Development of a methodology for training artificial neural networks for intelligent decision support systems

Authors

DOI:

https://doi.org/10.15587/1729-4061.2020.199469

Keywords:

artificial neural networks, training, efficiency, information processing, intelligent decision support systems

Abstract

The method of training artificial neural networks for intelligent decision support systems is developed. A distinctive feature of the proposed method is that it provides training not only of the synaptic weights of the artificial neural network, but also the type and parameters of the membership function. If it is impossible to provide the specified quality of functioning of artificial neural networks due to the learning of the parameters of the artificial neural network, the architecture of artificial neural networks is trained. The choice of architecture, type and parameters of the membership function is based on the computing resources of the tool and taking into account the type and amount of information supplied to the input of the artificial neural network. Due to the use of the proposed methodology, there is no accumulation of errors of training artificial neural networks as a result of processing information that is fed to the input of artificial neural networks. Also, a distinctive feature of the developed method is that the preliminary calculation data are not required for data calculation. The development of the proposed methodology is due to the need to train artificial neural networks for intelligent decision support systems in order to process more information with the uniqueness of decisions made. According to the results of the study, it is found that the mentioned training method provides on average 10–18 % higher efficiency of training artificial neural networks and does not accumulate errors during training. This method will allow training artificial neural networks through the learning of parameters and architecture, identifying effective measures to improve the efficiency of artificial neural networks. This methodology will allow reducing the use of computing resources of decision support systems and developing measures aimed at improving the efficiency of training artificial neural networks; increasing the efficiency of information processing in artificial neural networks

Author Biographies

Oleg Sova, Military Institute of Telecommunications and Informatization named after Heroes of Kruty Moskovska str., 45/1, Kyiv, Ukraine, 01011

Doctor of Technical Sciences, Senior Researcher, Head of Department

Department of Automated Control Systems

Andrii Shyshatskyi, Central Scientifically-Research Institute of Arming and Military Equipment of the Armed Forces of Ukraine Povitrofloskyi ave., 28, Kyiv, Ukraine, 03049

PhD, Senior Researcher

Research Department of Electronic Warfare Development

Yurii Zhuravskyi, Zhytomyr Military Institute named after S. P. Koroliov Myru ave., 22, Zhytomyr, Ukraine, 10004

Doctor of Technical Sciences, Senior Researcher

Scientific Center

Olha Salnikova, National Defense University of Ukraine named after Ivan Cherniakhovskyi Povitrofloskyi ave., 28, Kyiv, Ukraine, 03049

Doctor of Public Administration, Senior Researcher, Head of the Educational and Research Center

Educational and Research Center of Strategic Communications in the sphere of National Security and Defense

Oleksandr Zubov, National Defense University of Ukraine named after Ivan Cherniakhovskyi Povitrofloskyi ave., 28, Kyiv, Ukraine, 03049

PhD, Associate Professor

Department of Troop Control

Ruslan Zhyvotovskyi, Central Scientifically-Research Institute of Arming and Military Equipment of the Armed Forces of Ukraine Povitrofloskyi ave., 28, Kyiv, Ukraine, 03049

PhD, Senior Researcher, Head of Research Department

Research Department of the Development of Anti-Aircraft Missile Systems and Complexes

Іgor Romanenko, Central Scientifically-Research Institute of Arming and Military Equipment of the Armed Forces of Ukraine Povitrofloskyi ave., 28, Kyiv, Ukraine, 03049

Doctor of Technical Sciences, Professor, Leading Researcher

Research Department of the Development of Anti-Aircraft Missile Systems and Complexes

Yevhen Kalashnikov, National Defense University of Ukraine named after Ivan Cherniakhovskyi Povitrofloskyi ave., 28, Kyiv, Ukraine, 03049

PhD, Head of Research Laboratory

Research Laboratory of Problems of Development of Combat Use of Rocket Forces and Artillery

Artem Shulhin, State Aviation Research Institute Andryushchenko str., 6V, Ukraine, 01135

PhD, Senior Researcher

Research Department

Alexander Simonenko, Military Institute of Telecommunications and Informatization named after Heroes of Kruty Moskovska str., 45/1, Kyiv, Ukraine, 01011

Senior Lecturer

Department of Automated Control Systems

References

  1. Kalantaievska, S., Pievtsov, H., Kuvshynov, O., Shyshatskyi, A., Yarosh, S., Gatsenko, S. et. al. (2018). Method of integral estimation of channel state in the multiantenna radio communication systems. Eastern-European Journal of Enterprise Technologies, 5 (9 (95)), 60–76. doi: https://doi.org/10.15587/1729-4061.2018.144085
  2. Kuchuk, N., Mohammed, A. S., Shyshatskyi, A., Nalapko, O. (2019). The method of improving the efficiency of routes selection in networks of connection with the possibility of self-organization. International Journal of Advanced Trends in Computer Science and Engineering, 8 (1), 1–6.
  3. Zhang, J., Ding, W. (2017). Prediction of Air Pollutants Concentration Based on an Extreme Learning Machine: The Case of Hong Kong. International Journal of Environmental Research and Public Health, 14 (2), 114. doi: https://doi.org/10.3390/ijerph14020114
  4. Katranzhy, L., Podskrebko, O., Krasko, V. (2018). Modelling the dynamics of the adequacy of bank’s regulatory capital. Baltic Journal of Economic Studies, 4 (1), 188–194. doi: https://doi.org/10.30525/2256-0742/2018-4-1-188-194
  5. Manea, E., Di Carlo, D., Depellegrin, D., Agardy, T., Gissi, E. (2019). Multidimensional assessment of supporting ecosystem services for marine spatial planning of the Adriatic Sea. Ecological Indicators, 101, 821–837. doi: https://doi.org/10.1016/j.ecolind.2018.12.017
  6. Çavdar, A. B., Ferhatosmanoğlu, N. (2018). Airline customer lifetime value estimation using data analytics supported by social network information. Journal of Air Transport Management, 67, 19–33. doi: https://doi.org/10.1016/j.jairtraman.2017.10.007
  7. Kachayeva, G. I., Mustafayev, A. G. (2018). The use of neural networks for the automatic analysis of electrocardiograms in diagnosis of cardiovascular diseases. Herald of Dagestan State Technical University. Technical Sciences, 45 (2), 114–124. doi: https://doi.org/10.21822/2073-6185-2018-45-2-114-124
  8. Zhdanov, V. V. (2016). Experimental method to predict avalanches based on neural networks. Ice and Snow, 56 (4), 502–510. doi: https://doi.org/10.15356/2076-6734-2016-4-502-510
  9. Kanev, A., Nasteka, A., Bessonova, C., Nevmerzhitsky, D., Silaev, A., Efremov, A., Nikiforova, K. (2017). Anomaly detection in wireless sensor network of the “smart home” system. 2017 20th Conference of Open Innovations Association (FRUCT). doi: https://doi.org/10.23919/fruct.2017.8071301
  10. Sreeshakthy, M., Preethi, J. (2016). Classification of human emotion from deap EEG signal using hybrid improved neural networks with Сuckoo search. Brain: Broad Research in Artificial Intelligence and Neuroscience, 6 (3-4), 60–73. Available at: https://www.slideshare.net/bpatrut/classification-of-human-emotion-from-deap-eeg-signal-using-hybrid-improved-neural-networks-with-cuckoo-search
  11. Chica, J., Zaputt, S., Encalada, J., Salamea, C., Montalvo, M. (2019). Objective assessment of skin repigmentation using a multilayer perceptron. Journal of Medical Signals & Sensors, 9 (2), 88. doi: https://doi.org/10.4103/jmss.jmss_52_18
  12. Massel, L. V., Gerget, O. M., Massel, A. G., Mamedov, T. G. (2019). The Use of Machine Learning in Situational Management in Relation to the Tasks of the Power Industry. EPJ Web of Conferences, 217, 01010. doi: https://doi.org/10.1051/epjconf/201921701010
  13. Abaci, K., Yamacli, V. (2019). Hybrid Artificial Neural Network by Using Differential Search Algorithm for Solving Power Flow Problem. Advances in Electrical and Computer Engineering, 19 (4), 57–64. doi: https://doi.org/10.4316/aece.2019.04007
  14. Mishchuk, O. S., Vitynskyi, P. B. (2018). Neural Network with Combined Approximation of the Surface of the Response. Research Bulletin of the National Technical University of Ukraine “Kyiv Politechnic Institute”, 2, 18–24. doi: https://doi.org/10.20535/1810-0546.2018.2.129022
  15. Kazemi, M., Faezirad, M. (2018). Efficiency estimation using nonlinear influences of time lags in DEA Using Artificial Neural Networks. Industrial Management Journal, 10 (1), 17–34. doi: http://doi.org/10.22059/imj.2018.129192.1006898
  16. Parapuram, G., Mokhtari, M., Ben Hmida, J. (2018). An Artificially Intelligent Technique to Generate Synthetic Geomechanical Well Logs for the Bakken Formation. Energies, 11 (3), 680. doi: https://doi.org/10.3390/en11030680
  17. Prokoptsev, N. G., Alekseenko, A. E., Kholodov, Y. A. (2018). Traffic flow speed prediction on transportation graph with convolutional neural networks. Computer Research and Modeling, 10 (3), 359–367. doi: https://doi.org/10.20537/2076-7633-2018-10-3-359-367
  18. Bodyanskiy, Y., Pliss, I., Vynokurova, O. (2013). Flexible Neo-fuzzy Neuron and Neuro-fuzzy Network for Monitoring Time Series Properties. Information Technology and Management Science, 16 (1). doi: https://doi.org/10.2478/itms-2013-0007
  19. Bodyanskiy, Ye., Pliss, I., Vynokurova, O. (2013). Flexible wavelet-neuro-fuzzy neuron in dynamic data mining tasks. Oil and Gas Power Engineering, 2 (20), 158–162.
  20. Haykin, S. (1999). Neural Networks: A Comprehensive Foundation. Upper Saddle River, N.J.: Prentice Hall, Inc., 842.
  21. Nelles, O. (2001). Nonlinear System Identification. Springer, 785. doi: https://doi.org/10.1007/978-3-662-04323-3
  22. Wang, L.-X., Mendel, J. M. (1992). Fuzzy basis functions, universal approximation, and orthogonal least-squares learning. IEEE Transactions on Neural Networks, 3 (5), 807–814. doi: https://doi.org/10.1109/72.159070
  23. Kohonen, T. (1995). Self-Organizing Maps. Springer, 364. doi: https://doi.org/10.1007/978-3-642-97610-0
  24. Kasabov, N. (2003). Evolving Connectionist Systems. Springer, 307. doi: https://doi.org/10.1007/978-1-4471-3740-5
  25. Sugeno, M., Kang, G. T. (1988). Structure identification of fuzzy model. Fuzzy Sets and Systems, 28 (1), 15–33. doi: https://doi.org/10.1016/0165-0114(88)90113-3
  26. Ljung, L. (1999). System Identification: Theory for the User. PTR Prentice Hall, Upper Saddle River, 609. Available at: https://www.twirpx.com/file/277211/
  27. Otto, P., Bodyanskiy, Y., Kolodyazhniy, V. (2003). A new learning algorithm for a forecasting neuro-fuzzy network. Integrated Computer-Aided Engineering, 10 (4), 399–409. doi: https://doi.org/10.3233/ica-2003-10409
  28. Narendra, K. S., Parthasarathy, K. (1990). Identification and control of dynamical systems using neural networks. IEEE Transactions on Neural Networks, 1 (1), 4–27. doi: https://doi.org/10.1109/72.80202
  29. Petruk, S., Zhyvotovskyi, R., Shyshatskyi, A. (2018). Mathematical Model of MIMO. 2018 International Scientific-Practical Conference Problems of Infocommunications. Science and Technology (PIC S&T). doi: https://doi.org/10.1109/infocommst.2018.8632163
  30. Zhyvotovskyi, R., Shyshatskyi, A., Petruk, S. (2017). Structural-semantic model of communication channel. 2017 4th International Scientific-Practical Conference Problems of Infocommunications. Science and Technology (PIC S&T). doi: https://doi.org/10.1109/infocommst.2017.8246454
  31. Alieinykov, I., Thamer, K. A., Zhuravskyi, Y., Sova, O., Smirnova, N., Zhyvotovskyi, R. et. al. (2019). Development of a method of fuzzy evaluation of information and analytical support of strategic management. Eastern-European Journal of Enterprise Technologies, 6 (2 (102)), 16–27. doi: https://doi.org/10.15587/1729-4061.2019.184394
  32. Koshlan, A., Salnikova, O., Chekhovska, M., Zhyvotovskyi, R., Prokopenko, Y., Hurskyi, T. et. al. (2019). Development of an algorithm for complex processing of geospatial data in the special-purpose geoinformation system in conditions of diversity and uncertainty of data. Eastern-European Journal of Enterprise Technologies, 5 (9 (101)), 35–45. doi: https://doi.org/10.15587/1729-4061.2019.180197

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Published

2020-04-30

How to Cite

Sova, O., Shyshatskyi, A., Zhuravskyi, Y., Salnikova, O., Zubov, O., Zhyvotovskyi, R., Romanenko І., Kalashnikov, Y., Shulhin, A., & Simonenko, A. (2020). Development of a methodology for training artificial neural networks for intelligent decision support systems. Eastern-European Journal of Enterprise Technologies, 2(4 (104), 6–14. https://doi.org/10.15587/1729-4061.2020.199469

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Section

Mathematics and Cybernetics - applied aspects