State Key Laboratory of NBC Protection for Civilian, Beijing, China.
State Key Laboratory of NBC Protection for Civilian, Beijing, China; National Defence Engineering Institute, Beijing, China.
Appl Radiat Isot. 2022 Aug;186:110212. doi: 10.1016/j.apradiso.2022.110212. Epub 2022 Apr 14.
This research aims at comparing the performance of different machine learning algorithms used for NaI(TI) gamma-ray detector based radioisotope identification. Six machine learning algorithms were implemented, including support vector machine (SVM), k-nearest neighbor (KNN), logistic regression (LR), naive Bayes (NB), decision tree (DT), and multilayer perceptron (MLP). The hyper-parameters of each model were elaborately optimized. The effects of data size, statistical fluctuation, and spectrum drift were considered. Results show that for smaller data size (5 types of radioisotopes and 6000 spectra), the support vector machine and the logistic regression classifier exhibit higher identification accuracy with less training/predicting time. Whereas for larger data size (14 types of radioisotopes corresponding to the standard IEC 62327-2017), the multilayer perceptron showed highest accuracy but required the longest time for model training. The naive Bayes classifier and the decision tree were prone to make mistakes when fluctuations and distortions were added to the spectra. The k-nearest neighbor classifier, though showing high accuracy for most data sets, consumed the longest time while making prediction.
本研究旨在比较不同机器学习算法在基于碘化钠 (NaI(TI)) 伽马射线探测器的放射性同位素识别中的性能。实现了六种机器学习算法,包括支持向量机 (SVM)、k-近邻 (KNN)、逻辑回归 (LR)、朴素贝叶斯 (NB)、决策树 (DT) 和多层感知机 (MLP)。详细优化了每个模型的超参数。考虑了数据大小、统计波动和谱漂移的影响。结果表明,对于较小的数据大小 (5 种放射性同位素和 6000 个谱),支持向量机和逻辑回归分类器在具有较少训练/预测时间的情况下表现出更高的识别精度。而对于较大的数据大小 (对应标准 IEC 62327-2017 的 14 种放射性同位素),多层感知机显示出最高的准确性,但模型训练所需的时间最长。朴素贝叶斯分类器和决策树在添加波动和扭曲时容易出错。k-近邻分类器虽然对大多数数据集表现出较高的准确性,但在进行预测时消耗的时间最长。