Transformer Active Part Fault Assessment Using Internet of Things

Nauryzbay Mussin, Aidar Suleimen, Temirlan Akhmenov, N. Amanzholov, V. Nurmanova, M. Bagheri, M. Naderi, O. Abedinia
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引用次数: 7

Abstract

Faults in distribution and power transformers jeopardize stability of the power network. Hence, various diagnosis techniques are implemented in order to prevent or at least detect transformer integrity violations. The majority of diagnosis techniques are functioning off-line and requires transformer disconnection from the power line. This is certainly undesirable for utility management and customer. Therefore, on-line or online diagnosis is more preferable and faster than off-line monitoring procedure. The aim of this study is to implement transformer real-time diagnosis technique based on the analysis of the vibrational signal spectrum. It is supposed that vibrational signature of the transformer is transferred and processed over the cloud environment using Internet of Things (IoT), and then the prognosis algorithm is executed over portable device.
基于物联网的变压器有源部件故障评估
配电变压器故障严重危及电网的稳定。因此,为了防止或至少检测变压器完整性违规,实施了各种诊断技术。大多数诊断技术都是离线运行的,需要将变压器与电源线断开。对于公用事业管理和客户来说,这当然是不可取的。因此,在线或在线诊断比离线监测程序更可取和更快。本研究的目的是实现基于振动信号频谱分析的变压器实时诊断技术。假设利用物联网在云环境中传输和处理变压器的振动特征,然后在便携式设备上执行预测算法。
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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