Electrical disturbances can have an adverse affect on people, businesses and other systems, and increased understanding of such events has huge potential benefits. Clustering or unsupervised learning is a technique of computational intelligence that can be used to identify natural clusters or groups of disturbances. The understanding of disturbances is important for planning and maintenance, and may lead to fresh insights which prove useful in upgrade of infrastructure. Ideally this should be a fully automated process, so that no bias is introduced by the practitioner. The complete process involves several steps including data cleaning, transformation, feature selection, clustering, evaluation of clusters, cluster description and cluster in...
In this paper, we perform a cluster analysis using smart meter electricity demand data from 656 hous...
Mobile networks represent a considerable industry globally and are known to rely on robust and highl...
The topic addressed in this article is part of the current concerns of modernizing power systems by ...
The power system is changing rapidly, and new tools for predicting unwanted events are needed to kee...
Over the last decade, data has become a highly valuable resource. Electrical power grids deal with l...
Increasing power demand and wide use of high technology power electronic devices result in need for ...
This paper presents the two main types of classification methods for power quality disturbances bas...
Harmonic monitoring has become an important tool for harmonic management in distribution system. A c...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for...
Analysis of Data quality is an important issue which has been addressed as data warehousing, data mi...
The development of electric power industry is oriented on high reliability, flexibility and efficien...
Abstract-- A comprehensive harmonic monitoring program has been designed and implemented on a typica...
© 2017 IEEE. Clustering is a well-recognized data mining technique which enables the determination o...
As the amount of collected and analysed data for electricity usage from buildings is increasing it b...
Machine learning algorithms applied towards detection of non-technical losses are increasingly becom...
In this paper, we perform a cluster analysis using smart meter electricity demand data from 656 hous...
Mobile networks represent a considerable industry globally and are known to rely on robust and highl...
The topic addressed in this article is part of the current concerns of modernizing power systems by ...
The power system is changing rapidly, and new tools for predicting unwanted events are needed to kee...
Over the last decade, data has become a highly valuable resource. Electrical power grids deal with l...
Increasing power demand and wide use of high technology power electronic devices result in need for ...
This paper presents the two main types of classification methods for power quality disturbances bas...
Harmonic monitoring has become an important tool for harmonic management in distribution system. A c...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for...
Analysis of Data quality is an important issue which has been addressed as data warehousing, data mi...
The development of electric power industry is oriented on high reliability, flexibility and efficien...
Abstract-- A comprehensive harmonic monitoring program has been designed and implemented on a typica...
© 2017 IEEE. Clustering is a well-recognized data mining technique which enables the determination o...
As the amount of collected and analysed data for electricity usage from buildings is increasing it b...
Machine learning algorithms applied towards detection of non-technical losses are increasingly becom...
In this paper, we perform a cluster analysis using smart meter electricity demand data from 656 hous...
Mobile networks represent a considerable industry globally and are known to rely on robust and highl...
The topic addressed in this article is part of the current concerns of modernizing power systems by ...