1. Гагарина Л. Г., Дорогова Е. Г., Немцова Т. И. Особенности разработки программного обеспечения для автоматизации технологического процесса производства продукции различной номенклатуры // Оборонный комплекс - научно-техническому прогрессу России. 2006. № 4. С. 36-38. EDN: KASDFN
Gagarina L. G., Dorogova E. G., Nemtsova T. I. Peculiarities of software development for automation of various assortment product manufacturing process flow. Oboronnyy kompleks – nauchno-tekhnicheskomu progressu Rossii = Defense Industry Achievements – Russian Scientific and Technical Progress, 2006, no. 4, pp. 36–38. (In Russian).
2. Скворцов В. Н. Проблемы обучения персонала в контексте концепции самообучающейся организации // Вестник ЛГУ им. А. С. Пушкина. 2009. Т. 3. № 1. С. 137-152. EDN: IYEBCG
Skvortsov V. N. Problems of staff training in the context of concept of self-study organization. Vestnik
LGU im. A. S. Pushkina = Pushkin Leningrad State University Journal, 2009, vol. 3, no. 1, pp. 137–152. (In Russian).
3. Mekruksavanich S., Jitpattanakul A. LSTM networks using smartphone data for sensor-based human activity recognition in smart homes // Sensors. 2021. Vol. 21. Iss. 5. Art. No. 1636. DOI: 10.3390/s21051636 EDN: FKPLGD
4. Sarker I. H., Furhad M. H., Nowrozy R. AI-driven cybersecurity: An overview, security intelligence modeling and research directions // SN Comput. Sci. 2021. Vol. 2. Iss. 2. Art. No. 173. DOI: 10.1007/s42979-021-00557-0 EDN: NFQTGX
5. Wang S., Wan J., Li D., Liu C. Knowledge reasoning with semantic data for real-time data processing in smart factory // Sensors. 2018. Vol. 18. Iss. 2. Art. No. 471. DOI: 10.3390/s18020471 EDN: VGZXKR
6. Smart grid for industry using multi-agent reinforcement learning / M. Roesch, C. Linder, R. Zimmermann et al. // Appl. Sci. 2020. Vol. 10. Iss. 19. Art. No. 6900. DOI: 10.3390/APP10196900 EDN: LFVASG
7. Famili A. Use of decision-tree induction for process optimization and knowledge refinement of an industrial process // Artificial Intelligence for Engineering Design, Analysis and Manufacturing. 1994. Vol. 8. Iss. 1. P. 45-57. DOI: 10.1017/S0890060400000469
8. Jamwal A., Agrawal R., Sharma M., Giallanza A. Industry 4.0 technologies for manufacturing sustainability: A systematic review and future research directions // Appl. Sci. 2021. Vol. 11. Iss. 12. Art. No. 5725. DOI: 10.3390/app11125725
9. Calderón Godoy A. J., González Pérez I.Integration of sensor and actuator networks and the SCADA system to promote the migration of the legacy flexible manufacturing system towards the Industry 4.0 concept //j. Sens. Actuator Netw. 2018. Vol. 7. Iss. 2. Art. No. 23. DOI: 10.3390/jsan7020023
10. A Hybrid Expert System for Heart Disease Diagnosis. Scientific Programming. P. 1128717. Available at:
https://link.springer.com/chapter/ (дата обращения: 15.07.2023). DOI: 10.1007/978-3-642-22555-0_13