An Evidential Real-Time Multi-Mode Fault Diagnosis Approach Based on
Broad Learning System
- URL: http://arxiv.org/abs/2305.00169v2
- Date: Tue, 6 Jun 2023 12:20:23 GMT
- Title: An Evidential Real-Time Multi-Mode Fault Diagnosis Approach Based on
Broad Learning System
- Authors: Chen Li and Zeyi Liu and Limin Wang and Minyue Li and Xiao He
- Abstract summary: We propose a novel approach to achieve real-time multi-mode fault diagnosis in industrial systems.
Our approach uses an extended evidence reasoning (ER) algorithm to fuse information and merge outputs from different base classifiers.
The effectiveness of the proposed approach is demonstrated on the multi-mode Tennessee Eastman process dataset.
- Score: 26.733033919978364
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Fault diagnosis is a crucial area of research in industry. Industrial
processes exhibit diverse operating conditions, where data often have
non-Gaussian, multi-mode, and center-drift characteristics. Data-driven
approaches are currently the main focus in the field, but continuous fault
classification and parameter updates of fault classifiers pose challenges for
multiple operating modes and real-time settings. Thus, a pressing issue is to
achieve real-time multi-mode fault diagnosis in industrial systems. In this
paper, a novel approach to achieve real-time multi-mode fault diagnosis is
proposed for industrial applications, which addresses this critical research
problem. Our approach uses an extended evidence reasoning (ER) algorithm to
fuse information and merge outputs from different base classifiers. These base
classifiers based on broad learning system (BLS) are trained to ensure maximum
fault diagnosis accuracy. Furthermore, pseudo-label learning is used to update
model parameters in real-time. The effectiveness of the proposed approach is
demonstrated on the multi-mode Tennessee Eastman process dataset.
Related papers
- A Comprehensive Library for Benchmarking Multi-class Visual Anomaly Detection [52.228708947607636]
This paper introduces a comprehensive visual anomaly detection benchmark, ADer, which is a modular framework for new methods.
The benchmark includes multiple datasets from industrial and medical domains, implementing fifteen state-of-the-art methods and nine comprehensive metrics.
We objectively reveal the strengths and weaknesses of different methods and provide insights into the challenges and future directions of multi-class visual anomaly detection.
arXiv Detail & Related papers (2024-06-05T13:40:07Z) - Few-shot fault diagnosis based on multi-scale graph convolution filtering for industry [1.673828135656713]
This paper introduces a fault diagnosis approach employing Multi-Scale Graph Convolution filtering (MSGCF)
MSGCF enhances the traditional Graph Neural Network framework by integrating both local and global information fusion modules within the graph convolution filter block.
Experiments on the University of Paderborn bearing dataset (PU) demonstrate that the MSGCF method proposed herein surpasses alternative approaches in accuracy.
arXiv Detail & Related papers (2024-05-30T02:51:29Z) - A Sparse Bayesian Learning for Diagnosis of Nonstationary and Spatially
Correlated Faults with Application to Multistation Assembly Systems [3.4991031406102238]
This article proposes a novel fault diagnosis method: clustering spatially correlated sparse Bayesian learning (CSSBL)
The proposed method's efficacy is provided through numerical and real-world case studies utilizing an actual autobody assembly system.
The generalizability of the proposed method allows the technique to be applied in fault diagnosis in other domains, including communication and healthcare systems.
arXiv Detail & Related papers (2023-10-20T23:56:53Z) - Generalized Out-of-distribution Fault Diagnosis (GOOFD) via Internal Contrastive Learning [8.583116999933731]
We propose a Generalized Out-of-distribution Fault Diagnosis framework to integrate diagnosis subtasks.
A unified fault diagnosis method based on internal contrastive learning and Mahalanobis distance is put forward to underpin the proposed framework.
Our proposed method can be applied to multiple faults diagnosis tasks and achieve better performance than the existing single-task methods.
arXiv Detail & Related papers (2023-06-27T07:50:25Z) - Interactive System-wise Anomaly Detection [66.3766756452743]
Anomaly detection plays a fundamental role in various applications.
It is challenging for existing methods to handle the scenarios where the instances are systems whose characteristics are not readily observed as data.
We develop an end-to-end approach which includes an encoder-decoder module that learns system embeddings.
arXiv Detail & Related papers (2023-04-21T02:20:24Z) - Machine learning-based approach for online fault Diagnosis of Discrete
Event System [0.0]
The problem is the online diagnosis of Automated Production Systems with sensors and actuators delivering discrete binary signals.
We propose a Machine Learning-based approach of a diagnostic system.
arXiv Detail & Related papers (2022-10-24T08:56:13Z) - TranAD: Deep Transformer Networks for Anomaly Detection in Multivariate
Time Series Data [13.864161788250856]
TranAD is a deep transformer network based anomaly detection and diagnosis model.
It uses attention-based sequence encoders to swiftly perform inference with the knowledge of the broader temporal trends in the data.
TranAD can outperform state-of-the-art baseline methods in detection and diagnosis performance with data and time-efficient training.
arXiv Detail & Related papers (2022-01-18T19:41:29Z) - On-board Fault Diagnosis of a Laboratory Mini SR-30 Gas Turbine Engine [54.650189434544146]
A data-driven fault diagnosis and isolation scheme is explicitly developed for failure in the fuel supply system and sensor measurements.
A model is trained using machine learning classifiers to detect a given set of fault scenarios in real-time on which it is trained.
Several simulation studies were carried out to demonstrate and illustrate the proposed fault diagnosis scheme's advantages, capabilities, and performance.
arXiv Detail & Related papers (2021-10-17T13:42:37Z) - Anytime Diagnosis for Reconfiguration [52.77024349608834]
We introduce and analyze FlexDiag which is an anytime direct diagnosis approach.
We evaluate the algorithm with regard to performance and diagnosis quality using a configuration benchmark from the domain of feature models and an industrial configuration knowledge base from the automotive domain.
arXiv Detail & Related papers (2021-02-19T11:45:52Z) - Inheritance-guided Hierarchical Assignment for Clinical Automatic
Diagnosis [50.15205065710629]
Clinical diagnosis, which aims to assign diagnosis codes for a patient based on the clinical note, plays an essential role in clinical decision-making.
We propose a novel framework to combine the inheritance-guided hierarchical assignment and co-occurrence graph propagation for clinical automatic diagnosis.
arXiv Detail & Related papers (2021-01-27T13:16:51Z) - SUOD: Accelerating Large-Scale Unsupervised Heterogeneous Outlier
Detection [63.253850875265115]
Outlier detection (OD) is a key machine learning (ML) task for identifying abnormal objects from general samples.
We propose a modular acceleration system, called SUOD, to address it.
arXiv Detail & Related papers (2020-03-11T00:22:50Z)
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.