UDK 519.216
MODELING OF RESOURCES MANAGEMENT SYSTEM OF HETEROGENEOUS DISTRIBUTION SYSTEM OF INFORMATION PROCESSING ON THE BASIS OF MULTIAGENT APPROACH
G. A. Ontuzheva1, O. A. Antamoshkin1,2
1Reshetnev Siberian State Aerospace University 31, Krasnoyarsky Rabochy Av., Krasnoyarsk, 660037, Russian Federation 2Siberian Fereral University 79, Svobodniy Av., Krasnoyarsk, 660041, Russian Federation
The article is devoted to the structural modeling of resource management of heterogeneous distribution systems of information processing based on multi-agent approach of the design of distributed information systems. In the introduction of the article the urgency of the problem for the decision-making process is proved. We describe the main difficulties encountered when we make informed and timely decisions at forecasting and disaster management on the scale of the Russian Federation. Further objective of the study is formed, and the tasks required to achieve it are described. Starting with a description of the distinguishing features of the unified state system of prevention and liquidation of emergency situations of the Russian Emergencies Ministry, the authors come to the conclusion that the system fits the generally accepted concept of heterogeneous distributed information processing system. Below, the construction of multi-agent approach to resource management of heterogeneous distributed information processing system as the least costly financially, and meets the necessary criteria is justified. In the body of the article a complete description of levels built models such as the - level of intelligent agents, the level of computer equipment agents, route management level is given. The structure of the system is described. The article details the typical functionality of the following: a software component management agent compute node load monitoring agent and monitoring agent communication channels, data transfer agent, load balancing agent, agent utilization of communication channels forecasting reactive agent of the primary data sources. At the end of the work the possibilities of further development of the model, as well as the conclusion about the necessity of its algorithmization for practical testing and implementation in practice are considered.
Keywords: modeling, heterogeneous data processing systems, multi-agent systems.
References

1. Tarasov V. B. [From artificial intelligence to artificial life: new directions in the artificial sciences] Novosti iskusstvennogo intellekta. 1995, No. 4, P. 93–117 (In Russ.).

2. Tarasov V. B. [New strategy and reorganization of the automation businesses: Towards Business Intelligence] Novosti iskusstvennogo intellekta. 1996, No. 4, P. 40–84 (In Russ.).

3. Jennings N. R., Sycara K. P., Wooldridge M. A roadmap for agent research and development. Journal of Autonomous Agents and Multi-Agent Systems. 1998, No. 1(1), P. 7–36.

4. Antamoshkin O. A. [Designing highly reliable realtime systems] Trudy MAI. 2011, No. 45, P. 61 (In Russ.).

5. Genesereth М. R., Nilsson N. Logical Foundations of Artificial Intelligence. Los Altos: Morgan Kaufmann, 1987, 405 p.

6. Emerson E. A., Shrinivanas J., W. de Bakker Ed. by J., de Roever W.P., Rosenberg G. Branching time logic: REX School-Workshop on Linear Time, Branching Time and Parial Order in Logics and Models for Concurrency LNCS Vol. 354. Heidelberg, Springer Verlag. 1988. P. 123–172.

7. Konolige K., Hayes Ed. by J. E., Michie D., Pao Chichester Y. A first-order formalization of knowledge find action for multi-agent planning system – Machine Intelligence 10 Ellis Horwood. 1982, P. 41–72.

8. Wooldridge M. The Logical Modelling of Computational Multi-Agent Systems. Ph. D. thesis. UMIST, Manchester, 1992, 153 p.

9. D’Inverno M., Kinny D., Luck M., Wooldridge M., Sigh Ed. by M. P., Rao A. S. A Formal Specification of dMARS Intelligent Agents IV. Lectures Notes in AL Vol. 1365. Springer. Verlag, 1998, P. 58–70.

10. Wooldridge M., Wiley J. and Sons An Introduction to Multi-Agent Systems. 2002, 376 p.

11. Van Linder B., van der Hoek W., Meyer J.-J.; Wooldridge M., Miller J. P., Tambe M. Formalising Motivational Attitudes of Agents. On Preferences, Goals and Commitments Intelligent Agents IL Agent Theories, Architectures and Languages. IJCAl 95 Workshop (ATAL). Montreal. Canada. August 19–20, 1995. Proceedings. Berlin, Springer, 1996, P. 17–32.

12. Van Linder B., van der Hoek W., Meyer J.-J.; Wooldridge Ed. by M., Muller J. P., Tambe M. How to motivate your agents. Intelligent Agents II. Agent Theories, Architectures and Languages. IJCAl 95 Workshop (ATAL). Montreal. Canada. August 19–20, 1995. Proceedings Springer, 1996, P. 32–47.

13. Rao A. S., Georgeff M. P.; Ed. by Rich C., Swartout W., Nebel B. As abstract architecture for rational agents Proceedings of Knowledge Representation and Reasoning (KR&R – 92). 1992, P. 439–449.

14. Rao A. S. Agent Speak(L): BDI agents speak out in logical computable Ianguage Agents Breaking Away : Proc. of the Seventh European Workshop; on Modelling Autonomous Agents in a Multi-Agent World (LNAT Vol 1031). Heidelberg, Germany, Springer Verlag, 1996, P. 42–55.

15. D’Inverno M., Luck M. A formal specification of Agenl Speak(L). Journal of Logic and Computation, 2000, Vol. 13, P. 157–176.

16. Van Linder B., van der Hoek W., Meyer J.-J. The dynamics of default rezoning Proc. of ECSQ ARU’95, LNCS 946. 1995. P. 277–284.

17. Van Linder B., van der Hoek W., Meyer J.-J. Actions that make you change your mind. Proc. of KI - 95, LNCS 9811 Rollinger, 1995, P. 185–196.

18. Van Linder B., van der Hoek W., Meyer J.-J. Seeing is believing – and so are hearing and jumping Proc. of AIIA’95, LNCS 992. 1995, P. 402–413.

19. Kenny A. Will, Freedom and Power. Basil Blackwell. Oxford, 1975, 170 p.

20. Shvetsov A. N. [Agent-oriented systems: from formal models for industrial applications] Vserossiyskiy konkursnyy otbor obzorno-analiticheskikh statey po prioritetnomu napravleniyu “Informatsionno-telekommunikatsionnye sistemy”. 2008, 101 p. (In Russ.).

21. Ivanov A. Yu., Alekseeva E. V. [Criteria for evaluating information systems to support decisionmaking in emergency situations] Vestnik Sankt-Peterburgskogo Universiteta GPS MChS Rossii. 2012, No. 4, P. 1–6 (In Russ.).

22. Antamoshkin O. A. [Multi-agent monitoring automation system, forecasting and emergency management] Varna: Tsent”r Za Nauchni Izsledvaniya I Informatsiya “Paradigma”, P. 18–28 (In Russ.).

23. Antamoshkin O., Kukarcev V., Pupkov A., Tsarev R. Intellectual support system of administrative decisions in the big distributed geoinformation systems 14th International Multidisciplinary Scientific Geoconference SGEM 2014. GeoConference on Informatics, Geoinformatics and Remote Sensing. Conference Proceedings. 2014, Vol. 1, No. 2, P. 227–233.


Ontuzheva Galina Aleksandrovna – postgraduate student, Department of System Analysis and Operations

Research, Reshetnev Siberian State Aerospace University. E-mail: galya679@mail.ru.

Antamoshkin Oleslav Alexandrovich – Cand. Sc., docent, Department of Information Systems of Economic,

Reshetnev Siberian State Aerospace University; Head of Department of Information Technology in the Creative and

Cultural Industries, Siberian Federal University. E-mail: oleslav24@gmail.com.