News

The model used for this task was an LSTM Autoencoder. LSTM is a Neural Network capable of modeling short and long term dependanceies in data, therefore its use for time series data is justified. The ...
Anomaly-Detection-with-LSTM-Autoencoder As part of my research and experimentation, I've developed a robust anomaly detection system tailored for time-series data. Anomalies in such data can be ...
Intelligent condition monitoring and anomaly detection approaches have become a crucial key for improving safety and reliability of Renewable Energy Systems (RES). However, many challenges arise when ...
Autoencoder (AE) base architecture has been chosen to leverage its dimension reduction capabilities for relevant feature extraction. Our proposed scheme results show a considerable improvement from ...
To address the issue, this study proposed an innovative anomaly detection algorithm, namely the LSTM Autoencoder with Gaussian Mixture Model (LAGMM). Although these new technologies have many ...