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The Optimized Deep Belief Networks With Improved Logistic Sigmoid Units and Their Application in Fault Diagnosis for Planetary Gearboxes of Wind Turbines

机译:改进Logistic Sigmoid单元的优化深信度网络及其在风力发电机行星齿轮箱故障诊断中的应用

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Efficient and accurate planetary gearbox fault diagnosis is the key to enhance the reliability and security of wind turbines. Therefore, an intelligent and integrated approach based on deep belief networks (DBNs), improved logistic Sigmoid (Isigmoid) units, and impulsive features is proposed in this paper. The vanishing gradient problem is an inherent drawback of conventional Sigmoid units, and it usually occurs in the backpropagation process of DBNs, resulting in that the training is considerably slowed down and the classification rate is reduced. To solve this problem, lsigmoid units are designed to combine the merits of unsaturation from leaky rectified linear (LReL) units. The results of handwritten digit recognition experiments show the superiority of lsigmoid over Sigmoid on convergence speed and classification accuracy. Since impulses contain much useful fault information, especially for early failures, an integrated approach using the optimized Morlet wavelet transform, kurtosis index, and soft-thresholding is applied to extract impulse components from original signals to improve the diagnosis accuracy. Then, the features extracted from original signals and impulsive signals are employed to train and test the DBNs with lsigmoid, Sigmoid, and LReL units for comparison. Finally, the results of planetary gearbox fault diagnosis show that lsigmoid has higher comprehensive performance than conventional sigmoid and LReL.
机译:高效,准确的行星齿轮箱故障诊断是提高风力发电机组可靠性和安全性的关键。因此,本文提出了一种基于深度信念网络(DBN),改进的逻辑Sigmoid(Isigmoid)单元和冲动特征的智能集成方法。消失的梯度问题是常规Sigmoid单元的固有缺陷,它通常在DBN的反向传播过程中发生,从而导致训练速度大大降低并且分类率降低。为了解决这个问题,将Sigmoid单元设计成结合泄漏整流线性(LReL)单元的不饱和优点。手写数字识别实验的结果表明,在收敛速度和分类精度方面,乙状结肠优于乙状结肠。由于脉冲包含许多有用的故障信息,尤其是对于早期故障,因此,采用了使用优化的Morlet小波变换,峰度指数和软阈值的集成方法,可以从原始信号中提取脉冲分量,从而提高诊断准确性。然后,将从原始信号和脉冲信号中提取的特征用于训练和测试具有Sigmoid,Sigmoid和LReL单元的DBN进行比较。最后,行星齿轮箱故障诊断结果表明,乙状结肠比常规乙状结肠和LReL具有更高的综合性能。

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