Anomaly detection in satellite has not been well-documented due to the unavailability of satellite data, while it becomes more and more important with the increasing popularity of satellite applications. Our work focus on the anomaly detection by prediction on the dataset from the satellite, where we try and compare performance among recurrent neural network (RNN), Long Short-Term Memory (LSTM) and conventional neural network (NN). We conclude that LSTM with input length p=16, dimensionality n=32, output length q=2, 128 neurons and without maximum overlap is the best in terms of balanced accuracy. And LSTM with p=128, n=32, q=16, 128 and without maximum overlap outperforms most with respect to AUC metric. We also invent award function as a ...
Recently, there has been a significant amount of interest in satellite telemetry anomaly detection (...
During the lifetime of a satellite malfunctions may occur. Unexpected behaviour are monitored using ...
Anomaly detection, also called outlier detection, on the multivariate time-series data is applicable...
Most satellite communications monitoring tools use simple thresholding of univariate measurements to...
In this thesis, anomalies are defined as data points whose value differs significantly from the norm...
This electronic version was submitted by the student author. The certified thesis is available in th...
We explore the use of Long short-term memory (LSTM) for anomaly detection in temporal data. Due to t...
A satellite image time series (SITS) contains a significant amount of temporal information. By analy...
In order to ensure the validity of sensor data, it must be thoroughly analyzed for various types of ...
Presented on the 29th International Workshop on Principles of Diagnostics, Warsaw 2018 Anomaly dete...
Detecting anomalies in telemetry data captured on-board a spacecraft is a critical aspect of its saf...
As part of the Automated Telemetry Health Monitoring System (ATHMoS) being developed at GSOC, we per...
Life-Log is a term used for the daily monitoring of health conditions and recognizing anomalies from...
International audienceThis work presents a new approach for detection and exclusion (or de-weighting...
International audienceThis paper empirically investigate the design of a fault detection mechanism b...
Recently, there has been a significant amount of interest in satellite telemetry anomaly detection (...
During the lifetime of a satellite malfunctions may occur. Unexpected behaviour are monitored using ...
Anomaly detection, also called outlier detection, on the multivariate time-series data is applicable...
Most satellite communications monitoring tools use simple thresholding of univariate measurements to...
In this thesis, anomalies are defined as data points whose value differs significantly from the norm...
This electronic version was submitted by the student author. The certified thesis is available in th...
We explore the use of Long short-term memory (LSTM) for anomaly detection in temporal data. Due to t...
A satellite image time series (SITS) contains a significant amount of temporal information. By analy...
In order to ensure the validity of sensor data, it must be thoroughly analyzed for various types of ...
Presented on the 29th International Workshop on Principles of Diagnostics, Warsaw 2018 Anomaly dete...
Detecting anomalies in telemetry data captured on-board a spacecraft is a critical aspect of its saf...
As part of the Automated Telemetry Health Monitoring System (ATHMoS) being developed at GSOC, we per...
Life-Log is a term used for the daily monitoring of health conditions and recognizing anomalies from...
International audienceThis work presents a new approach for detection and exclusion (or de-weighting...
International audienceThis paper empirically investigate the design of a fault detection mechanism b...
Recently, there has been a significant amount of interest in satellite telemetry anomaly detection (...
During the lifetime of a satellite malfunctions may occur. Unexpected behaviour are monitored using ...
Anomaly detection, also called outlier detection, on the multivariate time-series data is applicable...