Preview

Proceedings of the Institute for System Programming of the RAS (Proceedings of ISP RAS)

Advanced search

Prospects for Using a Trusted Information Analytical System Based on the Talisman Platform using Artificial Intelligence Methods to Improve the Efficiency of Complex Hardware Systems

https://doi.org/10.15514/ISPRAS-2024-36(3)-8

Abstract

As a result of the research, mechanisms were proposed and tested to solve applied problems of importing, automatic processing, structuring and analyzing information based on components of the Talisman platform to improve the efficiency of operation of complex hardware systems. A subject area has been developed that allows us to work out similar tasks in other applied areas (testing was carried out on the example of the energy and aviation industries). The results obtained confirm the hypothesis that machine learning methods can be effectively used in complex distributed trusted IAS to solve a range of applied tasks in budget and commercial organizations, in production and in the operation of complex hardware systems.

About the Authors

Philipp Arkadyevich KOLOKOLNIKOV
Institute for System Programming of the Russian Academy of Sciences
Russian Federation

PhD in Technical Science, senior Researcher at ISP RAS, senior lecturer at the Moscow Aviation Institute (MAI). Research interests: analysis and visualization of big data, augmented and virtual reality technologies for solving applied problems in the development and operation of complex hardware systems, in medicine and the aviation industry.



Vladimir Vladimirovich ORLOV
Interprokom LLC
Russian Federation

Engineer of Interprokom LLC



Denis Yurievich TURDAKOV
Institute for System Programming of the Russian Academy of Sciences
Russian Federation

PhD, Head of Department at ISP RAS, associate professor of the Department of System Programming at MSU. Research interests: natural language processing, information extraction, big data analysis, social network analysis.



References

1. Системный подход к проектированию ЛА: Учебное пособие. – М.: Изд-во МАИ. Интернет источник: https://studfile.net/preview/6711193/ (посещен 10.04.2024).

2. Wang Z., Wang X., Zhang Y., Yang Y., Li Y., Information Extraction of Aircraft Maintenance Records for Knowledge Graph Construction. Published in: Global Reliability and Prognostics and Health Management (PHM-Yantai), 2022. Интернет источник: https://ieeexplore.ieee.org/document/9942091 (посещен 10.04.2024).

3. McDonald A., Gilbertson L., Baca T., A Text Mining and Information Extraction Tool for Unstructured Data, National Laboratories Information Technology Summit, 2016.

4. Niraula N., Kao A., Whyatt D., Part and Condition Extraction from Aircraft Maintenance Records, Boeing Research and Technology, Seattle, Washington and Huntsville, Alabama, USA, 2020.

5. Allinson C., Enabling Proactive Quality in Commercial Airplanes using Natural Language Processing, Massachusetts Institute of Technology, USA, 2022.

6. TALISMAN (Tracking and Learning Insights from Social Media Analysis). ИСП РАН. Интернет источник: https://talisman.ispras.ru/ (посещен 10.04.2024).

7. Belyaeva.O., Dedoc: A Universal System for Extracting Content and Logical Structure From Textual Documents / O Belyaeva, A Bogatenkova, D Turdakov, 2023 Ivannikov Ispras Open Conference (ISPRAS), 2023.

8. Neretin, E. S., Prospect for the application of augmented and virtual reality technologies in the design, production, operation of aircraft and training of aviation personnel / E. S. Neretin, P. A. Kolokolnikov, S. Y. Mitrofanov // Journal of Physics: Conference Series: 11, Moscow, 10–11 декабря 2020 года. – Moscow, 2021. – P. 012030. – DOI 10.1088/1742-6596/1958/1/012030. – EDN JDSCZB.


Review

For citations:


KOLOKOLNIKOV P.A., ORLOV V.V., TURDAKOV D.Yu. Prospects for Using a Trusted Information Analytical System Based on the Talisman Platform using Artificial Intelligence Methods to Improve the Efficiency of Complex Hardware Systems. Proceedings of the Institute for System Programming of the RAS (Proceedings of ISP RAS). 2024;36(3):105-122. (In Russ.) https://doi.org/10.15514/ISPRAS-2024-36(3)-8



Creative Commons License
This work is licensed under a Creative Commons Attribution 4.0 License.


ISSN 2079-8156 (Print)
ISSN 2220-6426 (Online)