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韩国江原道氡潜在性地图绘制:概率与深度学习算法的应用

Radon potential mapping in Jangsu-gun, South Korea using probabilistic and deep learning algorithms.

机构信息

Geoscience Platform Research Division, Korea Institute of Geoscience and Mineral Resources (KIGAM), 124, Gwahak-ro, Yuseong-gu, Daejeon, 34132, Republic of Korea; Department of Geophysical Exploration, Korea University of Science and Technology, 217, Gajeong-ro, Yuseong-gu, Daejeon, 34113, Republic of Korea.

Division of Smart Regional Innovation, Kangwon National University, 1 Gangwondaehak-gil, Chuncheon-si, Gangwon-do, 24341, Republic of Korea.

出版信息

Environ Pollut. 2022 Jan 1;292(Pt B):118385. doi: 10.1016/j.envpol.2021.118385. Epub 2021 Oct 18.

Abstract

The adverse health effects associated with the inhalation and ingestion of naturally occurring radon gas produced during the uranium decay chain mean that there is a need to identify high-risk areas. This study detected radon-prone areas using a geographic information system (GIS)-based probabilistic and machine learning methods, including the frequency ratio (FR) model and a convolutional neural network (CNN). Ten influencing factors, namely elevation, slope, the topographic wetness index (TWI), valley depth, fault density, lithology, and the average soil copper (Cu), calcium oxide (Cao), ferric oxide (FeO), and lead (Pb) concentrations, were analyzed. In total, 27 rock samples with high activity concentration index values were divided randomly into training and validation datasets (70:30 ratio) to train the models. Areas were categorized as very high, high, moderate, low, and very low radon areas. According to the models, approximately 40% of the study area was classified as very high or high risk. Finally, the radon potential maps were validated using the area under the receiver operating characteristic curve (AUC) analysis. This showed that the CNN algorithm was superior to the FR method; for the former, AUC values of 0.844 and 0.840 were obtained using the training and validation datasets, respectively. However, both algorithms had high predictive power. Slope, lithology, and TWI were the best predictors of radon-affected areas. These results provide new information regarding the spatial distribution of radon, and could inform the development of new residential areas. Radon screening is important to reduce public exposure to high levels of naturally occurring radiation.

摘要

与铀衰变链过程中产生的天然氡气吸入和摄入相关的不良健康影响意味着需要确定高风险区域。本研究使用基于地理信息系统(GIS)的概率和机器学习方法(包括频率比(FR)模型和卷积神经网络(CNN))来检测氡易发区。分析了十个影响因素,即海拔、坡度、地形湿度指数(TWI)、山谷深度、断层密度、岩性以及平均土壤铜(Cu)、氧化钙(Cao)、氧化铁(FeO)和铅(Pb)浓度。总共随机将 27 个具有高活度浓度指数值的岩石样本分为训练和验证数据集(70:30 比例),以训练模型。将区域划分为极高、高、中、低和极低氡区。根据模型,研究区约有 40%的区域被归类为极高或高风险。最后,使用接收器工作特征曲线(AUC)分析下的面积来验证氡潜在图。结果表明,CNN 算法优于 FR 方法;对于前者,使用训练和验证数据集分别获得 AUC 值为 0.844 和 0.840。然而,两种算法都具有很高的预测能力。坡度、岩性和 TWI 是氡影响区域的最佳预测因子。这些结果提供了有关氡空间分布的新信息,并为新住宅区的发展提供了信息。氡筛选对于减少公众接触高水平天然辐射非常重要。

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