# Sample Adaptive Multiple Kernel Learning for Failure Prediction of   Railway Points

**Authors:** Zhibin Li, Jian Zhang, Qiang Wu, Yongshun Gong, Jinfeng Yi, Christina, Kirsch

arXiv: 1907.01162 · 2019-07-03

## TL;DR

This paper introduces a robust multi-source data integration approach using multiple kernel learning to predict railway points failures, addressing data incompleteness and variability across different railway points.

## Contribution

It proposes a novel multiple kernel learning algorithm tailored for missing data and diverse railway point characteristics, improving failure prediction accuracy.

## Key findings

- Outperforms existing state-of-the-art methods in failure prediction accuracy.
- Effectively handles incomplete and heterogeneous data sources.
- Demonstrates practical applicability on Sydney Trains network data.

## Abstract

Railway points are among the key components of railway infrastructure. As a part of signal equipment, points control the routes of trains at railway junctions, having a significant impact on the reliability, capacity, and punctuality of rail transport. Traditionally, maintenance of points is based on a fixed time interval or raised after the equipment failures. Instead, it would be of great value if we could forecast points' failures and take action beforehand, minimising any negative effect. To date, most of the existing prediction methods are either lab-based or relying on specially installed sensors which makes them infeasible for large-scale implementation. Besides, they often use data from only one source. We, therefore, explore a new way that integrates multi-source data which are ready to hand to fulfil this task. We conducted our case study based on Sydney Trains rail network which is an extensive network of passenger and freight railways. Unfortunately, the real-world data are usually incomplete due to various reasons, e.g., faults in the database, operational errors or transmission faults. Besides, railway points differ in their locations, types and some other properties, which means it is hard to use a unified model to predict their failures. Aiming at this challenging task, we firstly constructed a dataset from multiple sources and selected key features with the help of domain experts. In this paper, we formulate our prediction task as a multiple kernel learning problem with missing kernels. We present a robust multiple kernel learning algorithm for predicting points failures. Our model takes into account the missing pattern of data as well as the inherent variance on different sets of railway points. Extensive experiments demonstrate the superiority of our algorithm compared with other state-of-the-art methods.

## Full text

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## Figures

7 figures with captions in the complete paper: https://tomesphere.com/paper/1907.01162/full.md

## References

40 references — full list in the complete paper: https://tomesphere.com/paper/1907.01162/full.md

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Source: https://tomesphere.com/paper/1907.01162