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Deep learning-enhanced geospatial modeling for indoor radon mapping in Jeollabuk-do, South Korea
- Lee, Saro;
- Widya, Liadira Kusuma;
- Lee, Jungsub;
- Lee, Jongchun;
- Park, Boram;
- ... Lee, Woojin;
- 외 1명
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1초록
Radon (Rn-222) is a naturally occurring radioactive gas that poses significant lung cancer risks when accumulated indoors, making accurate predictions of its spatial distribution crucial for public health. This study developed a high-resolution radon potential map for Jeollabuk-do, South Korea, using deep learning algorithms. A multivariate spatial database was compiled by integrating geological, geochemical, topographical, soil, and land-use variables. Fourteen input variables, including lithology, distance to faults, barium, potassium oxide, magnesium oxide, zinc, zirconium, wind exposition index, LS-factor (slope length and steepness), surface soil texture, deep soil texture, topography, effective soil thickness, and land use were used. Deep learning models, specifically Convolutional Neural Networks and Long Short-Term Memory networks, were implemented within a GIS framework to generate a predictive radon potential map by modeling relationships between the input variables and indoor radon concentrations, thereby identifying high-risk areas. The resulting radon potential map, produced at a 10 m spatial resolution, was validated using the receiver operating characteristic–area under the curve, achieving an accuracy of approximately 85%. The findings of this study provide a robust foundation for enhancing indoor air quality management and radiation protection strategies. © 2025 Elsevier B.V., All rights reserved.
키워드
- 제목
- Deep learning-enhanced geospatial modeling for indoor radon mapping in Jeollabuk-do, South Korea
- 저자
- Lee, Saro; Widya, Liadira Kusuma; Lee, Jungsub; Lee, Jongchun; Park, Boram; Yoo, Juhee; Lee, Woojin
- 발행일
- 2025-12
- 유형
- Article
- 권
- 16
- 호
- 1