Automatic Simulation of Active Distribution Network Based on Multi-Agent Technology
2019 IEEE Innovative Smart Grid Technologies - Asia (ISGT Asia)(2019)
State Grid Fujian Electric Power Company | State Grid Fujian Electric Power Research Institute | College of Electrical Engineering and Information
Abstract
With the high increasing penetration of renewable energy, it is difficult to meet the investment development requirements of active distribution network with multi-agent access by traditional way. Therefore, a model of operation sample automation simulation based on multi-agent and technical path is proposed in this paper. The agent models are built with the characteristics of DG, energy storage (ES) and flexible loads, it proposed an automation coordinated strategy by grid agent guidance in this paper. At the same time, in order to improve the utilization efficiency of multi-agent in active distribution network, the model considers load growth and the change of technology path to analyze the economic operation ability under different schemes. The results of the model are verified which by following the development of technology path to realize the simulation of long-time scale of active distribution network.
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Key words
Multi-Agent technology,Automation simulation,Dynamic coordination,Load growth model,Technical path
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