Efficient dead time correction of G-M counters using feed forward artificial neural network

被引:0
|
作者
Arkani, Masoomeh [1 ,2 ]
Khalafi, Hossein [1 ]
Arkani, Mohammad [1 ]
机构
[1] Atom Energy Org Iran, NSTRI, Reactors & Accelerators Res & Dev Sch, Tehran 141551339, Iran
[2] Islamic Azad Univ, Dept Math, Tehran, Iran
关键词
dead time; artificial neural network (ANN); Geiger-Muller (G-M) detector; hybrid model; source decaying experiment; RANGE;
D O I
暂无
中图分类号
O61 [无机化学];
学科分类号
070301 ; 081704 ;
摘要
Dead time parameter of Geiger-Muller (G-M) counters causes a great uncertainty in their response to the incident radiation intensity at high counting rates. As their applications in experimental nuclear science are widespread, many attempts have been done on improvements of their nonlinear response. In this work, response of a G-M counter system is optimized and corrected efficiently using feed forward artificial neural network (ANN). This method is simple, fast, and provides the answer to the problem explicitly with no need for iteration. The method is applied to a set of decaying source experimental data measured by a fairly large G-M tube. The results are compared with those predicted by a given analytical model which is called hybrid model. The maximum deviation of the corrected results from the true counting rates is less than 4% which is a significant improvement in comparison with the results obtained by the analytical method. Results of this study show that by using a proper artificial neural network structure, the dead time effects of G-M counters can be tolerated significantly.
引用
收藏
页码:317 / 321
页数:5
相关论文
共 50 条
  • [21] Enhanced Software Effort Estimation using Multi Layered Feed Forward Artificial Neural Network Technique
    Rijwani, Poonam
    Jain, Sonal
    TWELFTH INTERNATIONAL CONFERENCE ON COMMUNICATION NETWORKS, ICCN 2016 / TWELFTH INTERNATIONAL CONFERENCE ON DATA MINING AND WAREHOUSING, ICDMW 2016 / TWELFTH INTERNATIONAL CONFERENCE ON IMAGE AND SIGNAL PROCESSING, ICISP 2016, 2016, 89 : 307 - 312
  • [22] Optimisation of the range of an optical fibre pH sensor using feed-forward artificial neural network
    Suah, FBM
    Ahmad, M
    Taib, MN
    SENSORS AND ACTUATORS B-CHEMICAL, 2003, 90 (1-3): : 175 - 181
  • [23] Approximate Analytic Solution of Burger Huxley Equation Using Feed-Forward Artificial Neural Network
    Panghal, Shagun
    Kumar, Manoj
    NEURAL PROCESSING LETTERS, 2021, 53 (03) : 2147 - 2163
  • [24] Lightning prediction using satellite atmospheric sounding data and feed-forward artificial neural network
    Alves, Elton Rafael
    da Costa, Carlos Tavares, Jr.
    Gomes Lopes, Marcio Nirlando
    Pereira da Rocha, Brigida Ramati
    Silva de Sa, Jose Alberto
    JOURNAL OF INTELLIGENT & FUZZY SYSTEMS, 2017, 33 (01) : 79 - 92
  • [25] Approximate Analytic Solution of Burger Huxley Equation Using Feed-Forward Artificial Neural Network
    Shagun Panghal
    Manoj Kumar
    Neural Processing Letters, 2021, 53 : 2147 - 2163
  • [26] Classification of Cardiac Arrhythmias Using Feed Forward Neural Network
    Karhe, R. R.
    Kale, S. N.
    HELIX, 2020, 10 (05): : 15 - 20
  • [27] Financial Market Prediction Using Feed Forward Neural Network
    Kumar, P. N.
    Seshadri, G. Rahul
    Hariharan, A.
    Mohandas, V. P.
    Balasubramanian, P.
    TECHNOLOGY SYSTEMS AND MANAGEMENT, 2011, 145 : 77 - +
  • [28] Training of the feed forward artificial neural networks using dragonfly algorithm
    Gulcu, Saban
    APPLIED SOFT COMPUTING, 2022, 124
  • [29] Milk production estimates using feed forward artificial neural networks
    Sanzogni, L
    Kerr, D
    COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2001, 32 (01) : 21 - 30
  • [30] Mammogram Analysis Using Feed-Forward Back Propagation and Cascade-Forward Back propagation Artificial Neural Network
    Saini, Satish
    Vijay, Ritu
    2015 FIFTH INTERNATIONAL CONFERENCE ON COMMUNICATION SYSTEMS AND NETWORK TECHNOLOGIES (CSNT2015), 2015, : 1177 - 1180