Islanding Detection Using Computational Intelligence Techniques in a Smart Distribution Network
Date
2020
Authors
Goud, M Santhosh Kumar.
Journal Title
Journal ISSN
Volume Title
Publisher
National Institute of Technology Karnataka, Surathkal
Abstract
Distributed generation (DG) offers solution to the ever increasing energy
needs by generating the energy at the consumer end, in most cases by
means of renewable energy sources. A microgrid with DGs will result in
an enhanced performance in terms of continuity of the power supply for
consumers. Microgrids may operate either in grid{connected or islanded
mode. Islanding detection is one of the most important aspect of interconnecting a DG to the utility. Several islanding detection methods have
been proposed over the years to improve the islanding detection in terms
of detection time, accuracy. However, with the upcoming trends, such as
smart grids, there is an imminent need for incorporating intelligence to
the islanding detection methods. Also, it is important for the islanding
detection methods to perform well at near zero power mismatch conditions
and noisy conditions.
This research work proposes islanding detection methods based on image
classification techniques. Time{series data from point of common coupling
is acquired and then converted to an image to enable this. A dataset for
islanding detection based on several islanding and non{islanding events is
created to be used in training and testing the machine learning and deep
learning models. Three islanding detection methods are proposed in this
research work. The first method is based on HOG feature extraction from
the image and SVM classifier. The second method is based on transfer
learning method. The third islanding detection method is based on custom
designed CNN for islanding detection. In addition to islanding detection, a
feature for early islanding detection is also proposed in this research work.
Early islanding detection is proposed by monitoring the fault and normal
conditions. Once a fault occurs, the time window between the operation
of relay contacts and the opening of circuit breakers is utilized to detect
the islanding event. All the methods are tested with the islanding dataset
that is created which includes near zero power mismatch conditions and
noisy data. The proposed methods demonstrate the potential of image
classification techniques for islanding detection.
Description
Keywords
Department of Electrical and Electronics Engineering