This paper introduces a novel data driven yaw control algorithm synthesis method based on Reinforcement Learning (RL) for a variable pitch variable speed wind turbine. Yaw control has not been extendedly studied in the literature; in fact, most of the currently considered developments in the scope of the wind energy are oriented to the pitch and speed control. The most important drawbacks of the yaw control are the very large time constants and the strict yaw angle change rate constraints due to the high mechanical loads when the wind turbine angle is changed in order to adequate it to the wind speed orientation. An optimal yaw control algorithm needs to be designed in order to adapt the rotor orientation depending on the wind turbine dynam...
The demand for wind energy harvesting has grown significantly to mitigate the global challenges of c...
With the fast development of wind energy, new technological challenges emerge, which calls for new r...
The main objective of this study is to employ the Extreme Gradient Boosting (XGBoost) machine learni...
This paper introduces a novel data driven yaw control algorithm synthesis method based on Reinforcem...
En esta investigación, las redes neuronales artificiales (RNA) desarrolladas en python se comparan y...
Load control strategies for wind turbines are used to reduce the structural wear of the turbine with...
Wind energy as one of the new renewable energies has an important role in replacing fossil energy s...
A model-free deep reinforcement learning (DRL) method is proposed in this paper to maximize the tota...
Wind turbine (WT) pitch control is a challenging issue due to the non-linearities of the wind device...
In this work, a torque controller for a variable rotational speed wind turbine has been modelled usi...
The structural control of floating wind turbines using active tuned mass damper is investigated in t...
This paper aims to maximize the total power generation for wind farms subject to strong wake effects...
The primary focus of this paper is centered on the numerical analysis and optimal control of vertica...
This study focuses on the numerical analysis and optimal control of vertical-axis wind turbines (VAW...
This work is aimed at optimizing the wind turbine rotor speed setpoint algorithm. Several intelligen...
The demand for wind energy harvesting has grown significantly to mitigate the global challenges of c...
With the fast development of wind energy, new technological challenges emerge, which calls for new r...
The main objective of this study is to employ the Extreme Gradient Boosting (XGBoost) machine learni...
This paper introduces a novel data driven yaw control algorithm synthesis method based on Reinforcem...
En esta investigación, las redes neuronales artificiales (RNA) desarrolladas en python se comparan y...
Load control strategies for wind turbines are used to reduce the structural wear of the turbine with...
Wind energy as one of the new renewable energies has an important role in replacing fossil energy s...
A model-free deep reinforcement learning (DRL) method is proposed in this paper to maximize the tota...
Wind turbine (WT) pitch control is a challenging issue due to the non-linearities of the wind device...
In this work, a torque controller for a variable rotational speed wind turbine has been modelled usi...
The structural control of floating wind turbines using active tuned mass damper is investigated in t...
This paper aims to maximize the total power generation for wind farms subject to strong wake effects...
The primary focus of this paper is centered on the numerical analysis and optimal control of vertica...
This study focuses on the numerical analysis and optimal control of vertical-axis wind turbines (VAW...
This work is aimed at optimizing the wind turbine rotor speed setpoint algorithm. Several intelligen...
The demand for wind energy harvesting has grown significantly to mitigate the global challenges of c...
With the fast development of wind energy, new technological challenges emerge, which calls for new r...
The main objective of this study is to employ the Extreme Gradient Boosting (XGBoost) machine learni...