Impulse components in vibration signals are important fault features of complex machines. Sparse coding (SC) algorithm has been introduced as an impulse feature extraction method, but it could not guarantee a satisfactory performance in processing vibration signals with heavy background noises. In this paper, a method based on fusion sparse coding (FSC) and online dictionary learning is proposed to extract impulses efficiently. Firstly, fusion scheme of different sparse coding algorithms is presented to ensure higher reconstruction accuracy. Then, an improved online dictionary learning method using FSC scheme is established to obtain redundant dictionary and it can capture specific features of training samples and reconstruct the sparse app...
Vibration signals captured from faulty mechanical components are often associated with transients wh...
The periodical transient impulses caused by localized faults are sensitive and important characteris...
In this paper; a new method for gear pitting fault detection is presented. The presented method is d...
AbstractImpulse components in vibration signals are important fault features of complex machines. Sp...
The sparse decomposition based on matching pursuit is an adaptive sparse expression of the signals. ...
This paper presents a novel method for condition monitoring using the RMS residual of vibration sign...
Rolling element bearing and gear are the typical supporting or rotating parts in mechanical equipmen...
It is critical to deploy wireless data transmission technologies remotely, in real-time, to monitor ...
This paper presents a new method for a composite dictionary matching pursuit algorithm, which is app...
As one of the most important components in rotating machinery, it’s necessary and essential to...
Intelligent on-site fault diagnosis and professional vibration analysis are essential for the safety...
The sparse decomposition based on matching pursuit is an adaptive sparse expression method for signa...
In order to diagnose an incipient fault in rotating machinery under complicated conditions, a fast s...
Engine vibration signals are easy to be interfered by other noise, causing feature signals that repr...
The working state of machinery can be reflected by vibration signals. Accurate classification of the...
Vibration signals captured from faulty mechanical components are often associated with transients wh...
The periodical transient impulses caused by localized faults are sensitive and important characteris...
In this paper; a new method for gear pitting fault detection is presented. The presented method is d...
AbstractImpulse components in vibration signals are important fault features of complex machines. Sp...
The sparse decomposition based on matching pursuit is an adaptive sparse expression of the signals. ...
This paper presents a novel method for condition monitoring using the RMS residual of vibration sign...
Rolling element bearing and gear are the typical supporting or rotating parts in mechanical equipmen...
It is critical to deploy wireless data transmission technologies remotely, in real-time, to monitor ...
This paper presents a new method for a composite dictionary matching pursuit algorithm, which is app...
As one of the most important components in rotating machinery, it’s necessary and essential to...
Intelligent on-site fault diagnosis and professional vibration analysis are essential for the safety...
The sparse decomposition based on matching pursuit is an adaptive sparse expression method for signa...
In order to diagnose an incipient fault in rotating machinery under complicated conditions, a fast s...
Engine vibration signals are easy to be interfered by other noise, causing feature signals that repr...
The working state of machinery can be reflected by vibration signals. Accurate classification of the...
Vibration signals captured from faulty mechanical components are often associated with transients wh...
The periodical transient impulses caused by localized faults are sensitive and important characteris...
In this paper; a new method for gear pitting fault detection is presented. The presented method is d...