Determining Smart Phone Sensing and K-Means Clustering for Accurate and Timely Railway Track Joint Fault Diagnosis

Authors

  • Ali Akbar Shah School of Mechanical and Manufacturing Engineering, Dublin City University, Ireland
  • Abi Waqas Memon Department of Telecommunication Engineering, MUET, Jamhoro, Pakistan
  • M. A. Uqaili School of Mechanical and Manufacturing Engineering, Dublin City University, Ireland
  • Bhawani Shankar Chowdhry Department of Telecommunication Engineering, MUET, Jamhoro, Pakistan
  • Tanweer Hussain Department of Mechanical Engineering, MUET, Jamshoro, Pakistan
  • Tauha Hussain Ali Department of Civil Engineering, MUET, Jamshoro, Pakistan

DOI:

https://doi.org/10.13052/jmm1550-4646.2011

Keywords:

Railway track joint, derailment railway shoe stick, Mobile sensing, Accelerometer, K-means clustering, healthy track, track with higher joint gap, super-elevated railway track joint fault

Abstract

The railway track joint is an important component that connects two sections of the rail and ensures a smooth and safe operation of trains. However, the joint is also a critical point of failure that can lead to train derailments and accidents. Therefore, accurate and timely detection of joint faults is crucial for ensuring the safety and reliability of railway transportation. In this paper, we propose a novel approach for railway track joint fault diagnosis using smart phone sensing and k-means clustering. Our approach utilizes the accelerometer sensor of a smart phone to measure the vibrations and movements of a specifically developed railway shoe stick that is employed on an actual railway track for the condition monitoring of the railway tracks. More than 60000 data values are collected and are then processed and analysed using k-means clustering, a popular unsupervised machine learning technique that groups similar data points together. The K means clustering in this study forms 3 clusters as a result. The 3 clusters after being validated on the track by virtue of visual inspection are determined to be acceleration values of the healthy track, track with higher joint gap than the standardized value and super-elevated railway track joint fault(s), respectively. In addition to its high accuracy and efficiency, our approach has several advantages over traditional methods, such as low cost, easy deployment, and high scalability. Moreover, the smart phone sensing technology can be easily integrated with existing train monitoring systems, making it a useful tool for real-time joint fault diagnosis and maintenance. Overall, this study demonstrates the potential of smart phone sensing and k-means clustering for railway track joint fault diagnosis and highlights the need for further research in this field.

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Author Biographies

Ali Akbar Shah, School of Mechanical and Manufacturing Engineering, Dublin City University, Ireland

Ali Akbar Shah graduated from Mehran University of Engineering and Technology, Jamshoro, Pakistan (MUET) with a bachelor’s degree in electronics engineering in 2015, a master’s degree in mechatronics engineering in 2018, and is currently enrolled in MUET’s philosophy of doctorate degree programme in electronics engineering. Machine learning, deep learning, and mechatronics are some of his research specialties.

Abi Waqas Memon, Department of Telecommunication Engineering, MUET, Jamhoro, Pakistan

Abi Waqas Memon works as an assistant professor at MUET, Jamshoro. He has an engineering degree in telecommunications. He graduated from MUET, Jamshoro with an M.E. in Telecommunication Engineering and Management later that year. Afterwards, he earned a Ph.D. in Optics at the Politecnico di Milano in Italy.

M. A. Uqaili, School of Mechanical and Manufacturing Engineering, Dublin City University, Ireland

M. A. Uqaili is the Former Vice Chancellor of Mehran University of Engineering and Technology, Jamshoro, Pakistan and a Meritorious Professor in the Department of Electrical Engineering. Prof. Uqaili graduated with a Bachelor of Engineering in Electrical and Electronics Engineering from NED University of Engineering and Technology in 1986. He has earned masters and doctoral degrees in electrical engineering and master’s in economics.

Bhawani Shankar Chowdhry, Department of Telecommunication Engineering, MUET, Jamhoro, Pakistan

Bhawani Shankar Chowdhry is a Distinguished National Professor and the former Dean Faculty of Electrical Electronics and Computer Engineering at Mehran University of Engineering & Technology, Jamshoro, Pakistan. His list of research publications crosses to over 60 in national and international journals, IEEE and ACM proceedings in the area of Intelligent Instrumentation, WSN, Embedded systems, simulation & Modelling, Internet Technologies, Smart Civil Structures.

Tanweer Hussain, Department of Mechanical Engineering, MUET, Jamshoro, Pakistan

Tanweer Hussain is currently serving as Professor, Department of Mechanical Engineering, Mehran University of Engineering and Technology, Jamshoro. Dr. Hussain received his B.Eng. in Mechanical Engineering, Postgraduate Diploma in Manufacturing Engineering from Mehran UET, and PhD in Mechanical Engineering from The University of Nottingham, UK. He is specialist in design, modelling and analysis of mechanical assemblies, stochastic and uncertainty analysis of mechanical system.

Tauha Hussain Ali, Department of Civil Engineering, MUET, Jamshoro, Pakistan

Tauha Hussain Ali is currently serving as a Vice Chancellor of Mehran University of Engineering and Technology (MUET). He did his bachelor’s in civil engineering discipline from Mehran University of Engineering & Technology, and master’s in project management from National University of Singapore. Thereafter, he did PhD in Construction Health & Safety Management from Griffith University, Australia.

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Published

2024-02-05

How to Cite

Shah, A. A. ., Memon, A. W. ., Uqaili, M. A. ., Chowdhry, B. S. ., Hussain, T. ., & Ali, T. H. . (2024). Determining Smart Phone Sensing and K-Means Clustering for Accurate and Timely Railway Track Joint Fault Diagnosis. Journal of Mobile Multimedia, 20(01), 1–22. https://doi.org/10.13052/jmm1550-4646.2011

Issue

Section

6G: The Road for Future Wireless Networks (SOUL)

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