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A Diagnosis Method for the Compound Fault of Gearboxes Based on Multi-Feature and BP-AdaBoost

机译:基于多特征和BP-Adaboost的齿轮箱复合故障的诊断方法

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摘要

Gearbox is an important structure of rotating machinery, and the accurate fault diagnosis of gearboxes is of great significance for ensuring efficient and safe operation of rotating machinery. Aiming at the problem that there is little common compound fault data of gearboxes, and there is a lack of an effective diagnosis method, a gearbox fault simulation experiment platform is set up, and a diagnosis method for the compound fault of gearboxes based on multi-feature and BP-AdaBoost is proposed. Firstly, the vibration signals of six typical states of gearbox are obtained, and the original signals are decomposed by empirical mode decomposition and reconstruct the new signal to achieve the purpose of noise reduction. Then, perform the time domain analysis and wavelet packet analysis on the reconstructed signal, extract three time domain feature parameters with higher sensitivity, and combine them with eight frequency band energy feature parameters obtained by wavelet packet decomposition to form the gearbox state feature vector. Finally, AdaBoost algorithm and BP neural network are used to build the BP-AdaBoost strong classifier model, and feature vectors are input into the model for training and verification. The results show that the proposed method can effectively identify the gearbox failure modes, and has higher accuracy than the traditional fault diagnosis methods, and has certain reference significance and engineering application value.
机译:变速箱是旋转机械的重要结构,齿轮箱的准确故障诊断对于确保旋转机械的有效和安全操作具有重要意义。针对齿轮箱的常见复合故障数据很少的问题,并且缺乏有效的诊断方法,建立了一个变速箱故障仿真实验平台,以及基于多重的齿轮箱复合故障的诊断方法提出了特征和BP-Adaboost。首先,获得六个典型齿轮箱状态的振动信号,并且原始信号通过经验模式分解分解并重建新信号以实现降噪的目的。然后,对重建信号进行时域分析和小波分组分析,提取具有更高灵敏度的三个时域特征参数,并将它们与由小波分组分解获得的八个频带能量特征参数组合以形成变速箱状态特征向量。最后,ADABOOST算法和BP神经网络用于构建BP-Adaboost强分类器模型,并且将特征向量输入到模型中进行培训和验证。结果表明,该方法可以有效地识别齿轮箱失效模式,精度高于传统的故障诊断方法,具有一定的参考意义和工程应用价值。

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