Prashant
Kumar
*ab and
Anju
Goel
a
aDepartment of Civil and Environmental Engineering, Faculty of Engineering and Physical Sciences, University of Surrey, Guildford GU2 7XH, UK. E-mail: P.Kumar@surrey.ac.uk; Prashant.Kumar@cantab.net; Fax: +44 (0)1483 682135; Tel: +44 (0)1483 682762
bEnvironmental Flow (EnFlo) Research Centre, Faculty of Engineering and Physical Sciences, University of Surrey, Guildford GU2 7XH, UK
First published on 4th August 2016
The understanding of rapidly evolving concentrations of particulate matter (PMC) at signalised traffic intersections (TIs) is limited, but it is important for accurate exposure assessment. We performed “mobile” and “fixed-site” monitoring of size-resolved PMCs in the 0.25–34 μm range at TIs. On-road mobile measurements were made inside a car under five different ventilation settings on a 6 km long round route, passing through 10 different TIs. Fixed-site measurements were conducted at two types (3- and 4-way) of TIs. The aims were to assess the effects of different ventilation settings on in-vehicle PMCs and their comparison during delay conditions at the TIs with those experienced by pedestrians while crossing these TIs. We also estimated the zone of influence (ZoI) for PM10, PM2.5 and PM1 under different driving conditions and fitted the probability distribution functions to fixed-site data to understand the concentration and exposure dynamics of coarse and fine particles around the studied (3- and 4-way) TIs. The fine particles (PM2.5) showed a strong positive exponential correlation with the air exchange rates under different ventilation settings compared with coarse particles (PM2.5–10) showing an opposite trend. This suggested that the ventilation system of the car was relatively more efficient in removing coarse particles from the incoming outside air. On-road median PM10, PM2.5 and PM1 during delays at the TIs were ∼40%, 16% and 17% higher, respectively, compared with free-flow conditions on the rest of the route. About 7% of the average commuting time spent during delay conditions over all the runs at the TIs corresponded to 10, 7 and 8% of the total respiratory deposition dose (RDD) for PM10, PM2.5 and PM1, respectively. The maximum length of the ZoI for PM2.5 and PM1 was highest at the 4-way TI and the maximum length of the ZoI for PM10 was highest at the 3-way TI. The on-road average RDD rate of PM10 inside the cabin when windows were fully open was up to ∼7-times that for pedestrians at the TIs.
Environmental impactSignalised traffic intersections (TIs) are pollution hotspots that contribute disproportionately higher to overall commuting exposure. Studies characterising the exposure to coarse and fine particulate matter (PM) at such hotspots are yet limited. This study provides a comprehensive assessment of in-cabin exposure to fine and coarse PM under five different ventilation settings and compares in-cabin exposure at TIs with pedestrian exposure. The findings of this work advance our understanding of the zone of high PM pollution around TIs and assist in making an informed choice on ventilation settings of cars to limit exposure at such pollution hotspots. |
Travelling time has increased over the years in the UK and elsewhere,4 indicating a growing need for accurate exposure assessment during daily commuting. For example, the UK population spent about an hour each day in vehicles during commuting in 2013; the average trip time during the year 2013 increased by 16% from 20.4 min in 1995/1997.4 Our recent study5 has shown that in some cases as low as 2% of the commuting time spent at TIs could contribute as high as 25% of the total commuting exposure to particle number concentrations (PNCs). A similar contribution of exposure during commuting can be expected for particle mass concentrations (PMCs) but is currently unavailable.
As summarised in Table 1, a number of commuting exposure assessment studies have become available in recent years but similar studies focusing at TIs are still limited. Furthermore, there is a certain longitudinal distance along the road legs from the centre of a TI that experiences increased levels of exhaust emissions due to interruptions in vehicle speed at the traffic signals. In our previous work,6 we defined this affected longitudinal length of the road as the zone of influence (ZoI) of a TI. The pollutant concentration in this zone can be many times higher compared with the rest of the route. For instance, Kim et al.7 observed that the ZoI of a 4-way TI for oxides of nitrogen (NOx) extends from −200 to 200 m from the centre of the TI under stop-and-go driving conditions. They found that about 200 to 1000 ppb of additional NOx was observed within the ZoI compared with the rest of the route length. Goel and Kumar6 found the length of the ZoI to be −11 to 134 m from the centre of a 4-way TI during multiple-stopping driving conditions. Studies assessing the ZoI for PM are currently unavailable, and hence the ZoI is estimated in this work for PM10 (≤10 μm), PM2.5 (≤2.5 μm) and PM1 (≤1 μm) under diverse driving conditions at TIs.
Study | Equivalent ventilation setting | Instrument | City | Vehicle | Environment types | Parameter | PMC (μg m−3) |
---|---|---|---|---|---|---|---|
a Standard deviation. b Range. | |||||||
Int Panis et al.14 | Set2 | TSI Dustrack 8520 | Brussels | Citroën Jumpy (2007) | Urban area | PM10 | 21.15 ± 4.67a |
University town | PM10 | 17.05 ± 6.72a | |||||
Rural area | PM10 | 16.45 ± 2.62a | |||||
Weichenthal et al.15 | Set2 | TSI Dustrack 8520 | Toronto | Chevrolet garnd caravans, 2009–2012 | City | PM2.5 | 6.60 (4.68–15.9)b |
Vancouver | PM2.5 | 6.01 (1.37–10.7)b | |||||
Montreal | PM2.5 | 13.6 (4.28–33.3)b | |||||
Suarez et al.16 | Set2 | Dust-Track II, 8532 | Santiago | Toyota Yaris (model: 2006), Subaru Forester (2000), and Subary Legacy (2005) | City | PM2.5 | 46.5 ± 20.5a |
Geiss et al.17 | Set2 | GRIMM 1.108 | Ispra | 18 private cars | Town | PM10 | 48.6 (0.9–332.3)b |
PM2.5 | 26.9 (0.9–94.4)b | ||||||
PM1 | 22.6 (0.8–82.9)b | ||||||
Gulliver and Briggs18 | Set5 | OSIRIS | Northampton | Ford Fiesta (1995) | City | PM10 | 43 ± 23a |
PM2.5 | 16 ± 16a | ||||||
PM1 | 7 ± 10a | ||||||
Knibbs and Dear19 | Set2 | TSI Dustrack 8520 | Sydney | Mitsubishi Magna (1998) | City | PM2.5 | 27.30 |
Some studies have focused on in-vehicle exposure (Table 1) and fixed-site measurements of PM (Table 2) but studies covering diverse ventilation settings are yet limited. In this work, we have compared pedestrian exposure with in-vehicle exposure under five different ventilation settings. Such comparisons are important for understanding human exposure at these pollution hotspots and identify the driving and ventilation conditions that are favourable to reduce the exposure of in-vehicle occupants and passers-by at TIs.
Study | Instrument | Season | Type of TI | Distance from the TI (m) | Height of measurement (m) | City (country) | PM10 (μg m−3) | PM2.5 (μg m−3) | PM1 (μg m−3) |
---|---|---|---|---|---|---|---|---|---|
a HFPS = high flow personal samplers; HI = Harvard impactors; TEOM = Tapered Element Oscillating Microbalance. | |||||||||
Kaur et al.46 | HFPS | Spring | 4-way | 3 | 1.5 | London (UK) | — | 27.5 | — |
He et al.44 | Fluke 983 | — | — | 3 | 0.3 | Mong Kok (Hong Kong) | 130 | — | — |
Strak et al.47 | HI | — | — | 9 | — | Amsterdam (Netherlands) | 48 | 27 | — |
Friend et al.48 | TEOM | Summer | 5–10 | 2–3 | Brisbane (Australia) | 30.7 | — | — | |
This study | GRIMM (1.107) | Winter | 3-way | 3 | 1.5 | Guildford (UK) | 39 ± 24 | 24 ± 20 | 20 ± 20 |
This study | GRIMM (1.107) | Winter | 4-way | 3 | 1.5 | Guildford (UK) | 32 ± 20 | 19 ± 11 | 15 ± 10 |
Fitting of the probability distribution function (pdf) to pollutant concentration data allows the assessment of frequency ranges of concentrations experienced by urban dwellers,8 besides assisting in evaluation of policies and emission intervention measures.9–11 A number of past studies have fitted the pdf to air pollution data and details about these studies can be seen elsewhere.12,13 However, there are hardly any studies that have attempted to fit the pdf to different PM types at TIs, which is one of the aims of this study.
The distinctive features that aim to fill the existing research gaps of this work are as follows. Firstly, as opposed to previous studies14–19 that have analysed the effect of ventilation settings and traffic conditions on in-cabin PMCs at individual commuting routes, this study has assessed the effect of ventilation settings and driving conditions on in-cabin PMCs at pollution hotspots such as TIs. Secondly, this is the first time the ZoI of four different types of TIs under varying driving conditions (stop-and-go as well as multiple-stopping) is estimated for PM10, PM2.5 and PM1. Thirdly, a comparison of human exposure at (i.e. in-vehicle) and around (i.e. pedestrian) the TIs is presented to understand the dynamics of exposure at these hotspots. Finally, this is the first time the pdf is fitted to PM10, PM2.5 and PM1 data at TIs. Such a fitting is important in assessing the frequency and variability in PMC exposure at TIs.
In summary, this work addresses various poorly understood questions: (i) what is the effect of different ventilation settings on in-vehicle PMCs on the overall route?, (ii) how do the concentration and exposure levels vary during congested traffic conditions at TIs compared with free-flow traffic conditions on the rest of the route?, (iii) how does the length of the zone of influence (ZoI) vary at different types of TIs under stop-and-go driving conditions?, (iv) what is the distribution of different PM types (PM10, PM2.5 and PM1), and (v) how does exposure to different PM types differ at (i.e. on-road or inside the vehicle) and around (i.e. pedestrian) TIs?
The mobile measurements were performed inside a car on a 6 km long round route that passed through 10 different TIs (Fig. 1a). As described in our previous work,6 based on the number of roads intersecting at these TIs and built-up area around a TI, these TIs were divided into four categories: (i) 4-way TI with no built-up area (TI4w-nb), (ii) 4-way TI with a built-up area (TI4w-wb), (iii) 3-way TI with no built-up area (TI3w-nb), and (iv) 3-way TI with a built-up area (TI3w-wb). Here, TIs with a built-up area were assumed to be those TIs that were located in a street canyon with continuous rows of buildings on both sides with an aspect ratio of 0.8 to 0.9. TIs with no built-up area were the TIs that were surrounded by residential or commercial buildings but these buildings with height from 6 to 12 m were placed far apart. Out of ten TIs, four (TI1, TI2, TI4 and TI6) were TI4w-nb, three (TI3, TI7 and TI9) were TI3w-nb, one (TI10) was TI4w-wb and the rest were TI3w-wb. The average daily traffic flow on different roads intersecting at these TIs was obtained from the DoT.22 The total traffic volume at a TI was estimated by summing the traffic flow on each of the roads intersecting at a TI. TI8 and TI7 cater to the highest traffic flow of 160824 veh per day while it was lowest (9846 veh per day) at TI3. Further description of the routes and the TIs can be seen elsewhere.5,6
Fixed-site measurements were conducted at two different types (4- and 3-way) of TIs. The three-way TI is located in the city centre of Guildford and has three intersecting roads (legs 1, 2 and 3; Fig. 1c). The sampling location was around 4 m away from leg 2 in front of St. Savior's church. This TI has a signal cycle (i.e. total time of red, yellow and green lights) of around 83 s with the length of red light varying from 31 to 68 s on different legs of the TI. The four-way TI is located in a suburban area of Guildford and has 4 intersecting roads (i.e. legs 1, 2, 3 and 4; Fig. 1d). The sampling location was around 3 m away from leg 4 (Fig. 1d). This TI has a signal cycle of around 116 s; the length of the red light varied from 51 to 82 s on different legs of the TI. Further details on both these TIs can be seen in the study by Goel and Kumar.12 The average daily traffic flow on different roads intersecting at both of these TIs was obtained from 5 minute manual traffic count every hour. The total traffic volume at a TI was estimated by summing the traffic flow on each of the roads intersecting at the TI (ESI Table S1†).
The same instrumentation set-up and sampling rate were used to collect the PMD data during the fixed-site measurements at both the TIs. Traffic flow videos at the TIs were continuously recorded for the entire monitoring period using the Panasonic HC-V500 camera. As in the case of mobile measurements, timestamps of all the instruments were matched in the beginning of each experiment.
Setting | Description | AER (m3 h−1) | No of runs in the morning | No of runs in the evening |
---|---|---|---|---|
Setting 1 (Set1) | Windows fully open, fan and heating off. These measurements were considered equivalent to on-road measurements | — | 12 | 10 |
Setting 2 (Set2) | Windows closed, fan 25% and heating 50% on | 125 | 5 | 6 |
Setting 3 (Set3) | Windows closed, fan 100% on and heating off | 257 | 7 | 6 |
Setting 4 (Set4) | Windows closed, fan off and heating 100% on | 16 | 5 | 9 |
Setting 5 (Set5) | Windows closed, fan and heating off | 17 | 14 | — |
The air exchange rate (AER) of the experimental car was estimated for different settings (Table 3), using the methodology described in the study by Goel and Kumar.5 The method uses decay rates of measured concentrations of carbon dioxide as a tracer gas. Each of the five ventilation settings was tested at least for 4 hours, except Set1, for which 8 hours of measurements were collected. The meteorological data during the measurements were collected from a weather station located at Heathrow airport.26 The meteorological data of this station have also been used by other studies carried out in Guildford.5 During the measurement period, temperature and relative humidity inside the cabin were found to be 16 ± 3 °C and 51 ± 10%, respectively. The wind rose diagrams for the periods of sampling are shown in Fig. 1b. These diagrams classified the wind direction into 8 different categories: northwest (NW; 292.5–337.5°), north (N; 337.5–22.5°), northeast (NE; 22.5–67.5°), east (E; 67.5–112.5°), southeast (SE; 112.5–157.5°), south (S; 157.5–202.5°), southwest (SW; 202.5–247.5°) and west (W; 247.5–292.5°). By using the average wind speed and considering moderate incoming solar radiation during the measurements, atmospheric conditions were categorised as Pasquill stability class B during the measurements.27
Type of measurements | Days and duration | |
---|---|---|
3-way | 4-way | |
Fixed-site | January and February (from 8:00 to 18:00 h) | February and April 2015 (from 8:00 to 20:00 h) |
Horizontal | — | April 2015 (from 8:00 to 20:00 h) |
Fig. 1e and f show the wind rose diagram for the measurements at both the TIs. The hourly meteorological data (i.e. wind speed, wind direction, temperature and relative humidity) during all the measurements were obtained from the nearest meteorological station (i.e. the Royal Horticulture Society's garden in Wisley). The average wind speed, ambient temperature and relative humidity during the measurements were 3.0 ± 1.3 m s−1, 9.0 ± 4.8 °C and 52.6 ± 14.6% at the 4-way TI, respectively. The corresponding values at the 3-way TI were 3.5 ± 1.9 m s−1, 5.3 ± 2.7 °C and 63.5 ± 7.9%, respectively. The atmospheric condition is classified as Pasquill stability class B at both the TIs.
For fixed-site measurements, local background PMCs were derived by using two different approaches. For the 4-way TI, we first monitored PMCs at an upwind background location. Given the identical meteorological conditions during the background and on-site measurements, the background measurements were assumed to be representative of the background PMCs for the 4-way TI on 28 April 2015. Comparison of our measured background and the estimated background using the on-site data indicated that the total background PMCs were equal to the 5th percentile of 6 s average PMC measured at the 4-way TI. Following this observation and the approach, the background PMCs were estimated for the rest of the days at the 4-way TI as well as at the 3-way TI. A similar approach has been used by previous studies to deduce local background levels.6,29 Average background PM10, PM2.5 and PM1 concentrations were found to be 22 ± 21, 16 ± 15 and 13 ± 15 μg m−3 at the 3-way TI, respectively. The corresponding values at the 4-way TI were 16 ± 10, 11 ± 6 and 8 ± 6 μg m−3, respectively. Our estimated background values compare well with the urban background studies elsewhere. For example, the estimates of DEFRA30 suggest urban background PM2.5 concentration in the southern UK to be about 17 μg m−3 during the winter season.
The ZoI represents the length of a road around a TI that is affected by higher particle mass emissions as compared to the rest of the route where free-flow driving conditions persist. The ZoI is estimated based on the intersecting points of driving speed versus distance, and PMCs versus distance, profiles at a TI. The example demonstrating the method to estimate the ZoI is shown in ESI Fig. S2.† For estimating the ZoI, PMC data for ±200 m distance from the centre of each of the TIs were extracted. This preliminary distance was chosen based on our prior field experience.6 We observed that the effects of traffic lights on emissions die back to normal during free-flow traffic conditions by the end of about 200 m in each direction on the chosen route.6 The ZoI was then estimated for delay conditions at the TIs.
The RDD rate for PM10, PM2.5 and PM1 is estimated by using eqn (1):
Deposited doses (in thoracic, tracheobronchial, alveolar regions) of PM fractions = (VT × f) × DFi × PMi | (1) |
(2) |
(3) |
ESI Fig. S3† shows the method to estimate the mass median diameters for different PM fractions. The average DF for different ventilation settings in mobile measurements and at two types of TIs during fixed-site measurements is presented in ESI Table S3.†
At both the TIs, the statistical pdf was fitted to a total of 18 combinations, i.e. two monitoring locations × three different times (6 s, 15 min and 1 h) averages × three PM types (PM10, PM2.5 and PM1). A total of 61 different statistical pdfs were tested on each of the 18 combinations and goodness of fit parameters were estimated by using the Anderson–Darling (A–D) method.13 Based on a thorough visual inspection of the pdf plots and histograms and the goodness-of-fit test criteria, all the 61 distributions were ranked and the “best fit” distribution was selected for each of the 18 combinations. In order to identify the type of distribution that could fit the majority of the time averaged series of PMCs, a “common” distribution among the top ten ranked distributions was chosen.
For comparison with the literature, we have estimated average on-road PM10, PM2.5 and PM1 concentrations that were found to be 44, 21 and 14 μg m−3, respectively (ESI Table S4†). A study by Chan et al.35 was located for comparison where they measured PM10 (140 μg m−3) and PM2.5 (106 μg m−3) concentrations inside a car in Guangzhou (China) with the windows fully open, using a TSI Dustrak 8520 model. The average PM10 and PM2.5 concentrations reported by Chan et al.35 were about 3- and 5-times higher than those observed in our study, respectively. Previous studies have reported about 1.8-times higher concentrations of PM2.5 by using the TSI instrument compared with the GRIMM, contributing to some of the observed differences.36 The remaining differences can possibly be explained by 3.5- and 4.5-times higher background PM10 (97 ± 26 μg m−3) and PM2.5 (72 ± 190 μg m−3) concentrations in Chinese cities37 compared with those estimated in our case (i.e. 28 ± 6 and 16 ± 2 μg m−3 of PM10, and PM2.5, respectively).
The average in-cabin PM10 concentration was 31 ± 8, 23 ± 7, 38 ± 12 and 45 ± 14 μg m−3 under Set2, Set3, Set4 and Set5, respectively (ESI Table S4†). PM10 under Set2 was within a factor of 2 of those reported by Int Panis et al.14 for Brussels (Belgium) and Geiss et al.17 for Ispra (Italy). This was presumably due to the effect of traffic volume (98753 veh per day) in our study that was 1.9-times that reported by Int Panis et al.14 with about 38% less vehicle speed than that in our case (21 km h−1). No such data on traffic volume and driving speed were available for comparison with the work of Geiss et al.17 Our PM10 under Set5 (windows closed, fan and heating off; 45 ± 14 μg m−3) compared well with that measured (43 ± 23 μg m−3) by Gulliver and Briggs18 in Northampton, UK (Table 1). This similarity can be expected given that both these studies were carried out in a typical UK town during the winter season and the route selected in both the studies was heavily trafficked with frequent queuing and congestion.
The average PM10 after subtracting the background was found to be highest under Set5 and lowest under Set3 (ESI Table S4†). The possible explanation for this could be different AERs under these settings. A strong negative linear correlation (R2 ≈ 0.94) between AER and PM10 under different ventilation settings suggests that there will be a decrease in dilution (and hence an increase in PM10) with the decrease in AER. Interestingly, the relationship between AER and PM10 concentration is opposite to what is usually observed between AER and airborne nanoparticles5 that is represented by PNCs.39,40 This indicates that coarse particles and nanoparticles behave differently under different ventilation settings.
As for fine particles, average in-cabin PM2.5 was found to be 13 ± 5, 12 ± 4, 9 ± 3 and 14 ± 7 μg m−3 under Set2, Set3, Set4 and Set5, respectively (ESI Table S4†). The PM2.5 concentration under Set2 was within a factor of 2 of those reported by Weichenthal et al.15 in Toronto (6.6 μg m−3) and Montreal (13.6 μg m−3), Canada, and Geiss et al.17 in Ispra (13.6 μg m−3), Italy. The PM2.5 concentration under Set5 (14 ± 7 μg m−3) was identical to that measured (16 ± 16 μg m−3) by Gulliver and Briggs18 in Northampton, UK (Table 1). The average PM2.5 after subtracting the background was highest under Set2 and Set3 and lowest under Set4 (ESI Table S4†). The highest PM2.5 under Set2 and Set3 can be explained by greater intake of outside air due to high AER under these settings as compared to Set4.
Average in-cabin PM1 was found to be 9 ± 4, 11 ± 4, 5 ± 2, and 9 ± 5 μg m−3 under Set2, Set3, Set4 and Set5, respectively (ESI Table S4†). Contrary to PM10, a strong positive linear correlation (R2 = 0.58) was observed between AER and average PM1 under different ventilation settings. This indicates that penetration of exhaust particles inside the cabin decreases with a decrease in AER, resulting in decreasing in-cabin PM1. Comparison of our results suggests that PM1 for Set2 is well within the range of those reported by Geiss et al.17 (i.e. 0.8–82.9 μg m−3) in Ispra (Italy). Likewise, PM1 under Set5 compares well with that measured by Gulliver and Briggs18 (i.e. 7 ± 10 μg m−3) in Northampton, UK (Table 1).
To further assess the effect of congested conditions at TIs on PMCs, the concentrations of PM10, PM2.5 and PM1 were segregated for delay and non-delay conditions at all the TIs on the studied route using the approach explained in Section 2.5 (Fig. 3d). Median PM10, PM2.5 and PM1 during the delay period at the TIs were found to be 57, 23 and 15 μg m−3, respectively; these were 40%, 16% and 17% higher than the corresponding values on the rest of the route with free-flow traffic conditions.
In addition to traffic driving conditions, geometries and the built-up area around TIs also affect the dispersion of PM emissions and hence the PMCs. To analyse the effect of geometries and the built-up area around the TI on PM fractions, we further divided our TIs into the following 4 categories based on the surrounding built-up area: TI4w-nb, TI3w-nb, TI4w-wb and TI3w-wb. The results are summarised in Table 5 and the average PM is shown in Fig. 3e–h.
Type of TI | PM10 (μg m−3) | PM2.5 (μg m−3) | PM1 (μg m−3) | |||
---|---|---|---|---|---|---|
Average ± σ | Median | Average ± σ | Median | Average ± σ | Median | |
TI1 | 69 ± 36 | 61 | 23 ± 5 | 23 | 15 ± 4 | 16 |
TI2 | 72 ± 32 | 65 | 19 ± 3 | 20 | 13 ± 2 | 12 |
TI4 | 53 ± 20 | 45 | 27 ± 10 | 24 | 19 ± 6 | 19 |
TI6 | 63 ± 15 | 58 | 28 ± 6 | 29 | 18 ± 6 | 21 |
TI 4w-nb | 65 ± 29 | 59 | 24 ± 7 | 22 | 16 ± 5 | 15 |
TI3 | 49 ± 4 | 49 | 21 ± 4 | 21 | 16 ± 3 | 18 |
TI7 | 65 ± 31 | 58 | 23 ± 5 | 23 | 16 ± 5 | 13 |
TI9 | 85 ± 35 | 86 | 26 ± 6 | 26 | 15 ± 4 | 14 |
TI 3w-nb | 71 ± 33 | 60 | 24 ± 5 | 24 | 16 ± 4 | 14 |
TI10 | 59 ± 19 | 59 | 31 ± 14 | 27 | 24 ± 14 | 20 |
TI 4w-wb | 59 ± 18 | 59 | 31 ± 14 | 27 | 24 ± 14 | 20 |
TI5 | 80 ± 34 | 75 | 24 ± 4 | 24 | 14 ± 3 | 14 |
TI8 | 63 ± 36 | 56 | 28 ± 8 | 27 | 20 ± 8 | 20 |
TI 3w-wb | 66 ± 36 | 58 | 27 ± 8 | 26 | 19 ± 7 | 18 |
Median PM10 was found to be 59, 60, 59 and 58 μg m−3, PM2.5 as 22, 24, 27 and 26 μg m−3 and PM1 as 15, 14, 20 and 18 μg m−3 at TI4w-nb, TI3w-nb, TI4w-wb, and TI3w-wb, respectively (Table 5). Interestingly, the median PM10 was almost approximately similar at all four categories of TIs (Table 5), indicating that the built-up environment has very little effect due to its relatively larger setting velocity. This was not the case for the median PM2.5 and PM1, which were highest at TI4w-wb where the traffic volume was also largest compared with other TIs with a built-up area (i.e. 93340, 85335, 108554, 107784 veh per day at TI4w-nb, TI3w-nb, TI4w-wb and TI3w-wb, respectively). Moreover, accumulation of fine PMCs at the TIs with built-up area is expected to be higher due to limited dilution than the TIs with no built-up area.42
The above discussions show that delay conditions at TIs can result in 40%, 16% and 17% higher PM10, PM2.5 and PM1, respectively, compared with those on the rest of the route with free-flow conditions. The effect of built-up area around a TI on PM10 was almost non-existent. Conversely, an increase of about 10% and 30% in median PM2.5 and PM1 was found at TIs with a built-up area compared with TIs with no built-up area.
Type of TIs | Max | Min | Median | Average | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|
X 1 (m) | X 2 (m) | Length (m) | X 1 (m) | X 2 (m) | Length (m) | X 1 (m) | X 2 (m) | Length (m) | X 1 (m) | X 2 (m) | Length (m) | |
PM 10 | ||||||||||||
TI4w-nb | 189 | 49 | 140 | 0 | −96 | 96 | 86 | −26 | 112 | 89 | −33 | 121 |
TI3w-nb | 200 | 14 | 186 | 11 | −47 | 58 | 126 | 3 | 123 | 100 | −16 | 116 |
TI4w-wb | 100 | 58 | 42 | 55 | −20 | 75 | 69 | 29 | 40 | 75 | 20 | 55 |
TI3w-wb | 156 | 68 | 88 | 22 | −100 | 122 | 86 | −37 | 123 | 86 | −32 | 118 |
PM 2.5 | ||||||||||||
TI4w-nb | 194 | 20 | 174 | 38 | −16 | 54 | 110 | −5 | 116 | 106 | −9 | 114 |
TI3w-nb | 171 | 43 | 128 | 25 | −47 | 72 | 90 | 9 | 81 | 92 | 2 | 90 |
TI4w-wb | 96 | 44 | 52 | 46 | −23 | 69 | 79 | 11 | 68 | 76 | 11 | 65 |
TI3w-wb | 196 | 68 | 128 | 0 | −100 | 100 | 85 | −36 | 121 | 93 | −32 | 125 |
PM 1 | ||||||||||||
TI4w-nb | 194 | 44 | 150 | 31 | −16 | 47 | 114 | 13 | 102 | 107 | −6 | 113 |
TI3w-nb | 164 | 19 | 145 | 20 | −64 | 84 | 91 | 7 | 85 | 92 | −13 | 105 |
TI4w-wb | 113 | 30 | 83 | 54 | −23 | 77 | 86 | 5 | 81 | 76 | 11 | 65 |
TI3w-wb | 190 | 68 | 122 | 0 | −100 | 100 | 60 | −20 | 80 | 74 | −25 | 99 |
Comparison of different ranges of ZoI suggests that the maximum length of the ZoI was found to be up to 1.5, 1.6 and 1.7-times the median length for PM10, PM2.5 and PM1, respectively, under both driving conditions at all the TIs. The median length was within ±5% of the average length of the ZoI for all fractions of PM (Table 6 and ESI Table S11†). Given that the maximum and median values are most relevant for both the driving conditions; these are chosen for the subsequent discussions.
There are some common features between both the driving conditions. For example, the maximum length of the ZoI for PM2.5 and PM1 was highest at TI4w-nb under both the driving conditions. Irrespective of the PM type, a negative linear correlation has been observed between the maximum length of the ZoI and average acceleration (i.e. R2 = 0.35, 0.50 and 0.50 for PM10, PM2.5 and PM1, respectively, under stop-and-go driving conditions; the corresponding values for multiple stopping are R2 = 0.59, 0.86 and 0.98). These observations suggest that irrespective of the driving condition, the maximum length of the ZoI depends on acceleration.
Apart from some commonalities (discussed above), distinct features of the ZoI were also observed under both the driving conditions. For example, both maximum and median lengths of the ZoI were largest for PM10 at TI3w-nb under stop-and-go driving conditions. On the other hand, corresponding lengths for PM10 were highest at TI3w-wb under multiple stopping driving conditions. Similarly, the median length of the ZoI during stop-and-go driving conditions was highest for PM2.5 and PM1 at TI3w-wb and TI4w-nb, respectively (Table 6) while the corresponding ZoIs for PM2.5 and PM1 were highest at TI3w-nb (ESI Table S11†) during multiple stopping conditions. Under stop-and-go driving conditions, a positive linear correlation was observed between the median length of the ZoI and the average driving speed for PM2.5 (R2 = 0.35) and PM1 (R2 = 0.95) while a negative linear correlation was observed between the median length of the ZoI and the average deceleration for PM2.5 (R2 = 0.24) and PM1 (R2 = 0.68) during multiple stopping driving conditions. No such correlation was seen for PM10 under both the driving conditions.
The above discussions clearly show that the ZoI exists within the vicinity of a TI and the length of a ZoI is dissimilar for different fractions of PM at different types of TIs. For stop-and-go driving conditions, the ZoI depends on the average acceleration and driving speed of traffic while it depends on the average acceleration and deceleration of traffic under multiple stopping driving conditions.
The percentage fraction of fine and coarse particles was almost similar at the 3- and 4-way TIs (Fig. 4b), indicating common exhaust and non-exhaust sources at both the TIs. The average PM10, PM2.5 and PM1 at the 3-way TI were 39 ± 24, 24 ± 20 and 20 ± 20 μg m−3, respectively, with the corresponding values at the 4-way TI being 32 ± 20, 19 ± 11 and 15 ± 10 μg m−3 (Table 7). On comparison, it was found that the PM10 at both 3- and 4-way TIs was within a factor of 2 of those reported in published literature (Table 2), except for the report by He et al.44 who found over 3-times higher PM10 than those found at the studied 4-way TI. This can be explained by 3.5-times higher average background PM10 in the work of He et al.44 compared with our background PM10 levels (ESI Table S2†). Similarly, the PM2.5 reported at both the TIs was within ±20% of those reported in the literature (Table 2).
Type of TI | Parameter | PM10 (μg m−3) | PM2.5 (μg m−3) | PM1 (μg m−3) | Traffic volume, veh per h (% diesel vehicle) | Wind speed (m s−1) |
---|---|---|---|---|---|---|
3-way | Average ± σ | 39 ± 24 | 24 ± 20 | 20 ± 20 | 5498 ± 540 (43%) | 3.5 ± 1.9 |
Median | 30 | 12 | 6 | — | — | |
Max | 88 | 69 | 66 | — | — | |
4-way | Average ± σ | 32 ± 20 | 19 ± 11 | 15 ± 10 | 5014 ± 1172 (39%) | 3.0 ± 1.3 |
Median | 29 | 16 | 12 | — | — | |
Max | 108 | 56 | 52 | — | — |
ESI Fig. S6† shows frequency histograms that are used to assess the frequency of violation of PM10, PM2.5 and PM1 concentrations against the corresponding PMCs during free-flow (i.e. 41, 20 and 12 μg m−3 for PM10, PM2.5 and PM1, respectively; Section 3.2). The hourly averaged PM10 at the 3- and 4-way TIs was found to exceed the average on-road (in-vehicle with windows fully open) free-flow PM10 concentration for 41% and 24% of the total time, respectively. The hourly averaged PM2.5 exceeded the corresponding free-flow concentrations for 35% and 34% of the total time at the 3- and 4-way TIs, respectively. The hourly averaged PM1 was found to exceed the average on-road PM1 during free flow traffic conditions for 35% and 40% of the total time at the 3- and 4-way TIs, respectively.
The types of pdf vary for different time averages (Section 2.5). Therefore, distribution was fitted to 1 s, 15 min and 1 h averaged total PM10, PM2.5 and PM1 concentrations at the 3- and 4-way TIs in order to assess the effect of time averages on the pdf fit. The summary of these outcomes is presented in Table 8, which shows the “best” and the “common” fit distributions of the PM10, PM2.5 and PM1 for three different averaging periods. Irrespective of PM type, inverse Gaussian is found to be the “common” fit at the 3-way TI while it is the Gamma distribution that is a “common” fit for the 4-way TI. Inverse Gaussian was found to be the best fit for 15 min averaged PM10, PM2.5 and PM1 at the 3-way TI and 6 s averaged PM2.5 and PM1 data at the 4-way TI. The best fit distribution describes the pdf of specific time averaged PMC data well while common fit distribution is the type of distribution that could fit the majority of the time averaged series of PMCs adequately. This knowledge about statistical distributions that fit well to PMC data at different types of TIs can be important for assessing the frequency of violation of air quality standards and designing mitigation strategies.
Types of TIs | Type of fit | Averaging time | PM10 | PM2.5 | PM1 |
---|---|---|---|---|---|
3-way TI | Best fit | 6 s | Inverse Gaussian | Burr | GEV |
15 min | Inverse Gaussian | Inverse Gaussian | Inverse Gaussian | ||
1 h | Gamma | Inverse Gaussian | Gamma | ||
Common fit | Inverse Gaussian | Inverse Gaussian | Inverse Gaussian | ||
4-way TI | Best fit | 6 s | GEV | Inverse Gaussian | Inverse Gaussian |
15 min | Exponential | Gamma | GEV | ||
1 h | Weibull | Gamma | Gamma | ||
Common fit | Gamma | Gamma | Gamma |
Fig. 5 Average RDD rate of (a) PM10, (b) PM2.5 and (c) PM1 during delays at 3- and 4-way TIs and during a delay at TIs and free-flow on the rest of the route in Set1. |
Pedestrian exposure was estimated using the fixed-site measurements around the TIs (Section 3.5). Median RDD rates of PM10 were found to be 13 and 11 μg h−1 at 3- and 4-way TIs, respectively. The corresponding values for PM2.5 were 5 and 6 μg h−1 at 3- and 4-way TIs, and for PM1 as 3 and 5 μg h−1 at 3- and 4-way TIs, respectively (Fig. 5a–c). These RDD rates for different PM types at 3- and 4-way TIs are close to each other. However, significant differences can be seen when the exposure data for delay and non-delay periods are segregated. For example, the on-road RDD rate of PM10 during delay conditions was 6.2- and 7.3-times higher than those for a pedestrian at 3- and 4-way TIs, respectively. The corresponding ratios for PM2.5 decreased 1.4- and 1.2-times at 3- and 4-way TIs, respectively (Fig. 5a–c). These observations suggest a disproportional increase in coarse and fine particles during the delay conditions, with a much higher increase in the coarse fraction.
The above discussion suggests that Set3 is the best setting, resulting in 54 and 68% decrease in in-cabin PM10 and PM2.5, respectively, compared with on-road RDD rate during delay conditions at TIs (Fig. 6). Likewise, Set5 emerged as the best setting for PM1, resulting in 76% reduction in in-cabin PM1 during delay conditions at TIs compared with the corresponding values of on-road RDD rates (Fig. 6d). In case a most optimal setting needs to be selected to reduce in-cabin exposure to all three PM fractions, Set5 may be considered since it results in maximum reduction in the in-cabin RDD rate of PM1 and ∼42% and 59% reduction in the in-cabin RDD rates of PM10 and PM2.5, respectively. Of course, the choice of optimal setting could change to Set3 if the highest reduction in PM10 or PM2.5 is considered as a primary choice.
The following conclusions are drawn:
• The in-cabin concentration of coarse and fine particles was affected differently by the AER. Contrary to fine particles, concentrations of coarse particles (PM2.5–10) decreased with an increase in AER.
• Median PM10, PM2.5 and PM1 concentrations during delay periods at TIs were up to 40, 16 and 17% higher than those during free-flow conditions, indicating that TIs become hotspots of PMCs during delay conditions.
• The built-up area around the TIs did not show much impact on median PM10 concentration as opposed to median PM2.5 and PM1 that were highest at TI4w-wb due to the relatively high traffic volume and surrounding built-up area limiting the dispersion.
• Our results showed the existence of a ZoI within the vicinity of a TI and that the length of a ZoI depends on the type of TI, fraction of PM, and traffic driving conditions. For stop-and-go driving conditions, the ZoI was found to depend on the average acceleration and driving speed of traffic.
• Based on the fitting of the pdf to the PM data at the fixed-site, the hourly averaged PM10, PM2.5 and PM1 concentrations over the entire fixed-site measurements at the 3-way TI were found to exceed their corresponding values during free-flow traffic conditions from mobile measurements for 41%, 34% and 35% of the total monitoring duration, respectively. The corresponding exceedances at the 4-way TI were 24%, 35% and 40%, respectively. It indicates that the frequency of exceedance increases with a decrease in the size of the particles.
• On an average, only about 7% of the commuting time spent under delay conditions at TIs over all the runs was found to contribute 10, 7 and 8% of the total commuting exposure to PM10, PM2.5 and PM1, respectively. This indicates that TIs become hotspots of PM during delay conditions. Exposure to on-road PM10 under delay conditions at the TIs was 6.2- and 7.3-times higher than that for a pedestrian at 3- and 4-way TIs, respectively. The corresponding ratios for PM2.5 were 1.4 and 1.2 at 3- and 4-way TIs, respectively.
• Set5 (i.e. windows closed, fan and heating switched off) under delay conditions was found to be the optimal ventilation setting for in-cabin exposure at the TIs, leading to the highest reduction in the in-cabin RDD rate of PM1 (76%) and significant reduction in the in-cabin RDD rate of PM10 (42%) and PM2.5 (59%) with respect to the on-road RDD rate (Set1).
This study presents hitherto missing information related to the effect of different ventilation settings and driving conditions on the PMCs and associated exposure at and around the TIs. In this study, we carried out mobile measurements on a single vehicle, further measurements to understand the effect of age, cabin space and filter types of different cars on in-cabin PMC exposure are recommended. Further fixed-site measurements around TIs with varying built-up area would also be valuable to advance the understanding of the extent of exposure around TIs.
Footnote |
† Electronic supplementary information (ESI) available. See DOI: 10.1039/c6em00215c |
This journal is © The Royal Society of Chemistry 2016 |