Abstract

The ability to identify the fault type and to locate the fault in extra high voltage transmission lines is very important for the economic operation of modern power systems. Accurate algorithms for fault classification and location based on artificial neural network are suggested in this paper. Two fault classification algorithms are presented; the first one uses the single ANN approach and the second one uses the modular ANN approach. A comparative study of two classifiers is done in order to choose which ANN fault classifier structure leads to the best performance. Design and implementation of modular ANN-based fault locator are presented. Three fault locators are proposed and a comparative study of the three fault locators is carried out in order to determine which fault locator architecture leads to the accurate fault location. Instantaneous current and/or voltage samples were used as inputs to ANNs. For fault classification, only the pre-fault and post-fault samples of three-phase currents were used. For fault location, pre-fault and post-fault samples of three-phase currents and/or voltages were used. The proposed algorithms were evaluated under different fault scenarios. Studied simulation results which are presented confirm the effectiveness of the proposed algorithms.

Highlights

  • The design of the high performance protection techniques remains an important subject for the development within the university community and the industry

  • An efficient fault classification and location algorithms in extra high voltage (EHV) transmission lines based on artificial neural networks were presented

  • The first treats only the fundamental magnitudes of the three-phase currents samples, the second treats the fundamental magnitudes of the three-phase voltages samples, and the third uses the fundamental magnitudes of threephase currents and voltages samples

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Summary

Introduction

The design of the high performance protection techniques remains an important subject for the development within the university community and the industry. The protection approaches based on ANNs were used for the development of reliable, accurate, and rapid algorithms in real time for fault detection, classification, and location In this context, [25] developed an application of radial basic function (RBF) neural network applied to fault location in transmission lines. In order to develop fault classification and location algorithms leading to desired results with a good precision and fast response time compared to former work, we have proposed in the present paper a new fault classification and location algorithms based on ANNs. optimal neural networks architecture used in the fault classification and location algorithms (number of hidden layers, number of neurons in hidden layers, reduced training sets, fast convergence to the desired results, and reliability and precision of protection algorithms) were proposed. The simulation results show clearly the high accuracy of the proposed fault classification and location algorithms

Power System under Study
Artificial Neural Networks
Configuration of Fault Classification and Location System Using ANN
Fault Classification
Comparison between Proposed and Existing Schemes
Findings
Conclusion
Full Text
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