This paper proposes a method for the reliable fault detection and classification of induction motors using two-dimensional (2D) texture features and a multiclass support vector machine (MCSVM). The proposed model first converts time-domain vibration signals to 2D gray images, resulting in texture patterns (or repetitive patterns), and extracts these texture features by generating the dominant neighborhood structure (DNS) map. The principal component analysis (PCA) is then used for the purpose of dimensionality reduction of the high-dimensional feature vector including the extracted texture features due to the fact that the high-dimensional feature vector can degrade classification performance, and this paper configures an effective feature ...
Identification of the induction motor health condition is a significant task in the industry, which ...
The data-based machine learning is an important aspect of modern intelligent technology, while stati...
This paper proposes a binary fault detection algorithm for detecting inner raceway bearing faults in...
This paper presents an expert system for induction motor fault detection based on vibration analysis...
In this paper, we propose an approach for vibration signal-based fault detection and diagnosis syste...
In this paper, we propose an approach for vibration signal-based fault detection and diagnosis syste...
This article was published in the Journal of Applied Mathematics [© 2015 SERSC] and the definite ver...
An effective fault diagnosis method for induction motors is proposed in this paper to improve the re...
This paper presents a fault diagnosis scheme for induction machines (IMs) using Support Vector Machi...
Condition monitoring schemes are essential for increasing the reliability and ensuring the equipment...
This article was published in the International Journal of Control and Automation [© 2016 SERSC ] an...
Industries are proliferating, and the need for induction motors (IMs) plays an essential role in var...
Identification of the induction motor health condition is a significant task in the industry, which ...
Induction motors (IMs) are the backbone of industry, and play a vital role in daily life as well. Ho...
Identification of the induction motor health condition is a significant task in the industry, which ...
Identification of the induction motor health condition is a significant task in the industry, which ...
The data-based machine learning is an important aspect of modern intelligent technology, while stati...
This paper proposes a binary fault detection algorithm for detecting inner raceway bearing faults in...
This paper presents an expert system for induction motor fault detection based on vibration analysis...
In this paper, we propose an approach for vibration signal-based fault detection and diagnosis syste...
In this paper, we propose an approach for vibration signal-based fault detection and diagnosis syste...
This article was published in the Journal of Applied Mathematics [© 2015 SERSC] and the definite ver...
An effective fault diagnosis method for induction motors is proposed in this paper to improve the re...
This paper presents a fault diagnosis scheme for induction machines (IMs) using Support Vector Machi...
Condition monitoring schemes are essential for increasing the reliability and ensuring the equipment...
This article was published in the International Journal of Control and Automation [© 2016 SERSC ] an...
Industries are proliferating, and the need for induction motors (IMs) plays an essential role in var...
Identification of the induction motor health condition is a significant task in the industry, which ...
Induction motors (IMs) are the backbone of industry, and play a vital role in daily life as well. Ho...
Identification of the induction motor health condition is a significant task in the industry, which ...
Identification of the induction motor health condition is a significant task in the industry, which ...
The data-based machine learning is an important aspect of modern intelligent technology, while stati...
This paper proposes a binary fault detection algorithm for detecting inner raceway bearing faults in...