As anomaly detection for electrical power steering (EPS) systems has been centralized using model- and knowledge-based approaches, EPS system have become complex and more sophisticated, thereby requiring enhanced reliability and safety. Since most current detection methods rely on prior knowledge, it is difficult to identify new or previously unknown anomalies. In this paper, we propose a deep learning approach that consists of a two-stage process using an autoencoder and long short-term memory (LSTM) to detect anomalies in EPS sensor data. First, we train our model on EPS data by employing an autoencoder to extract features and compress them into a latent representation. The compressed features are fed into the LSTM network to capture any ...
In the rapidly evolving Industry 4.0 space, predictive maintenance is shifting towards data-driven t...
Electric motors are used extensively in numerous industries, and their failure can result not only i...
As diversity of electro-data anomaly, the methods based on artificial feature are becoming more diff...
The recent development and spread of artificial intelligence-based techniques, particularly deep lea...
Anomaly in mechanical systems may cause equipment to break down with serious safety, environment, an...
The impact of an anomaly is domain-dependent. In a dataset of network activities, an anomaly can imp...
Predictive maintenance (PdM) systems have the potential to detect underlying issues in electric moto...
The reliability and health of bushings in high-voltage (HV) power transformers is essential in the p...
Predictive maintenance (PdM) systems have the potential to detect underlying issues in electric moto...
Diagnosing faults in electric vehicles (EVs) is a great challenge. The purpose of this paper is to d...
International audienceDiagnosing faults in electric vehicles (EVs) is a great challenge. The purpose...
This thesis proposes a deep learning anomaly detection pipeline to detect possible anomalies during ...
This thesis proposes a deep learning anomaly detection pipeline to detect possible anomalies during ...
© 2021 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Electrical anomalies in residential buildings represent a serious problem that can unpredictably cha...
In the rapidly evolving Industry 4.0 space, predictive maintenance is shifting towards data-driven t...
Electric motors are used extensively in numerous industries, and their failure can result not only i...
As diversity of electro-data anomaly, the methods based on artificial feature are becoming more diff...
The recent development and spread of artificial intelligence-based techniques, particularly deep lea...
Anomaly in mechanical systems may cause equipment to break down with serious safety, environment, an...
The impact of an anomaly is domain-dependent. In a dataset of network activities, an anomaly can imp...
Predictive maintenance (PdM) systems have the potential to detect underlying issues in electric moto...
The reliability and health of bushings in high-voltage (HV) power transformers is essential in the p...
Predictive maintenance (PdM) systems have the potential to detect underlying issues in electric moto...
Diagnosing faults in electric vehicles (EVs) is a great challenge. The purpose of this paper is to d...
International audienceDiagnosing faults in electric vehicles (EVs) is a great challenge. The purpose...
This thesis proposes a deep learning anomaly detection pipeline to detect possible anomalies during ...
This thesis proposes a deep learning anomaly detection pipeline to detect possible anomalies during ...
© 2021 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Electrical anomalies in residential buildings represent a serious problem that can unpredictably cha...
In the rapidly evolving Industry 4.0 space, predictive maintenance is shifting towards data-driven t...
Electric motors are used extensively in numerous industries, and their failure can result not only i...
As diversity of electro-data anomaly, the methods based on artificial feature are becoming more diff...