ECARRNet:用于铁路故障检测的基于 LSTM 的高效集合深度神经网络架构

AI Pub Date : 2024-04-08 DOI:10.3390/ai5020024
Salman Ibne Eunus, Shahriar Hossain, A. E. M. Ridwan, Ashik Adnan, Md. Saiful Islam, Dewan Ziaul Karim, Golam Rabiul Alam, Jia Uddin
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摘要

在东南亚国家,因铁路线路故障和脱轨而导致的事故是经常发生的灾难。为防止此类事故的发生,必须对此类故障的检测进行适当的诊断。然而,定期人工检测此类故障既费时又费钱。在本文中,我们提出了一种基于深度学习(DL)的铁轨故障自动检测算法,并将其称为基于集合卷积自动编码器 ResNet 的循环神经网络(ECARRNet)。我们将该算法的输出结果与现有的 DL 技术进行了比较,后者采用了几种预先训练好的 DL 模型,用于调查铁轨并确定其是否存在缺陷,同时考虑了常见的故障,如钢轨和紧固件的缺陷。此外,我们还人工收集了孟加拉国不同铁轨的图像,并制作了数据集。在将我们提出的模型与现有模型进行比较后,我们发现我们提出的架构在所有先前存在的最先进(SOTA)架构中准确率最高,在完整数据集上的准确率为 93.28%。此外,我们还将数据集分成了两部分,分别是紧固件和导轨,它们具有两种不同的故障类型。我们在这两个独立的数据集上运行了模型,在轨道和紧固件上分别获得了 98.59% 和 92.06% 的准确率。我们使用了 Grad-CAM 和 LIME 等模型可解释性技术来验证模型的结果,与之前已有的迁移学习模型相比,我们提出的模型 ECARRNet 能够正确分类并有效检测出故障铁路的区域。
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ECARRNet: An Efficient LSTM-Based Ensembled Deep Neural Network Architecture for Railway Fault Detection
Accidents due to defective railway lines and derailments are common disasters that are observed frequently in Southeast Asian countries. It is imperative to run proper diagnosis over the detection of such faults to prevent such accidents. However, manual detection of such faults periodically can be both time-consuming and costly. In this paper, we have proposed a Deep Learning (DL)-based algorithm for automatic fault detection in railway tracks, which we termed an Ensembled Convolutional Autoencoder ResNet-based Recurrent Neural Network (ECARRNet). We compared its output with existing DL techniques in the form of several pre-trained DL models to investigate railway tracks and determine whether they are defective or not while considering commonly prevalent faults such as—defects in rails and fasteners. Moreover, we manually collected the images from different railway tracks situated in Bangladesh and made our dataset. After comparing our proposed model with the existing models, we found that our proposed architecture has produced the highest accuracy among all the previously existing state-of-the-art (SOTA) architecture, with an accuracy of 93.28% on the full dataset. Additionally, we split our dataset into two parts having two different types of faults, which are fasteners and rails. We ran the models on those two separate datasets, obtaining accuracies of 98.59% and 92.06% on rail and fastener, respectively. Model explainability techniques like Grad-CAM and LIME were used to validate the result of the models, where our proposed model ECARRNet was seen to correctly classify and detect the regions of faulty railways effectively compared to the previously existing transfer learning models.
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