| Literature DB >> 31745180 |
Elisabeth Feld-Cook1, Rahul Shome2, Rosemary T Zaleski3, Krishnan Mohan1, Hristiyan Kourtev2, Kostas E Bekris2, Clifford P Weisel1, Jennifer Mi K Shin4.
Abstract
Obtaining valid, reliable quantitative exposure data can be a significant challenge for industrial hygienists, exposure scientists, and other health science professionals. In this proof-of-concept study, a robotic platform was programmed to perform a simple task as a plausible alternative to human subjects in exposure studies for generating exposure data. The use of robots offers several advantages over the use of humans. Research can be completed more efficiently and there is no need to recruit, screen, or train volunteers. In addition, robots can perform tasks repeatedly without getting tired allowing for collection of an unlimited number of measurements using different chemicals to assess exposure impacts from formulation changes and new product development. The use of robots also eliminates concerns with intentional human exposures while removing health research ethics review requirements which are time consuming. In this study, a humanoid robot was programmed to paint drywall, while volatile organic compounds were measured in air for comparison to model estimates. The measured air concentrations generally agreed with more advanced exposure model estimates. These findings suggest that robots have potential as a methodology for generating exposure measurements relevant to human activities, but without using human subjects.Entities:
Keywords: Exposure modeling; Personal exposure; Robots; Volatile organic compounds
Year: 2019 PMID: 31745180 PMCID: PMC7234925 DOI: 10.1038/s41370-019-0190-x
Source DB: PubMed Journal: J Expo Sci Environ Epidemiol ISSN: 1559-0631 Impact factor: 5.563
Fig. 1A real-time photo of the inside of the CEF during the robotic painting from the back (left) shows the placement of the drywall, robot, paint, and the THC analyzer sampling inlet. A photo from the front of the CEF (right) shows the placement of the VOC monitors and TD tubes. The distance between the robot and each drywall panel is 1.17 m in front and 1.2 m on each side
Fig. 2Left: a simulation environment was developed by the research team to replicate the real-world experimental setup in the measurement chamber. The figure shows the simulator’s visualization, where the robot manipulator is in its initial configuration with the compliant paint-roller attached. The simulation also includes the positions of the paint container and dry wall boards (shown in red). The robot’s motion is first programmed and tested in simulation for safety and effectiveness before deployed in the real setup. Accurate-enough reproductions of the geometries of the robot, the paint roller, the paint bucket and the walls, as well as corresponding software, are needed to produce motions that a avoid undesirable collisions, and b result in contact between the roller geometry and the target wall. Right: the figure shows the 3D digital model of the specially designed compliant paint-roller, which was attached to the robotic arm, right next to the real one. The real system was constructed from 3D printed components based on the digital model. The key feature of the paint-roller is that it has an internal spring-loaded mechanism—highlighted in the digital model—which provides compliance and robustness to positioning errors. This makes it possible to use the robot for the intended purpose without the need for expensive sensors and a complex sensor-monitoring process
Painting task parameters throughout the study
| Trial A | Trial B | Trial C | Trial D | Trial E | Trial F | Average | |
|---|---|---|---|---|---|---|---|
| Painting duration | 66 min | 50 min | 52 min | 51 min | 49 min | 47 min | 53 ± 6.2 min |
| Amount of paint used | 2.4 kg | 1.3 kg | 1.5 kg | 1.8 kg | 1.6 kg | 1.8 kg | 1.53 ± 0.64 kg |
| Measured air exchange ratea | 11–12 | 11–12 | 11–12 | 6 | 8.5 | 8 |
aMeasured using CO2 gas flow
Compounds detected in headspace analysis of WBP
| MW (g/mol) | Formula | Ratio of total MW to C MW | |
|---|---|---|---|
| Methyl methacrylate | 100 | C5H8O2 | 1.7 |
| n-butyl ether | 130 | C8H180 | 1.4 |
| Butyl acetate | 116 | C6H1202 | 1.6 |
| Butyl propionate | 130 | C7H14O2 | 1.5 |
| – |
The average VOC air concentrations measured during the painting task (short term)
| THC analyzera | VOC Monitor | VOC Monitor | VOC Monitor | |
|---|---|---|---|---|
| Trial A | 5.95 ± 1.56 | 5.22 ± 1.43 | 3.77 ± 1.02 | 4.15 ± 1.14 |
| Trial B | 2.52 ± 1.00 | 1.56 ± 0.68 | 1.05 ± 0.46 | 1.18 ± 0.52 |
| Trial C | 3.46 ± 1.14 | 1.88 ± 0.54 | 1.45 ± 0.44 | 1.54 ± 0.47 |
| Trial D | 2.97 ± 1.23 | 2.70 ± 1.31 | 1.68 ± 0.85 | 1.98 ± 1.00 |
| Trial E | 4.27 ± 1.42 | 3.23 ± 1.27 | 2.11 ± 0.82 | 2.59 ± 1.03 |
| Trial F | 4.47 ± 1.37 | 3.57 ± 1.27 | 2.52 ± 0.88 | 3.10 ± 1.13 |
aConcentrations are background corrected and reported as ppm-C
Fig. 3Real-time THC and VOC monitor data normalized to the amount of paint used in each trial are shown for the painting trial (short term) for trials a–c with the high ACH (top four graphs) and trials d–f with the low ACH (bottom four graphs)
Fig. 4Average VOC air concentrations across the painting time for the THC (top left) and all three VOC monitors (top right, bottom left and right). Trials performed at higher AER are triangles and lower AER are circles. The errors bars represent the standard deviation. ‡Two trials used exactly the same amount of paint (1.8 kg) and are separated for clarity
Comparison of measured results and model estimates for Trials A, B, and D
| Trial A (mg/m3) | Trial B (mg/m3) | Trial D (mg/m3) | ||
|---|---|---|---|---|
| Measured air concentrations | THC analyzer | 4.4 | 1.9 | 2.2 |
| VOC monitor right | 3.9 | 1.2 | 2.0 | |
| VOC monitor middle | 2.8 | 0.8 | 0.3 | |
| VOC monitor left | 3.1 | 0.9 | 1.0 | |
| Model estimates | TRA | 2032 | 1049 | 1483 |
| EGRET | 1354 | 699 | 988 | |
| WMB | 118 | 80.6 | 217 | |
| CS INST (instantaneous rate) | 161 | 109 | 205 | |
| CS CONST (constant rate) | 148 | 98 | 177 | |
| CS LANG (evaporation, Langmuir isotherm) | 137 | 93 | 160 | |
| CS THIB (evaporation, Thibodeaux isotherm) | 55 | 46 | 66 | |
| EFAST | 3.9 | 2.6 | 4.9 | |
| ART (median) | 16 | 16 | 26 |
TRA targeted risk assessment tool, EGRET European Solvents Industry Group (ESIG) Generic Exposure Scenario (GES) Risk and Exposure Tool, WMB well mixed box model constant generation rate, CS consumer exposure models (also known as ConsExpo), EFAST exposure and fate assessment screening tool, ART advanced reach tool
Fig. 5Comparison of model estimates to measured data
Average painted area measurements for all drywall used for all trials
| Painting area | Average height (cm) | Average width (cm) | Average area (cm2) | Coefficient of variation (CV) |
|---|---|---|---|---|
| Front left | 58 ± 1 | 78 ± 1 | 4531 ± 61 | 1.3 |
| Left | 60 ± 2 | 63 ± 2 | 3765 ± 63 | 1.7 |
| Front right | 60 ± 2 | 77 ± 1 | 4654 ± 173 | 3.7 |
| Right | 60 ± 1 | 58 ± 2 | 3441 ± 111 | 3.2 |
| Total | 59 ± 1 | 69 ± 9 | 4093 ± 534 | 13 |