In this paper, we propose a methodology to classify Power Quality (PQ) in distribution systems based on voltage sags. The methodology uses the KDD process (Knowledge Discovery in Databases) in order to establish a quality level to be printed in labels. The methodology was applied to feeders on a substation located in Curitiba, Paraná, Brazil, considering attributes such as sag length (remnant voltage), duration and frequency (number of occurrences on a given period of time). On the Data Mining Stage (the main stage on KDD Process), three different techniques were used, in a comparative way, for pattern recognition, in order to achieve the quality classification for the feeders: Artificial Neural Networks (ANN); Support Vector Machines (SVM)...
In recent years pattern recognition of power quality (PQ) disturbances in smart grids has developed ...
Power quality disturbances (PQD) have a negative impact on power quality-sensitive equipment, often ...
This paper presents classification results of different power quality disturbances. SVM and RBF neur...
The most important requirement of power system operations is sustained availability and quality supp...
Impact of a bad power quality on customers has motivated the development of a classification strateg...
The authors would like to thank the support of the Spanish Government under the CICYT research proje...
This research presents new intelligent approaches for the estimation and comprehensive analysis of t...
One of the important developments in the electric power system is the fast increasing amount of data...
This paper presents the two main types of classification methods for power quality disturbances bas...
The paper describes a procedure for the automatic analysis of monitored voltage waveforms in distrib...
Artificial Intelligence (AI) methods are increasingly being used for problem solving. This paper con...
This paper discuss about the characterization of voltage sags, based on the extraction of significan...
Power Quality has become one of the important issues in modern smart grid environment. Smart grid ge...
Abstract There is growing interest in power quality issues due to wider developments in power delive...
In this work are presented three algorithms that form part of a platform for analysis and characteri...
In recent years pattern recognition of power quality (PQ) disturbances in smart grids has developed ...
Power quality disturbances (PQD) have a negative impact on power quality-sensitive equipment, often ...
This paper presents classification results of different power quality disturbances. SVM and RBF neur...
The most important requirement of power system operations is sustained availability and quality supp...
Impact of a bad power quality on customers has motivated the development of a classification strateg...
The authors would like to thank the support of the Spanish Government under the CICYT research proje...
This research presents new intelligent approaches for the estimation and comprehensive analysis of t...
One of the important developments in the electric power system is the fast increasing amount of data...
This paper presents the two main types of classification methods for power quality disturbances bas...
The paper describes a procedure for the automatic analysis of monitored voltage waveforms in distrib...
Artificial Intelligence (AI) methods are increasingly being used for problem solving. This paper con...
This paper discuss about the characterization of voltage sags, based on the extraction of significan...
Power Quality has become one of the important issues in modern smart grid environment. Smart grid ge...
Abstract There is growing interest in power quality issues due to wider developments in power delive...
In this work are presented three algorithms that form part of a platform for analysis and characteri...
In recent years pattern recognition of power quality (PQ) disturbances in smart grids has developed ...
Power quality disturbances (PQD) have a negative impact on power quality-sensitive equipment, often ...
This paper presents classification results of different power quality disturbances. SVM and RBF neur...