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Wavelet-like convolutional neural network structure for time-series data classification

机译:时间序列数据分类的小波卷积神经网络结构

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Time-series data often contain one of the most valuable pieces of information in many fields including manufacturing. Because time-series data are relatively cheap to acquire, they (e.g., vibration signals) have become a crucial part of big data even in manufacturing shop floors. Recently, deep-learning models have shown state-of-art performance for analyzing big data because of their sophisticated structures and considerable computational power. Traditional models for a machinery-monitoring system have highly relied on features selected by human experts. In addition, the representational power of such models fails as the data distribution becomes complicated. On the other hand, deep-learning models automatically select highly abstracted features during the optimization process, and their representational power is better than that of traditional neural network models. However, the applicability of deep-learning models to the field of prognostics and health management (PHM) has not been well investigated yet. This study integrates the "residual fitting" mechanism inherently embedded in the wavelet transform into the convolutional neural network deep-learning structure. As a result, the architecture combines a signal smoother and classification procedures into a single model. Validation results from rotor vibration data demonstrate that our model outperforms all other off-the-shelf feature-based models.
机译:时间序列数据通常包含许多领域(包括制造业)中最有价值的信息之一。由于时序数据的获取成本相对较低,因此即使在制造车间中,它们(例如,振动信号)也已成为大数据的关键部分。最近,由于深度学习模型的复杂结构和可观的计算能力,它们已显示出用于分析大数据的最新性能。机械监控系统的传统模型高度依赖人类专家选择的功能。此外,随着数据分布变得复杂,此类模型的表示能力也会失效。另一方面,深度学习模型会在优化过程中自动选择高度抽象的特征,其表示能力要优于传统的神经网络模型。但是,尚未深入研究深度学习模型在预测和健康管理(PHM)领域的适用性。这项研究将固有嵌入在小波变换中的“残差拟合”机制整合到卷积神经网络深度学习结构中。结果,该架构将信号平滑器和分类过程组合到一个模型中。转子振动数据的验证结果表明,我们的模型优于所有其他基于现成特征的模型。

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