DocumentCode
105335
Title
Network State-Based Algorithm Selection for Power Flow Management Using Machine Learning
Author
King, James E. ; Jupe, Samuel C. E. ; Taylor, Philip C.
Author_Institution
Parsons Brinckerhoff, Godalming, UK
Volume
30
Issue
5
fYear
2015
fDate
Sept. 2015
Firstpage
2657
Lastpage
2664
Abstract
This paper demonstrates that machine learning can be used to create effective algorithm selectors that select between power system control algorithms depending on the state of a network, achieving better performance than always using the same algorithm for every state. Also presented is a novel method for creating algorithm selectors that consider two objectives. The method is used to develop algorithm selectors for power flow management algorithms on versions of the IEEE 14- and 57-bus networks, and a network derived from a real distribution network. The selectors choose from within a diverse set of power flow management algorithms, including those based on constraint satisfaction, optimal power flow, power flow sensitivity factors, and linear programming. The network state-based algorithm selectors offer performance benefits over always using the same power flow management algorithm for every state, in terms of minimizing the number of overloads while also minimizing the curtailment applied to generators.
Keywords
constraint satisfaction problems; distribution networks; learning (artificial intelligence); linear programming; load flow; power system control; power system management; sensitivity analysis; IEEE 14-bus network; IEEE 57-bus network; constraint satisfaction; distribution network; linear programming; machine learning; network state-based algorithm selection; optimal power flow; power flow management algorithm; power flow sensitivity factor; power system control algorithm; Feature extraction; Generators; Machine learning algorithms; Prediction algorithms; Testing; Training; Training data; Algorithms; machine learning; power system control; power systems; smart grids;
fLanguage
English
Journal_Title
Power Systems, IEEE Transactions on
Publisher
ieee
ISSN
0885-8950
Type
jour
DOI
10.1109/TPWRS.2014.2361792
Filename
6920094
Link To Document