Probabilistic load forecasting (PLF) is necessary for power system operations and control as it assists in proper scheduling and dispatch. Moreover, PLF adequately captures the uncertainty whether that uncertainty is related to load data or the forecasting model. And there are not many PLF models, and those which exist are very complex or difficult to interpret. This paper proposes a novel neuroevolution algorithm for handling the uncertainty associated with load forecasting. In this paper, a new modified evolutionary algorithm is proposed which is used to find the optimal hyperparameters of 1D-Convolutional neural network (CNN). The probabilistic forecasts are produced by minimizing the mean scaled interval score loss function at 50%, 90% ...
Electricity constitutes an indispensable source of secondary energy in modern society. Accurate and ...
Background: The purpose of the paper is to propose different arrangements of neural networks for sho...
Probabilistic forecasts of electrical loads and photovoltaic generation provide a family of methods ...
The problem of electricity load forecasting has emerged as an essential topic for power systems and ...
The complexity and level of uncertainty present in operation of power systems have significantly gro...
Recently, a hot research topic has been time series forecasting via randomized neural networks and i...
Short- and long-term forecasts have become increasingly important since the rise of highly competiti...
Load forecasting is an important component for energy management system. Precise load forecasting he...
Load forecasting is of crucial importance for operations of electric power systems. In recent years,...
Electrical load forecasting provides knowledge about future consumption and generation of electricit...
Competitive transactions resulting from recent restructuring of the electricity market, have made ac...
International audienceSince electricity plays a crucial role in countries' industrial infrastructure...
Load forecasting is considered vital along with many other important entities required for assessing...
Successfully determining competitive optimal schedules for electricity generation intimately hinges ...
Accurate electricity consumption forecasting in the power grids ensures efficient generation and dis...
Electricity constitutes an indispensable source of secondary energy in modern society. Accurate and ...
Background: The purpose of the paper is to propose different arrangements of neural networks for sho...
Probabilistic forecasts of electrical loads and photovoltaic generation provide a family of methods ...
The problem of electricity load forecasting has emerged as an essential topic for power systems and ...
The complexity and level of uncertainty present in operation of power systems have significantly gro...
Recently, a hot research topic has been time series forecasting via randomized neural networks and i...
Short- and long-term forecasts have become increasingly important since the rise of highly competiti...
Load forecasting is an important component for energy management system. Precise load forecasting he...
Load forecasting is of crucial importance for operations of electric power systems. In recent years,...
Electrical load forecasting provides knowledge about future consumption and generation of electricit...
Competitive transactions resulting from recent restructuring of the electricity market, have made ac...
International audienceSince electricity plays a crucial role in countries' industrial infrastructure...
Load forecasting is considered vital along with many other important entities required for assessing...
Successfully determining competitive optimal schedules for electricity generation intimately hinges ...
Accurate electricity consumption forecasting in the power grids ensures efficient generation and dis...
Electricity constitutes an indispensable source of secondary energy in modern society. Accurate and ...
Background: The purpose of the paper is to propose different arrangements of neural networks for sho...
Probabilistic forecasts of electrical loads and photovoltaic generation provide a family of methods ...