Sixteen-Year Monitoring of Particulate Matter Exposure in the Parisian Subway: Data Inventory and Compilation in a Database
Abstract
:1. Introduction
2. Materials and Methods
2.1. PM Measurements Conducted in the Parisian Subway
2.2. Identification of Available PM Measurement Data
2.3. Analytical Methods Considered
2.4. Construction of a PM Database
2.4.1. Definition of Jobs
2.4.2. Missing Data
2.5. Statistical Analysis
3. Results
3.1. Stationary Measurement Campaigns
3.2. Personal Measurement Campaigns
3.3. Database Measurements Content
4. Discussion
4.1. Strengths and Limitations of the Database
4.2. Relevance of the Database for Monitoring PM Exposure and Investigating Its Origins
4.3. Relevance of the Database for Retrospective Exposure Assessment
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Type of Informations | Variables | Label | Format |
---|---|---|---|
General | Report_ID | Report of measurement campaign | Alphanumeric |
Report_Date | Date of final report | DD-MM-YYYY | |
Commander | Department ordering measurements | Text | |
Executor | Laboratory executing samplings and analyses | Text | |
Worker_ID | Reference characterizing the worker | Text | |
Sample_ID | Reference characterizing the sample | Text | |
Subway_line | Train line | Number | |
Subway_station | Train station | Text | |
Rolling_stock | Rolling stock type operating on the train line | Alphanumeric | |
Subway_frequency | Train frequency | Number | |
Fans_number | Number of operating fans in the train station | Number | |
Subway_setting | Underground or Above ground or Hybrid | Text | |
Job_characteristics | Job | Station agent or Security guard or Locomotive operators | Text |
SA_sector | Station agent’s assigned workplace sector | Text | |
SG_Sector | Security guard’s assigned workplace sector | Number | |
LEV | Presence of local exhaust ventilation at workplace | Yes/No | |
Measurement | Sample_date | Date of the measurement | DD-MM-YYYY |
Weekday | Day of the week | Text | |
Sample_duration | Duration of samplings | Number | |
Sample_dur_unit | Min or Hour or Day | Text | |
Sampler_Place | Sampler location at the station | Text | |
Sampler_Height | Height in meters | Number | |
Sample_type | Personal or Stationary | Text | |
Starting_Time | Starting time of measurement | HH-MM | |
Meas_conc | Measured concentration value | Number | |
Meas_unit | Measured concentration unit | Text | |
TWA_Conc | Time-weighted average concentrations | Number | |
TWA_unit | Adjusted TWA unit | Text | |
Hours_TWA | Time duration TWA in hours | Number | |
Analyse_method | TEOM or Dustrak or Gravimetric method | Text | |
LOQ_value | Limit of Quantification value | Text | |
LOQ_cat | Above the LOQ or Bellow LOQ or Equal | Number | |
LOQ_unit | Unit of LOQ | Text |
Campaign Name | Type and Place of Air Sampling | Network Coverage | Calendar Period | Device Used (PM Size) | Measurements Time Interval | Measurement Duration | Measurement Shift | Reported PM Concentration | Number of Recorded Measurements N (%) | |
---|---|---|---|---|---|---|---|---|---|---|
PM2.5 | PM10 | |||||||||
Squales | Stationary (1 platform) | 6 stations (l.1; l.4; l.9; 3 on RER A) | January 2004–November 2020 | TEOM (PM 10 with or without PM 2.5) | 15 min | 24 h/7 days | Continuous | Daily | 2531 (43.2%) 117 (2.0%) | 10,510 (57.9%) 369 (2.0%) |
Monthly | ||||||||||
5:30–13:30 | Daily | 2531 (43.2%) – (0%) | 6596 (36.3%) – (0%) | |||||||
Monthly | ||||||||||
Mapping-2014 | Stationary (2 platforms) | l.1 and l.9 stations | January 2014 | DustTrak (PM 2.5; PM 10) | 30 s | 15 min | 7:00 to 9:00 | Average concentration on 30 min | 122 (2.1%) | 122 (0.7%) |
Mapping-2016 | Stationary (1 platform) | All network lines and stations | June–December 2016 | DustTrak (PM 2.5; PM 10) | 30 s | 30 min | 7:30 to 9:30 | Average concentration on 30 min (1 platform) | 441 (7.5%) | 441 (2.4%) |
Occupational exposure assessment 2016 | Personal (3 locomotive operators per line) | along all network lines | November–December 2016 | Gravimetric method * (PM 2.5; PM 10) | _ | 7 h workshift | Morning (≃5:00 to 12:00) | exposure (8 h TWA) | 47 (0.8%) | 45 (0.2%) |
Personal (1 locomotive operator per line) | DustTrak (PM 2.5; PM 10) | 30 s | ≃ 4 h | Average concentration on ≃4 h | 14 (0.2%) | 14 (0.1%) | ||||
Occupational exposure assessment 2017 | Personal (each GZ team) | GZ 1, 2, 3 † | January–February 2017, February 2018 | Gravimetric method * (PM 2.5; PM 10) | _ | 7 h work shifts | Afternoon (≃12:00 to 19:00) | Exposure (8 h TWA) | 8 (0.1%) | 8 (4‰) |
DustTrak (PM 2.5; PM 10) | 30 s | ≃ 4 h | Average concentration on ≃4 h | 9 (0.2%) | 9 (5‰) | |||||
ROBoCoP pilot study 2019 | Personal (for each station agents type) | 2 stations of l.7 (station agents) | October 2019 | Gravimetric method * (PM 2.5; PM 10) | _ | 10 days work shifts | Afternoon (≃12:00 to 19:00) | exposure (8 h TWA) | 20 (0.3%) | 20 (0.1%) |
Personal | Along l.7 (locomotive operators) | October 2019 | Gravimetric method * (PM 2.5; PM 10) | _ | 9 days work shifts | Morning (≃5:00 to 12:00) | Exposure (8 h TWA) | 8 (0.1%) | 8 (4‰) | |
Personal | GZ 1 (security guards) | November 2019 | Gravimetric method * (PM 2.5; PM 10) | _ | 9 days work shifts | Afternoon (≃12:00 to 19:00) | Exposure (8 h TWA) | 8 (0.1%) | 8 (4‰) |
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Ben Rayana, T.; Debatisse, A.; Jouannique, V.; Sakthithasan, K.; Besançon, S.; Molle, R.; Wild, P.; Guinhouya, B.C.; Guseva Canu, I. Sixteen-Year Monitoring of Particulate Matter Exposure in the Parisian Subway: Data Inventory and Compilation in a Database. Atmosphere 2022, 13, 1061. https://doi.org/10.3390/atmos13071061
Ben Rayana T, Debatisse A, Jouannique V, Sakthithasan K, Besançon S, Molle R, Wild P, Guinhouya BC, Guseva Canu I. Sixteen-Year Monitoring of Particulate Matter Exposure in the Parisian Subway: Data Inventory and Compilation in a Database. Atmosphere. 2022; 13(7):1061. https://doi.org/10.3390/atmos13071061
Chicago/Turabian StyleBen Rayana, Tesnim, Amélie Debatisse, Valérie Jouannique, Kirushanthi Sakthithasan, Sophie Besançon, Romain Molle, Pascal Wild, Benjamin C. Guinhouya, and Irina Guseva Canu. 2022. "Sixteen-Year Monitoring of Particulate Matter Exposure in the Parisian Subway: Data Inventory and Compilation in a Database" Atmosphere 13, no. 7: 1061. https://doi.org/10.3390/atmos13071061
APA StyleBen Rayana, T., Debatisse, A., Jouannique, V., Sakthithasan, K., Besançon, S., Molle, R., Wild, P., Guinhouya, B. C., & Guseva Canu, I. (2022). Sixteen-Year Monitoring of Particulate Matter Exposure in the Parisian Subway: Data Inventory and Compilation in a Database. Atmosphere, 13(7), 1061. https://doi.org/10.3390/atmos13071061