There are several new emerging environments, generating data spatially spread and interrelated. These applications reinforce the importance of the development of analytical systems capable to sense the environment and receive data from different locations. In this study we explore collaborative methodologies in a real-world problem: wind power prediction. Wind power is considered one of the most rapidly growing sources of electricity generation all over the world. The problem consists of monitoring a network of wind farms that collaborate by sharing information in a very short-term forecasting problem. We use an auto-regressive integrated moving average (ARIMA) model. The Symbolic Aggregate Approximation (SAX) is used in the selection of th...
The integration of wind farms in power networks has become an important problem. This is because the...
International audienceThe large density of wind farm installations in an electricity grid imposes se...
Most of the existing statistical forecasting methods utilize the historical values of wind power to ...
Concerns about climate change have never been so strong at the global level. One of the major challe...
International audienceIn the coming years, ensuring the electricity supply will be one of the most i...
As the integration of wind power energy resources into power system, the enhancement of the accuracy...
The share of wind energy in total installed power capacity has grown rapidly in recent years around ...
Electricity markets throughout the world are changing to allow the integration of alternative energy...
The increasing amount of intermittant wind energy sources connected to the power grid present severa...
The ability to precisely forecast power generation for large wind farms is very important, since suc...
The aim of this study is to identify a class of models appropriate to describe the wind power produc...
Short-term wind power forecasting is based on modelling the complex relationship between the weather...
The authors would like to acknowledge the company Zéphyr ENR, and especially its CEO Christian Briar...
Wind power experiences a tremendous development of its installed capacities in the world. Though, th...
Generation of electric energy through wind turbines is one of the practically inexhaustible alternat...
The integration of wind farms in power networks has become an important problem. This is because the...
International audienceThe large density of wind farm installations in an electricity grid imposes se...
Most of the existing statistical forecasting methods utilize the historical values of wind power to ...
Concerns about climate change have never been so strong at the global level. One of the major challe...
International audienceIn the coming years, ensuring the electricity supply will be one of the most i...
As the integration of wind power energy resources into power system, the enhancement of the accuracy...
The share of wind energy in total installed power capacity has grown rapidly in recent years around ...
Electricity markets throughout the world are changing to allow the integration of alternative energy...
The increasing amount of intermittant wind energy sources connected to the power grid present severa...
The ability to precisely forecast power generation for large wind farms is very important, since suc...
The aim of this study is to identify a class of models appropriate to describe the wind power produc...
Short-term wind power forecasting is based on modelling the complex relationship between the weather...
The authors would like to acknowledge the company Zéphyr ENR, and especially its CEO Christian Briar...
Wind power experiences a tremendous development of its installed capacities in the world. Though, th...
Generation of electric energy through wind turbines is one of the practically inexhaustible alternat...
The integration of wind farms in power networks has become an important problem. This is because the...
International audienceThe large density of wind farm installations in an electricity grid imposes se...
Most of the existing statistical forecasting methods utilize the historical values of wind power to ...