Displacement Monitoring Method of Transmission Tower Foot Based on FEM and Deep Learning

Zhenqiang Yang, Jian Wang, Chengjian Bai, Yin Feng, W. Geng, Yanfeng Liu, Feng He
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Abstract

Transmission tower footing displacement can have a large impact on the stable operation of transmission lines. Traditional structural health monitoring methods have limited accuracy. Application of deep learning methods brings new monitoring solutions for online monitoring of power transmission towers. The amount of tower fault data is limited, which cannot provide a good database for deep learning. In this study, a tower displacement monitoring scheme combining finite element method (FEM) and deep learning (DL) was developed. The response data of wind-induced transmission tower vibration under different fault conditions were simulated by FEM. The tower fault database is expanded by means of data enhancement. The dynamic response tests under different displacement states were carried out, and the displacement monitoring of the tower foot was carried out by deep learning method. The findings of this research program show that it is possible to accurately identify the displacement status of the footing of transmission towers and reduce tower accidents.
基于有限元和深度学习的输电塔脚位移监测方法
输电塔基础位移对输电线路的稳定运行有较大的影响。传统的结构健康监测方法精度有限。深度学习方法的应用为输电塔的在线监测带来了新的监测解决方案。塔故障数据量有限,无法为深度学习提供良好的数据库。本文提出了一种结合有限元法(FEM)和深度学习(DL)的塔架位移监测方案。采用有限元法对不同故障条件下的风致输电塔振动响应数据进行了模拟。采用数据增强的方法扩充了塔故障数据库。进行了不同位移状态下的动力响应试验,并采用深度学习方法对塔脚进行位移监测。研究结果表明,该方案可以准确识别输电塔基础的位移状态,减少输电塔事故。
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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