Division of Electronic, Information and Communication Engineering, Kangwon National University, Samcheok 25913, Kangwondo, Korea.
Department of Data Science, New Jersey Institute of Technology, Newark, NJ 07102, USA.
Sensors (Basel). 2022 Sep 18;22(18):7062. doi: 10.3390/s22187062.
Gamma radiation has been classified by the International Agency for Research on Cancer (IARC) as a carcinogenic agent with sufficient evidence in humans. Previous studies show that some weather data are cross-correlated with gamma exposure rates; hence, we hypothesize that the gamma exposure rate could be predicted with certain weather data. In this study, we collected various weather and radiation data from an automatic weather system (AWS) and environmental radiation monitoring system (ERMS) during a specific period and trained and tested two time-series learning algorithms-namely, long short-term memory (LSTM) and light gradient boosting machine (LightGBM)-with two preprocessing methods, namely, standardization and normalization. The experimental results illustrate that standardization is superior to normalization for data preprocessing with smaller deviations, and LightGBM outperforms LSTM in terms of prediction accuracy and running time. The prediction capability of LightGBM makes it possible to determine whether the increase in the gamma exposure rate is caused by a change in the weather or an actual gamma ray for environmental radiation monitoring.
伽马辐射已被国际癌症研究机构 (IARC) 归类为致癌物质,有充分的人类证据。先前的研究表明,一些天气数据与伽马辐射率存在交叉相关;因此,我们假设伽马辐射率可以通过某些天气数据进行预测。在这项研究中,我们从自动气象系统 (AWS) 和环境辐射监测系统 (ERMS) 收集了特定时间段的各种气象和辐射数据,并使用两种预处理方法(标准化和归一化)训练和测试了两种时间序列学习算法,即长短时记忆网络 (LSTM) 和轻梯度提升机 (LightGBM)。实验结果表明,在偏差较小的情况下,标准化比归一化更适合数据预处理,而在预测精度和运行时间方面,LightGBM 优于 LSTM。LightGBM 的预测能力使得确定伽马辐射率的增加是由天气变化还是环境辐射监测中的实际伽马射线引起成为可能。