Automatic detection of anomalous thermoluminescent dosimeter glow curves using machine learning

被引:11
作者
Amit, Gal [1 ]
Datz, Hanan [1 ]
机构
[1] Soreq Nucl Res Ctr, Radiat Safety Div, Yavne, Israel
关键词
Anomaly detection; Glow curve; Machine learning; Thermoluminescent dosimetry; SUPPORT VECTOR MACHINES; RECOGNITION; ALGORITHMS;
D O I
10.1016/j.radmeas.2018.07.014
中图分类号
TL [原子能技术]; O571 [原子核物理学];
学科分类号
0827 ; 082701 ;
摘要
Computerized Glow Curve Analysis (CGCA) has been, and still is, an intensively-investigated subject for the past two decades. CGCA has applied different methods for various applications, from glow curve deconvolution into isolated peaks, through semi-automatic software tools for detecting outliers, to software that discovers exceptional curves by using predefined rules. The method presented herein addresses the subject using a new approach in which a completely automatic algorithm is used for the accurate detection of anomalies in thermoluminescent dosimeter (TLD) glow curves. A Support Vector Machines (SVM) technique, which is a machine learning classification algorithm, is used for the first time for radiation dosimetry applications. The algorithm classifies glow curves into two categories: an acceptable i.e. 'regular' curve, or a curve that exhibits any kind of anomaly i.e. an 'anomalous' curve. The classification method treats the glow curves raw data as a large ensemble of statistical data, and tries to identify exceptional glow curve shapes by statistical means. This classification method is performed in three steps. First, a library of glow curves is manually classified by a human user of the system into the above two classes. Then an iterative training algorithm is applied to these glow curves. The final stage applies a method of comparison between an unidentified glow curve and these two pre-classified sets, and assesses a classification probability to each of the two classes. The results show between 96.2% and 97.7% accuracy of the correct classification to either one of the classes, depending on the admissible false negatives rate.
引用
收藏
页码:80 / 85
页数:6
相关论文
共 23 条
[1]  
Al-Haj A.N, 2004, HLTH PHYS, V86
[2]  
[Anonymous], 1963, Automation and Remote Control
[3]  
[Anonymous], 1997, P 14 INT C ONMACHINE
[4]   The use of the area under the roc curve in the evaluation of machine learning algorithms [J].
Bradley, AP .
PATTERN RECOGNITION, 1997, 30 (07) :1145-1159
[5]   Support vector machines for speaker and language recognition [J].
Campbell, WM ;
Campbell, JP ;
Reynolds, DA ;
Singer, E ;
Torres-Carrasquillo, PA .
COMPUTER SPEECH AND LANGUAGE, 2006, 20 (2-3) :210-229
[6]  
Cortes C., 1995, Machine learning, DOI [DOI 10.1023/A:1022627411411, DOI 10.1007/BF00994018, 10.1007/BF00994018]
[7]   Support vector machine classification and validation of cancer tissue samples using microarray expression data [J].
Furey, TS ;
Cristianini, N ;
Duffy, N ;
Bednarski, DW ;
Schummer, M ;
Haussler, D .
BIOINFORMATICS, 2000, 16 (10) :906-914
[8]   The thermoluminescence dose-response and other characteristics of the high-temperature TL in LiF:Mg,Ti (TLD-100) [J].
Horowitz, Y. S. ;
Oster, L. ;
Datz, H. .
RADIATION PROTECTION DOSIMETRY, 2007, 124 (02) :191-205
[9]   Highlights and pitfalls of 20 years of application of computerised glow curve analysis to thermoluminescence research and dosimetry [J].
Horowitz, Y. S. ;
Moscovitch, M. .
RADIATION PROTECTION DOSIMETRY, 2013, 153 (01) :1-22
[10]   ANALYSIS OF THERMOLUMINESCENCE GLOW CURVES USING DERIVATIVES OF DIFFERENT ORDERS [J].
Karmakar, Mahua ;
Bhattacharyya, S. ;
Sarkar, A. ;
Mazumdar, P. S. ;
Singh, S. D. .
RADIATION PROTECTION DOSIMETRY, 2017, 175 (04) :493-502