Design of urban road fault detection system based on artificial neural network and deep learning

被引:0
作者
Lin, Ying [1 ]
机构
[1] Univ North Arizona, Flagstaff, AZ 86011 USA
关键词
artificial neural network; BiGRU; urban road fault detection; deep learning; self-attention mechanism; neural decision-making; AUTONOMOUS VEHICLES; DIAGNOSIS;
D O I
10.3389/fnins.2024.1369832
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Introduction In urban traffic management, the timely detection of road faults plays a crucial role in improving traffic efficiency and safety. However, conventional methods often fail to fully leverage the information from road topology and traffic data.Methods To address this issue, we propose an innovative detection system that combines Artificial Neural Networks (ANNs), specifically Graph Convolutional Networks (GCN), Bidirectional Gated Recurrent Units (BiGRU), and self-attention mechanisms. Our approach begins by representing the road topology as a graph and utilizing GCN to model it. This allows us to learn the relationships between roads and capture their structural dependencies. By doing so, we can effectively incorporate the spatial information provided by the road network. Next, we employ BiGRU to model the historical traffic data, enabling us to capture the temporal dynamics and patterns in the traffic flow. The BiGRU architecture allows for bidirectional processing, which aids in understanding the traffic conditions based on both past and future information. This temporal modeling enhances our system's ability to handle time-varying traffic patterns. To further enhance the feature representations, we leverage self-attention mechanisms. By combining the hidden states of the BiGRU with self-attention, we can assign importance weights to different temporal features, focusing on the most relevant information. This attention mechanism helps to extract salient features from the traffic data. Subsequently, we merge the features learned by GCN from the road topology and BiGRU from the traffic data. This fusion of spatial and temporal information provides a comprehensive representation of the road status.Results and discussions By employing a Multilayer Perceptron (MLP) as a classifier, we can effectively determine whether a road is experiencing a fault. The MLP model is trained using labeled road fault data through supervised learning, optimizing its performance for fault detection. Experimental evaluations of our system demonstrate excellent performance in road fault detection. Compared to traditional methods, our system achieves more accurate fault detection, thereby improving the efficiency of urban traffic management. This is of significant importance for city administrators, as they can promptly identify road faults and take appropriate measures for repair and traffic diversion.
引用
收藏
页数:15
相关论文
共 50 条
  • [21] RBNet: A Deep Neural Network for Unified Road and Road Boundary Detection
    Chen, Zhe
    Chen, Zijing
    NEURAL INFORMATION PROCESSING, ICONIP 2017, PT I, 2017, 10634 : 677 - 687
  • [22] A Convolutional Neural Network based Deep Learning Technique for Identifying Road Attributes
    Jan, Zohaib
    Verma, Brijesh
    Affum, Joseph
    Atabak, Sam
    Moir, Lachlan
    2018 INTERNATIONAL CONFERENCE ON IMAGE AND VISION COMPUTING NEW ZEALAND (IVCNZ), 2018,
  • [23] Deep learning-based underground object detection for urban road pavement
    Kim, Namgyu
    Kim, Kideok
    An, Yun-Kyu
    Lee, Hyun-Jong
    Lee, Jong-Jae
    INTERNATIONAL JOURNAL OF PAVEMENT ENGINEERING, 2020, 21 (13) : 1638 - 1650
  • [24] Design of an environmental monitoring system based on artificial neural network
    Wang, WJ
    Jia, LF
    INTERNATIONAL CONFERENCE ON SENSORS AND CONTROL TECHNIQUES (ICSC 2000), 2000, 4077 : 392 - 395
  • [25] A Design of a Tax Prediction System based on Artificial Neural Network
    Jang, Sung-Bong
    2019 INTERNATIONAL CONFERENCE ON PLATFORM TECHNOLOGY AND SERVICE (PLATCON), 2019, : 123 - 126
  • [26] Hacker Intrusion Detection System based on Artificial Neural Network
    Huang, Jing
    Chen, Hai Bin
    Zhang, Jiang
    Zhang, Han Bo
    INFORMATION TECHNOLOGY APPLICATIONS IN INDUSTRY, PTS 1-4, 2013, 263-266 : 2924 - +
  • [27] Deep Learning based Antenna Array Fault Detection
    Chen, Kaijing
    Wang, Wendi
    Chen, Xiaohui
    Yin, Huarui
    2019 IEEE 89TH VEHICULAR TECHNOLOGY CONFERENCE (VTC2019-SPRING), 2019,
  • [28] Deep Learning for fault detection in wind turbines
    Helbing, Georg
    Ritter, Matthias
    RENEWABLE & SUSTAINABLE ENERGY REVIEWS, 2018, 98 : 189 - 198
  • [29] Design of the MOI method based on the artificial neural network for crack detection
    Tian, Lulu
    Cheng, Yuhua
    Yin, Chun
    Ding, Derui
    Song, Yan
    Bai, Libing
    NEUROCOMPUTING, 2017, 226 : 80 - 89
  • [30] Convolutional neural network-based deep transfer learning for fault detection of gas turbine combustion chambers
    Bai, Mingliang
    Yang, Xusheng
    Liu, Jinfu
    Liu, Jiao
    Yu, Daren
    APPLIED ENERGY, 2021, 302