Due to the recent power events in Texas, power forecasting has been brought national attention. Accurate demand forecasting is necessary to be sure that there is adequate power supply to meet consumer\u27s needs. While Texas has a forecasting model created by the Electricity Reliability Council of Texas (ERCOT), constant efforts are required to ensure that the model stays at the state-of-the-art and is producing the most reliable forecasts possible. This research seeks to provide improved short- and medium-term forecasting models, bringing in state-of-the-art deep learning models to compare to ERCOT’s forecasts. A model that is more accurate than ERCOT’s own models during certain time periods was found. To have the most accurate energy fore...
We use machine learning techniques to forecast Brazilian power electricity consumption (PEC) for sho...
Solar power is generated using photovoltaic (PV) systems all over the world. Because the output powe...
Aguilar Madrid, E., & Antonio, N. (2021). Short-term electricity load forecasting with machine learn...
Due to the recent power events in Texas, power forecasting has been brought national attention. Accu...
With growing energy usage, power outages affect millions of households. This case study focuses on g...
Accurate load forecasting is critical for efficient and reliable operations of the electric power sy...
Forecasting electricity demand and consumption accurately is critical to the optimal and costeffecti...
This paper reports on the effort to develop load-forecasting procedures for the Texas A&M University...
Solar energy is a widely accessible, clean, and sustainable energy source. Solar power harvesting in...
Electricity consumption forecasting plays a crucial role in improving energy efficiency, ensuring st...
Generating and managing the electrical power is one of the important aspects of the electrical grid....
Machine learning methods predict accurately in situations that are adequately included in the learni...
The issue of obtaining reliable forecasting methods for electricity consumption has been widely disc...
From February 14–19, 2021, winter storm Uri blanketed Texas with extreme cold. Tragically, the sever...
Unprecedented winter storms that hit across Texas in February 2021 have caused at least 69 deaths an...
We use machine learning techniques to forecast Brazilian power electricity consumption (PEC) for sho...
Solar power is generated using photovoltaic (PV) systems all over the world. Because the output powe...
Aguilar Madrid, E., & Antonio, N. (2021). Short-term electricity load forecasting with machine learn...
Due to the recent power events in Texas, power forecasting has been brought national attention. Accu...
With growing energy usage, power outages affect millions of households. This case study focuses on g...
Accurate load forecasting is critical for efficient and reliable operations of the electric power sy...
Forecasting electricity demand and consumption accurately is critical to the optimal and costeffecti...
This paper reports on the effort to develop load-forecasting procedures for the Texas A&M University...
Solar energy is a widely accessible, clean, and sustainable energy source. Solar power harvesting in...
Electricity consumption forecasting plays a crucial role in improving energy efficiency, ensuring st...
Generating and managing the electrical power is one of the important aspects of the electrical grid....
Machine learning methods predict accurately in situations that are adequately included in the learni...
The issue of obtaining reliable forecasting methods for electricity consumption has been widely disc...
From February 14–19, 2021, winter storm Uri blanketed Texas with extreme cold. Tragically, the sever...
Unprecedented winter storms that hit across Texas in February 2021 have caused at least 69 deaths an...
We use machine learning techniques to forecast Brazilian power electricity consumption (PEC) for sho...
Solar power is generated using photovoltaic (PV) systems all over the world. Because the output powe...
Aguilar Madrid, E., & Antonio, N. (2021). Short-term electricity load forecasting with machine learn...