A review of the employing of Wavelet transforms and Classifier Artificial intelligence (AI) methods for detecting power transmission difficulties

Year : 2024 | Volume :14 | Issue : 02 | Page : –
By

Lokesh Patel,

Shalini Goad,

  1. M. Tech Scholar, Oriental University, Indore, Madhya Pradesh, India
  2. Assistant Professor, Oriental University, Indore, Madhya Pradesh, India

Abstract

Power systems use large interconnections to transmit and distribute electric power. For power transmission, the same voltage levels are used for minimum transmission losses. During power transmission faults may occur due to natural events such as lightning, strong wind, fire etc. Faults may occur between phase conductors to ground or between the phase conductors. Transmission line protection has been performed using the comparison of voltages and currents and activates the relays at fault. Different ways like phase comparison of voltages, ratio between voltages and currents, difference between currents is used to find the fault and protect the transmission line. Using methods like phase comparison of voltages, current/voltage ratios, and differential protection helps identify faults accurately and swiftly. These techniques leverage the principles of electrical engineering to differentiate between normal operating conditions and fault scenarios, enabling the system to respond appropriately.

Keywords: Power system, Wavelet transform, SVM, ANN, CNN

[This article belongs to Journal of Power Electronics and Power Systems(jopeps)]

How to cite this article: Lokesh Patel, Shalini Goad. A review of the employing of Wavelet transforms and Classifier Artificial intelligence (AI) methods for detecting power transmission difficulties. Journal of Power Electronics and Power Systems. 2024; 14(02):-.
How to cite this URL: Lokesh Patel, Shalini Goad. A review of the employing of Wavelet transforms and Classifier Artificial intelligence (AI) methods for detecting power transmission difficulties. Journal of Power Electronics and Power Systems. 2024; 14(02):-. Available from: https://journals.stmjournals.com/jopeps/article=2024/view=161354



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Regular Issue Subscription Review Article
Volume 14
Issue 02
Received April 23, 2024
Accepted July 15, 2024
Published August 6, 2024

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