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A deep learning approach for detecting drill bit failures from a small sound dataset

Tran Department of Electronics Design, Mid Sweden University, Sundsvall, Sweden|
Jan (57196803993) | Nhat Truong (57243980400); Lundgren Faculty of Electrical and Electronics Engineering, Ton Duc Thang University, Ho Chi Minh City, Viet Nam| Thanh (57225675672); Pham Division of Computational Mechatronics, Institute for Computational Science, Ton Duc Thang University, Ho Chi Minh City, Viet Nam|

Scientific Reports Số 1, năm 2022 (Tập 12, trang -)

ISSN: 20452322

ISSN: 20452322

DOI:

Tài liệu thuộc danh mục:

Article

English

Từ khóa: Deep Learning; Memory, Long-Term; Neural Networks, Computer; Noise; Sound; long term memory; noise; sound
Tóm tắt tiếng anh
as utilized as the activation function for the proposed CNN instead of the ReLU. Moreover, an attention mechanism was deployed at the frame level after the LSTM layer to pay attention to the anomaly in sounds. As a result, the proposed method reached an overall accuracy of 92.62% to classify two classes of machine sounds on Valmet’s dataset. In addition, an extensive experiment on another drilling dataset with short sounds yielded 97.47% accuracy. With multiple classes and long-duration sounds, an experiment utilizing the publicly available UrbanSound8K dataset obtains 91.45%. Extensive experiments on our dataset as well as publicly available datasets confirm the efficacy and robustness of our proposed method. For reproducing and deploying the proposed system, an open-source repository is publicly available at https://github.com/thanhtran1965/DrillFailureDetection_SciRep2022. © 2022, The Author(s).

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