基于变异自动编码器和深度嵌入聚类的地铁内部噪声自监督表征学习

IF 8.5 1区 工程技术 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computer-Aided Civil and Infrastructure Engineering Pub Date : 2024-09-09 DOI:10.1111/mice.13336
Yang Wang, Hong Xiao, Zhihai Zhang, Xiaoxuan Guo, Qiang Liu
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引用次数: 0

摘要

列车内的噪音是一个悖论;它虽然对乘客的健康有害,但对运营商却很有用,因为它能让人了解车辆和轨道的工作状态。最近,基于车内噪声信号识别故障的方法层出不穷,其中表示学习是深度神经网络模型理解数据关键信息和结构的基础。为了给轨道故障检测提供基础数据,本文介绍了一种内部噪声表示学习框架,命名为内部噪声表示框架。该方法包括(i) 使用小波变换来表示原始噪声信号,并设计软硬去噪模块对数据集进行去噪;(ii) 深度残差卷积去噪变异自动编码器(VAE)模块使用 VAE 和深度残差卷积神经网络进行表示学习,通过操纵嵌入空间为稀疏标记的样本提供更丰富的数据增强;(iii) 深度嵌入聚类子模块通过对重构和聚类特征的联合优化,平衡了这两方面的表征,将地铁噪声分为三个不同的类别,并有效区分了明显不同的特征。实验结果表明,与传统的基于机制的室内噪声表征模型相比,该方法提供了一个数据驱动的通用分析框架,为下游任务提供了一个基础模型。
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Self‐supervised representation learning of metro interior noise based on variational autoencoder and deep embedding clustering
The noise within train is a paradox; while harmful to passenger health, it is useful to operators as it provides insights into the working status of vehicles and tracks. Recently, methods for identifying defects based on interior noise signals are emerging, among which representation learning is the foundation for deep neural network models to understand the key information and structure of the data. To provide foundational data for track fault detection, a representation learning framework for interior noise, named the interior noise representation framework, is introduced. The method includes: (i) using wavelet transform to represent the original noise signal and designing a soft and hard denoising module for dataset denoising; (ii) deep residual convolutional denoising variational autoencoder (VAE) module performs representation learning with a VAE and deep residual convolutional neural networks, enabling richer data augmentation for sparsely labeled samples by manipulating the embedding space; (iii) deep embedding clustering submodule balances the representation of reconstruction and clustering features through the joint optimization of these aspects, categorizing metro noise into three distinct classes and effectively discriminating significantly different features. The experimental results show that, compared to traditional mechanism‐based models for characterizing interior noise, this approach offers a data‐driven general analysis framework, providing a foundational model for downstream tasks.
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来源期刊
CiteScore
17.60
自引率
19.80%
发文量
146
审稿时长
1 months
期刊介绍: Computer-Aided Civil and Infrastructure Engineering stands as a scholarly, peer-reviewed archival journal, serving as a vital link between advancements in computer technology and civil and infrastructure engineering. The journal serves as a distinctive platform for the publication of original articles, spotlighting novel computational techniques and inventive applications of computers. Specifically, it concentrates on recent progress in computer and information technologies, fostering the development and application of emerging computing paradigms. Encompassing a broad scope, the journal addresses bridge, construction, environmental, highway, geotechnical, structural, transportation, and water resources engineering. It extends its reach to the management of infrastructure systems, covering domains such as highways, bridges, pavements, airports, and utilities. The journal delves into areas like artificial intelligence, cognitive modeling, concurrent engineering, database management, distributed computing, evolutionary computing, fuzzy logic, genetic algorithms, geometric modeling, internet-based technologies, knowledge discovery and engineering, machine learning, mobile computing, multimedia technologies, networking, neural network computing, optimization and search, parallel processing, robotics, smart structures, software engineering, virtual reality, and visualization techniques.
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