Performing predictive maintenance (PdM) is challenging for many reasons. Dealing with large datasets which may not contain run-to-failure data (R2F) complicates PdM even more. When no R2F data are available, identifying condition indicators (CIs), estimating the health index (HI), and thereafter, calculating a degradation model for predicting the remaining useful lifetime (RUL) are merely impossible using supervised learning. In this paper, a 3 DoF delta robot used for pick and place task is studied. In the proposed method, autoencoders (AEs) are used to predict when maintenance is required based on the signal sequence distribution and anomaly detection, which is vital when no R2F data are available. Due to the sequential nature of the data...
As technology advances, the equipment becomes more complicated, and the importance of the Prognostic...
Industrial automation systems are excessively used in advanced manufacturing environments. These sys...
This article describes the results of the anomalies automated detection algorithm development in the...
Performing predictive maintenance (PdM) is challenging for many reasons. Dealing with large datasets...
Development of predictive maintenance (PdM) solutions is one of the key aspects of Industry 4.0. In ...
The Mitsubishi MELFA robotic arms used in modern factories work almost without interruption and prod...
Predictive maintenance (PdM) is a prevailing maintenance strategy that aims to minimize downtime, re...
Industrial robots are a key component for several industrial applications. Like all mechanical tools...
In this work, some possible solutions to implement a Robotics-oriented predictive maintenance approa...
Predictive maintenance has emerged as a powerful approach to optimize the maintenance of complex sys...
Predictive Maintenance (PdM) is an essential pillar for Industry 4.0. PdM enables users to know in a...
This thesis, conducted in partnership with AutoStore, examines the potential of predictive maintenan...
Predictive maintenance (PdM) advocates for the usage of machine learning technologies to monitor ass...
Maintenance and reliability professionals in the manufacturing industry have the primary goal of imp...
Diagnosis, fault prediction, and Remaining Useful Life (RUL) estimation are among the predictive mai...
As technology advances, the equipment becomes more complicated, and the importance of the Prognostic...
Industrial automation systems are excessively used in advanced manufacturing environments. These sys...
This article describes the results of the anomalies automated detection algorithm development in the...
Performing predictive maintenance (PdM) is challenging for many reasons. Dealing with large datasets...
Development of predictive maintenance (PdM) solutions is one of the key aspects of Industry 4.0. In ...
The Mitsubishi MELFA robotic arms used in modern factories work almost without interruption and prod...
Predictive maintenance (PdM) is a prevailing maintenance strategy that aims to minimize downtime, re...
Industrial robots are a key component for several industrial applications. Like all mechanical tools...
In this work, some possible solutions to implement a Robotics-oriented predictive maintenance approa...
Predictive maintenance has emerged as a powerful approach to optimize the maintenance of complex sys...
Predictive Maintenance (PdM) is an essential pillar for Industry 4.0. PdM enables users to know in a...
This thesis, conducted in partnership with AutoStore, examines the potential of predictive maintenan...
Predictive maintenance (PdM) advocates for the usage of machine learning technologies to monitor ass...
Maintenance and reliability professionals in the manufacturing industry have the primary goal of imp...
Diagnosis, fault prediction, and Remaining Useful Life (RUL) estimation are among the predictive mai...
As technology advances, the equipment becomes more complicated, and the importance of the Prognostic...
Industrial automation systems are excessively used in advanced manufacturing environments. These sys...
This article describes the results of the anomalies automated detection algorithm development in the...