A Literature Survey on Underground Cable Fault Detection using IoT

Author:

Hrishikesh G Karanth 1,Likhith Parameshwar 1

Affiliation:

1. Global Academy of Technology Bangalore, India

Abstract

The rise in use of Underground Cables for power Transmission is recent times due to its less maintenance and lower susceptibility to damage by weather, means that detection of any other faults that occur in them must be swift and efficient to ensure lower down-Time in transmission and supply. The survey goes through various fault detection methods that have been proposed, to find potential pros and cons and attempts at bettering them. While using various AI models in detection can be highly accurate to the cause, it still has some error margins to it. On the other hand using IoT (Microcomputers and sensors) make up for near perfect detection increasing the efficiency of the system. This requires a wide range of understanding on the topics of electricity and the working of these lines which is the goal of this paper

Publisher

Naksh Solutions

Reference14 articles.

1. [1] Alagumariappan, Paramasivam & Y, Mohamed & Sonya, A. & Fathima, Irum. (2019). Identification of Electrical Faults in Underground Cables Using Machine Learning Algorithm. Proceedings. 42. 6714. 10.3390/ecsa-6-06714.

2. [2] Yelavarthi Srinivasarao,Sarikonda Pavani,Gummireddy Sudharmi (2017). DETECTION OF FAULT LOCATION IN TRANSMISSION LINES, International Journal of Applied Engineering Research, ISSN 0973-4562 Volume 12..

3. [3] Jitendra Pal Singh1, Narendra Singh Pal2, Sanjana Singh1,Toshika Singh1, Mohd. Shahrukh1. UNDERGROUND CABLE FAULT DISTANCE LOCATOR, International Journal of Scientific Research and Management Studies (IJSRMS), Volume 3 Issue 1, pg: 21-26, ISSN: 2349-3771

4. [4] Shimaa Barakat, Magdy B. Eteiba, Wael Ismael Wahba,Fault location in underground cables using ANFIS nets and discrete wavelet transform,Journal of Electrical Systems and Information Technology,Volume 1, Issue 3,2014,Pages 198-211,ISSN 2314-7172.

5. [5] Priyanka Khirwadkar Shukla, K. Deepa,Deep learning techniques for transmission line fault classification – A comparative study,Ain Shams Engineering Journal,Volume 15, Issue 2,2024,102427,ISSN 2090-4479.

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