One of the biggest challenges for the fault diagnosis research of industrial robots is that the normal data is far more than the fault data; that is, the data is imbalanced. The traditional diagnosis approaches of industrial robots are more biased toward the majority categories, which makes the diagnosis accuracy of the minority categories decrease. To solve the imbalanced problem, the traditional algorithm is improved by using cost-sensitive learning, single-class learning and other approaches. However, these algorithms also have a series of problems. For instance, it is difficult to estimate the true misclassification cost, overfitting, and long computation time. Therefore, a fault diagnosis approach for industrial robots, based on the Mu...
Industrial robots have long been used in production systems in order to improve productivity, qualit...
This work presents the preliminary research towards developing an adaptive tool for fault detection ...
Fault diagnosis plays a vital role in assessing the health management of industrial robots and impro...
The success of deep learning in the field of fault diagnosis depends on a large number of training d...
Today, real-time fault detection and predictive maintenance based on sensor data are actively introd...
The work presented in this paper focuses on the comparison of well-known and new fault-diagnosis alg...
With increasing customer demand, industry 4.0 gained a lot of interest, which is based on smart fact...
Intelligent fault detection systems using machine learning can be applied to learn to spot anomalies...
This chapter describes how a suitable design of a fault diagnosis system can be successfully applied...
Fault identification is fundamental to condition monitoring. An identification method for a single f...
[[abstract]]© 2007 Institute of Electrical and Electronics Engineers - In classification problems, t...
Industrial robots are one of the most typical machines in smart manufacturing systems. Their joint b...
Industrial robots are one of the most typical machines in smart manufacturing systems. Their joint b...
The accurate diagnosis of the compound fault of industrial robots can be highly beneficial to mainte...
The work presented in this paper focuses on the comparison of well-known and new techniques for desi...
Industrial robots have long been used in production systems in order to improve productivity, qualit...
This work presents the preliminary research towards developing an adaptive tool for fault detection ...
Fault diagnosis plays a vital role in assessing the health management of industrial robots and impro...
The success of deep learning in the field of fault diagnosis depends on a large number of training d...
Today, real-time fault detection and predictive maintenance based on sensor data are actively introd...
The work presented in this paper focuses on the comparison of well-known and new fault-diagnosis alg...
With increasing customer demand, industry 4.0 gained a lot of interest, which is based on smart fact...
Intelligent fault detection systems using machine learning can be applied to learn to spot anomalies...
This chapter describes how a suitable design of a fault diagnosis system can be successfully applied...
Fault identification is fundamental to condition monitoring. An identification method for a single f...
[[abstract]]© 2007 Institute of Electrical and Electronics Engineers - In classification problems, t...
Industrial robots are one of the most typical machines in smart manufacturing systems. Their joint b...
Industrial robots are one of the most typical machines in smart manufacturing systems. Their joint b...
The accurate diagnosis of the compound fault of industrial robots can be highly beneficial to mainte...
The work presented in this paper focuses on the comparison of well-known and new techniques for desi...
Industrial robots have long been used in production systems in order to improve productivity, qualit...
This work presents the preliminary research towards developing an adaptive tool for fault detection ...
Fault diagnosis plays a vital role in assessing the health management of industrial robots and impro...