The deployment of smart grids and renewable energy dispatch centers motivates the development of forecasting techniques that take advantage of near real-time measurements collected from geographically distributed sensors. This paper describes a forecasting methodology that explores a set of different sparse structures for the vector autoregression (VAR) model using the Least Absolute Shrinkage and Selection Operator (LASSO) framework. The alternating direction method of multipliers is applied to fit the different VAR-LASSO variants and create a scalable forecasting method supported by parallel computing and fast convergence, which can be used by system operators and renewable power plant operators. A test case with 66 wind power plants is u...
The massive penetration of renewable power generation in modern power grids is an effective way to r...
As the most efficient renewable energy source for generating electricity in a modern electricity net...
Many European energy supply systems are increasingly penetrated by wind energy. In order to be able ...
The deployment of smart grids and renewable energy dispatch centers motivates the development of for...
The ever-increasing number of wind farms has brought both challenges and opportunities in the develo...
A spatio-temporal method for producing very-short-term parametric probabilistic wind power forecasts...
Wind power is a renewable energy source that is growing rapidly globally. A disadvantage of wind pow...
Vector autoregression (VAR) is a fundamental tool for modeling multivariate time series. However, as...
We find an application of the lasso (least absolute shrinkage and selection operator) in sub-5-min s...
There are several new emerging environments, generating data spatially spread and interrelated. Thes...
Abstract Weather forecasting is crucial to both the demand and supply sides of electricity systems. ...
We use machine learning techniques to forecast Brazilian power electricity consumption (PEC) for sho...
Abstract—State-of-the-art statistical learning techniques are adapted in this contribution for real-...
Background The planning and control of wind power production rely heavily on short-term wind speed f...
Improving the accuracy of wind power forecasting can guarantee the stable dispatch and safe operatio...
The massive penetration of renewable power generation in modern power grids is an effective way to r...
As the most efficient renewable energy source for generating electricity in a modern electricity net...
Many European energy supply systems are increasingly penetrated by wind energy. In order to be able ...
The deployment of smart grids and renewable energy dispatch centers motivates the development of for...
The ever-increasing number of wind farms has brought both challenges and opportunities in the develo...
A spatio-temporal method for producing very-short-term parametric probabilistic wind power forecasts...
Wind power is a renewable energy source that is growing rapidly globally. A disadvantage of wind pow...
Vector autoregression (VAR) is a fundamental tool for modeling multivariate time series. However, as...
We find an application of the lasso (least absolute shrinkage and selection operator) in sub-5-min s...
There are several new emerging environments, generating data spatially spread and interrelated. Thes...
Abstract Weather forecasting is crucial to both the demand and supply sides of electricity systems. ...
We use machine learning techniques to forecast Brazilian power electricity consumption (PEC) for sho...
Abstract—State-of-the-art statistical learning techniques are adapted in this contribution for real-...
Background The planning and control of wind power production rely heavily on short-term wind speed f...
Improving the accuracy of wind power forecasting can guarantee the stable dispatch and safe operatio...
The massive penetration of renewable power generation in modern power grids is an effective way to r...
As the most efficient renewable energy source for generating electricity in a modern electricity net...
Many European energy supply systems are increasingly penetrated by wind energy. In order to be able ...