In this paper, a particle swarm optimization with ε-greedy (ePSO) algorithm and group search optimizer (GSO) algorithm are compared with the classic PSO algorithm for the optimal control of DFIG wind generation based on small signal stability analysis (SSSA). In the modified ePSO algorithm, the cooperative learning principle among particles has been introduced, namely, particles not only adjust its own flying speed according to itself and the best individual of the swarm but also learn from other best particles according to certain probability. The proposed ePSO algorithm has been tested on benchmark functions and demonstrated its effectiveness in high-dimension multi-modal optimization. Then ePSO is employed to tune the controller paramete...
This paper focuses on developing a novel algorithm which dynamically optimizes the controllers of do...
Recent advances in high-throughput technologies and an increased knowledge of biological systems hav...
This paper proposes the adaptive particle swarm optimization (APSO) technique to control the active ...
There are many types of generators used within wind energy such as doubly fed induction generator (D...
Optimal control of large-scale wind farm has become a critical issue for the development of renewabl...
A novel method using particle swarm optimisation (PSO) is proposed for optimising parameters of cont...
In this work, a searching space minimization-based particle swarm optimization (SSM-PSO) scheme has ...
In order to improve the efficiency of wind energy, it is necessary to maximum power point tracking (...
Due to the great level of wind energy penetration in the existing network, huge efforts have been di...
The paper demonstrates the feasibility of an optimal backstepping controller for doubly fed inductio...
This paper presents a comparative study between genetic algorithm and particle swarm optimization me...
Abstract—This paper focuses on developing a novel algorithm which dynamically optimizes the controll...
The integration of wind farms into the electricity grid has become an important challenge for the ut...
The paper demonstrates the feasibility of an optimal backstepping controller for doubly fed inductio...
In modern power systems, alternative energy generating sources are integrated with conventional ener...
This paper focuses on developing a novel algorithm which dynamically optimizes the controllers of do...
Recent advances in high-throughput technologies and an increased knowledge of biological systems hav...
This paper proposes the adaptive particle swarm optimization (APSO) technique to control the active ...
There are many types of generators used within wind energy such as doubly fed induction generator (D...
Optimal control of large-scale wind farm has become a critical issue for the development of renewabl...
A novel method using particle swarm optimisation (PSO) is proposed for optimising parameters of cont...
In this work, a searching space minimization-based particle swarm optimization (SSM-PSO) scheme has ...
In order to improve the efficiency of wind energy, it is necessary to maximum power point tracking (...
Due to the great level of wind energy penetration in the existing network, huge efforts have been di...
The paper demonstrates the feasibility of an optimal backstepping controller for doubly fed inductio...
This paper presents a comparative study between genetic algorithm and particle swarm optimization me...
Abstract—This paper focuses on developing a novel algorithm which dynamically optimizes the controll...
The integration of wind farms into the electricity grid has become an important challenge for the ut...
The paper demonstrates the feasibility of an optimal backstepping controller for doubly fed inductio...
In modern power systems, alternative energy generating sources are integrated with conventional ener...
This paper focuses on developing a novel algorithm which dynamically optimizes the controllers of do...
Recent advances in high-throughput technologies and an increased knowledge of biological systems hav...
This paper proposes the adaptive particle swarm optimization (APSO) technique to control the active ...