Title
Identifying Extreme Cold Events Using Phase Space Reconstruction
Abstract
Extreme cold events in natural gas demand are characterised by unusual dynamics that makes modelling the characteristics of the gas demand during extreme cold events a challenging task. This unusual dynamics is in the form of hysteresis, possibly due to human behavioural response to extreme weather conditions. To natural gas distribution utilities, extreme cold events represent high risk events given the associated huge demand of gas by their customers. To understand the nature of the unusual dynamics and help utilities in their decision-making process, we present a semi-supervised learning algorithm that identifies extreme cold events in natural gas time series data. Using phase space reconstruction, the input space is mapped into a phase space. In the reconstructed phase space, events with similar dynamics are closer together, while events with different dynamics are far apart. A cluster containing extreme cold events is identified by finding the nearest neighbours to an observed cold event. The learning algorithm was tested on natural gas consumption data obtained from natural gas local distribution companies. Our RPS-kNN algorithm was able to identify extreme cold events in the data.
Year
DOI
Venue
2016
10.1504/IJAPR.2016.079748
INTERNATIONAL JOURNAL OF APPLIED PATTERN RECOGNITION
Keywords
DocType
Volume
reconstructed phase space, RPS, nearest neighbour, extreme cold events, and energy forecasting, semi-supervised learning
Journal
3
Issue
ISSN
Citations 
3
2049-887X
0
PageRank 
References 
Authors
0.34
2
4
Name
Order
Citations
PageRank
Babatunde I. Ishola100.34
Richard J. Povinelli222520.40
George F. Corliss39526.53
Ronald H. Brown400.34