Urban Rail Transit (Sep 2023)

A Hybrid Similarity-Based Method for Wind Monitoring System Deployment Optimization Along Urban Railways

  • Wenqiang Zhao,
  • Zhipeng Zhang,
  • Bowen Hou,
  • Yujie Huang,
  • Ye Xie

DOI
https://doi.org/10.1007/s40864-023-00199-w
Journal volume & issue
Vol. 9, no. 4
pp. 310 – 322

Abstract

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Abstract Urban railways in coastal areas are exposed to the risk of extreme weather conditions. A cost-effective and robust wind monitoring system, as a vital part of the railway infrastructure, is essential for ensuring safety and efficiency. However, insufficient sensors along urban rail lines may result in failure to detect local strong winds, thus impacting urban rail safety and operational efficiency. This paper proposes a hybrid method based on historical wind speed data analysis to optimize wind monitoring system deployment. The proposed methodology integrates warning similarity and trend similarity with a linear combination and develops a constrained quadratic programming model to determine the combined weights. The methodology is demonstrated and verified based on a real-world case of an urban rail line. The results show that the proposed method outperforms the single similarity-based method and spatial interpolation approach in terms of both evaluation accuracy and robustness. This study provides a practical data-driven tool for urban rail operators to optimize their wind sensor networks with limited data and resources. It can contribute significantly to enhancing railway system operational efficiency and reducing the hazards on rail infrastructures and facilities under strong wind conditions. Additionally, the novel methodology and evaluation framework can be efficiently applied to the monitoring of other extreme weather conditions, further enhancing urban rail safety.

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