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Personal Exposure to Sulfuric Acid in the Electroplating Industry: Development and Validation of a Predictive Model.

Austin B WangKai-Jen ChuangVen-Shing WangTa-Yuan Chang
Published in: Toxics (2024)
This study aimed to measure personal exposure to sulfuric acid in the electroplating industry to establish a predictive model and test its validation. We collected indoor air parameters and related information from four electroplating plants. Silica gel sorbents were used to collect air samples using high-performance ion chromatography. We collected air samples from three plants (i.e., Plant B, Plant C, and Plant D) and applied multiple linear regressions to build a predictive model. Eight samples collected from the fourth plant (i.e., Plant A) were used to validate the model. A total of 41 samples were collected with a mean of 25.0 ± 9.8 μg/m 3 (range 12.1-51.7 μg/m 3 ) in this study, including Plant A (8 samples, 17.5 ± 2.8 μg/m 3 , 13.0-22.0 μg/m 3 ), Plant B (11 samples, 36.5 ± 9.7 μg/m 3 , 23.1-51.7 μg/m 3 ), Plant C (11 samples, 16.4 ± 1.7 μg/m 3 , 12.1-17.8 μg/m 3 ), and Plant D (11 samples, 27.4 ± 1.7 μg/m 3 , 24.1-29.9 μg/m 3 ). Plant B was significantly higher in sulfuric acid than the other plants. Workers from the electroplating process plants were exposed to sulfuric acid at 29.0 ± 11.5 μg/m 3 . The predictive model for personal exposure to sulfuric acid fit the data well (r 2 = 0.853; adjusted r 2 = 0.837) and had an accuracy of 5.52 μg/m 3 (bias ± precision; 4.98 ± 2.38 μg/m 3 ), validated by the personal sampling of the fourth plant. This study observed that sulfuric acid exposure was lower than the permissible exposure level of 1000 μg/m 3 in Taiwan and the United States, and only two samples were lower than the European Union standard of 50 μg/m 3 . The developed model can be applied in epidemiological studies to predict personal exposure to sulfuric acid in plants using electroplating.
Keyphrases
  • cell wall
  • risk assessment
  • heavy metals
  • social media
  • particulate matter
  • big data
  • drinking water
  • high performance liquid chromatography
  • solid phase extraction
  • hyaluronic acid