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ID-TICapsNet: An audio signal processing algorithm for bolt early looseness detection

机译:ID-TICAPSNET:用于螺栓早期松动检测的音频信号处理算法

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摘要

Recently, for bolt looseness detection, percussion-based methods have attracted more attention due to their advantages of eliminating contact sensors. The core issue of percussion-based methods is audio signal processing to characterize different bolt preloads, while current percussion-based methods all depend on machine learning-based techniques that require hand-crafted features and overlook bolt looseness at the incipient stage. Thus, in this article, the main contribution is that we propose a novel one-dimensional training interference capsule neural network (1D-TICapsNet) to process and classify percussion-induced sound signals, thus achieving bolt early looseness detection. First, compared to machine learning-based techniques, 1D-TICapsNet can fuse feature extraction and classification in one frame to achieve better performance. In addition, due to two tricks (i.e. training interference), including wider kernels in the first convolutional layer and the targeted dropout technique, our proposed 1D-TICapsNet outperforms several state-of-the-art deep learning techniques in terms of classification accuracy, computational costs, and the denoising capacity. We call these two tricks as "training interference" since they work during training procedure. Finally, we confirm the effectiveness and superiorities of 1D-TICapsNet via experiments. Considering the efficacy of 1D-TICapsNet, we can expect its real-world applications on bolt early looseness detection and other classification of one-dimensional signals.
机译:最近,对于螺栓松动检测,基于打击的方法由于消除了接触传感器而引起了更多的关注。基于打击的方法的核心问题是特征不同的螺栓预紧载装的音频信号处理,而基于当前的敲击性的方法依赖于基于机器学习的技术,这些技术需要手工制作的特征和忽略初期的螺栓松动。因此,在本文中,主要贡献是我们提出了一种新颖的一维训练干扰胶囊神经网络(1D-TICAPSNET)来处理和分类敲击诱导的声音信号,从而实现螺栓早期松动检测。首先,与基于机器学习的技术相比,1D-TICAPSNET可以在一帧中保险熔断功能提取和分类,以实现更好的性能。此外,由于第一卷积层中的两个技巧(即训练干扰),包括第一卷积层和目标辍学技术,所提出的1D-TICAPSNET在分类准确性方面优于几种最先进的深度学习技术,计算成本和去噪能力。我们将这两个技巧称为“培训干扰”,因为他们在训练程序期间工作。最后,我们通过实验确认了1D-TICASPET的有效性和优越性。考虑到1D-TICAPSNET的功效,我们可以期待其现实世界的应用在螺栓早期松动检测和一维信号的其他分类上。

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