← 返回
基于稀疏波形编码与单层多尺度卷积神经网络的故障馈线检测
Faulty-feeder Detection Based on Sparse Waveform Encoding and Simple Convolutional Neural Network with Multi-scale Filters and One Layer of Convolution
| 作者 | |
| 期刊 | 中国电机工程学会热电联产 |
| 出版日期 | 2025年9月 |
| 卷/期 | 第 2025 卷 第 5 期 |
| 技术分类 | 智能化与AI应用 |
| 技术标签 | 故障诊断 机器学习 深度学习 并网逆变器 |
| 相关度评分 | ★★★★ 4.0 / 5.0 |
| 关键词 |
语言:
中文摘要
本文针对中性点非有效接地配电网故障馈线检测问题,提出一种稀疏波形编码方法与单层多尺度卷积神经网络相结合的轻量化AI检测方案,兼顾高精度与实时性,在准确率和计算效率上优于现有方法。
English Abstract
Faulty-feeder detection in neutral point non-effectively grounded distribution networks consistently attracts research attention since it directly affects quality and safety of energy supply.Most modern research on faulty-feeder detection tends to apply more complex digital signal processing techniques and deeper neural networks in order to better extract and learn as many detailed characteristics as possible.However,these approaches may easily result in overfitting and high com-putational cost,which cannot meet requirements for detection accuracy and efficiency in practical applications.This paper proposes an innovative waveform encoding method and details a simple convolutional neural network(CNN)with one layer of convolution used for identification,which seeks to improve detection accuracy and efficiency simultaneously.First,sparse characteristics of waveforms are utilized to encode into compact vectors,and a waveform-vector matrix is generated.Second,to deduce waveform-vector matrix,a simple CNN with multi-scale filters and one layer of convolution is established.Finally,a methodology for faulty-feeder detection is proposed,and both detection accuracy and efficiency are considerably enhanced.Comparative studies have confirmed clear superiority of the developed method,which outperforms existing approaches in both detection accuracy and efficiency,thus highlighting its significant potential for application.
S
SunView 深度解读
该技术可直接赋能阳光电源iSolarCloud智能运维平台及ST系列PCS、PowerTitan储能系统的故障早期预警模块,提升配网侧故障馈线识别能力;尤其适用于光储融合场景下低压侧馈线异常监测。建议将该轻量CNN模型嵌入PCS边缘控制器,结合电流/电压暂态波形实现本地化实时诊断,降低对云端算力依赖,增强组串式逆变器与储能系统在复杂电网环境下的鲁棒性与自主运维能力。