基于改进降噪自编码器的换流阀声纹异常检测方法
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(1.国网湖南超高压变电公司 ,湖南 长沙 410004;2.国网湖南省电力有限公司变电智能运检实验室 ,湖南 长沙 410004;3.长沙理工大学能源与动力工程学院 ,湖南 长沙 410114)

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唐明珠(1983—),男,博士,教授,主要从事电力设备状态监测与智能评估等方面的研究;E-mail:tmzhu@163.com

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TM732

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国网湖南超高压变电公司变电智能运检实验室项目(16C2G1-9000000-5000)


Method for anomaly detection of converter valve voiceprints based on improved denoising auto -encoder
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(1. State Grid Hunan Ultra High Voltage Substation Company , Changsha 410004, China; 2. Substation Intelligent Operation and Inspection Laboratory of State Grid Hunan Electric Power Co ., Ltd., Changsha 410004, China; 3. College of Energy & Power Engineering , Changsha University of Science & Technology , Changsha 410114, China)

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    摘要:

    作为高压直流输电换流站的关键设备的换流阀如果长时间运行,可能出现状态异常。针对阀厅内的换流阀非本体背景噪声可能导致声纹异常、抗噪性能不稳定的问题,提出基于声纹信号滤波器组 (filter banks,Fbank )特征和改进降噪自编码器的换流阀异常检测方法。先采集换流阀运行过程中产生的声纹数据,提取声纹数据的Fbank特征,并通过滑动窗口处理得到包含时序信息的样本;再构建基于环境噪声和双通道的降噪自编码器,对正常样本进行训练,通过融合定向距离 (fused directional distance,FDD)重构误差,计算多特征阈值;最后,对测试数据添加不同信噪比的说话噪声、白噪声与工业背景噪声,进行综合性能评估。研究结果表明,与其他异常检测模型相比,所提出方法的性能更好,具有较好的抗噪性。

    Abstract:

    The converter valve,as a key equipment in high-voltage direct current transmission converter stations,may experience an abnormal state when operated for a long time.To address the problem that non-intrinsic background noise in the valve hall may cause voiceprint anomalies and unstable anti-noise performance of the converter valve,an anomaly detection method for the converter valve based on voiceprint signal filter banks (Fbank) features and an improved denoising auto-encoder (IDAE) is proposed.Firstly,the voiceprint data generated during the operation of the converter valve is collected;the Fbank features of the voiceprint data are extracted;the samples containing temporal information through sliding window (SW) processing are obtained.Then,a denoising auto-encoder (DAE) based on environmental noise and dual channels is constructed to train normal samples,and multiple feature thresholds are calculated through fused directional distance (FDD) reconstruction error.Finally,speech,white noise,and industrial background noise with different signal-to-noise ratios are added to the test data for comprehensive performance evaluation.The experimental results show that compared with other anomaly detection models,the proposed method has better performance and stronger noise resistance.

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于艺盛,王智弘,周云雅,等.基于改进降噪自编码器的换流阀声纹异常检测方法[J].电力科学与技术学报,2025,40(6):175-183.
YU Yisheng, WANG Zhihong, ZHOU Yunya, et al. Method for anomaly detection of converter valve voiceprints based on improved denoising auto -encoder[J]. Journal of Electric Power Science and Technology,2025,40(6):175-183.

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  • 收稿日期:2023-07-10
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  • 在线发布日期: 2026-02-03
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