Abstract

Electrical power system is a large and complex network, where power quality disturbances (PQDs) must be monitored, analyzed and mitigated continuously in order to preserve and to re-establish the normal power supply without even slight interruption. Practically huge disturbance data is difficult to manage and requires the higher level of accuracy and time for the analysis and monitoring. Thus automatic and intelligent algorithm based methodologies are in practice for the detection, recognition and classification of power quality events. This approach may help to take preventive measures against abnormal operations and moreover, sudden fluctuations in supply can be handled accordingly. Disturbance types, causes, proper and appropriate extraction of features in single and multiple disturbances, classification model type and classifier performance, are still the main concerns and challenges. In this paper, an attempt has been made to present a different approach for recognition of PQDs with the synthetic model based generated disturbances, which are frequent in power system operations, and the proposed unique feature vector. Disturbances are generated in Matlab workspace environment whereas distinctive features of events are extracted through discrete wavelet transform (DWT) technique. Machine learning based Support vector machine classifier tool is implemented for the classification and recognition of disturbances. In relation to the results, the proposed methodology recognizes the PQDs with high accuracy, sensitivity and specificity. This study illustrates that the proposed approach is valid, efficient and applicable.

Highlights

  • Today, an industrial progress and trade perform a key role in the economic stability and growth of any country

  • With wavelet transform (WT) a waveform is decomposed into the set of basis functions; such basis functions are termed as mother wavelets

  • For the classification of disturbances, power quality disturbances (PQDs) data can be obtained through real time PQ loggers or can be generated using parametric equations [25], where equation parameters are based on Categories & Characteristics of power system electromagnetic phenomenon, IEEE STD 1159-2009

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Summary

INTRODUCTION

An industrial progress and trade perform a key role in the economic stability and growth of any country. Author in [4] proposed automatic pattern recognition of Single and Multiple Power Quality Disturbances based on wavelet norm entropy feature and PNN. Author in [1] proposed tunable-Q wavelet transform and dual multi-class SVM for online detection of PQDs. In [29] a classification method for multiple power quality disturbances using empirical WT adaptive filtering and SVM classifier is proposed. These disturbances are generated through parametric model equations in MATLAB workspace/editor environment Such mathematical model based generated disturbances are passed through DWT filters, signal processing tool, where event detection in time frequency localization is achieved and feature extraction is performed from approximation and detail levels.

WAVELET TRANSFORM
SUPPORT VECTOR MACHINE CLASSIFIER
PQ Disturbances Pattern Generation
Feature Extraction
Classification Stage
RESULTS AND DISCUSSION
C2 C3 C4 C5 C6 C7
CONCLUSION

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