Improving fault identification in smart transmission line using machine learning technique

Radhika Venkutuswamy, Baskaran Kaliyaperumal
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Abstract

In this work inevitable for power transmission boards such as Tamil Nadu Generation and Distribution Corporation Limited (TANGEDCO) to look for a low-cost communication system with low power usage and to improve supply reliability, to transmit reliable fault information back to the control centre in real time. This work aims to design an automated and effective fault identification and position system for all overhead power transmission network networks using all current fault indicator technologies, machine learning methods, and commercially tested communication technology to easily and reliably pin a transmission system's flawed point parts. This will help to people avoid touching the electrical wire and prevent electrical shocks and current wastage as well. Smart transmission lines have played a decisive role in developing human protection and preventing current wastage. The transmission line is opened and the state of the line is evaluated, and the information goes to electrical board (EB) office. The system monitors the data by sending the alert message to the person responsible for the GPS location, either via SMS or BUZZER, or by displaying the alert message lives. Transmission line distribution is broad and most of them are spread around the geographical environment.
利用机器学习技术提高智能输电线路的故障识别能力
在这项工作中,泰米尔纳德邦发电和配电有限公司(TANGEDCO)等输电公司不可避免地要寻找一种低成本、低功耗的通信系统,以提高供电可靠性,将可靠的故障信息实时传回控制中心。本工作旨在利用现有的故障指示技术、机器学习方法和商业测试的通信技术,为所有架空输电网络设计一个自动有效的故障识别和定位系统,以轻松可靠地锁定输电系统的缺陷点部件。这将有助于人们避免接触电线,防止触电和电流浪费。智能输电线路在发展人类保护和防止电流浪费方面发挥了决定性作用。打开输电线路,对线路状态进行评估,并将信息送至电气板(EB)办公室。系统通过短信或蜂鸣器向负责GPS定位的人员发送警报信息,或通过显示警报信息来监视数据。输电线路分布广泛,大部分分布在地理环境周围。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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