An increased number of industrial assets are monitored during their daily use, producing large amounts of data. This data allows us to better monitor the health status of these asset, enabling predictive maintenance to reduce risks and costs caused by unexpected machine failure. Many condition monitoring approaches focus on assessing a machine's health status individually. Often, these approaches require historical data sets or handcrafted fault indicators. However, multiple industrial applications involve monitoring multiple similar operating machines, a fleet. By assuming the healthy behavior for the majority of the machine, deviating signatures can indicate a machine fault. In this work, we extend our previous proposed framework for fle...
Maintenance and reliability professionals in the manufacturing industry have the primary goal of imp...
Performance tuning, health monitoring, fault diagnosis, etc. are important aspects of testing a pre-...
The pervasive digital innovation of the last decades has led to a remarkable transformation of maint...
Machine failures decrease up-time and can lead to extra repair costs or even to human casualties and...
© Springer Nature Switzerland AG 2019. The application of machine learning to fault diagnosis allows...
This paper describes a novel methodology concerning the application of machine learning for the inte...
Purpose-Quality management of products is an important part of manufacturing process. One way to man...
The impact of an anomaly is domain-dependent. In a dataset of network activities, an anomaly can imp...
Performance tuning, health monitoring, fault diagnosis, etc. are important aspects of testing a pre-...
Monitoring aircraft performance in a fleet is fundamental to ensure optimal operation and promptly d...
This dissertation argues that classification is an effective tool in the prediction of machine condi...
Today, failure modes characterization and early detection is a key issue in complex assets. This is ...
Common applications of Condition-Based Maintenance utilize sensors mounted on mechanical components ...
In this paper an innovative on-line condition monitoring system is introduced. It consists of an obj...
Predictive Maintenance (PdM) is an essential pillar for Industry 4.0. PdM enables users to know in a...
Maintenance and reliability professionals in the manufacturing industry have the primary goal of imp...
Performance tuning, health monitoring, fault diagnosis, etc. are important aspects of testing a pre-...
The pervasive digital innovation of the last decades has led to a remarkable transformation of maint...
Machine failures decrease up-time and can lead to extra repair costs or even to human casualties and...
© Springer Nature Switzerland AG 2019. The application of machine learning to fault diagnosis allows...
This paper describes a novel methodology concerning the application of machine learning for the inte...
Purpose-Quality management of products is an important part of manufacturing process. One way to man...
The impact of an anomaly is domain-dependent. In a dataset of network activities, an anomaly can imp...
Performance tuning, health monitoring, fault diagnosis, etc. are important aspects of testing a pre-...
Monitoring aircraft performance in a fleet is fundamental to ensure optimal operation and promptly d...
This dissertation argues that classification is an effective tool in the prediction of machine condi...
Today, failure modes characterization and early detection is a key issue in complex assets. This is ...
Common applications of Condition-Based Maintenance utilize sensors mounted on mechanical components ...
In this paper an innovative on-line condition monitoring system is introduced. It consists of an obj...
Predictive Maintenance (PdM) is an essential pillar for Industry 4.0. PdM enables users to know in a...
Maintenance and reliability professionals in the manufacturing industry have the primary goal of imp...
Performance tuning, health monitoring, fault diagnosis, etc. are important aspects of testing a pre-...
The pervasive digital innovation of the last decades has led to a remarkable transformation of maint...