[1]王子伟,疏佳铭,陆 斌,等.基于 GASF 及双输入 AlexNet-SVM 的变压器励磁涌流检测[J].机械与电子,2025,(08):30-39.
 WANG Ziwei,SHU Jiaming,LU Bin,et al.Transformer Inrush Current Detection Based on GASF and Dual-input AlexNet-SVM[J].Machinery & Electronics,2025,(08):30-39.
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基于 GASF 及双输入 AlexNet-SVM 的变压器励磁涌流检测()
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《机械与电子》[ISSN:1001-2257/CN:52-1052/TH]

卷:
期数:
2025年08期
页码:
30-39
栏目:
自动控制与检测
出版日期:
2025-08-25

文章信息/Info

Title:
Transformer Inrush Current Detection Based on GASF and Dual-input AlexNet-SVM
文章编号:
1001-2257 ( 2025 ) 08-0030-10
作者:
王子伟 1 疏佳铭 2 陆 斌 1 张 敏 1 倪继文 3
1. 华能澜沧江水电股份有限公司,云南 昆明 650214 ;
2. 南京南瑞继保电气有限公司,江苏 南京 211102 ;
3. 西安热工研究院有限公司,陕西 西安 710043
Author(s):
WANG Ziwei1 SHU Jiaming2 LU Bin1 ZHANG Min1 NI Jiwen3
( 1.Huaneng Lancang River Hydropower Co. , Ltd. , Kunming 650214 , China ;
2.Nanjing NR Electric Co. , Ltd. , Nanjing 211102 , China ;
3.Xi ’ an Thermal Power Research Institute Co. , Ltd. , Xi ’ an 710043 , China )
关键词:
电力变压器励磁涌流内部故障 GASF 变换双输入 AlexNet-SVM 模型支持向量机
Keywords:
power transformer inrush current internal fault GASF transformation dual-input AlexNet-SVM model support vector machine
分类号:
TP18 ;TM41
文献标志码:
A
摘要:
针对励磁涌流易于引发电力变压器差动保护误动作的问题,提出一种基于格拉姆角和场( GASF )及双输入 AlexNet-SVM 的变压器励磁涌流检测方法,旨在提升励磁涌流检测的准确性并缩短检测时间。首先,采用 GASF 变换及图像编码将三相差动电流转换为彩色图,提升励磁涌流与内部故障的工况特征区分度。其次,针对励磁涌流检测的快速性需求对 AlexNet 进行轻量化设计,并采用 SVM 作为分类器构建了 AlexNet-SVM 模型。最后,用不同的采样方式构建了 4 个励磁涌流检测模型,即单输入 AlexNet-SVM 模型、扩维单输入 AlexNet SVM 模型、并行双输入 AlexNet-SVM 模型和级联双输入 AlexNet-SVM 模型;并采用励磁涌流及内部故障仿真数据集对多模型进行了测试和评估。结果表明,级联双输入AlexNet-SVM 模型可在取得 100% 准确率的同时将模型平均检测时间降到 10.51 ms ,实现了励磁涌流检测准确性和实时性的同步提升。
Abstract:
To address the issue of differential protection maloperation caused by inrush current in power transformers , a method for identifying transformer inrush current based on GASF and dual-input AlexNet-SVM was proposed , aiming to enhance the accuracy of inrush current detection and reduce detection time.Firstly , the three-phase differential current was transformed into color images using Gramian angular summation field ( GASF ) transformation and image encoding , which enhances the distinction of working condition characteristics between inrush current and internal faults.Secondly , A lightweight AlexNet was designed to meet the real-time requirement for inrush current detection , and SVM was used as the classifier of AlexNet to construct the AlexNet-SVM model.Finally , four inrush current detection models were built according to different sampling methods as single input AlexNet-SVM model , dimension extended single input AlexNet-SVM model , parallel dual-input AlexNet-SVM model , and cascaded dual input AlexNet-SVM model ; and they were validated and assessed using simulation datasets containing inrush current and internal faults.The results indicate that the cascaded dual input model can achieve 100% detection accuracy while reducing the average detection time of the model to 10.51 ms , thereby the accuracy and real-time performance of inrush current detection are both improved.

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备注/Memo

备注/Memo:
收稿日期: 2025-02-10
基金项目:中国华能集团有限公司科技项目( HNKJ22-H88 )
作者简介:王子伟 ( 1967- ),男,云南永胜人,正高级工程师,研究方向为电力生产管理、电力二次系统控制;疏佳铭 ( 1990- ),男,安徽铜陵人,硕士,工程师,研究方向为电力主设备继电保护研究与开发。
更新日期/Last Update: 2025-09-05