Das Erkennen von Anomalien in Sensordaten ist ein wichtiger Anwendungsfall in der Industrie, um Fehler in maschinellen Prozessen frühzeitig erkennen zu können und potentiellen Schäden vorzubeugen. In dieser Arbeit wird ein Deep-Learning-Verfahren entwickelt, welches in mehrdimensionalen Sensordaten ungewöhnliche Muster erkennen kann. Dafür werden Echtdaten aus einer industriellen Anwendung verwendet.Anomaly detection is crucial for the procactive detection of fatal failures of machines in industry applications. This thesis implements a deep learning algorithm for the task of anomaly detection in multivariate sensor data. The dataset is taken from a real-world application
The impact of an anomaly is domain-dependent. In a dataset of network activities, an anomaly can imp...
This paper presents a novel approach for anomaly detection in industrial processes. The system solel...
In modern manufacturing scenarios, detecting anomalies in production systems is pivotal to keep high...
In many real-world applications today, it is critical to continuously record and monitor certain mac...
Anomaly detection, also called outlier detection, on the multivariate time-series data is applicable...
Abstract: In smart manufacturing, the automation of anomaly detection is essential for increasing p...
In recent years, the advancement of industry 4.0 and smart manufacturing has made a large number of ...
As industries become automated and connectivity technologies advance, a wide range of systems contin...
The occurrence of anomalies and unexpected, process-related faults is a major problem for manufactur...
With the development of hardware technology, we can collect increasingly reliable time series data, ...
Nowadays, multivariate time series data are increasingly collected in various real world systems, e....
The recent development and spread of artificial intelligence-based techniques, particularly deep lea...
International audienceThis research investigates detecting machine failures in a manufacturing proce...
Detecting anomalies in time series data is becoming mainstream in a wide variety of industrial appli...
Anomaly detection in multivariate time series is a major issue in many fields. The increasing comple...
The impact of an anomaly is domain-dependent. In a dataset of network activities, an anomaly can imp...
This paper presents a novel approach for anomaly detection in industrial processes. The system solel...
In modern manufacturing scenarios, detecting anomalies in production systems is pivotal to keep high...
In many real-world applications today, it is critical to continuously record and monitor certain mac...
Anomaly detection, also called outlier detection, on the multivariate time-series data is applicable...
Abstract: In smart manufacturing, the automation of anomaly detection is essential for increasing p...
In recent years, the advancement of industry 4.0 and smart manufacturing has made a large number of ...
As industries become automated and connectivity technologies advance, a wide range of systems contin...
The occurrence of anomalies and unexpected, process-related faults is a major problem for manufactur...
With the development of hardware technology, we can collect increasingly reliable time series data, ...
Nowadays, multivariate time series data are increasingly collected in various real world systems, e....
The recent development and spread of artificial intelligence-based techniques, particularly deep lea...
International audienceThis research investigates detecting machine failures in a manufacturing proce...
Detecting anomalies in time series data is becoming mainstream in a wide variety of industrial appli...
Anomaly detection in multivariate time series is a major issue in many fields. The increasing comple...
The impact of an anomaly is domain-dependent. In a dataset of network activities, an anomaly can imp...
This paper presents a novel approach for anomaly detection in industrial processes. The system solel...
In modern manufacturing scenarios, detecting anomalies in production systems is pivotal to keep high...