Acoustic Signal Analysis with Deep Neural Network for Detecting Fault
Diagnosis in Industrial Machines
- URL: http://arxiv.org/abs/2312.01062v1
- Date: Sat, 2 Dec 2023 08:09:27 GMT
- Title: Acoustic Signal Analysis with Deep Neural Network for Detecting Fault
Diagnosis in Industrial Machines
- Authors: Mustafa Yurdakul and Sakir Tasdemir
- Abstract summary: In this study, a deep learning-based system was designed to analyze the sound signals produced by industrial machines.
The proposed method reached an accuracy rate varying between 97.17% and 99.87% at different Sound Noise Rate levels.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Detecting machine malfunctions at an early stage is crucial for reducing
interruptions in operational processes within industrial settings. Recently,
the deep learning approach has started to be preferred for the detection of
failures in machines. Deep learning provides an effective solution in fault
detection processes thanks to automatic feature extraction. In this study, a
deep learning-based system was designed to analyze the sound signals produced
by industrial machines. Acoustic sound signals were converted into Mel
spectrograms. For the purpose of classifying spectrogram images, the
DenseNet-169 model, a deep learning architecture recognized for its
effectiveness in image classification tasks, was used. The model was trained
using the transfer learning method on the MIMII dataset including sounds from
four types of industrial machines. The results showed that the proposed method
reached an accuracy rate varying between 97.17% and 99.87% at different Sound
Noise Rate levels.
Related papers
- What to Remember: Self-Adaptive Continual Learning for Audio Deepfake
Detection [53.063161380423715]
Existing detection models have shown remarkable success in discriminating known deepfake audio, but struggle when encountering new attack types.
We propose a continual learning approach called Radian Weight Modification (RWM) for audio deepfake detection.
arXiv Detail & Related papers (2023-12-15T09:52:17Z) - Histogram Layer Time Delay Neural Networks for Passive Sonar
Classification [58.720142291102135]
A novel method combines a time delay neural network and histogram layer to incorporate statistical contexts for improved feature learning and underwater acoustic target classification.
The proposed method outperforms the baseline model, demonstrating the utility in incorporating statistical contexts for passive sonar target recognition.
arXiv Detail & Related papers (2023-07-25T19:47:26Z) - Transfer Learning Based Diagnosis and Analysis of Lung Sound Aberrations [0.35232085374661276]
This work attempts to develop a non-invasive technique for identifying respiratory sounds acquired by a stethoscope and voice recording software.
A visual representation of each audio sample is constructed, allowing resource identification for classification using methods like those used to effectively describe visuals.
Respiratory Sound Database obtained cutting-edge results, including accuracy of 95%, precision of 88%, recall score of 86%, and F1 score of 81%.
arXiv Detail & Related papers (2023-03-15T04:46:57Z) - The role of noise in denoising models for anomaly detection in medical
images [62.0532151156057]
Pathological brain lesions exhibit diverse appearance in brain images.
Unsupervised anomaly detection approaches have been proposed using only normal data for training.
We show that optimization of the spatial resolution and magnitude of the noise improves the performance of different model training regimes.
arXiv Detail & Related papers (2023-01-19T21:39:38Z) - Detecting train driveshaft damages using accelerometer signals and
Differential Convolutional Neural Networks [67.60224656603823]
This paper proposes the development of a railway axle condition monitoring system based on advanced 2D-Convolutional Neural Network (CNN) architectures.
The resultant system converts the railway axle vibration signals into time-frequency domain representations, i.e., spectrograms, and, thus, trains a two-dimensional CNN to classify them depending on their cracks.
arXiv Detail & Related papers (2022-11-15T15:04:06Z) - Deep Scattering Spectrum germaneness to Fault Detection and Diagnosis
for Component-level Prognostics and Health Management (PHM) [0.0]
This work focuses on the study of the Deep Scattering Spectrum (DSS)'s relevance to fault detection and daignosis for mechanical components of industrail robots.
We used multiple industrial robots and distinct mechanical faults to build an approach for classifying the faults.
The presented approach was implemented on the practical test benches and demonstrated satisfactory performance in fault detection and diagnosis.
arXiv Detail & Related papers (2022-10-18T13:25:02Z) - Deep Metric Learning with Locality Sensitive Angular Loss for
Self-Correcting Source Separation of Neural Spiking Signals [77.34726150561087]
We propose a methodology based on deep metric learning to address the need for automated post-hoc cleaning and robust separation filters.
We validate this method with an artificially corrupted label set based on source-separated high-density surface electromyography recordings.
This approach enables a neural network to learn to accurately decode neurophysiological time series using any imperfect method of labelling the signal.
arXiv Detail & Related papers (2021-10-13T21:51:56Z) - Canonical Polyadic Decomposition and Deep Learning for Machine Fault
Detection [0.0]
It is impossible to collect enough data to learn all types of faults from a machine.
New algorithms, trained using data from healthy conditions only, were developed to perform unsupervised anomaly detection.
A key issue in the development of these algorithms is the noise in the signals, as it impacts the anomaly detection performance.
arXiv Detail & Related papers (2021-07-20T14:06:50Z) - Anomalous Sound Detection with Machine Learning: A Systematic Review [0.0]
This article presents a Systematic Review (SR) about studies related to Anamolous Sound Detection using Machine Learning (ML) techniques.
The state of the art was addressed, collecting data sets, methods for extracting features in audio, ML models, and evaluation methods used for ASD.
arXiv Detail & Related papers (2021-02-15T19:57:03Z) - Capturing scattered discriminative information using a deep architecture
in acoustic scene classification [49.86640645460706]
In this study, we investigate various methods to capture discriminative information and simultaneously mitigate the overfitting problem.
We adopt a max feature map method to replace conventional non-linear activations in a deep neural network.
Two data augment methods and two deep architecture modules are further explored to reduce overfitting and sustain the system's discriminative power.
arXiv Detail & Related papers (2020-07-09T08:32:06Z) - Acoustic Anomaly Detection for Machine Sounds based on Image Transfer
Learning [8.828131257265369]
In this paper, we consider acoustic malfunction detection via transfer learning.
We use neural networks that were pretrained on the task of image classification.
We find that features extracted from ResNet based networks yield better results than those from AlexNet and Squeezenet.
arXiv Detail & Related papers (2020-06-05T13:29:12Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.