4.1. Base-Case Simulations
For this model run we used our unit emission rate dispersion results and the emissions inputs generated as described in
Section 2.1, and analyzed the resulting modeled concentrations for the fall 2010 period. We reduced the number of points to analyze by calculating average hourly concentrations or exposure metrics by time of day for each of the time periods shown in
Table 2 on each day of the study period. These outputs were calculated using valid meteorological hours for each time period with a 75% completeness criterion; this is needed because missing concentrations occur when the wind speed is less than 0.5 m/s or the instruments did not record a complete set of measurements. The temporal pattern is illustrated in
Figure 6 for PM
2.5 concentrations from mobile sources at participants’ home locations. The participants’ home locations were described as within 300 m of HTHD roadways, within 300 m of HTLD roadways, or beyond 300m from HTHD and HTLD roadways. We also calculated the average hourly concentration for the entire day using the same completeness criterion.
Figure 7 shows the daily average hourly concentration for PM
2.5, NO
x, and CO.
Figure 6.
Temporal distributions of mobile-source component of PM
2.5 concentration for the fall 2010 period, separated into high-traffic, high-diesel (HTHD), high-traffic, low-diesel (HTLD), and low-traffic (LT) participant home locations. The box represents the middle 50% of measurements, and the median is the horizontal line in the middle; the whiskers represent the 5th and 95th percentile; and the dots represent the minimum, mean, and maximum. Time periods are defined in
Table 2.
Figure 6.
Temporal distributions of mobile-source component of PM
2.5 concentration for the fall 2010 period, separated into high-traffic, high-diesel (HTHD), high-traffic, low-diesel (HTLD), and low-traffic (LT) participant home locations. The box represents the middle 50% of measurements, and the median is the horizontal line in the middle; the whiskers represent the 5th and 95th percentile; and the dots represent the minimum, mean, and maximum. Time periods are defined in
Table 2.
Figure 6 reflects the temporal pattern of traffic volumes used to estimate link-based emissions during the five time periods. . The AM-peak is when the highest concentrations occur for all three participant groups; this is due to the high emissions, but also the stable dispersion conditions that occur during these hours. In fact the impact of roadway emission on the low traffic cohort in the AM peak is higher than the morning off-peak, mid-day, and pm peak of the other two cohorts. This means that meteorologically stable conditions and the elevated roadway emissions impact all groups.
Figure 7, which shows the average hourly pollutant concentrations for three pollutants, indicates that the emissions are the main driver behind the mobile-source concentrations at all study participant locations. The CO median concentrations are very similar for both high-traffic cohorts, once again confirming that CO is a marker for high traffic. Also, there are slightly higher PM
2.5 average daily concentrations for the high-diesel cohort, indicating these pollutants as diesel traffic markers.
Figure 7.
Average hourly pollutant concentrations for PM2.5, CO, and NOx for the fall 2010 period, separated into high-traffic, high-diesel (HTHD), high-traffic, low-diesel (HTLD), and low-traffic (LT) zones.
Figure 7.
Average hourly pollutant concentrations for PM2.5, CO, and NOx for the fall 2010 period, separated into high-traffic, high-diesel (HTHD), high-traffic, low-diesel (HTLD), and low-traffic (LT) zones.
The orientation of the participants’ homes with respect to the roadway is important in analyzing results, so we examine this information in
Figure 8. Examining these plots with the wind rose in
Figure 4, we find that the most prevalent wind direction and a large percentage of the most stable meteorological conditions occur when the wind is blowing from the northwest toward the southeast. As a result, the participants to the southeast will have the highest exposures and participants to the northwest will have the lowest exposures. Note that some of the HTHD participants (this term refers to the cohort of participants living near high-diesel roadways) have exposures to PM
2.5 less than the HTLD participants (the cohort of participants living near lower-diesel roadways). This is due to the lack of HTLD participants in the lowest exposure wind direction quadrant, the northwest quadrant. Also, there are 39 HTHD participants within 150 m of the roadway as compared to 30 HTLD participants, which explains the distribution of CO in
Figure 7 being slightly higher for the HTHD participants.
Figure 8.
Locations of study participants’ homes with respect to two types of roadways: high traffic and high fraction of diesel vehicles (left panel), and high traffic and low fraction of diesel vehicles (right panel). Radial distances represent the perpendicular distance from the roadway to the study participants’ home locations.
Figure 8.
Locations of study participants’ homes with respect to two types of roadways: high traffic and high fraction of diesel vehicles (left panel), and high traffic and low fraction of diesel vehicles (right panel). Radial distances represent the perpendicular distance from the roadway to the study participants’ home locations.
We took the analysis one step further to examine the average hourly concentration of PM
2.5 as a function of effective distance from the roadway for the two high-traffic cohorts (
Figure 9). “Effective distance” utilizes hourly wind direction to compute the distance in the wind direction between the source and the receptor, and it was used with good success in an earlier health study in Detroit [
19]. This figure shows a slight high bias in concentrations in the high-diesel cohort, especially when the effective distance from the roadway is very small.
Overall, the results are consistent with the NEXUS study design. The HTHD cohort has higher exposures to diesel-related pollutants, such as PM2.5 and NOx, than does the HTLD group. Also, both of the high-traffic cohorts have high exposures to traffic-related pollutants such as CO. This means that the methodology of combining emissions estimation and dispersion modeling is a valid tool to use for both long- and short-term health studies examining traffic-related pollutants.
Figure 9.
Average hourly concentration for PM2.5 vs. effective distance for HTHD and HTLD participants.
Figure 9.
Average hourly concentration for PM2.5 vs. effective distance for HTHD and HTLD participants.
4.2. Impacts of Adjusting Emissions Inputs Using Local-Scale Information
The methodology described in
Section 2.1 uses MOVES emissions and SEMCOG roadway speeds and volumes to estimate mobile-source pollutant emissions, and our results (
Section 4.1) seem to confirm the validity of the study design. However, it is important to remember that the validity of the outputs from this methodology is highly dependent on the accuracy of the inputs to the emissions modeling. We therefore decided to see whether we could improve our emissions estimates by incorporating local-scale data into our analysis.
As noted earlier, the AADT (total traffic volume) estimates we used from the SEMCOG database are not based upon measurements but rather TDM outputs, calculated for all road links in the Detroit area using limited, short-term measurements, TAFs, and vehicle records. However, there is an alternative database available in which the data are local-scale measurements (although this data set does not cover all Detroit road links). The Michigan DOT (MDOT) has deployed a network of real-time permanent traffic recorders (PTRs) on many major roadways in the Detroit area [
20]. To compare our SEMCOG-based results with results generated using local measurements from the PTRs, we equated PTR AADTs to TDM-based AADTs in our emissions modeling, and in cases where measurements or estimates of the commercial AADT (CAADT) were available, we equated these to diesel percentage.
We first selected links from the SEMCOG database that had corresponding real-time measurements from PTRs. Consistent with the study design, we split these links into interstates and freeways, and then compared the model-generated
versus measured AADTs. Because AADT represents the average traffic for any day of the year, we took the yearly total and found the average daily vehicle count, to remove the influence of seasonal and day-of-week variations. Also, we analyzed traffic counts from 2009 and 2011 as well as 2010 to evaluate whether the differences between AADT from SEMCOG’s TDM and from the traffic counters could be attributed to an increasing or decreasing traffic volume trend or the economic struggles of the automotive industry in Detroit in 2010. The comparison is shown in
Figure 10; locations of the PTR measurements are shown in the
supplemental material (Figure S5).
Figure 10.
Comparison of AADT from SEMCOG TDM runs versus measured AADT at selected MDOT PTR locations, shown as percent difference. This figure contains measurements at multiple locations (each group of bars); the interstates are shown on the left side of the figure and the highways are shown on the right side of the figure.
Figure 10.
Comparison of AADT from SEMCOG TDM runs versus measured AADT at selected MDOT PTR locations, shown as percent difference. This figure contains measurements at multiple locations (each group of bars); the interstates are shown on the left side of the figure and the highways are shown on the right side of the figure.
First, the figure indicates that the differences for 2010 were not influenced by trends or economic conditions. Next, evaluating the estimation error in the SEMCOG TDM results by comparing them with the MDOT PTR measurements indicated that the amount of error ranged from a 45% underestimation to a 35% overestimation. This difference translates directly to a +45 to −35% uncertainty in pollutant concentration, since traffic volume is just a weighting factor in the emissions estimation. Although this range represents a significant amount of uncertainty, it is impossible to eliminate all of it without a PTR on every road link. Based on the results of
Figure 10 we repeated the emissions estimations after decreasing the SEMCOG AADT on all interstates (NFC 11) by 20%, an average percent difference for the road links measured. To maintain consistent vehicle miles traveled (VMT) across the whole study domain, we made a corresponding increase of SEMCOG AADT on all freeways (NFC 12) based on the ratio of total interstate length to freeway length.
In addition to total volume measurements (AADT), MDOT also has data for commercial AADT (CAADT). This allowed us to evaluate the diesel/nondiesel percentages that we used to estimate emissions for each road link. We found that on many high-diesel (HD) interstates (NFC 11), the diesel percentage was only 5% (see
Table 7), not the 9% that was previously modeled based on the aggregation of fleet mixes and local demographics.
Table 7.
Comparison of diesel percentages based on NFC class and CAADT/AADT measurements on selected interstates and freeways.
Table 7.
Comparison of diesel percentages based on NFC class and CAADT/AADT measurements on selected interstates and freeways.
Roadway Characteristic | Interstates (NFC 11) | Freeways (NFC 12) |
---|
I-75 | I-94 | I-96 | M10 | M39 |
---|
Diesel percentage in NFC class fleet mix | 9% | 9% | 9% | 5% | 5% |
Diesel percentage based on MDOT measurements (CAADT/AADT) | 9% 5% (north of downtown) | 9% 5% (east of downtown) | 9% 5% (north of downtown) | 5% | 5% |
It became clear that the use of 9% in our previous modeling had overestimated the diesel impact for study participants living near these roadways. We therefore performed an additional sensitivity simulation in which we decreased the diesel percentages on these roadways, which results in some HD roadways being reclassified as LD roadways. We also reclassified some of the study participants’ home locations, because previously they were within 300m of a HTHD roadway. Now they are within 300 m of a HTLD roadway. These combined adjustments are shown in
Figure 11.
After making the adjustments in traffic volume and fleet mix analysis, we repeated the analyses discussed in
Section 3.1 and shown in
Figure 6,
Figure 7,
Figure 8 and
Figure 9. The results are given in
Figure 12,
Figure 13,
Figure 14 and
Figure 15. Again,
Figure 12 reflects the temporal pattern of the traffic volumes used to estimate link-based emissions. Comparing the three panels of this figure shows less distinction between the estimated concentrations for all three HT groups than was shown in
Figure 6 between the two HT groups (the left and middle panels).
Reclassification of some study participants from the HD group to the LD group shown as HD to LD in
Figure 13 shows that there is less distinction between the HD and LD participant groups as compared to
Figure 7. The group classification was based on proximity to a HT roadway and the classification of the roadway; however the dispersion model, which produces concentrations, also takes into account the wind direction and actual distance between the roadway and the participants’ home location. We again plotted the radial distance and the wind direction normal to the roadway with HT.
Figure 11.
NEXUS study domain, after making adjustments in diesel impact. Interstates (HD) and participants within 150 m of high-traffic/high-diesel (HTHD) roadways are shown in red; freeways (LD) and participants within 150 m of low-diesel/high-traffic roadways are shown in blue; control-group participants >300 m from interstates or freeways are in green; and participants and roadways that were reclassified from HD to LD are shown in magenta.
Figure 11.
NEXUS study domain, after making adjustments in diesel impact. Interstates (HD) and participants within 150 m of high-traffic/high-diesel (HTHD) roadways are shown in red; freeways (LD) and participants within 150 m of low-diesel/high-traffic roadways are shown in blue; control-group participants >300 m from interstates or freeways are in green; and participants and roadways that were reclassified from HD to LD are shown in magenta.
Figure 12.
Average hourly pollutant concentrations for PM2.5 for the fall 2010 period separated into HTHD, HTLD, and LT after adjusting traffic volume and fleet mix used in the modeling. HT study participants’ whose home locations were reclassified from HD to LD are shown in magenta between the HTLD and HTLD groups.
Figure 12.
Average hourly pollutant concentrations for PM2.5 for the fall 2010 period separated into HTHD, HTLD, and LT after adjusting traffic volume and fleet mix used in the modeling. HT study participants’ whose home locations were reclassified from HD to LD are shown in magenta between the HTLD and HTLD groups.
Figure 13.
Temporal distributions of mobile-source component of PM2.5 concentration for the fall 2010 period after adjusting traffic volume and fleet mix used in the modeling. HT study participants whose home locations were reclassified from HD to LD are shown in magenta between the HTLD and HTLD groups.
Figure 13.
Temporal distributions of mobile-source component of PM2.5 concentration for the fall 2010 period after adjusting traffic volume and fleet mix used in the modeling. HT study participants whose home locations were reclassified from HD to LD are shown in magenta between the HTLD and HTLD groups.
Figure 14.
Locations of study participants’ homes with respect to the roadways in the high-traffic (HT), high-diesel (HD) group (left panel); participants previously classified in the HD group who were switched to the low diesel (LD) group (middle panel); and participants in the LD group (right panel). Radial distances represent the perpendicular distance from the roadway to the study participants’ home locations.
Figure 14.
Locations of study participants’ homes with respect to the roadways in the high-traffic (HT), high-diesel (HD) group (left panel); participants previously classified in the HD group who were switched to the low diesel (LD) group (middle panel); and participants in the LD group (right panel). Radial distances represent the perpendicular distance from the roadway to the study participants’ home locations.
Figure 14 shows a much smaller difference between the HD and LD participants’ exposure when compared against
Figure 8. It is important to note that a significant amount of HD participants who were reclassified as LD are located to the northwest of the HT roadway. From
Figure 4 the most prevalent wind direction was from northwest to southeast, where the participants living to the northwest of a roadway would have the lowest impact, this combined with the larger distance between the roadway and participants’ home leads to the on average very low impacts for the reclassified group compared to the other groups. There are still participant locations southeast of the HT roadway and most locations within 150 m of the roadway, as shown in the left panel, which will have high impacts from the HT roadway. Thus even though the HT roadways that the participant locations are adjacent to have lower emissions of some pollutants, they still have a high impact due to the orientation and proximity of the roadway near their home. Finally, we examined the average hourly concentration of PM
2.5 as a function of effective distance from the roadway, finding the average effective distance for each participant over the fall period (
Figure 15).
Figure 15.
Average hourly concentration for PM2.5 vs. effective distance for HTHD participants, participants switched from HD to LD, and HTLD participants.
Figure 15.
Average hourly concentration for PM2.5 vs. effective distance for HTHD participants, participants switched from HD to LD, and HTLD participants.
The distribution of modeled PM
2.5 concentrations in
Figure 15 shows that the reclassification of these roadways from HD to LD makes for less distinction between the HD and LD participants’ home locations when compared to
Figure 9. In
Figure 9 the HTHD participants were the majority of the locations where the highest mobile-source impact was estimated. However after the reclassification this pattern is no longer the case; the highest estimated impacts from mobile sources are shown across the HT participant locations.
In conclusion, we found that the availability of local traffic measurements should influence the overall study design, and we determined that inclusion of local measurements might alter the results concerning health outcomes when making associations between the prevalence of childhood asthma and exposure to mobile-source-related air pollutants.