Engineering Advances

Downloads: 38243 Total View: 404685
Frequency: quarterly ISSN Online: 2768-7961 CODEN: EANDDL

Research on Intelligent Perception Architecture of Rail Transit Equipment Based on Modularization

Xiaoyu Shen

CRRC Academy, Beijing, China.

*Corresponding author: Xiaoyu Shen

Published: April 8,2024


This paper focuses on the contradiction between the rapid evolution of intelligent technology and the diverse intelligence requirements of industrial sites. Due to the rapid evolution of intelligent technology, which is challenging to develop, it will take a considerable amount of time to implement in the industrial setting. Meanwhile, there are various types of fault prediction and health management (PHM) systems for rail transit equipment to meet different requirements. These systems have complex interfaces within independent functional systems, which can result in the Islanding phenomenon. The cost of developing the PHM system is high, and it is difficult to modify or reuse it from one scenario to another. In the field of intelligent perception in rail transit, there is an urgent need for a unified architecture of condition monitoring technology. This architecture should be able to create a platform with standardized structure and open interfaces. In order to address these existing issues, an Intelligent Perception Architecture for Rail Transit Equipment based on modularization is proposed. Within this framework, the Device Intelligent Sensing Process Arrangement and Testing System has been implemented. The system can be used for preprocessing in PHM systems to efficiently establish the fault sensing process and conduct online testing. This helps address the challenge of integrating fault diagnosis technology into data processing management and scene-specific root causes.


[1] Lu T, Chen X, Bai W. Research on environmental monitoring and control technology based on intelligent Internet of Things perception [J]. The Journal of Engineering, 2019, 2019(23).

[2] IEEE Standard Framework for Prognostics and Health Management of Electronic Systems [J]. IEEE Std 1856-2017, 2017: 1-31.

[3] Zio Enrico. Prognostics and Health Management (PHM): Where are we and where do we (need to) go in theory and practice [J]. Reliability Engineering and System Safety, 2022, 218(PA).

[4] Xu Ke, Zhang Chen-bin, Chen Zong-hai. A Review on Fault Diagnosis for Rail Transit [C]. 18th CCSSTA 2017, 2017:297-302.

[5] Zhang Wei, Shi Yongjiang, Tang Renzhong, et al. Research on manufacturing and service integration technology based on indus-trial internet [J]. SCIENTIA SINICA Technologica, 2022, 52(01):104-122.

[6] Jia W, Haimin L, Xiao W. Application and Design of PHM in Aircraft’s Integrated Modular Mission System [C]. 2019, pp. 1-6.

[7] Zhang Y, Yan C, Li Y, et al. Design of Fault Diagnosis System for Steam Turbine Based on UML [C]. 2020, pp. 254-260.

[8] Li C, Song H, Lei Y, et al. Research on PHM Technology for Special Vehicle Weapon Control System [C]. 2019, pp. 1-6.

[9] Terrissa L S, Meraghni S, Bouzidi Z, et al. A new approach of PHM as a service in cloud computing [C]. 2016 4th IEEE International Colloquium on Information Science and Technology (CiSt), 2016: 610-614.

[10] Wang P, Long Z, Dai C. A PHM architecture of maglev train based on the distributed hierarchical structure [C]. 2019 IEEE 28th International Symposium on Industrial Electronics (ISIE), 2019: 1623-1626.

[11] Li Liang, Li Yuan, Huang Jia-Bin. Development of Intelligent Fault Diagnosis and Health Prediction Technology for Electrical System [J]. Development & Innovation of Machinery & Electrical Products, 2022, 35(01):96-98.

[12] Wang G, Zhang H. A Software Based on Multi-Signal Flow Graph Model for PHM-Oriented Design for Testability [C]. 2018 IEEE 9th International Conference on Software Engineering and Service Science (ICSESS), 2018: 370-373.

[13] Sun Yu. Thoughts on Top Level Information Architecture Design Based on Smart Rail Transit [J]. Tunnels and Rail Transit, 2020(04):1-5.

[14] HE Li'na, GUO Zekuo. Research on Intelligent Operation and Maintenance Ecosystem of Urban Rail Transit Based on AI Intelligence and Big Data [J]. Urban Mass Transit, 2022, 25(9):79-84, 89.

How to cite this paper

Research on Intelligent Perception Architecture of Rail Transit Equipment Based on Modularization

How to cite this paper: Xiaoyu Shen. (2024). Research on Intelligent Perception Architecture of Rail Transit Equipment Based on Modularization. Engineering Advances4(1), 38-42.