Scheduling of Electric Energy in Smart Grids Using a Combination of Neural Networks and Local Optimization | IEEE Conference Publication | IEEE Xplore

Scheduling of Electric Energy in Smart Grids Using a Combination of Neural Networks and Local Optimization


Abstract:

In this paper a new scheduling algorithm is presented that enables fast calculation times with a combination of neural network and local optimization. Properly learned ne...Show More

Abstract:

In this paper a new scheduling algorithm is presented that enables fast calculation times with a combination of neural network and local optimization. Properly learned neural network is used to calculate schedule results that can be used as initial conditions for local optimization method. If scheduling results from neural network are located relatively close to optimal solution, local optimization method converges very fast and additionally improve scheduling result. To calculate results from neural network that are relatively close to optimal solution a learning dataset has to be obtained that contains optimal solutions. For this purpose genetic algorithms were used with large number of generations and several repetitions of scheduling process. Scheduling algorithm was tested on scheduling of the electric energy flows in smart grids to balance the electric energy consumption and production. Simulation results showed that a combination of neural network and local optimization converge faster than genetic algorithm method. This makes method useful where times for calculation of schedules are short.
Date of Conference: 10-13 September 2013
Date Added to IEEE Xplore: 12 January 2015
Electronic ISBN:978-0-7695-5073-2
Conference Location: Cardiff, UK

I. Introduction

Smart grid is an electricity network that can intelligently integrate the actions of all connected users in order to efficiently deliver sustainable, economic and secure electricity supply [1]. For achieving these goals one of the most important tasks is an optimization of the energy production and consumption of connected users to achieve the energy balance. Optimizing energy production and consumption is an economic part of the electric power system as producers sells their energy to consumers on the market. On the electric energy market consumers are divided into balance groups that are connected through power network with producers of electrical energy. Balance groups are a collection of metering points (presenting consumers and producers) used to calculate balance between consumption and production of electrical energy.

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References

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