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Joint Prediction of Remaining Useful Life and Failure Type of Train Wheelsets: Multitask Learning Approach

机译:轮对剩余使用寿命和失效类型的联合预测:多任务学习方法

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摘要

Train wheel failures account for disruptions of train operations and even a large portion of train derailments. Remaining useful life (RUL) of a wheelset measures how soon the next failure will arrive, and the failure type reveals how severe the failure will be. RUL prediction is a regression task, whereas failure type is a classification task. In this paper, the authors propose a multitask learning approach to jointly accomplish these two tasks by using a common input space to achieve more desirable results. A convex optimization formulation is developed to integrate least-squares loss and negative maximum likelihood of logistic regression as well as model the joint sparsity as the L2/L1 norm of the model parameters to couple feature selection across tasks. The experiment results show that the multitask learning method outperforms both the single-task learning method and Random Forest.
机译:火车车轮故障导致火车运行中断,甚至造成火车脱轨的很大一部分。轮对的剩余使用寿命(RUL)衡量下一次故障将在多久之前到达,而故障类型则表明该故障将有多严重。 RUL预测是一个回归任务,而故障类型是一个分类任务。在本文中,作者提出了一种多任务学习方法,可以通过使用公共输入空间来共同完成这两个任务,从而获得更理想的结果。开发了凸优化公式,以整合最小二乘损失和逻辑回归的最大负可能性,以及将联合稀疏性建模为模型参数的L2 / L1范数,以跨任务耦合特征选择。实验结果表明,多任务学习方法优于单任务学习方法和随机森林。

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  • 来源
    《Journal of Transportation Engineering》 |2018年第6期|04018016.1-04018016.11|共11页
  • 作者单位

    M.S. Student, Dept. of Industrial and System Engineering, Univ. at Buffalo, State Univ. of New York, 334 Bell Hall, Buffalo, NY 14260;

    Assistant Professor, Dept. of Civil, Structural and Environmental Engineering and Dept. of Industrial and System Engineering, Univ. at Buffalo, State Univ. of New York, 313 Bell Hall, Buffalo, NY 14260;

    Ph.D. Candidate, Dept. of Civil, Structural and Environmental Engineering, Univ. at Buffalo, State Univ. of New York, 204 Ketter Hall, Buffalo, NY 14260;

    Research Staff Member, Statistics and Data Science, IBM Thomas J. Watson Research Center, 1101 Route 134 Kichawan Rd., Yorktown Heights, NY 10598;

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