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Assessment of voltage stability risks under stochastic net loads using scalable SVM classification

Version 2 2024-06-06, 01:52
Version 1 2018-05-04, 14:38
conference contribution
posted on 2024-06-06, 01:52 authored by A Demazy, T Alpcan, I Mareels, S Saha
A novel approach is presented to identify and assess voltage stability risk in power networks that include nodes with variable loads and intermittent renewable generation. Given a power network configuration, the approach firstly assesses voltage instability boundaries at selected nodes in response to stochastic operational conditions (variable load and intermittent decentralised generation). By iteratively calculating Saddle Node Bifurcation (SNB) points one node at a time given a set of loads and intermittent generation conditions at the other nodes, those data points are used as training sets for support vector machine (SVM) classifiers. Secondly, a marginal voltage stability risk probability distribution for the intermittent buses is derived using Monte Carlo simulation methods with stochastic net load profiles within the system where instability status at each simulation is derived from the trained set of SVM classifiers. The key advantage of the proposed method is its scalability to higher dimension networks for which the SVM training date set must be calculated only once. The voltage risk probability distribution acquires a significant importance in the design of quantitative risk valuation framework for planning and expansion purposes in a context of network with decentralised and intermittent generation. This paper focuses on describing the approach to derive a voltage risk probability using SVM technique, while the construction and use of the probability distribution in a comprehensive risk valuation framework for planning is left for future work to the authors.

History

Pagination

1-6

Location

Melbourne, Vic.

Start date

2017-11-19

End date

2017-11-22

eISSN

2474-1507

ISBN-13

978-1-5386-2647-4

Language

eng

Publication classification

E Conference publication, E1 Full written paper - refereed

Copyright notice

2018, IEEE

Editor/Contributor(s)

[Unknown]

Title of proceedings

AUPEC 2017 : Smart power grids int he 21st century : Proceedings of the Australasian Universities Power Engineering Conference 2017

Event

IEEE Power & Energy Society. Conference (2017 : Melbourne, Vic.)

Publisher

Institute of Electrical and Electronics Engineers

Place of publication

Piscataway, N.J.

Series

IEEE Power & Energy Society Conference