The electricity consumption forecasting is a challenging task, because the predictive accuracy is easily affected by multiple external factors, such as society, economics, environment, as well as the renewable energy, including hydro power, wind power and solar power. Particularly, in the smart grid with large amount of data, how to extract valuable information of those external factors timely is the key to the success of electricity consumption forecasting. A method of probability density forecasting based on Least Absolute Shrinkage and Selection Operator-Quantile Regression Neural Network (LASSO-QRNN) is proposed in this paper. First, important features are extracted from external factors affecting the electricity consumption forecasting...
Producción CientíficaThis work proposes a quantile regression neural network based on a novel constr...
Electricity load forecasting is becoming one of the key issues to solve energy crisis problem, and t...
Daily electricity consumption is varying randomly. To improve forecasting accuracy, a Lazy Learning ...
The electricity consumption forecasting is a challenging task, because the predictive accuracy is ea...
Middle-term horizon (months to a year) power consumption prediction is a major challenge in the ener...
We use machine learning techniques to forecast Brazilian power electricity consumption (PEC) for sho...
Effective electricity consumption forecasting is extremely significant for enterprises' electricity ...
Electricity consumption forecast is perceived to be a growing hot topic in such a situation that Chi...
International audienceRecently, there has been a significant emphasis on the forecasting of the elec...
The use of electricity has a significant impact on the environment, energy distribution costs, and e...
Accurate electricity consumption forecasting in the power grids ensures efficient generation and dis...
Seasonal fluctuations in electricity consumption, an uneven load of supply lines reduce not only the...
Monthly electric energy consumption forecasting is important for electricity production planning and...
The tremendous rise of electrical energy demand worldwide has led to many problems related to effici...
With the rapid growth over the past few decades, people are consuming more and more electrical energ...
Producción CientíficaThis work proposes a quantile regression neural network based on a novel constr...
Electricity load forecasting is becoming one of the key issues to solve energy crisis problem, and t...
Daily electricity consumption is varying randomly. To improve forecasting accuracy, a Lazy Learning ...
The electricity consumption forecasting is a challenging task, because the predictive accuracy is ea...
Middle-term horizon (months to a year) power consumption prediction is a major challenge in the ener...
We use machine learning techniques to forecast Brazilian power electricity consumption (PEC) for sho...
Effective electricity consumption forecasting is extremely significant for enterprises' electricity ...
Electricity consumption forecast is perceived to be a growing hot topic in such a situation that Chi...
International audienceRecently, there has been a significant emphasis on the forecasting of the elec...
The use of electricity has a significant impact on the environment, energy distribution costs, and e...
Accurate electricity consumption forecasting in the power grids ensures efficient generation and dis...
Seasonal fluctuations in electricity consumption, an uneven load of supply lines reduce not only the...
Monthly electric energy consumption forecasting is important for electricity production planning and...
The tremendous rise of electrical energy demand worldwide has led to many problems related to effici...
With the rapid growth over the past few decades, people are consuming more and more electrical energ...
Producción CientíficaThis work proposes a quantile regression neural network based on a novel constr...
Electricity load forecasting is becoming one of the key issues to solve energy crisis problem, and t...
Daily electricity consumption is varying randomly. To improve forecasting accuracy, a Lazy Learning ...