A Deep Learning Model via Long Short Term Memory for Voltage Sag Location in Sparsely Monitored System
Author:
Affiliation:
1. Xi’an University of Technology,School of Electrical Engineering,Xi’an,China
2. Xi’an University of Technology,School of Automation and Information,Xi’an,China
3. University of Waterloo,School of Electrical Engineering,Waterloo,Canada
Publisher
IEEE
Link
http://xplorestaging.ieee.org/ielx7/10054511/10054645/10055497.pdf?arnumber=10055497
Reference16 articles.
1. Methods for voltage sag source location by Cluster Algorithm and Decision Rule Labeling with a Comparative Approach of K-means and DBSCAN Clustering Algorithms
2. Fault location estimation for transmission lines using voltage sag data
3. Voltage Sag Source Location Estimation Based on Optimized Configuration of Monitoring Points
4. A Voltage Sag Source Locating Method with Multiple Screening Criterions Considering Voltage Measurement Errors
5. Mining Method of Voltage Sag Association Rules Based on Multi-sources Monitoring Data
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