Zero-Shot Motor Health Monitoring by Blind Domain Transition
- URL: http://arxiv.org/abs/2212.06154v1
- Date: Mon, 12 Dec 2022 18:36:02 GMT
- Title: Zero-Shot Motor Health Monitoring by Blind Domain Transition
- Authors: Serkan Kiranyaz, Ozer Can Devecioglu, Amir Alhams, Sadok Sassi, Turker
Ince, Osama Abdeljaber, Onur Avci, and Moncef Gabbouj
- Abstract summary: We propose a zero-shot bearing fault detection method that can detect any fault on a new (target) machine regardless of the working conditions, sensor parameters, or fault characteristics.
Experimental results demonstrate that this novel approach can accurately detect any bearing fault achieving an average recall rate of around 89% and 95% on two target machines regardless of its type, severity, and location.
- Score: 17.664784126708742
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Continuous long-term monitoring of motor health is crucial for the early
detection of abnormalities such as bearing faults (up to 51% of motor failures
are attributed to bearing faults). Despite numerous methodologies proposed for
bearing fault detection, most of them require normal (healthy) and abnormal
(faulty) data for training. Even with the recent deep learning (DL)
methodologies trained on the labeled data from the same machine, the
classification accuracy significantly deteriorates when one or few conditions
are altered. Furthermore, their performance suffers significantly or may
entirely fail when they are tested on another machine with entirely different
healthy and faulty signal patterns. To address this need, in this pilot study,
we propose a zero-shot bearing fault detection method that can detect any fault
on a new (target) machine regardless of the working conditions, sensor
parameters, or fault characteristics. To accomplish this objective, a 1D
Operational Generative Adversarial Network (Op-GAN) first characterizes the
transition between normal and fault vibration signals of (a) source machine(s)
under various conditions, sensor parameters, and fault types. Then for a target
machine, the potential faulty signals can be generated, and over its actual
healthy and synthesized faulty signals, a compact, and lightweight 1D Self-ONN
fault detector can then be trained to detect the real faulty condition in real
time whenever it occurs. To validate the proposed approach, a new benchmark
dataset is created using two different motors working under different
conditions and sensor locations. Experimental results demonstrate that this
novel approach can accurately detect any bearing fault achieving an average
recall rate of around 89% and 95% on two target machines regardless of its
type, severity, and location.
Related papers
- A Comparison of Residual-based Methods on Fault Detection [6.675805308519987]
In this study, we compare two residual-based approaches to detect faults in industrial systems.
The performance evaluation focuses on three tasks: health indicator construction, fault detection, and health indicator interpretation.
The detection results reveal that both models are capable of detecting faults with an average delay of around 20 cycles and maintain a low false positive rate.
arXiv Detail & Related papers (2023-09-05T14:39:27Z) - Causal Disentanglement Hidden Markov Model for Fault Diagnosis [55.90917958154425]
We propose a Causal Disentanglement Hidden Markov model (CDHM) to learn the causality in the bearing fault mechanism.
Specifically, we make full use of the time-series data and progressively disentangle the vibration signal into fault-relevant and fault-irrelevant factors.
To expand the scope of the application, we adopt unsupervised domain adaptation to transfer the learned disentangled representations to other working environments.
arXiv Detail & Related papers (2023-08-06T05:58:45Z) - Novel features for the detection of bearing faults in railway vehicles [88.89591720652352]
We introduce Mel-Frequency Cepstral Coefficients (MFCCs) and features extracted from the Amplitude Modulation Spectrogram (AMS) as features for the detection of bearing faults.
arXiv Detail & Related papers (2023-04-14T10:09:50Z) - Cutting Through the Noise: An Empirical Comparison of Psychoacoustic and
Envelope-based Features for Machinery Fault Detection [6.9260317236159]
We present the Lenze production background-noise (LPBN) real-world dataset and an automated and noise-robust auditory inspection (ARAI) system for the end-of-line inspection of geared motors.
An acoustic array is used to acquire data from motors with a minor fault, major fault, or which are healthy.
To the best of our knowledge, we are the first to apply time-varying psychoacoustic features for fault detection.
arXiv Detail & Related papers (2022-11-03T10:56:17Z) - Ranking-Based Physics-Informed Line Failure Detection in Power Grids [66.0797334582536]
Real-time and accurate detecting of potential line failures is the first step to mitigating the extreme weather impact and activating emergency controls.
Power balance equations nonlinearity, increased uncertainty in generation during extreme events, and lack of grid observability compromise the efficiency of traditional data-driven failure detection methods.
This paper proposes a Physics-InformEd Line failure Detector (FIELD) that leverages grid topology information to reduce sample and time complexities and improve localization accuracy.
arXiv Detail & Related papers (2022-08-31T18:19:25Z) - A Vision Transformer-Based Approach to Bearing Fault Classification via
Vibration Signals [4.287341231968003]
This study uses a state-of-the-art Vision Transformer (ViT) to classify bearing defects.
The model achieved an overall accuracy of 98.8%.
arXiv Detail & Related papers (2022-08-15T08:37:30Z) - Synthesizing Rolling Bearing Fault Samples in New Conditions: A
framework based on a modified CGAN [1.0569625612398386]
Bearing fault diagnosis and condition monitoring is essential for reducing operational costs and downtime in numerous industries.
In this paper, a novel algorithm based on Conditional Generative Adversarial Networks (CGANs) is trained on the normal and fault data on any actual fault conditions.
The proposed method is validated on a real-world bearing dataset, and fault data are generated for different conditions.
arXiv Detail & Related papers (2022-06-24T04:47:08Z) - Transfer Learning for Fault Diagnosis of Transmission Lines [55.971052290285485]
A novel transfer learning framework based on a pre-trained LeNet-5 convolutional neural network is proposed.
It is able to diagnose faults for different transmission line lengths and impedances by transferring the knowledge from a source neural network to predict a dissimilar target dataset.
arXiv Detail & Related papers (2022-01-20T06:36:35Z) - Bayesian Autoencoders for Drift Detection in Industrial Environments [69.93875748095574]
Autoencoders are unsupervised models which have been used for detecting anomalies in multi-sensor environments.
Anomalies can come either from real changes in the environment (real drift) or from faulty sensory devices (virtual drift)
arXiv Detail & Related papers (2021-07-28T10:19:58Z) - Real-time detection of uncalibrated sensors using Neural Networks [62.997667081978825]
An online machine-learning based uncalibration detector for temperature, humidity and pressure sensors was developed.
The solution integrates an Artificial Neural Network as main component which learns from the behavior of the sensors under calibrated conditions.
The obtained results show that the proposed solution is able to detect uncalibrations for deviation values of 0.25 degrees, 1% RH and 1.5 Pa, respectively.
arXiv Detail & Related papers (2021-02-02T15:44:39Z) - Autoencoder-based Condition Monitoring and Anomaly Detection Method for
Rotating Machines [0.19116784879310028]
We propose an autoencoder model-based method for condition monitoring of rotating machines by using an anomaly detection approach.
The proposed method can directly extract the salient features from raw vibration signals.
Experimental results on two real-world datasets indicate that our proposed solution gives promising results.
arXiv Detail & Related papers (2021-01-27T16:49:49Z)
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.