Estimation of Individual Exposure to Erythemal Weighted UVR by Multi-Sensor Measurements and Integral Calculation
Abstract
:1. Introduction
- (1)
- Photosensitive personal dosimeters and polysulphone film UV dosimeter are instruments that are frequently used to quantify an individual’s UV exposure [7,8]. They are light, commercially available and can be mounted on body part to study anatomical distribution of UVR [9]. However, their measurements are strongly related to the specificities of local environmental conditions and behavioral variations [8,10,11]. Moreover, most dosimeters are mounted on an individual’s shoulders, wrist, or head and therefore measure UVR from one direction (mostly above), which has been shown to underestimate full-body UVR exposure [6,8]. Recently a UVR diary app was developed to estimate personal UVR exposure, but it needs further improvement, especially for physical activity data [12].
- (2)
- Climatological approach using satellite data for the population UVR exposure level of national or regional scale can be used to demonstrate large area UVR condition. However, with a coarse resolution (e.g., 1.5 to 2 km), this approach can hardly be applied in site scale to reflect the human level UVR exposure and the interaction between the environment and the human body.
- (3)
- Some three-dimensional computer graphics techniques are used to estimate UVR exposure ratios (ERs), while referring to the fraction of the ambient UVR received by the body area, for different body parts based on anatomical and geometric calculations. Computer modeling of ER for the whole body and specific body parts has a high resolution of vertices on human skin (e.g., 13,476 vertices for the SimUVEx model developed by Religi et al. [13]) and, compared to field measurements, performs with high accuracy in terms of predicting the ER of a human body in an open area. However, this model is not applicable to real sites with complex shade conditions such as those provided by structure or vegetation. Additionally, the frequently used manikin model is designed and calculated for adults. No evidence has been found regarding the difference or uniformity of UVR exposure between children and adults. Due to children’s vulnerability in UVR risk assessments, special attention must be paid to the estimation of children’s UVR exposure.
Literature Review
2. Materials and Methods
2.1. Ambient UVR Data and Six Directional UVR Data Collection in College Station, TX
2.2. Exposure Ration Calculation for Children and Adults
2.3. Estimation of Child and Adult UVR Exposure by Ambient UVR Irradiance and ER
2.4. Estimation of Children’s and Adults’ UVR Exposure by Integral UVR Measurement
2.5. Field Measurement in Schoolyards
3. Results
3.1. Anatomical Body Part ER for Children and Adults during Four Seasons in College Station, Texas
3.2. Comparison of Two Approaches for Measuring UVR Exposure Based on Field Measurement Data on 25 February 2020
3.3. Environmental UVR Amount of a Basketball Court
4. Discussion
Limitations
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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Visible Percentage (%) | Percentage of Body Part Surface Area for an Adult (%) | Percentage of Body Surface Area for a Child * (%) | |
---|---|---|---|
Face | 38.62 | 3.9 | 6 |
Skull | 61.96 | ||
Forearm (external) | 56.68 | 5.9 | 5.7 |
Upper arm (external) | 57 | 9.6 | 8.6 |
Neck back | 71.4 | 2 | 2.7 |
Top of shoulders | 53.16 | 12.8 | 12.2 |
Belly | 43.66 | 2.9 | 2.8 |
Upper back | 53.16 | 13.9 | 13.1 |
Low back | 58.68 | ||
Hand (back) | 54.78 | 4.7 | 4.7 |
Shoulder | 64.82 | 1.9 | 1.9 |
Upper Leg (front) | 51.24 | 18.3 | 17.6 |
Lower leg (back) | 49.24 | 11.2 | 11.7 |
(%) | (%) | (%) | (%) | (%) | |
---|---|---|---|---|---|
Head | 40.14 | 43.31 | 42.04 | 42.19 | 41.92 |
Forearm | 46.57 | 49.75 | 48.49 | 48.64 | 48.36 |
Upper arm | 46.89 | 50.08 | 48.81 | 48.96 | 48.68 |
Bosom | 43.02 | 46.20 | 44.93 | 45.08 | 44.80 |
Belly | 33.51 | 36.69 | 35.42 | 35.57 | 35.29 |
Upper back | 43.02 | 46.20 | 44.93 | 45.08 | 44.80 |
Hand | 44.65 | 47.83 | 46.57 | 46.71 | 46.44 |
Shoulder | 54.83 | 58.02 | 56.76 | 56.90 | 56.62 |
Upper Leg | 41.08 | 44.27 | 43.00 | 43.15 | 42.8 |
Lower leg | 39.08 | 42.26 | 40.99 | 41.14 | 40.86 |
Low back | 48.59 | 51.78 | 50.51 | 50.66 | 50.38 |
Average | 43.76 | 46.94 | 45.68 | 45.83 |
(%) | (%) | |
---|---|---|
Summer | 28.73 | 28.27 |
Winter | 8.04 | 6.75 |
Spring/Autumn | 16.98 | 16.68 |
Maximum (Proportion to Ambient Value%) | Mean (Proportion to Ambient Value%) | Std. Deviation | |
---|---|---|---|
Ambient | 7.31 | 3.41 | 2.58 |
Up | 6.96 (95.2%) | 3.49 (102.3%) | 2.37 |
South | 3.94 (53.9%) | 2.00 (58.7%) | 1.31 |
north | 1.29 (17.6%) | 0.46 (13.5%) | 0.41 |
East | 3.14 (43.0%) | 1.05 (30.8%) | 0.79 |
West | 2.28 (31.2%) | 1.11 (32.6%) | 0.66 |
Down | 1.14 (15.6%) | 0.13(3.8%) | 0.20 |
Up | South | North | East | West | |
---|---|---|---|---|---|
SVF/SiVF | 0% | 9.10% | 13.53% | 14.50% | 8.63% |
UVI | 0.15 | 0.63 | 0.57 | 0.54 | 0.75 |
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Cheng, W.; Brown, R.; Vernez, D.; Goldberg, D. Estimation of Individual Exposure to Erythemal Weighted UVR by Multi-Sensor Measurements and Integral Calculation. Sensors 2020, 20, 4068. https://doi.org/10.3390/s20154068
Cheng W, Brown R, Vernez D, Goldberg D. Estimation of Individual Exposure to Erythemal Weighted UVR by Multi-Sensor Measurements and Integral Calculation. Sensors. 2020; 20(15):4068. https://doi.org/10.3390/s20154068
Chicago/Turabian StyleCheng, Wenwen, Robert Brown, David Vernez, and Daniel Goldberg. 2020. "Estimation of Individual Exposure to Erythemal Weighted UVR by Multi-Sensor Measurements and Integral Calculation" Sensors 20, no. 15: 4068. https://doi.org/10.3390/s20154068