Wu, F., Bilal, M., Xiang, H., Wang, H., Yu, J., & Xu, X. (2024). Real-time and Downtime-tolerant Fault Diagnosis for Railway Turnout Machines (RTMs) Empowered with Cloud-Edge Pipeline Parallelism. arXiv:2411.02086v1 [cs.NI].
This paper aims to address the limitations of existing RTM fault diagnosis systems, which often struggle to meet real-time requirements and lack robustness in distributed environments. The authors propose a novel system that combines a parallel-optimized fault diagnosis model with a cloud-edge collaborative framework to achieve real-time, downtime-tolerant fault detection.
The authors developed a hierarchical fault diagnosis model that leverages prior knowledge of RTM operation and ensemble learning techniques. This model is designed for distributed deployment and incorporates three key components: a segmentation module for dividing current sequences into operational stages, three parallel sub-classifiers for fault classification, and a late-fusion module for combining sub-classifier outputs. To facilitate efficient execution, the authors propose CEC-PA, a cloud-edge collaborative framework that partitions the model into pipelines and utilizes a DRL-based computation offloading policy to dynamically schedule tasks across cloud and edge nodes.
The proposed system effectively addresses the challenges of real-time and downtime-tolerant fault diagnosis for RTMs. The combination of a parallel-optimized fault diagnosis model with a cloud-edge collaborative framework significantly improves system responsiveness and robustness, contributing to enhanced railway safety.
This research significantly contributes to the field of railway safety by providing a practical and effective solution for real-time RTM fault diagnosis. The proposed system's ability to handle node disruptions and maintain real-time performance makes it particularly valuable for safety-critical applications.
The paper primarily focuses on electro-mechanical RTMs. Future research could explore the applicability of the proposed system to other types of RTMs. Additionally, investigating the impact of varying network conditions on system performance would be beneficial.
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by Fan Wu, Muha... lúc arxiv.org 11-05-2024
https://arxiv.org/pdf/2411.02086.pdfYêu cầu sâu hơn