基于近似磁场模型的架空线路暂降实时估计

Nemanja Kitić, P. Matić, Đorđe M. Lekić, Predrag Mršić, Bojan Erceg, Č. Zeljković, V. Starčević
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引用次数: 0

摘要

在现代电力系统中,电力线的实时监测和监控通常使用简单的非接触式磁场测量装置进行。测量磁场通常用于故障通道指示器中的故障检测,但它们也可用于确定电气和非电气电力线变量。本文提出了一种基于磁场测量的自适应导体凹陷估计方法。该方法基于经过适当校准的近似电力线磁场模型,该模型采用无限长倾斜直线导体来模拟悬链状导体。通过这种近似,该架空电力线模型可用于简单的电力线实时监测设备。通过对三相架空线模型的计算机模拟和测量,验证了该方法对电力线导线凹陷估计的适用性和准确性。
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Real-Time Sag Estimation of Overhead Power Lines Based on Approximate Magnetic Field Model
In contemporary electrical power systems real-time power line monitoring and supervision are commonly performed using simple non-invasive devices with contactless magnetic field measurement. Measured magnetic fields are commonly employed for fault detection in fault passage indicators, but they can also be used to determine electrical and non-electrical power line variables. In this paper a novel adaptive method for conductor sag estimation is proposed, using magnetic field measurement. The method is based on the properly calibrated approximate power line magnetic field model, in which catenary-shaped conductors are modeled by tilted straight-line conductors of infinite length. By this approximation, the overhead power line model can be used in simple devices for power line monitoring in real-time. Applicability and accuracy of the proposed method for power line conductor sag estimation is verified by computer simulations and measurements on a three-phase overhead line model, scaled to laboratory conditions.
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