Abstract

The power grid is a fusion of technologies in energy systems, and how to adjust and control the output power of each generator to balance the load of the grid is a crucial issue. As a platform, the smart grid is for the convenience of the implementation of adaptive control generators using advanced technologies. In this paper, we are introducing a new approach, the Central Lower Configuration Table, which optimizes dispatch of the generating capacity in a smart grid power system. The dispatch strategy of each generator in the grid is presented in the configuration table, and the scenario consists of two-level agents. A central agent optimizes dispatch calculation to get the configuration table, and a lower agent controls generators according to the tasks of the central level and the work states during generation. The central level is major optimization and adjustment. We used machine learning to predict the power load and address the best optimize cost function to deal with a different control strategy. We designed the items of the cost function, such as operations, maintenances and the effects on the environment. Then, according to the total cost, we got a new second-rank-sort table. As a result, we can resolve generator’s task based on the table, which can also be updated on-line based on the environmental situation. The signs of the driving generator’s controller include active power and system’s f. The lower control level agent carries out the generator control to track f along with the best optimized cost function. Our approach makes optimized dispatch algorithm more convenient to realize, and the numerical simulation indicates the strategy of machine learning forecast of optimized power dispatch is effective.

Highlights

  • With the fast society innovation speed, the higher demand for power industry is required, such as higher quality, better stability, lower harmonics and inter-harmonics, etc

  • The power grid is a fusion of technologies in energy systems, and how to adjust and control the output power of each generator to balance the load of the grid is a crucial issue

  • In [3], smart management is the main content in smart grid, which focuses on energy efficiency and demands profile improvement, such as cost optimization, price stabilization and emission control

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Summary

Introduction

With the fast society innovation speed, the higher demand for power industry is required, such as higher quality, better stability, lower harmonics and inter-harmonics, etc. In [25], proposed a multi-agent optimal microgrid control strategy in order to realise distributed energy resources economic dispatch. Many results focus on research demands or generators control, but how to optimize control different technology generations become the new problem, especially we are in the times of large-scale power grid. ■ Use hierarchical strategy to optimize our goal, the central level implements active power dispatch in the best way according to configuration table, the lower control level convert Pdispatch to control value u to perform P out, at the same time calculate the generator’s the capacity of output according to the local weather and generator work state, feedback the result Pf to the central level to update configuration table.

Problem Presents and Preliminaries
Main Energy Consists of Electricity
Question Formulation
CLCT Data Obtained and Pre-Prepare
CLCT Design Optimize Protocol
CLCT Scenario of Dispatch Active Power
Conclusions and Future Works
Full Text
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