This paper proposes an artificial neuronal network (ANN) estimation-based wind speed sensolress MPPT algorithm for wind turbines equipped with doubly-fed induction generators (DFIG). The ANN is designed to produce the optimal control signal for the DFIG power or speed controller. The optimal parameters of the ANN are determined by using a particle swarm optimization (PSO) algorithm. A 3.6 MW DFIG wind turbine is simulated in PSCAD to evaluate and compare the proposed MPPT method with the traditional tip speed ratio (TSR) and turbine power profile-based MPPT methods in both the speed control and power control modes in variable wind speed conditions
This paper presents a neural network (NN) based wind estimator and related Maximum Power Point Track...
Since wind power is directly influenced by wind speed, long-term wind speed forecasting (WSF) plays ...
International audienceIn this paper, an adaptive control scheme for maximum power point tracking of ...
This paper proposes an artificial neuronal network (ANN) estimation-based wind speed sensolress MPPT...
This paper focuses on developing a novel algorithm which dynamically optimizes the controllers of do...
This paper makes a comparison between two control methods for maximum power point tracking (MPPT) of...
Abstract—This paper focuses on developing a novel algorithm which dynamically optimizes the controll...
This paper proposes the method combining artificial neural network (ANN) with particle swarm optimiz...
AbstractThis paper proposes a Gaussian radial basis function network (GRBFN) based wind speed estima...
Wind turbine generators (WTGs) are usually equipped with mechanical sensors to measure wind speed an...
Doubly Fed Induction Generator (DFIG) needs to get adopted to change in wind speeds with sudden chan...
The aim of this paper is to present a comparative study between two maximum power point tracking (MP...
This paper proposes the method combining artificial neural network with particle swarm optimization ...
In this paper, a Direct Power Control (DPC) based on the switching table and Artificial Neural Netwo...
13301甲第4572号博士(工学)金沢大学博士論文要旨Abstract 以下に掲載:Energy 111 pp.377-388 2016. Elsevier. 共著者:Dinh-Chung Phan...
This paper presents a neural network (NN) based wind estimator and related Maximum Power Point Track...
Since wind power is directly influenced by wind speed, long-term wind speed forecasting (WSF) plays ...
International audienceIn this paper, an adaptive control scheme for maximum power point tracking of ...
This paper proposes an artificial neuronal network (ANN) estimation-based wind speed sensolress MPPT...
This paper focuses on developing a novel algorithm which dynamically optimizes the controllers of do...
This paper makes a comparison between two control methods for maximum power point tracking (MPPT) of...
Abstract—This paper focuses on developing a novel algorithm which dynamically optimizes the controll...
This paper proposes the method combining artificial neural network (ANN) with particle swarm optimiz...
AbstractThis paper proposes a Gaussian radial basis function network (GRBFN) based wind speed estima...
Wind turbine generators (WTGs) are usually equipped with mechanical sensors to measure wind speed an...
Doubly Fed Induction Generator (DFIG) needs to get adopted to change in wind speeds with sudden chan...
The aim of this paper is to present a comparative study between two maximum power point tracking (MP...
This paper proposes the method combining artificial neural network with particle swarm optimization ...
In this paper, a Direct Power Control (DPC) based on the switching table and Artificial Neural Netwo...
13301甲第4572号博士(工学)金沢大学博士論文要旨Abstract 以下に掲載:Energy 111 pp.377-388 2016. Elsevier. 共著者:Dinh-Chung Phan...
This paper presents a neural network (NN) based wind estimator and related Maximum Power Point Track...
Since wind power is directly influenced by wind speed, long-term wind speed forecasting (WSF) plays ...
International audienceIn this paper, an adaptive control scheme for maximum power point tracking of ...