Realizing carbon neutral energy generation creates the challenge of accurately predicting time-series generation data for long-term capacity planning and for short-term operational decisions. The key challenges for adopting data-driven decision-making, specifically predictive analytics, can be attributed to data volume and velocity. Data volume poses challenges for data storage and retrieval. Data velocity poses challenges for processing the data near real time for operational decisions or for capacity building. This manuscript proposes a novel prediction method to tackle the above two challenges by using an event-based prediction in place of traditional time series prediction methods. The central concept is to extract meaningful informatio...
The thesis determines the type of deep learning algorithms to compare for a particular dataset that ...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
Power system time series forecasting is an essential part of smart electric grid. It enhances the r...
Realizing carbon neutral energy generation creates the challenge of accurately predicting time-serie...
To balance electricity production and demand, it is required to use different prediction techniques ...
Decarbonizing the energy supply requires extensive use of renewable generation. Their intermittent n...
Time series forecasting is a crucial area of data science that is essential for decision-making acro...
How much electricity is going to be consumed for the next 24 hours? What will be the temperature for...
Big data has evolved as a new research domain in the digital era in which we live today. This domain...
The growing integration of wind turbines into the power grid can only be balanced with precise forec...
The increasing liberalization of European electricity markets, the growing proportion of intermitten...
In this thesis, we develop a collection of deep learning models for time series forecasting. Primary...
The increasing liberalization of European electricity markets, the growing proportion of intermitten...
The energy market relies on forecasting capabilities of both demand and power generation that need t...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
The thesis determines the type of deep learning algorithms to compare for a particular dataset that ...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
Power system time series forecasting is an essential part of smart electric grid. It enhances the r...
Realizing carbon neutral energy generation creates the challenge of accurately predicting time-serie...
To balance electricity production and demand, it is required to use different prediction techniques ...
Decarbonizing the energy supply requires extensive use of renewable generation. Their intermittent n...
Time series forecasting is a crucial area of data science that is essential for decision-making acro...
How much electricity is going to be consumed for the next 24 hours? What will be the temperature for...
Big data has evolved as a new research domain in the digital era in which we live today. This domain...
The growing integration of wind turbines into the power grid can only be balanced with precise forec...
The increasing liberalization of European electricity markets, the growing proportion of intermitten...
In this thesis, we develop a collection of deep learning models for time series forecasting. Primary...
The increasing liberalization of European electricity markets, the growing proportion of intermitten...
The energy market relies on forecasting capabilities of both demand and power generation that need t...
Wind Energy generation depends on the existence of wind, a meteorological phenomena intermittent by ...
The thesis determines the type of deep learning algorithms to compare for a particular dataset that ...
In smart grids and microgrids, time series prediction is a fundamental tool for enabling intelligent...
Power system time series forecasting is an essential part of smart electric grid. It enhances the r...