DocumentCode
1065604
Title
An adaptive local learning-based methodology for voltage regulation in distribution networks with dispersed generation
Author
Villacci, Domenico ; Bontempi, Gianluca ; Vaccaro, Alfredo
Author_Institution
Di-partimento di Ingegneria, Universita degli Studi del Sannio, Benevento
Volume
21
Issue
3
fYear
2006
Firstpage
1131
Lastpage
1140
Abstract
This paper proposes a computational architecture for the voltage regulation of distribution networks equipped with dispersed generation systems (DGS). The architecture aims to find an effective solution of the optimal regulation problem by combining a conventional nonlinear programming algorithm with an adaptive local learning technique. The rationale for the approach is that a local learning algorithm can rapidly learn on the basis of a limited amount of historical observations the dependency between the current network state and the optimal asset allocation. This approach provides an approximate and fast alternative to an accurate but slow multiobjective optimization procedure. The experimental results obtained by simulating the regulation policy in the case of a medium-voltage network are very promising
Keywords
distributed power generation; distribution networks; nonlinear programming; optimal control; power generation control; voltage control; adaptive local learning-based methodology; conventional nonlinear programming algorithm; dispersed generation systems; distribution networks; medium-voltage network; multiobjective optimization; optimal asset allocation; optimal regulation; voltage regulation; Communication system control; Computer architecture; Control systems; Intelligent networks; Medium voltage; Power generation; Power system protection; Power system reliability; Voltage control; Wind energy generation; Dispersed storage and generation; intelligent control; power distribution; voltage control;
fLanguage
English
Journal_Title
Power Systems, IEEE Transactions on
Publisher
ieee
ISSN
0885-8950
Type
jour
DOI
10.1109/TPWRS.2006.876691
Filename
1664947
Link To Document