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Study on Intelligent Diagnosis of Rotor Fault Causes with the PSO-XGBoost Algorithm

机译:基于PSO-XGBoost算法的转子故障原因智能诊断研究

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摘要

On basis of fault categories detection, the diagnosis of rotor fault causes is proposed, which has great contributions to the field of intelligent operation and maintenance. To improve the diagnostic accuracy and practical efficiency, a hybrid model based on the particle swarm optimization-extreme gradient boosting algorithm, namely, PSO-XGBoost is designed. XGBoost is used as a classifier to diagnose rotor fault causes, having good performance due to the second-order Taylor expansion and the explicit regularization term. PSO is used to automatically optimize the process of adjusting the XGBoost's parameters, which overcomes the shortcomings when using the empirical method or the trial-and-error method to adjust parameters of the XGBoost model. The hybrid model combines the advantages of the two algorithms and can diagnose nine rotor fault causes accurately. Following diagnostic results, maintenance measures referring to the corresponding knowledge base are provided intelligently. Finally, the proposed PSO-XGBoost model is compared with five state-of-the-art intelligent classification methods. The experimental results demonstrate that the proposed method has higher diagnostic accuracy and practical efficiency in diagnosing rotor fault causes.
机译:在故障类别检测的基础上,提出了转子故障原因的诊断方法,对智能运维领域做出了巨大贡献。为了提高诊断精度和实际效率,设计了一种基于粒子群优化-极端梯度提升算法的混合模型,即PSO-XGBoost。XGBoost 用作诊断转子故障原因的分类器,由于二阶泰勒展开和显式正则化项,具有良好的性能。PSO用于自动优化XGBoost参数的调整过程,克服了使用经验法或试错法调整XGBoost模型参数的缺点。混合模型结合了两种算法的优点,可以准确诊断9种转子故障原因。根据诊断结果,智能地提供参考相应知识库的维护措施。最后,将所提出的PSO-XGBoost模型与5种先进的智能分类方法进行了比较。实验结果表明,所提方法在转子故障原因诊断方面具有较高的诊断精度和实用效率。

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    State Key Lab Nucl Power Safety Monitoring Techno, Shenzhen, Peoples R China;

    Shanghai Univ Elect Power, Sch Automat Engn, Shanghai 200090, Peoples R China;

    State Key Lab Nucl Power Safety Monitoring Techno, Shenzhen, Peoples R China|Shanghai Univ Elect Power, Sch Automat Engn, Shanghai 200090, Peoples R China;

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