Abstract-Artificial intelligence techniques, such as neural networks and fuzzy logic have shown promising results for modelling of nonlinear systems whilst traditional approaches are rather insufficient due to difficulty in modelling of highly nonlinear components in the system. A laboratory set-up that resembles the behaviour of a helicopter, namely twin rotor multiinput multi-output system (TRMS) is used as an experimental rig in this research. An adaptive neuro-fuzzy inference system (ANFIS) tuned by particle swarm optimization (PSO) algorithm is developed in search for non-parametric model for the TRMS. The antecedent parameters of the ANFIS are optimized by a PSO algorithm and the consequent parameters are updated using recursive least...
This paper presents the development of an improved spiral dynamic optimization algorithm with applic...
A flywheel energy storage system (FESS) is an effective energy-saving device. It works by accelerati...
This paper proposes a novel method of training the parameters of adaptive-network-based fuzzy infere...
Artificial intelligence techniques, such as neural networks and fuzzy logic have shown promising r...
Interest in system identification especially for nonlinear systems has significantly increased in th...
This paper presents an on-line nonlinear dynamic modelling and control approach based on adaptive ne...
The increased utilization of flexible structure systems, such as flexible manipulators and flexibl...
The predictions for the original chaos patterns can be used to correct the distorted chaos pattern w...
A dynamic control system design has been a great demand in the control engineering community, with ...
System identification in vibrating environments has been a matter of concern for researchers in many...
This paper presents an evolving neuro-fuzzy network approach (eNFN) to model a twin rotor MIMO syste...
ANFIS is combining a neural network with a fuzzy system results in a hybrid neuro-fuzzy system, capa...
Adaptive Neural Fuzzy Inference Systems ANFIS have an increasing tendency to be used in scientific r...
In this paper, we propose a new on-line learning algorithm for the non-linear system identification:...
This paper presents the development of an improved spiral dynamic optimization algorithm with applic...
This paper presents the development of an improved spiral dynamic optimization algorithm with applic...
A flywheel energy storage system (FESS) is an effective energy-saving device. It works by accelerati...
This paper proposes a novel method of training the parameters of adaptive-network-based fuzzy infere...
Artificial intelligence techniques, such as neural networks and fuzzy logic have shown promising r...
Interest in system identification especially for nonlinear systems has significantly increased in th...
This paper presents an on-line nonlinear dynamic modelling and control approach based on adaptive ne...
The increased utilization of flexible structure systems, such as flexible manipulators and flexibl...
The predictions for the original chaos patterns can be used to correct the distorted chaos pattern w...
A dynamic control system design has been a great demand in the control engineering community, with ...
System identification in vibrating environments has been a matter of concern for researchers in many...
This paper presents an evolving neuro-fuzzy network approach (eNFN) to model a twin rotor MIMO syste...
ANFIS is combining a neural network with a fuzzy system results in a hybrid neuro-fuzzy system, capa...
Adaptive Neural Fuzzy Inference Systems ANFIS have an increasing tendency to be used in scientific r...
In this paper, we propose a new on-line learning algorithm for the non-linear system identification:...
This paper presents the development of an improved spiral dynamic optimization algorithm with applic...
This paper presents the development of an improved spiral dynamic optimization algorithm with applic...
A flywheel energy storage system (FESS) is an effective energy-saving device. It works by accelerati...
This paper proposes a novel method of training the parameters of adaptive-network-based fuzzy infere...