Denoising Induction Motor Sounds Using an Autoencoder
Thanh Tran, Sebastian Bader, Jan Lundgren

TL;DR
This paper presents an autoencoder-based method for denoising induction motor sounds, effectively removing environmental and generated noise to improve sound quality for fault detection and classification.
Contribution
It introduces a novel autoencoder approach specifically trained to remove both Gaussian and environmental noise from motor sounds, demonstrating effectiveness on a fault database.
Findings
MSE ≤ 0.14 for normal sounds
MSE ≤ 0.15 for fault sounds
Effective removal of environmental and generated noise
Abstract
Denoising is the process of removing noise from sound signals while improving the quality and adequacy of the sound signals. Denoising sound has many applications in speech processing, sound events classification, and machine failure detection systems. This paper describes a method for creating an autoencoder to map noisy machine sounds to clean sounds for denoising purposes. There are several types of noise in sounds, for example, environmental noise and generated frequency-dependent noise from signal processing methods. Noise generated by environmental activities is environmental noise. In the factory, environmental noise can be created by vehicles, drilling, people working or talking in the survey area, wind, and flowing water. Those noises appear as spikes in the sound record. In the scope of this paper, we demonstrate the removal of generated noise with Gaussian distribution and…
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Taxonomy
TopicsMachine Fault Diagnosis Techniques · Ultrasonics and Acoustic Wave Propagation · Structural Health Monitoring Techniques
MethodsTest
