In this paper, we propose the application of a new fault detection approach with a sequential updating function under new operating conditions or natural evolving degradation processes. The proposed approach is based on Online Sequential Extreme Learning Machines (OS-ELM). OS-ELM have the advantages of a strong learning ability, very fast training, and online learning. The concept of applying OS-ELM to fault detection is demonstrated on an artificial case study. We expect that OS-ELM can contribute to improve the fault detection and also the associated initiation of maintenance activities for engineering components working in an evolving environment such as electric components, bearings, gears, alternators, shafts and pumps, in which the mo...
Online learning is the capability of a machine-learning model to update knowledge without retraining...
A great deal of investigations are being carried out towards the effective implementation of the 4.0...
Most adaptive neural control schemes are based on stochastic gradient-descent backpropagation (SGBP)...
The on-board sensor fault detection and isolation (FDI) system is essential to guarantee the reliabi...
An industrial machinery condition monitoring methodology based on ensemble novelty detection and evo...
It is well known that the feedforward neural networks meet numbers of difficulties in the applicatio...
This paper proposes an adaptive incremental ensemble of extreme learning machines for fault diagnosi...
A novel sequential learning algorihtm for training Single Hidden Layer Feedforward Neural Network (S...
Traditional vibration-based damage assessment approaches include the use of feed-forward neural netw...
Early fault detection of engineering systems allows early warnings of anomalies and provides time to...
A novel adaptive weight online sequential extreme learning machine (AWOS-ELM) is proposed for predic...
Analytical redundancy technique is of great importance to guarantee the reliability and safety of ai...
This article discusses the progressive learning for structural tolerance online sequential extreme l...
Switchgear is a very important component in a power distribution line. Failure in switchgear can lea...
This paper presents an approach to detect and classify the faults in complex systems with small amou...
Online learning is the capability of a machine-learning model to update knowledge without retraining...
A great deal of investigations are being carried out towards the effective implementation of the 4.0...
Most adaptive neural control schemes are based on stochastic gradient-descent backpropagation (SGBP)...
The on-board sensor fault detection and isolation (FDI) system is essential to guarantee the reliabi...
An industrial machinery condition monitoring methodology based on ensemble novelty detection and evo...
It is well known that the feedforward neural networks meet numbers of difficulties in the applicatio...
This paper proposes an adaptive incremental ensemble of extreme learning machines for fault diagnosi...
A novel sequential learning algorihtm for training Single Hidden Layer Feedforward Neural Network (S...
Traditional vibration-based damage assessment approaches include the use of feed-forward neural netw...
Early fault detection of engineering systems allows early warnings of anomalies and provides time to...
A novel adaptive weight online sequential extreme learning machine (AWOS-ELM) is proposed for predic...
Analytical redundancy technique is of great importance to guarantee the reliability and safety of ai...
This article discusses the progressive learning for structural tolerance online sequential extreme l...
Switchgear is a very important component in a power distribution line. Failure in switchgear can lea...
This paper presents an approach to detect and classify the faults in complex systems with small amou...
Online learning is the capability of a machine-learning model to update knowledge without retraining...
A great deal of investigations are being carried out towards the effective implementation of the 4.0...
Most adaptive neural control schemes are based on stochastic gradient-descent backpropagation (SGBP)...