Weather forecasts are an important input to many electricity demand forecasting models. This study investigates the use of weather ensemble predictions in electricity demand forecasting for lead times from 1 to 10 days ahead. A weather ensemble prediction consists of 51 scenarios for a weather variable. We use these scenarios to produce 51 scenarios for the weather-related component of electricity demand. The results show that the average of the demand scenarios is a more accurate demand forecast than that produced using traditional weather forecasts. We use the distribution of the demand scenarios to estimate the demand forecast uncertainty. This compares favourably with estimates produced using univariate volatility forecasting methods
Abstract—This paper introduces a weather-based method for short-term forecasting of aggregate electr...
This empirical paper compares the accuracy of six univariate methods for short-term electricity dema...
Abstract--In recent years, a large literature has evolved on the use of artificial neural networks (...
Probabilistic forecasting of electricity demand (load) facilitates the efficient management and oper...
A major component of electricity network planning is to ensure supply capability into the future, th...
We propose an innovative electricity demand forecasting framework based on three model-selection tec...
interests include exponential smoothing, prediction intervals, quantile regression, combining foreca...
Forecasting of electricity prices is important in deregulated electricity markets for all of the sta...
In recent years, a large amount of literature has evolved on the use of artificial neural networks (...
In this work, we try to solve the problem of day-ahead pre-diction of electricity demand using an en...
Electricity generation output forecasts for wind farms across Europe use numerical weather predictio...
This paper examines the predictive power of weather for electricity prices in day ahead markets in r...
This article presents electricity demand forecasting models for industrial and residential facilitie...
In a deregulated electricity market, forecasting electricity prices is essential to help stakeholder...
This paper examines the predictive power of weather for electricity prices in day-ahead markets in r...
Abstract—This paper introduces a weather-based method for short-term forecasting of aggregate electr...
This empirical paper compares the accuracy of six univariate methods for short-term electricity dema...
Abstract--In recent years, a large literature has evolved on the use of artificial neural networks (...
Probabilistic forecasting of electricity demand (load) facilitates the efficient management and oper...
A major component of electricity network planning is to ensure supply capability into the future, th...
We propose an innovative electricity demand forecasting framework based on three model-selection tec...
interests include exponential smoothing, prediction intervals, quantile regression, combining foreca...
Forecasting of electricity prices is important in deregulated electricity markets for all of the sta...
In recent years, a large amount of literature has evolved on the use of artificial neural networks (...
In this work, we try to solve the problem of day-ahead pre-diction of electricity demand using an en...
Electricity generation output forecasts for wind farms across Europe use numerical weather predictio...
This paper examines the predictive power of weather for electricity prices in day ahead markets in r...
This article presents electricity demand forecasting models for industrial and residential facilitie...
In a deregulated electricity market, forecasting electricity prices is essential to help stakeholder...
This paper examines the predictive power of weather for electricity prices in day-ahead markets in r...
Abstract—This paper introduces a weather-based method for short-term forecasting of aggregate electr...
This empirical paper compares the accuracy of six univariate methods for short-term electricity dema...
Abstract--In recent years, a large literature has evolved on the use of artificial neural networks (...