average correlation with Pearson's r values of 93, 88 and 83 for PM1, PM2.5 and PM10 respectively. The higher correlation occurring with PM1 between the 2 rooms suggests that the smaller particles are more effective at travelling between rooms-this is expected as larger particles are likely to settle sooner due to weight or be filtered out during transmission by walls/doors.30 Whilst PM levels in the rooms correlate around the peaks, they differ in their decline rate after cooking occurs with the kitchen returning to a lower concentration baseline much quicker than the living room does, with the living room still experiencing elevated peaks in concentrations into the early morning hours. This could be attributed to (a) lack of an extraction fan in the living room (unlike the kitchen) to reduce concentrations or (b) other sources in the living room generating further PM in the evening (candle/oil burner although not as frequent a source as cooking, was used in the evening a few times). Fig. 8 demonstrates the extreme values recorded during various activities with cooking by oven and frying coinciding with extreme high readings, however oil burning and candles do not produce peaks >200 μg m−3 and it appears the extreme peaks are associated with cooking in the adjacent kitchen. Extractor fans have been demonstrated by literature to reduce PM concentrations during and after cooking.91 A similar phenomena was also recorded in Kim et al., 2018 (ref. 55) where living room concentrations were greater than kitchen concentrations after a cooking event when extractor fans are in use in the kitchen alone. This highlights the importance of considering dispersion of particles from a cooking event, and ventilation in adjacent rooms, not just a kitchen.
As the bedroom has less activity recorded than the kitchen and has window openings more evenly spread across the day, there is less of a connected impact to another activity and thus differences may prove more insightful in terms of the impact of windows opening. Bedroom concentrations are statistically different when windows are shut vs. open in the bedroom itself (p = 0.0031 and p = 0.0022 for PM1 and PM2.5 respectively), with a 95% confidence of a 2.7–7.3 μg m−3 difference between having windows closed and open. Median and mean values for windows shut/open are close in value (18.9 μg m−3, 17.2 μg m−3 means and 19.5 μg m−3, 18.6 μg m−3 medians for PM2.5) suggesting the major difference is in the reduction of high outlier values when windows are open.
In the context of this property (suburban, relatively low ambient PM concentrations) it is likely that the opening of windows is reducing the extreme highs generated from indoor sources, but an impact on mean concentrations is more uncertain. This may be due to the impact of other activity influencing concentrations at the same time as the windows being open (cooking), although literature suggests reductions in mean PM2.5 from window ventilation alone may be possible.92,93 However, in other settings with poor ambient concentrations window ventilation is unlikely to be effective at reducing PM concentrations as it increases the infiltration of ambient air and hence potentially elevated PM concentrations into the home.
Fig. 9 Diurnal patterns of average I:O ratio by PM size fraction (average concentration of all inside locations: outside concentration). |
Fig. 10 Boxplot of PM1 and PM2.5 concentrations by room for when external windows/doors are open vs. when they are closed. NB. Bedroom only refers to bedroom window, not ensuite bathroom window. |
The pandemic and lockdown restrictions in place at the time of data collection may have limited residents' behaviour-generally spending more time inside, potentially eating out less and thus cooking more etc. Whilst this highlights the need for understanding of IAQ, it also means that this may not be reflective of ‘normal’ behaviour as we transition into a post-Covid context. This could also impact the generation of a generic correction factor for a home, as the particulate generating activities may have been influenced by the change in behaviour. Thus, the correction factor may not be reflective of pre or post-pandemic behaviour, although the method to develop a new correction factor should still be valid allowing for updates with behaviour change.
This study is a short term data collection which may not be directly reflective of the data used to generate longer term guidelines.5 However, since this study's data collection occurred, the platform which hosts the AltasensePM devices has been developed to apply correction models to data in near-real time which would reduce manual workload of correcting data and enhance sensors ability to generate easy-to-use long term time series.
(1) Validate the application of IoT low-cost sensor networks for indoor air quality including the development of a method for correcting and validating low-cost data within an indoor setting.
(2) Evaluate the impact of human activity and different sources on PM levels throughout a residential property, inclusive of indoor:outdoor ratios.
Sensor validation is described in the methods section, where with correction and data validation steps AltasensePM was able to detect with good accuracy (r2 > 0.7 for PM1 and >0.79 for PM2.5) particulate concentrations. Importantly, sensors had really strong inter-sensor correlation (Pearson's r > 84 for all size fractions) meaning that as a network deployment they were suitable for comparing differences between locations. The IoT enabled sensors had good presence (83–99%) and were able to detect diurnal patterns within data. Their major drawback was time resolution, which was compromised by battery life to enable sensors to be mobile and unintrusive to deploy. Whilst peaks were captured, AltasensePM was unable to capture high resolution detail and some shorter activity periods were harder to assess as the sensor wasn't always recording as they occurred. Overall, the low cost IoT network provided valuable insight into relative particulate concentrations and could be adjusted to be mains powered to increase measurement frequency considering that power access is rarely an issue in many households.
Indicative indoor concentrations exceeded WHO guidelines for particulates and were higher than ambient concentrations. Cooking was clearly detected to influence particulate concentrations and often lead to extreme peaks in concentrations. Cooking by oven and frying increased particulate concentrations in both the kitchen and living room area despite the use of an extractor fan and windows over cooking periods. The living room experienced higher concentrations than the kitchen-this may be due to a lack of extractor fan in the living room and the lower use of windows for ventilation compared to the kitchen. The use of window opening for increased ventilation clearly reduces extreme peaks in concentrations and thus could be an affordable and effective suggestion to residents to reduce exposure to short term high concentrations, depending on location and ambient conditions.
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