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Study on Rail Profile Optimization Based on the Nonlinear Relationship between Profile and Wear Rate

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  • Jianxi Wang
  • Zhiqiang Ren
  • Jinjie Chen
  • Long Chen

Abstract

This paper proposes a rail profile optimization method that takes account of wear rate within design cycle so as to minimize rail wear at the curve in heavy haul railway and extend the service life of rail. Taking rail wear rate as the object function, the vertical coordinate of rail profile at range optimization as independent variable, and the geometric characteristics and grinding depth of rail profile as constraint conditions, the support vector machine regression theory was used to fit the nonlinear relationship between rail profile and its wear rate. Then, the profile optimization model was built. Based on the optimization principle of genetic algorithm, the profile optimization model was solved to achieve the optimal rail profile. A multibody dynamics model was used to check the dynamic performance of carriage running on optimal rail profile. The result showed that the average relative error of support vector machine regression model remained less than 10% after a number of training processes. The dynamic performance of carriage running on optimized rail profile met the requirements on safety index and stability. The wear rate of optimized profile was lower than that of standard profile by 5.8%; the allowable carrying gross weight increased by 12.7%.

Suggested Citation

  • Jianxi Wang & Zhiqiang Ren & Jinjie Chen & Long Chen, 2017. "Study on Rail Profile Optimization Based on the Nonlinear Relationship between Profile and Wear Rate," Mathematical Problems in Engineering, Hindawi, vol. 2017, pages 1-12, June.
  • Handle: RePEc:hin:jnlmpe:6956514
    DOI: 10.1155/2017/6956514
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