Fault Diagnosis Method for Railway Signal Equipment Based on Data Enhancement and an Improved Attention Mechanism

Machines Pub Date : 2024-05-13 DOI:10.3390/machines12050334
Ni Yang, Youpeng Zhang, Jing Zuo, Bin Zhao
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Abstract

Railway signals’ fault text data contain a substantial amount of expert maintenance experience. Extracting valuable information from these fault text data can enhance the efficiency of fault diagnosis for signal equipment, thereby contributing to the advancement of intelligent railway operations and maintenance technology. Considering that the characteristics of different signal equipment in actual operation can easily lead to a lack of fault data, a fault diagnosis method for railway signal equipment based on data augmentation and an improved attention mechanism (DEIAM) is proposed in this paper. Firstly, the original fault dataset is preprocessed based on data augmentation technology and retained noun and verb operations. Then, the neural network is constructed by integrating a bidirectional long short-term memory (BiLSTM) model with an attention mechanism and a convolutional neural network (CNN) model enhanced with a channel attention mechanism. The DEIAM method can more effectively capture the important text features and sequence features in fault text data, thereby facilitating the diagnosis and classification of such data. Consequently, it enhances onsite fault maintenance experience by providing more precise insights. An empirical study was conducted on a 10-year fault dataset of signal equipment produced by a railway bureau. The experimental results demonstrate that in comparison with the benchmark model, the DEIAM model exhibits enhanced performance in terms of accuracy, precision, recall, and F1.
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基于数据增强和改进关注机制的铁路信号设备故障诊断方法
铁路信号的故障文本数据包含了大量的专家维护经验。从这些故障文本数据中提取有价值的信息,可以提高信号设备故障诊断的效率,从而促进铁路智能运维技术的进步。考虑到不同信号设备在实际运行中的特点容易导致故障数据的缺失,本文提出了一种基于数据增强和改进关注机制(DEIAM)的铁路信号设备故障诊断方法。首先,基于数据增强技术对原始故障数据集进行预处理,保留名词和动词运算。然后,通过整合具有注意机制的双向长短期记忆(BiLSTM)模型和具有通道注意机制的增强型卷积神经网络(CNN)模型,构建神经网络。DEIAM 方法能更有效地捕捉故障文本数据中的重要文本特征和序列特征,从而促进对此类数据的诊断和分类。因此,它能提供更精确的洞察力,从而提升现场故障维护体验。我们对某铁路局生产的信号设备 10 年故障数据集进行了实证研究。实验结果表明,与基准模型相比,DEIAM 模型在准确度、精确度、召回率和 F1 等方面都表现出更高的性能。
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