This paper presents a new idea for a forecasting approach which seeks to exploit the information contained within US EIA energy forecasts and related Google trends data for generating a new and improved forecast. The novel forecasting approach can be exploited by using a multivariate system which can consider data with different series lengths and a time lag into the future. Using real historical data, an official forecast for the same variable, and Google Trends search data, we illustrate the possibility of generating a comparatively more accurate forecast for an energy-related variable. The accuracy of the newly generated forecasts are evaluated by comparing with the actual observations and the official forecast itself. We find that the n...
Due to the increased capabilities of microprocessors and the advent of graphics processing units (GP...
Energy is considered a prime agent in the generation of wealth and also a significant factor in econ...
A new approach is presented in this work with the aim of predicting time series behaviors. A previou...
The internet gives us free access to a variety of published forecasts. Motivated by this increasing ...
In this work, energy time series forecasting competitions from the Schneider Company, the Kaggle Onl...
Published in Renewable Energy and Power Quality Journal, n°13, mars 2015International audienceThis c...
Realizing carbon neutral energy generation creates the challenge of accurately predicting time-serie...
How much electricity is going to be consumed for the next 24 hours? What will be the temperature for...
With the advent of smart metering technology the amount of energy data will increase significantly a...
The aim of this study is to develop novel forecasting methodologies. The applications of our propose...
Data mining has become an essential tool during the last decade to analyze large sets of data. The v...
This editorial summarizes the performance of the special issue entitled Energy Time Series Forecast...
This paper investigates the benefits of internet search data in the form of Google Trends for nowcas...
This paper presents a new approach to forecast the behavior of time series based on similarity of pa...
The forecasting of time series data is a classical research topic in the field of resource economics...
Due to the increased capabilities of microprocessors and the advent of graphics processing units (GP...
Energy is considered a prime agent in the generation of wealth and also a significant factor in econ...
A new approach is presented in this work with the aim of predicting time series behaviors. A previou...
The internet gives us free access to a variety of published forecasts. Motivated by this increasing ...
In this work, energy time series forecasting competitions from the Schneider Company, the Kaggle Onl...
Published in Renewable Energy and Power Quality Journal, n°13, mars 2015International audienceThis c...
Realizing carbon neutral energy generation creates the challenge of accurately predicting time-serie...
How much electricity is going to be consumed for the next 24 hours? What will be the temperature for...
With the advent of smart metering technology the amount of energy data will increase significantly a...
The aim of this study is to develop novel forecasting methodologies. The applications of our propose...
Data mining has become an essential tool during the last decade to analyze large sets of data. The v...
This editorial summarizes the performance of the special issue entitled Energy Time Series Forecast...
This paper investigates the benefits of internet search data in the form of Google Trends for nowcas...
This paper presents a new approach to forecast the behavior of time series based on similarity of pa...
The forecasting of time series data is a classical research topic in the field of resource economics...
Due to the increased capabilities of microprocessors and the advent of graphics processing units (GP...
Energy is considered a prime agent in the generation of wealth and also a significant factor in econ...
A new approach is presented in this work with the aim of predicting time series behaviors. A previou...