Department of Pure and Applied Physics, Ladoke Akintola University of Technology, Ogbomoso, Nigeria.
Department of Physics, Federal University, Oye-Ekiti, Nigeria.
J Environ Radioact. 2022 Oct;251-252:106933. doi: 10.1016/j.jenvrad.2022.106933. Epub 2022 Jun 24.
Exposure to indoor radon, with no safe level, has been reported to bear the possible radiological risk to humans. The indoor radon level of a total of one hundred and thirty-two offices and sixty classrooms of tertiary institutions within different lithology and at varied meteorological values in southwestern Nigeria was measured using Electret Passive Environmental Radon Monitor (E-PERM). The meteorological parameters were obtained from the National Aeronautics and Space Administration (NASA) database. MATLAB scripts of code were used to develop the Artificial Neural Network (ANN) model. The measured parameters were subjected to both descriptive and inferential statistics. The highest mean radon concentration was observed in offices built on granitic bedrock with a value of 64.3 ± 1.7 Bq.m while the lowest was observed in alluvium bedrock with a value of 52.5 ± 1.4 Bq.m. To enhance prediction involving erratic parametric patterns, the measured data were subjected to an optimized Artificial Neural Network architecture training, validation, and testing, leading to a model determined to have a Nash-Sutcliffe efficiency coefficient value of 0.997, Average Absolute Relative Error of 0.0115, and Mean Squared Error of 0.07. The predicted result was compared favorably with the measured data with 0.054 Average Validation Error, 0.027 Mean Absolute Error 3.64 Mean Absolute Percentage Error, and 83.7% Goodness-of-Prediction values. About 21.4% of the values were found to be higher than the 100 Bq.m limits specified by the World Health Organization. Measured radon concentration and predicted ANN data as obtained in this work, being novel in this study area is useful for immediate assessment of the level of risk associated with radon exposure as well as for future predictions. The ANN developed is effective and efficient in predicting indoor radon concentration.
室内氡暴露,没有安全水平,据报道对人类有潜在的放射性风险。使用驻极体被动环境氡监测仪 (E-PERM) 测量了尼日利亚西南部不同岩性和不同气象值的 132 间办公室和 60 间教室的总氡水平。气象参数是从美国国家航空航天局 (NASA) 数据库中获得的。使用 MATLAB 脚本代码开发了人工神经网络 (ANN) 模型。对测量参数进行了描述性和推断性统计。在花岗岩基岩上建造的办公室中观察到最高的平均氡浓度,值为 64.3±1.7 Bq.m,而在冲积岩基岩中观察到最低的氡浓度,值为 52.5±1.4 Bq.m。为了增强涉及不规则参数模式的预测,对测量数据进行了优化的人工神经网络架构训练、验证和测试,确定模型的纳什-苏特克里夫效率系数值为 0.997,平均绝对相对误差为 0.0115,均方误差为 0.07。预测结果与测量数据进行了比较,平均验证误差为 0.054,平均绝对误差为 0.027,平均绝对百分比误差为 3.64,预测准确性为 83.7%。约 21.4%的数值高于世界卫生组织规定的 100 Bq.m 限值。本研究区域获得的氡浓度测量值和预测的 ANN 数据是新颖的,可用于立即评估与氡暴露相关的风险水平,并进行未来预测。开发的 ANN 在预测室内氡浓度方面是有效和高效的。