Применение мультиагентных систем в задачах распределенной оптимизации
Работая с сайтом, я даю свое согласие на использование файлов cookie. Это необходимо для нормального функционирования сайта, показа целевой рекламы и анализа трафика. Статистика использования сайта обрабатывается системой Яндекс.Метрика
Научный журнал Моделирование, оптимизация и информационные технологииThe scientific journal Modeling, Optimization and Information Technology
Online media
issn 2310-6018

Application of multi-agent systems in distributed optimization problems

Azarnova Т.V.,  Kalishkin E.O. 

UDC 004.8
DOI: 10.26102/2310-6018/2026.57.6.007

  • Abstract
  • List of references
  • About authors

This paper systematizes and provides a detailed analysis of modern distributed optimization methods in multi-agent systems (MAS). Multi-agent approaches, defined as a set of interacting autonomous computing entities, are becoming critically in demand when centralized data processing is impossible due to the scale of problems, strict response time requirements, or the need to ensure the privacy of local information. The goal of the work is to comprehensively investigate key approaches to decentralized optimization and identify the fundamental factors that determine their computational efficiency, fault tolerance, and practical applicability. Within the framework of the study, five main classes of algorithms are considered in detail: consensus gradient descent (DGD), gradient tracking methods, the distributed alternating direction method of multipliers (ADMM), as well as modern stochastic and communication-efficient approaches, including Local SGD and FedAvg. The paper thoroughly analyzes systemic limitations imposed by the connectivity graph topology, data compression algorithms, and strict differential privacy requirements. Key theoretical and practical aspects of constructing optimal procedures based on a balanced combination of network architecture, the nature of local cost functions, and available communication channel bandwidth are revealed. Recommendations for choosing specific algorithmic solutions depending on the specifics of the application environment are formulated.

1. Yang T., Yi X., Wu J., et al. A survey of distributed optimization. Annual Reviews in Control. 2019;47:278–305. https://doi.org/10.1016/j.arcontrol.2019.05.006

2. Li J., Su H. Gradient Tracking: A Unified Approach to Smooth Distributed Optimization. arXiv. URL: https://arxiv.org/abs/2202.09804 [Accessed 25th December 2025].

3. Yuan K., Ying B., Zhao X., et al. Exact Diffusion for Distributed Optimization and Learning – Part I: Algorithm Development. arXiv. URL: https://arxiv.org/abs/1702.05122 [Accessed 25th December 2025].

4. Boyd S., Parikh N., Chu E., et al. Distributed optimization and statistical learning via the alternating direction method of multipliers. Foundations and Trends® in Machine Learning. 2011;3(1):1–122. https://doi.org/10.1561/2200000016

5. Halsted T., Shorinwa O., Yu J., et al. A survey of distributed optimization methods for multi-robot systems. arXiv. URL: https://arxiv.org/abs/2103.12840 [Accessed 25th December 2025].

6. McMahan B., Moore E., Ramage D., et al. Communication-efficient learning of deep networks from decentralized data. In: Proceedings of the 20th International Conference on Artificial Intelligence and Statistics (AISTATS 2017), 20–22 April 2017, Fort Lauderdale, FL, USA. PMLR; 2017. P. 1273–1282.

7. Wang Y., Lin H., Lam J., et al. Differentially private consensus and distributed optimization in multi-agent systems: A review. Neurocomputing. 2024;597:127986. https://doi.org/10.1016/j.neucom.2024.127986

8. Alistarh D., Grubic D., Li J., et al. QSGD: Communication-efficient SGD via gradient quantization and encoding. In: Advances in Neural Information Processing Systems 30: Annual Conference on Neural Information Processing Systems, 04–09 December 2017, Long Beach, CA, USA. 2017. P. 1709–1720.

9. Koloskova A., Lin T., Stich S.U., et al. Decentralized deep learning with arbitrary communication compression. arXiv. URL: https://arxiv.org/abs/1907.09356 [Accessed 25th December 2025].

10. Yurdem B., Kuzlu M., Gullu M.K., et al. Federated learning: Overview, strategies, applications, tools and future directions. Heliyon. 2024;10(19):e38137. https://doi.org/10.1016/j.heliyon.2024.e38137

11. Wang Zh., Wang Ch., Wang J., et al. An accelerated exact distributed first-order algorithm for optimization over directed networks. Journal of the Franklin Institute. 2023;360(14):10706–10727. https://doi.org/10.1016/j.jfranklin.2023.08.015

12. Xin R., Pu Sh., Nedić A. A general framework for decentralized optimization with first-order methods. Proceedings of the IEEE. 2020;108(11):1869–1889. https://doi.org/10.1109/JPROC.2020.3024266

13. Lian X., Zhang C., Zhang H., et al. Can decentralized algorithms outperform centralized algorithms? A case study for decentralized parallel stochastic gradient descent. In: Advances in Neural Information Processing Systems 30: Annual Conference on Neural Information Processing Systems, 04–09 December 2017, Long Beach, CA, USA. 2017. P. 5330–5340.

14. Nedic A., Ozdaglar A. Distributed subgradient methods for multi-agent optimization. IEEE Transactions on Automatic Control. 2009;54(1):48–61. https://doi.org/10.1109/TAC.2008.2009515

Azarnova Тatyana Vasilevna
Doctor of Engineering Sciences, Professor

Voronezh State University

Voronezh, Russian Federation

Kalishkin Evgeny Olegovich

Voronezh State University

Voronezh, Russian Federation

Keywords: multi-agent systems, distributed optimization, consensus gradient descent, gradient tracking, communication efficiency, graph topology, differential privacy

For citation: Azarnova Т.V., Kalishkin E.O. Application of multi-agent systems in distributed optimization problems. Modeling, Optimization and Information Technology. 2026;14(6). URL: https://moitvivt.ru/ru/journal/article?id=2283 DOI: 10.26102/2310-6018/2026.57.6.007 (In Russ).

© Azarnova Т.V., Kalishkin E.O. Статья опубликована на условиях лицензии Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NS 4.0)
14

Full text in PDF

Скачать JATS XML

Received 11.03.2026

Revised 03.06.2026

Accepted 14.06.2026