A cumulative standard deviation sum based method for high resistance fault identification and classification in power transmission lines

Abstract High resistance fault poses an enormous challenge to the existing algorithms of fault detection and fault classification. In this paper, the standard deviation and accumulation method are employed to perform the fault detection and classification. It is primarily built in two stages. Firstl...

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Main Authors: Mohammed H. H. Musa, Zhengyou He, Ling Fu, Yujia Deng
Format: Article
Language:English
Published: SpringerOpen 2018-09-01
Series:Protection and Control of Modern Power Systems
Subjects:
Online Access:http://link.springer.com/article/10.1186/s41601-018-0102-4
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spelling doaj-7ee571d97c7b4afa9f9c6ef84f219ae92020-11-25T01:21:51ZengSpringerOpenProtection and Control of Modern Power Systems2367-26172367-09832018-09-013111210.1186/s41601-018-0102-4A cumulative standard deviation sum based method for high resistance fault identification and classification in power transmission linesMohammed H. H. Musa0Zhengyou He1Ling Fu2Yujia Deng3Department of Electrical Engineering, Southwest Jiaotong UniversityDepartment of Electrical Engineering, Southwest Jiaotong UniversityDepartment of Electrical Engineering, Southwest Jiaotong UniversityDepartment of Electrical Engineering, Southwest Jiaotong UniversityAbstract High resistance fault poses an enormous challenge to the existing algorithms of fault detection and fault classification. In this paper, the standard deviation and accumulation method are employed to perform the fault detection and classification. It is primarily built in two stages. Firstly, the standard deviations for the measured current’s signals of the local and remote terminals is computed to extract the fault feature. Secondly, the cumulative approach is used to enlarge the fault feature to perform the high resistance fault. The proposed scheme is known as Standard Deviation Index (SDI), and it is obtained for the three phases and zero sequence. The proposed algorithm has been tested through different fault circumstances such as multiple faults locations, fault resistances, and fault inception time. Moreover, far-end faults with high-resistance, faults happened nearby the terminal, faults considering variable loading angle, sudden load change, different sampling frequency, bad signaling and a fault occurred in the presence of series compensation are also discussed. The results show that the proposed scheme performed remarkably well regarding the fault with resistance up to 1.5kΩ and can be detected within a millisecond after the fault inception. Additionally, the computational simplicity that characterizes the processes makes it more efficient and suitable for domain applications.http://link.springer.com/article/10.1186/s41601-018-0102-4Power transmission lineStatistic measuresHigh resistance faultCumulative sum
collection DOAJ
language English
format Article
sources DOAJ
author Mohammed H. H. Musa
Zhengyou He
Ling Fu
Yujia Deng
spellingShingle Mohammed H. H. Musa
Zhengyou He
Ling Fu
Yujia Deng
A cumulative standard deviation sum based method for high resistance fault identification and classification in power transmission lines
Protection and Control of Modern Power Systems
Power transmission line
Statistic measures
High resistance fault
Cumulative sum
author_facet Mohammed H. H. Musa
Zhengyou He
Ling Fu
Yujia Deng
author_sort Mohammed H. H. Musa
title A cumulative standard deviation sum based method for high resistance fault identification and classification in power transmission lines
title_short A cumulative standard deviation sum based method for high resistance fault identification and classification in power transmission lines
title_full A cumulative standard deviation sum based method for high resistance fault identification and classification in power transmission lines
title_fullStr A cumulative standard deviation sum based method for high resistance fault identification and classification in power transmission lines
title_full_unstemmed A cumulative standard deviation sum based method for high resistance fault identification and classification in power transmission lines
title_sort cumulative standard deviation sum based method for high resistance fault identification and classification in power transmission lines
publisher SpringerOpen
series Protection and Control of Modern Power Systems
issn 2367-2617
2367-0983
publishDate 2018-09-01
description Abstract High resistance fault poses an enormous challenge to the existing algorithms of fault detection and fault classification. In this paper, the standard deviation and accumulation method are employed to perform the fault detection and classification. It is primarily built in two stages. Firstly, the standard deviations for the measured current’s signals of the local and remote terminals is computed to extract the fault feature. Secondly, the cumulative approach is used to enlarge the fault feature to perform the high resistance fault. The proposed scheme is known as Standard Deviation Index (SDI), and it is obtained for the three phases and zero sequence. The proposed algorithm has been tested through different fault circumstances such as multiple faults locations, fault resistances, and fault inception time. Moreover, far-end faults with high-resistance, faults happened nearby the terminal, faults considering variable loading angle, sudden load change, different sampling frequency, bad signaling and a fault occurred in the presence of series compensation are also discussed. The results show that the proposed scheme performed remarkably well regarding the fault with resistance up to 1.5kΩ and can be detected within a millisecond after the fault inception. Additionally, the computational simplicity that characterizes the processes makes it more efficient and suitable for domain applications.
topic Power transmission line
Statistic measures
High resistance fault
Cumulative sum
url http://link.springer.com/article/10.1186/s41601-018-0102-4
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