Gear faults identification based on big data analysis and CatBoost model Online publication date: Tue, 17-Jan-2023
by Yongsheng Qi; Xiaoda Zhang; Jianxin Zhang
International Journal of Modelling, Identification and Control (IJMIC), Vol. 41, No. 4, 2022
Abstract: The gear faults identification based on big data analysis and CatBoost is investigated. The big datasets with nine and ten features for five gear faults are constructed, respectively. The CatBoost models based on the above two datasets are constructed and trained, respectively. The testing results show that CatBoost, XGBoost, and LGBM models based on the dataset with ten features are better than one with nine features, and the fault identification accuracy and time obtained by CatBoost are better than the other two models. By calculating the influence of features to the identification results, it can be found that four features play the crucial roles. The CatBoost based on the dataset with the above four characteristics and five faults is verified to achieve identification accuracies and time of 100% and 680 s, respectively, which are better than ones obtained by using XGBoost and LGBM.
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