Deep Belief Network-based Prediction for Gear Noise

Long Liu, Binjie He, Dong Zhang, Hangyu Mao
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Abstract

Considering that the vibration and noise data of the gearbox had fewer characteristic parameters, the octave analysis method was used to expand the dimension of the characteristics. The fully coupled model of the gearbox solved the noise of the gearbox, and the reliability of the octave analysis data was verified by means of experiment and simulation. Amplify acceleration data, load data, and noise data into 28-dimensional vibration and noise data by octave analysis. A DBN noise prediction model based on PSO was established, and multi-condition data was used for training and prediction. The results of this method were compared with the results of BP and SVM, this method shows better accuracy.
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基于深度信念网络的齿轮噪声预测
考虑到齿轮箱振动噪声数据的特征参数较少,采用倍频度分析方法扩展特征维数。齿轮箱全耦合模型解决了齿轮箱噪声问题,并通过实验和仿真验证了倍频分析数据的可靠性。通过倍频分析,将加速度数据、载荷数据和噪声数据放大为28维振动和噪声数据。建立了基于粒子群算法的DBN噪声预测模型,并利用多条件数据进行训练和预测。将该方法的结果与BP和SVM的结果进行了比较,表明该方法具有更好的准确率。
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