首页|期刊导航|工矿自动化|基于多粒度声谱图的托辊异常状态检测方法

基于多粒度声谱图的托辊异常状态检测方法OA

Multi-granularity spectrogram-based method for idler abnormal condition detection

中文摘要英文摘要

在井下复杂工况下,胶带摩擦与煤流冲击产生的机械噪声、风流扰动噪声及多设备耦合噪声相互叠加,导致托辊故障特征声纹极易被环境噪声掩盖;同时,托辊异常样本获取困难、标注成本高,使得基于传统监督学习的托辊异常状态检测方法难以有效推广.针对上述问题,提出一种基于多粒度声谱图与注意力自编码器(MG-AAE)的无监督托辊异常状态检测方法,该方法仅利用正常工况托辊声音训练模型,无需故障标签.构建由Mel声谱图与Mel频率倒谱系数(MFCCs)组成的多粒度复合声谱特征,兼顾能量轮廓与细粒度声纹;在编码器中引入高斯差分金字塔(GDP)与多头注意力机制(MHA),通过多尺度建模与自适应加权融合,抑制稳态背景噪声并突出关键故障频带;以多维重构均方误差作为异常判据,实现托辊异常状态的自动识别.实验结果表明,在仅使用正常样本训练的前提下,MG-AAE模型在跨设备与真实工况评估中均展现出优异性能.基于MIMII数据集4类典型设备的评估显示,在0dB强噪声工况下,MG-AAE模型的平均特征曲线下的面积(AUC)与局部AUC(pAUC)分别达到84.2%和70.4%,较自编码器模型提升7.3%和5.6%.在真实托辊数据上,AUC达95.47%,异常样本重构误差约为正常样本的1.40倍.说明该方法具有良好的跨设备泛化与低误报率特性,可为煤矿带式输送机托辊状态异常检测提供有效技术支撑.

Under complex underground operating conditions,mechanical noise generated by belt friction and coal flow impacts,airflow-induced disturbance noise,and coupled noise from multiple devices are superimposed,causing fault-related acoustic signatures of idlers to be easily masked by environmental noise.Meanwhile,the acquisition of abnormal idler samples is difficult and annotation costs are high,making traditional supervised learning-based idler abnormal condition detection methods hard to generalize effectively.To address these issues,an unsupervised idler abnormal condition detection method based on Multi-Granularity Attention Autoencoder(MG-AAE)was proposed,which used only normal-condition idler sounds for model training and required no fault labels.A multi-granularity composite acoustic feature composed of Mel spectrograms and Mel-Frequency Cepstral Coefficients(MFCCs)was constructed to jointly capture energy contours and fine-grained acoustic signatures.A Gaussian Difference Pyramid(GDP)and a Multi-Head Attention(MHA)mechanism were introduced into the encoder to perform multi-scale modeling and adaptive weighted fusion,thereby suppressing steady background noise and highlighting key fault-related frequency bands.A multi-dimensional reconstruction mean-square error was used as the anomaly criterion to achieve automatic identification of idler abnormal conditions.Experimental results showed that,when trained using only normal samples,the MG-AAE model demonstrated excellent performance in cross-device and real-world operating conditions.Evaluation on four typical device categories in the MIMII dataset showed that,under a strong noise condition of 0 dB,the average area under curve(AUC)and local AUC(pAUC).f the MG-AAE model reached 84.2%and 70.4%,respectively,representing improvements of 7.3%and 5.6%over the Autoencoder model.On real idler data,the AUC reached 95.47%,and the reconstruction error of abnormal samples was approximately 1.40 times that of normal samples.These results indicate that the proposed method has good cross-device generalization and a low false alarm rate,and provides effective technical support for abnormal condition detection of idlers in coal mine belt conveyor systems.

党颖滢;曹现刚;张鑫媛;李翔宇;毛怡文;樊红卫;董明;万翔;段雍

西安科技大学机械工程学院,陕西西安 710054||陕西省矿山机电装备智能检测与控制重点实验室,陕西 西安 710054西安科技大学机械工程学院,陕西西安 710054||陕西省矿山机电装备智能检测与控制重点实验室,陕西 西安 710054西安科技大学机械工程学院,陕西西安 710054||陕西省矿山机电装备智能检测与控制重点实验室,陕西 西安 710054西安科技大学机械工程学院,陕西西安 710054||陕西省矿山机电装备智能检测与控制重点实验室,陕西 西安 710054西安科技大学机械工程学院,陕西西安 710054||陕西省矿山机电装备智能检测与控制重点实验室,陕西 西安 710054西安科技大学机械工程学院,陕西西安 710054||陕西省矿山机电装备智能检测与控制重点实验室,陕西 西安 710054西安科技大学机械工程学院,陕西西安 710054||陕西省矿山机电装备智能检测与控制重点实验室,陕西 西安 710054西安科技大学机械工程学院,陕西西安 710054||陕西省矿山机电装备智能检测与控制重点实验室,陕西 西安 710054西安科技大学机械工程学院,陕西西安 710054||陕西省矿山机电装备智能检测与控制重点实验室,陕西 西安 710054

矿业与冶金

托辊无监督异常检测多粒度声谱图Mel声谱图Mel频率倒谱系数自编码器复合声学特征

idlerunsupervised anomaly detectionmulti-granularity spectrogramMel spectrogramMel-Frequency Cepstral Coefficientsautoencodercomposite acoustic features

《工矿自动化》 2026 (2)

59-68,10

国家自然科学基金面上项目(52275131)国家自然科学基金项目(52274158)陕西省科技计划项目(2024QY2-GJHX-09)国家青年科学基金项目(52504174).

10.13272/j.issn.1671-251x.2025120056

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