Load forecasting plays a critical role in energy management, and power systems, enabling efficient resource allocation, improved grid stability, and effective energy planning and distribution. Without accurate very short term load forecasting, utility management companies face uncertain load patterns, unrealistic prices, and poor infrastructure planning. This study aims to compare and evaluate different machine learning models and to recommend a model that is best suited for very short term load forecasting for cities as well as the most important predictors. To achieve this aim, quantitative research methodology, Case study research strategy were employed, and the research method used was quantitative research method. Data for this study w...
One of the most important research topics in smart grid technology is load forecasting, because accu...
Power system demand forecasting is a crucial task in the power system engineering field. This is due...
Aguilar Madrid, E., & Antonio, N. (2021). Short-term electricity load forecasting with machine learn...
Since electricity plays a crucial role in industrial infrastructures of countries, power companies a...
A smart grid is the future vision of power systems that will be enabled by artificial intelligence (...
Short-term load forecasting (STLF) plays a pivotal role in the electricity industry because it helps...
Electricity load forecasting is an important part of power system dispatching. Accurately forecastin...
International audienceSince electricity plays a crucial role in countries' industrial infrastructure...
The focus of this thesis is the use of machine learning algorithms to perform next step short term l...
Background: With the development of smart grids, accurate electric load forecasting has become incre...
In the context of energy transition in Germany, precise load forecasting enables reducing the impact...
Electric Load Forecasting is essential for the utility companies for energy management based on the ...
Abstract—Load forecasting forms the basis of demand response planning in energy trading markets wher...
Electricity load forecasting provides the critical information required for power institutions and a...
Producción CientíficaThis work brings together and applies a large representation of the most novel ...
One of the most important research topics in smart grid technology is load forecasting, because accu...
Power system demand forecasting is a crucial task in the power system engineering field. This is due...
Aguilar Madrid, E., & Antonio, N. (2021). Short-term electricity load forecasting with machine learn...
Since electricity plays a crucial role in industrial infrastructures of countries, power companies a...
A smart grid is the future vision of power systems that will be enabled by artificial intelligence (...
Short-term load forecasting (STLF) plays a pivotal role in the electricity industry because it helps...
Electricity load forecasting is an important part of power system dispatching. Accurately forecastin...
International audienceSince electricity plays a crucial role in countries' industrial infrastructure...
The focus of this thesis is the use of machine learning algorithms to perform next step short term l...
Background: With the development of smart grids, accurate electric load forecasting has become incre...
In the context of energy transition in Germany, precise load forecasting enables reducing the impact...
Electric Load Forecasting is essential for the utility companies for energy management based on the ...
Abstract—Load forecasting forms the basis of demand response planning in energy trading markets wher...
Electricity load forecasting provides the critical information required for power institutions and a...
Producción CientíficaThis work brings together and applies a large representation of the most novel ...
One of the most important research topics in smart grid technology is load forecasting, because accu...
Power system demand forecasting is a crucial task in the power system engineering field. This is due...
Aguilar Madrid, E., & Antonio, N. (2021). Short-term electricity load forecasting with machine learn...