IJMECS Vol. 16, No. 4, 8 Aug. 2024
Cover page and Table of Contents: PDF (size: 1989KB)
PDF (1989KB), PP.87-112
Views: 0 Downloads: 0
Computer simulator, data recognition and visualization, operator activity model, working scenarios
The article is dedicated to solving the problem of modeling and developing a computer simulator with the creation of working scenarios for training operating personnel in object detection. The analysis of the features of human operator activity is carried out, the model of his behavior is described, and it is shown that for the presented task, the following three levels must be taken into account: behavior based on abilities (skills), behavior based on rules, behavior based on knowledge. User models that are used in man-machine systems were created, and their use in the process of modeling operator activity from the point of view of regular and irregular exposure was shown. This made it possible to create a prototype of a graphical window using a user-friendly interface. A system model of human-machine interface for processing and recognition of visual information is mathematically described and a model of image representation based on three possible scenarios of their formation is formed. The result of the study was the software implementation of an effective educational tool prototype that accurately replicates real-world conditions for the formation of working scenarios. The conducted experimental research showed the possibility of general image recognition tests, selection of different test modes, and support for arbitrary sets of image test tasks. Further research will be aimed at expanding the
functionality of the created prototype, developing additional modules, automatically generating scenarios and verifying work.
Taras Basyuk, Andrii Vasyliuk, Yuriy Ushenko, Dmytro Uhryn, Zhengbing Hu, Mariia Talakh, "Modeling and Development of a Computer Simulator with the Formation of Working Scenarios for Training Operator Personnel in the Search for Objects", International Journal of Modern Education and Computer Science(IJMECS), Vol.16, No.4, pp. 87-112, 2024. DOI:10.5815/ijmecs.2024.04.07
[1]Alnoukari, M., Shafaamry, M., Aytouni, K. (2013) Simulation for Computer Sciences Education, Communications of the ACS, Vol. 6, N0.1
[2]Stefaniak, J. Advanced Instructional Design Techniques 1st Edition, Routledge; 1st edition, 2023
[3]Vasyliuk, A., Basyuk, T., Lytvyn, V. (2020) Specialized interactive methods forusing data on radar application models, Proceedings of the 2nd International workshop on modern machinelearning technologies and data science (MoMLeT+DS 2020). Volume 1: Mainconference, Lviv-Shatsk, Ukraine, June 2-3, 2020, Vol. 2631, pp. 1–11.
[4]Clark, R., Mayer, R. Scenario-based e-Learning: Evidence-Based Guidelines for Online Workforce Learning, Pfeiffer; 1st edition, 2012
[5]Aomori, H., Mizutani, R., Toda, H., Otake, T. Progressive image transmission based on image spatio-temporal decomposition by sigma-delta cellular neural network, Nonlinear Theory and Its Applications, IEICE, vol. 13, no. 2, pp. 264–270, (2022)
[6]Kawai, Y., Toda, H., Aomori, H., Otake, T., Matsuda, I., Itoh S. Hierarchical lossless image compression using cnn predictors optimized by adaptive differential evolution and contextadaptive coding Proc. of NOLTA’20, pp. 65–67, Nov. 2020.
[7]Basyuk, T., Vasyliuk, A. (2021) Approach to a subject area ontology visualization system creating // CEUR Workshop Proceedings. – Vol. 2870: Proceedings of the 5th International conference on computational linguistics and intelligent systems (COLINS 2021), Lviv, Ukraine, April 22–23, 2021. Volume I : main conference. – Р. 528–540.
[8]Ravikiran, H., Paramesha, S. A hybrid progressive image compression transmission and reconstruction architecture, Lecture Notes in Electrical Engineering, vol. 545, pp. 867–875, 2019. DOI: 10.1007/978-981-13-5802-9 75
[9]Wang, L.-X., Dai, G.-Z. A Systematized Approach to Human Properties in Complex Systems, Proceedings of the 1988 IEEE International Conference on Systems, Man, and Cybernetics, Beijing, China, 1988, pp. 1253-1256, doi: 10.1109/ICSMC.1988.712925.
[10]Kaminskyy, R., Kryvinska, N. Simulation of Human-Operator Behavior in Solving Intellectual Problems during Control of Technological Processes in Stresses, IDDM’2020: 3rd International Conference on Informatics & Data-Driven Medicine, November 19–21, 2020, Växjö, Sweden
[11]Atici, U., Adem, A., Şenol, M., Dağdeviren, M. (2023). A Systematic Review of Cognitive Ergonomics And Safety: General Trends And Application AreasGazi Üniversitesi Fen Bilimleri Dergisi Part C: Tasarım ve Teknoloji. pp. 1131-1161. https://doi.org/10.29109/gujsc.137828811:4.
[12]Kalakoski, V., Henelius, A., Oikarinen, E., Ukkonen, A., Puolamäki, K. (2019). Cognitive ergonomics for data analysis. ECCE '19: Proceedings of the 31st European Conference on Cognitive Ergonomics. pp. 38 – 40. https://doi.org/10.1145/3335082.3335112
[13]Nedosnovanyi, O., Cherniak, O., Golinko, V. (2023). Comparative analysis of cloud services for geoinformation data processing. Information technology and computer engineering. 57. 50-57. 10.31649/1999-9941-2023-57-2-50-57.
[14]Astsatryan, H., Grigoryan, H., Abrahamyan, R., Lalayan, A., Asmaryan, S., Giuliani, G., Guigoz, Y. (2023). Scalable data processing and visualization service of Sentinel 5P for Earth Observations Data Cubes. Arabian Journal of Geosciences. 16. 10.1007/s12517-023-11672-y.
[15]Nakagawa, T. Maintenance Theory of Reliability, London: Springer-Verlag, 2005.
[16]Smid, C., Karbach, J., Steinbeis, N. (2020). Toward a Science of Effective Cognitive Training. Current Directions in Psychological Science, 29(6), pp. 531-537. https://doi.org/10.1177/0963721420951599
[17]Harris D., Arthur T., Kearse J., Olonilua M., Hassan E., De Burgh T., Wilson M., Vine S. (2023). Exploring the role of virtual reality in military decision training, Frontiers in Virtual Reality, Vol. 4. https://doi.org/10.3389/frvir.2023.1165030
[18]Khayal, O. (2022). A review study of engineering psychology and ergonomics. International Journal of Engineering Applied Sciences and Technology, Vol. 7, Issue 8, pp. 24-31.
[19]Marcano, L., Haugen, F., Sannerud, R., Komulainen, T. (2019). Review of simulator training practices for industrial operators: How can individual simulator training be enabled? Safety Science, Vol.115, pp. 414-424, https://doi.org/10.1016/j.ssci.2019.02.019.
[20]Power, D., Heavin, C. Decision Support, Analytics, and Business Intelligence, Business Expert Press, 2017
[21]Dolk, D., Granat, J. Modeling for Decision Support in Network-Based Services, Springer, 2012
[22]Sanchez-Marre, M. Intelligent Decision Support Systems, Springer International Publishing, 2022
[23]Prokopenko, E., Martynov, B., Magerramov, I., Popov, J., Fathki, D. Intelligent control based on ergatic systems in conditions of incomplete and fuzzy information, Intelligent Information Technology and Mathematical Modeling 2021 (IITMM 2021)
[24]Akperov, G., Alekperov, I., Gorbacheva, A., Magerramov, I., Bocharov, A. (2021). Method of Fuzzy Parametric Selection for Making a Reasonable Decision by an Intelligent Training Module. Journal of Physics: Conference Series. 2131. 032111. 10.1088/1742-6596/2131/3/032111.
[25]Havlikova, M., Jirgl, M., Bradac, Z. (2015). Human Reliability in Man-machine Systems. Procedia Engineering. 100. 10.1016/j.proeng.2015.01.485.
[26]Che, H., Zeng, S., Li, K., Guo, J. (2022). Reliability analysis of load-sharing man-machine systems subject to machine degradation, human errors, and random shocks. Reliability Engineering & System Safety. 226. 108679. 10.1016/j.ress.2022.108679.
[27]Chen, D., Qiao, Y., Sun, Y., Gao, X. (2022). Human reliability assessment and risk prediction for deep submergence operating system of manned submersible under the influence of cognitive performance. Ocean Engineering. 266. 112753. 10.1016/j.oceaneng.2022.112753.
[28]Altarawneh, K., Altarawni, I., Alhabashneh, O. (2023). Algorithm support for computerized management system. NeuroQuantology. 21. 630-637. 10.48047/NQ.2023.21.2. NQ23066.
[29]Kuribayashi, A., Takeuchi, E., Carballo, A., Ishiguro, Y., Takeda, K. (2023). Recognition Assistance Interface for Human-Automation Cooperation in Pedestrian Risk Prediction. SAE International Journal of Connected and Automated Vehicles. 6. 10.4271/12-06-03-0023.
[30]Sobchuk, V., Nedbailo, V. (2023). Periodic modes in the model of a mathematical pendulum with impulse effect. Bulletin of the National Technical University KhPI Series Mathematical modeling in engineering and technologies. 184-191. 10.20998/2222-0631.2023.01.27.
[31]Bertalanffy, L., Hofkirchner, W., Rousseau, D. Foundations, Development, Applications. George Braziller Inc.; Revised edition. 2015.
[32]Kuznetsova, N. (2020). Skills and qualifications mismatch phenomenon: focus on human capital in the global measurement. 10.36074/tmafmseoid.ed-2.13.
[33]Vasyliuk, A., Basyuk, T. (2021) Construction Features of the Industrial Environment Control System, Proceedings of the 5rd International Conference on Computational Linguistics and Intelligent Systems (COLINS-2021). Volume I: Main Conference, Kharkiv, Ukraine, April 22-23, 2021, Vol-2870: pp.1011-1025.
[34]Zhou, Y., Yang, G., Xin, S., Yang, Y. (2022). An evaluation model of indoor PM2.5 dynamic characteristics considering human activities. Energy and Buildings. 263. 112037. 10.1016/j.enbuild.2022.112037.
[35]Yuan, F., Yao, R., Yu, W., Sadrizadeh, S., Awbi, H., Kumar, P. (2023). Dynamic characteristics of particulate matter resuspension due to human activities in indoor environments: A comprehensive review. Journal of Building Engineering. 79. 107914. 10.1016/j.jobe.2023.107914.
[36]Akhunova, D., Vostrukh, A., Kurta, P. (2020). Evaluation of information systems user interface by means of software quality`s models. Informatization and communication. 127-135. 10.34219/2078-8320-2020-11-2-127-135.
[37]Sadouski, M. (2023). Semantic models and tools for designing adaptive user interfaces of intelligent systems. Informatics. 20. 74-89. 10.37661/1816-0301-2023-20-3-74-89.
[38]Uhryn, D., Ushenko, Y., Lytvyn, L., Hu, Z., Lozynska O., Ilin, V., Hostiuk, A. (2023). Modelling of an Intelligent Geographic Information System for Population Migration Forecasting, International Journal of Modern Education and Computer Science (IJMECS), vol. 15, no. 4, pp. 69-79. DOI: 10.5815/ijmecs.2023.04.06. ISSN: 2075-0161 (Print), ISSN: 2075-017X (Online).
[39]Lytvyn, V., Uhryn, D., Ushenko, Y., Masikevych, A., Bairachnyi, V. (2023). The Method of Clustering Geoinformation Data for Stationary Sectoral Geoinformation Systems Using Swarm Intelligence Methods. in: D.D. Cioboată (eds), International Conference on Reliable Systems Engineering (ICoRSE). ICoRSE 2023. Lecture Notes in Networks and Systems, vol 762, pp. 541-553. Springer, Cham. https://doi.org/10.1007/978-3-031-40628-7_44
[40]Ovsyak, V. ALGORITHMS: methods of construction, optimization, probability research. – Svit, 2001 [in Ukrainian].
[41]Skeet, J. C# in Depth: Fourth Edition. Manning; 4th edition. 2019.