Belt conveyor is widely used for material transportation over both short and long distances nowadays while the failure of a single component may cause fateful consequences. Accordingly, the use of machine learning in timely fault diagnosis is an efficient way to ensure the safe operation of belt conveyors. The support vector machine is a powerful supervised machine learning algorithm for classification in fault diagnosis. Before the classification, the principal component analysis is used for data reduction according to the varieties of features. To optimize the parameters of the support vector machine, this paper presents a grey wolf optimizer approach. The diagnostic model is applied to an underground mine belt conveyor transportation sys...
AbstractGearbox is an essential device employed in industries to vary speed and load conditions acco...
Abstract-- Gears are a vital element considering its applications in a variety of machine tool appli...
One of the future challenges of machinery diagnostics and prognosticsis to prepare for the Internet ...
Belt conveyors are the equipment widely used in coal mines and other manufacturing factories, whose ...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
If the fault is found in planetary gear of cutting unit in the shearer, the shearer will not be succ...
The purposes are to meet the individual needs of leather production, improve the efficiency of leath...
Optimization of support vector machine based multi-fault classification with evolutionary algorithms...
This study proposes a method for diagnosing problems in truck ore transport operations in undergroun...
Gearboxes are mechanical devices that play an essential role in several applications, e.g., the tran...
A novel method consisting of an adaptive feature extraction scheme and a particle swarm optimization...
In recent years, artificial intelligence technology has been widely used in fault prediction and hea...
Based on AMESim simulation platform, the pressure-time curve of constant deceleration braking system...
Due to increasing demands for ensuring the safety and reliability of a system, fault detection (FD) ...
The data-based machine learning is an important aspect of modern intelligent technology, while stati...
AbstractGearbox is an essential device employed in industries to vary speed and load conditions acco...
Abstract-- Gears are a vital element considering its applications in a variety of machine tool appli...
One of the future challenges of machinery diagnostics and prognosticsis to prepare for the Internet ...
Belt conveyors are the equipment widely used in coal mines and other manufacturing factories, whose ...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
If the fault is found in planetary gear of cutting unit in the shearer, the shearer will not be succ...
The purposes are to meet the individual needs of leather production, improve the efficiency of leath...
Optimization of support vector machine based multi-fault classification with evolutionary algorithms...
This study proposes a method for diagnosing problems in truck ore transport operations in undergroun...
Gearboxes are mechanical devices that play an essential role in several applications, e.g., the tran...
A novel method consisting of an adaptive feature extraction scheme and a particle swarm optimization...
In recent years, artificial intelligence technology has been widely used in fault prediction and hea...
Based on AMESim simulation platform, the pressure-time curve of constant deceleration braking system...
Due to increasing demands for ensuring the safety and reliability of a system, fault detection (FD) ...
The data-based machine learning is an important aspect of modern intelligent technology, while stati...
AbstractGearbox is an essential device employed in industries to vary speed and load conditions acco...
Abstract-- Gears are a vital element considering its applications in a variety of machine tool appli...
One of the future challenges of machinery diagnostics and prognosticsis to prepare for the Internet ...