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Data-Driven Approaches for Diagnosis of Incipient Faults in Cutting Arms of the Roadheader

TLDR
Four machine learning tools are applied to address the challenge in the IFDI of cutting arms and the experimental results show that the support vector machines based on dynamic cuckoo outperform the other methods.
Abstract
Incipient fault detection and identification (IFDI) of cutting arms is a crucial guarantee for the smooth operation of a roadheader. However, the shortage of fault samples restricts the application of the fault diagnosis technique, and the data analysis tools should be optimized efficiently. In this study, four machine learning tools (the back-propagation neural network based on genetic algorithm optimization, the naive Bayes based on genetic algorithm optimization, the support vector machines based on particle swarm optimization, and the support vector machines based on dynamic cuckoo) are applied to address the challenge in the IFDI of cutting arms. The commonly measured current and vibration data cutting arms are used in the IFDI. The experimental results show that the support vector machines based on dynamic cuckoo outperform the other methods. Besides, the performance of the four methods under different operating conditions is compared. The fault cause of cutting arms of the roadheader is analyzed and the design improvement scheme for cutting arms is provided. This study provides a reference for improving the fault diagnosis of the roadheader.

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SOPRENE: Assessment of the Spanish Armada’s Predictive Maintenance Tool for Naval Assets

TL;DR: This paper presents a specific design and development for an actual big and diverse ecosystem of equipment, proposing an semi-unsupervised predictive maintenance system, and depicts the solution deployment, test and technological adoption of real-world military operative environments and validates the applicability.
Journal ArticleDOI

Health Diagnosis of Roadheader Based on Reference Manifold Learning and Improved K-Means

TL;DR: In this article, a health state analysis method based on reference manifold learning and improved K-means clustering analysis was proposed; the method was verified by using the real-time collected roadheader cutting reducer fault signal.
Journal ArticleDOI

Fault Diagnosis Method of Roadheader Bearing Based on VMD and Domain Adaptive Transfer Learning

Xiaofei Qu, +1 more
- 28 May 2023 - 
TL;DR: In this paper , a fault diagnosis strategy that combines variational mode decomposition and a domain adaptive convolutional neural network is proposed to solve the problem of the different distributions of vibration data for roadheader bearings under variable working conditions.
References
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Journal ArticleDOI

Comparison of dimensionality reduction techniques for the fault diagnosis of mono block centrifugal pump using vibration signals

TL;DR: In the present study, statistical features derived from the vibration data are used as the features and the reduced feature set is classified using a decision tree to bring out the better dimensionality reduction technique–classifier combination.
Journal ArticleDOI

Actuators fault diagnosis for robot manipulators with uncertain model

TL;DR: In this paper, a fault diagnosis approach for robotic manipulators, subject to faults of the joints driving systems, is developed, where a model-based diagnostic observer is adopted to detect, isolate and identify failures.
Journal ArticleDOI

The optimal combination of feature selection and data discretization: An empirical study

TL;DR: In this paper, two different combination orders of feature selection and discretization are examined in terms of their classification accuracies and computational times.
Journal ArticleDOI

Stacked sparse autoencoder with PCA and SVM for data-based line trip fault diagnosis in power systems

TL;DR: An SSAE-based network with support vector machine (SVM) and principal component analysis (PCA) is proposed to improve the accuracy of fault diagnosis in power systems and the real-world simulation experiments prove the improvement and practical application of the proposed method.
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