This thesis proposes a deep learning anomaly detection pipeline to detect possible anomalies during the operation of a fleet of batteries and presents its development and evaluation. The pipeline employs sensors that connect to each battery in the fleet to remotely collect real-time measurements of their operating characteristics, such as voltage, current, and temperature. The deep learning based time-series anomaly detection model was developed using Variational Autoencoder (VAE) architecture that utilizes either Long Short-Term Memory (LSTM) or, its cousin, Gated Recurrent Unit (GRU) as the encoder and the decoder networks (LSTMVAE and GRUVAE). Both variants were evaluated against three well-known conventional anomaly detection algorithms...
The increased demand of energy storage systems and electric vehicles on the market result in high de...
Digitization of the energy industry, introduction of smart grids and increasing regulation of electr...
Digitization of the energy industry, introduction of smart grids and increasing regulation of electr...
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 ...
The digitalization of energy sector has provided immense amount of data about buildings which create...
The digitalization of energy sector has provided immense amount of data about buildings which create...
The evolution of electrification and autonomous driving on automotive leads to the increasing comple...
The evolution of electrification and autonomous driving on automotive leads to the increasing comple...
As anomaly detection for electrical power steering (EPS) systems has been centralized using model- a...
In this thesis, the use of unsupervised and semi-supervised machine learning techniques was analyzed...
In this thesis, the use of unsupervised and semi-supervised machine learning techniques was analyzed...
The digitalization of the energy industry has made tremendous energy data available. This data is ut...
The digitalization of the energy industry has made tremendous energy data available. This data is ut...
The digitalization of the energy industry has made tremendous energy data available. This data is ut...
The increased demand of energy storage systems and electric vehicles on the market result in high de...
Digitization of the energy industry, introduction of smart grids and increasing regulation of electr...
Digitization of the energy industry, introduction of smart grids and increasing regulation of electr...
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 ...
The digitalization of energy sector has provided immense amount of data about buildings which create...
The digitalization of energy sector has provided immense amount of data about buildings which create...
The evolution of electrification and autonomous driving on automotive leads to the increasing comple...
The evolution of electrification and autonomous driving on automotive leads to the increasing comple...
As anomaly detection for electrical power steering (EPS) systems has been centralized using model- a...
In this thesis, the use of unsupervised and semi-supervised machine learning techniques was analyzed...
In this thesis, the use of unsupervised and semi-supervised machine learning techniques was analyzed...
The digitalization of the energy industry has made tremendous energy data available. This data is ut...
The digitalization of the energy industry has made tremendous energy data available. This data is ut...
The digitalization of the energy industry has made tremendous energy data available. This data is ut...
The increased demand of energy storage systems and electric vehicles on the market result in high de...
Digitization of the energy industry, introduction of smart grids and increasing regulation of electr...
Digitization of the energy industry, introduction of smart grids and increasing regulation of electr...