Intelligent fault detection systems using machine learning can be applied to learn to spot anomalies in signals sampled directly from machinery. As a result, expensive repair costs due to mechanical breakdowns and potential harm to humans due to malfunctioning equipment can be prevented. In recent years, Autoencoders have been applied for fault detection in areas such as industrial manufacturing. It has been shown that they are well suited for the purpose as such models can learn to recognize healthy signals that facilitate the detection of anomalies. The content of this thesis is an investigation into the applicability of Autoencoders for fault detection in mobile robotics by assigning anomaly scores to sampled torque signals based on the ...
This chapter describes how a suitable design of a fault diagnosis system can be successfully applied...
The continued development of mobile robots (MR) must be accompanied by an increase in robotics&rsquo...
Industrial robots are now commonly used in production systems to improve productivity, quality and s...
Intelligent fault detection systems using machine learning can be applied to learn to spot anomalies...
Rotary machine breakdown detection systems are outdated and dependent upon routine testing to discov...
The work presented in this paper focuses on the comparison of well-known and new fault-diagnosis alg...
Detecting and reacting to faults (i.e., abnormal situations) are essential skills for robots to safe...
International audienceThe main contribution of this work is associated to the fault detection and di...
For robotic systems involved in challenging environments, it is crucial to be able to identify fault...
Most applications in service robotics require that the position of the robot is accurately known. Fa...
This article describes the results of the anomalies automated detection algorithm development in the...
Abstract Automated vehicles can contribute to the improvement of transportation through their high c...
Golombek R, Wrede S, Hanheide M, Heckmann M. Learning a Probabilistic Error Detection Model for Robo...
The use of machine learning for predictive maintenance has been the focus of many studies, usually ...
Today, real-time fault detection and predictive maintenance based on sensor data are actively introd...
This chapter describes how a suitable design of a fault diagnosis system can be successfully applied...
The continued development of mobile robots (MR) must be accompanied by an increase in robotics&rsquo...
Industrial robots are now commonly used in production systems to improve productivity, quality and s...
Intelligent fault detection systems using machine learning can be applied to learn to spot anomalies...
Rotary machine breakdown detection systems are outdated and dependent upon routine testing to discov...
The work presented in this paper focuses on the comparison of well-known and new fault-diagnosis alg...
Detecting and reacting to faults (i.e., abnormal situations) are essential skills for robots to safe...
International audienceThe main contribution of this work is associated to the fault detection and di...
For robotic systems involved in challenging environments, it is crucial to be able to identify fault...
Most applications in service robotics require that the position of the robot is accurately known. Fa...
This article describes the results of the anomalies automated detection algorithm development in the...
Abstract Automated vehicles can contribute to the improvement of transportation through their high c...
Golombek R, Wrede S, Hanheide M, Heckmann M. Learning a Probabilistic Error Detection Model for Robo...
The use of machine learning for predictive maintenance has been the focus of many studies, usually ...
Today, real-time fault detection and predictive maintenance based on sensor data are actively introd...
This chapter describes how a suitable design of a fault diagnosis system can be successfully applied...
The continued development of mobile robots (MR) must be accompanied by an increase in robotics&rsquo...
Industrial robots are now commonly used in production systems to improve productivity, quality and s...