In this work, a neural controller for wind turbine pitch control is presented. The controller is based on a radial basis function (RBF) network with unsupervised learning algorithm. The RBF network uses the error between the output power and the rated power and its derivative as inputs, while the integral of the error feeds the learning algorithm. A performance analysis of this neurocontrol strategy is carried out, showing the influence of the RBF parameters, wind speed, learning parameters, and control period, on the system response. The neurocontroller has been compared with a proportional-integral-derivative (PID) regulator for the same small wind turbine, obtaining better results. Simulation results show how the learning algorithm allow...
Abstract. In this paper, an adaptive recurrent neural control scheme is applied to a wind turbine wi...
This paper proposes a Neurocontrol (NNC) for a Twin Rotor Aerodynamics System (TRAS) by a simple bac...
This article presents an application of neural network-based Model Predictive Control (MPC) to impro...
Small-scale wind turbine is typically designed to resisted extreme wind; this work aims to adjust th...
In this work, a controller based on Radial Basis Functions (RBF) for network adaptation is considere...
Individual pitch control has shown great capability of alleviating the oscillating loads experienced...
A neural network controller is presented for the direct power control of a doubly fed induction gene...
Wind turbine (WT) pitch control is a challenging issue due to the non-linearities of the wind device...
International audienceIn this paper, a new hybrid method which combines radial basis function (RBF) ...
In recent years, world energy crisis is getting serious. Much new energy is found to take the posit...
This paper presents a novel adaptive fault-tolerant neural-based control design for wind turbines wi...
The crescent growth in the wind energy demands more reliable and efficient wind turbines with an inc...
Abstract – Control of pitch angle of turbine blades is among the controlling methods in the wind tur...
The Machine Learning-Based Wind Turbine Control System (MLBWTCS) is a new technology that uses machi...
Load control strategies for wind turbines are used to reduce the structural wear of the turbine with...
Abstract. In this paper, an adaptive recurrent neural control scheme is applied to a wind turbine wi...
This paper proposes a Neurocontrol (NNC) for a Twin Rotor Aerodynamics System (TRAS) by a simple bac...
This article presents an application of neural network-based Model Predictive Control (MPC) to impro...
Small-scale wind turbine is typically designed to resisted extreme wind; this work aims to adjust th...
In this work, a controller based on Radial Basis Functions (RBF) for network adaptation is considere...
Individual pitch control has shown great capability of alleviating the oscillating loads experienced...
A neural network controller is presented for the direct power control of a doubly fed induction gene...
Wind turbine (WT) pitch control is a challenging issue due to the non-linearities of the wind device...
International audienceIn this paper, a new hybrid method which combines radial basis function (RBF) ...
In recent years, world energy crisis is getting serious. Much new energy is found to take the posit...
This paper presents a novel adaptive fault-tolerant neural-based control design for wind turbines wi...
The crescent growth in the wind energy demands more reliable and efficient wind turbines with an inc...
Abstract – Control of pitch angle of turbine blades is among the controlling methods in the wind tur...
The Machine Learning-Based Wind Turbine Control System (MLBWTCS) is a new technology that uses machi...
Load control strategies for wind turbines are used to reduce the structural wear of the turbine with...
Abstract. In this paper, an adaptive recurrent neural control scheme is applied to a wind turbine wi...
This paper proposes a Neurocontrol (NNC) for a Twin Rotor Aerodynamics System (TRAS) by a simple bac...
This article presents an application of neural network-based Model Predictive Control (MPC) to impro...