Information technology control of alternative energy objects

Authors

DOI:

https://doi.org/10.15587/2312-8372.2015.37186

Keywords:

distributed generation, information systems, agent-based modeling, simulation, database

Abstract

The significant losses of useful energy that occurs during transportation energy to the end users from large power plants to ultimate users causes to look for alternative ways of organizing the activities of the grid. Hybrid energy system based on renewable energy helps to achieve an optimal relationship between generation and consumption of energy. Thus, paper discusses the topicality of the using of information technology for renewable energy control in the construction of hybrid grids and also problems arising in this case.

Here are proposed the architecture of analytical information system for control of hybrid power systems based on the energy of wind and sun, on the basis of the analysis information flow in it. It was indicated key factors influencing to the production of electricity and were generated questions, the answers to which gives the system. During creating the proposed architecture was decided to use the client-server technology with the assistance of software agents. It was established that the proposed method of agent-based modeling allows to make an independent work of the grid investigation from access of ordinary users.

Author Biographies

Ольга Василівна Шулима, Sumy State University, Rymskogo-Korsakova, 2, Sumy, Ukraine, 40007

PhD student

Department of Computer Science

Віра Вікторівна Шендрик, Sumy State University, Rymskogo-Korsakova, 2, Sumy, Ukraine, 40007

PhD, Associate Professor

Department of Computer Science

Анатолій Сергійович Богачов, Sumy State University, Rymskogo-Korsakova, 2, Sumy, Ukraine, 40007

Department of Computer Science

References

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Published

2015-01-29

How to Cite

Шулима, О. В., Шендрик, В. В., & Богачов, А. С. (2015). Information technology control of alternative energy objects. Technology Audit and Production Reserves, 1(2(21), 17–22. https://doi.org/10.15587/2312-8372.2015.37186

Issue

Section

Information Technologies: Original Research