Artificial neural network-based method for overhead lines magnetic flux density estimation

Ajdin Alihodžić, A. Mujezinović, E. Turajlić
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Abstract

Abstract This paper presents an artificial neural network (ANN) based method for overhead lines magnetic flux density estimation. The considered method enables magnetic flux density estimation for arbitrary configurations and load conditions for single-circuit, multi-circuit, and also overhead lines that share a common corridor. The presented method is based on the ANN model that has been developed using the training dataset that is produced by a specifically designed algorithm. This paper aims to demonstrate a systematic and comprehensive ANN-based method for simple and effective overhead lines magnetic flux density estimation. The presented method is extensively validated by utilizing experimental field measurements as well as the most commonly used calculation method (Biot - Savart law based method). In order to facilitate extensive validation of the considered method, numerous magnetic flux density measurements are conducted in the vicinity of different overhead line configurations. The validation results demonstrate that the used method provides satisfactory results. Thus, it could be reliably used for new overhead lines’ design optimization, as well as for legally prescribed magnetic flux density level evaluation for existing overhead lines.
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基于人工神经网络的架空线路磁通密度估算方法
摘要 本文介绍了一种基于人工神经网络(ANN)的架空线路磁通密度估算方法。该方法可对单回路、多回路以及共用走廊的架空线路的任意配置和负载条件进行磁通密度估算。所介绍的方法基于 ANN 模型,该模型是利用专门设计的算法生成的训练数据集开发的。本文旨在展示一种系统而全面的基于 ANN 的方法,用于简单而有效地估算架空线路磁通密度。本文提出的方法通过利用实验现场测量以及最常用的计算方法(基于 Biot - Savart 法则的方法)进行了广泛验证。为了便于对所考虑的方法进行广泛验证,在不同架空线路配置附近进行了大量磁通密度测量。验证结果表明,所使用的方法能提供令人满意的结果。因此,它可以可靠地用于新架空线路的设计优化,以及现有架空线路的法定磁通密度水平评估。
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