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Vol. 34, No. 8(3), S&M3042

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Vol. 32, No. 8(2), S&M2292

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Sensors and Materials
is an international peer-reviewed open access journal to provide a forum for researchers working in multidisciplinary fields of sensing technology.
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Sensors and Materials, Volume 35, Number 10(2) (2023)
Copyright(C) MYU K.K.
pp. 4597-4615
S&M3417 Pysical Mechanical Sensors
https://doi.org/10.18494/SAM4545
Published: October 24, 2023

Development of Fault Detector with Acoustic Emission Discrimination for Mechanical Motors [PDF]

Joy Iong-Zong Chen and Wen-Chueh Lo

(Received June 12, 2023; Accepted September 28, 2023)

Keywords: acoustic emission (AE), AIoT, edge computing (EC), feature extraction, tiny machine learning (TinyML)

The autonomous fault diagnosis of mechanical systems is crucial to addressing smart manufacturing product issues. In this article, we propose intelligent diagnosis and prediction technologies based on acoustic emission (AE) for mechanical motors. The integration of practical technologies, such as acoustic analysis, artificial intelligence (AI), edge computing (EC), electromagnetics, communication, and other theory-based subjects, is convenient for achieving flexible changes made in response to the edge operation trend. The proposed model, developed using acoustic information links with machine learning (ML) platforms to collect acoustic information via feature extraction (FE), is novel in that it can detect system health and prevent system failures. It can inspire innovative design concepts once the above model is combined with the EC migration module. In addition, in this paper, we discuss the embedded system in smart manufacturing applications, including AE, to establish an ML framework that is trained using audio emission data. The valuable results from the proposed algorithm experiments show that the audio judgment accuracy rate can be above 90%. At the current stage, the metric accuracy and precision of mechanical motor discrimination can reach 93.5% and 0.97, respectively. In this paper, we present an analytical method for performing motor axis misalignment judgment based on tiny machine learning (TinyML) techniques, which will enable the IoT field to move toward smart energy savings.

Corresponding author: Joy Iong-Zong Chen


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Cite this article
Joy Iong-Zong Chen and Wen-Chueh Lo, Development of Fault Detector with Acoustic Emission Discrimination for Mechanical Motors, Sens. Mater., Vol. 35, No. 10, 2023, p. 4597-4615.



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