Interest in system identification especially for nonlinear systems has significantly increased in the past few decades. Soft-computing methods which concern computation in an imprecise environment have gained significant attention amid widening studies of explicit mathematical modelling. In this research, three different soft computing techniques that are Multi-layered perceptron neural network using Levenberg-Marquardt (LM), Elman recurrent neural network and adaptive neuro-fuzzy inference system (ANFIS) network are deployed and used for modelling a twin rotor multi-input multi-output system (TRMS). The system is perceived as a challenging engineering problem due to its high nonlinearity, cross coupling between horizontal and vertical axes...
Three nonlinear approaches to model the nonlinear pneumatic servo- drive are presented. The three no...
In this study, an output-based neuro controller was built based on the idea of the adaptive neuro-fu...
Abstract:- The paper presents a hybrid modelling of electrical motors. To improve the performance, t...
Abstract-Artificial intelligence techniques, such as neural networks and fuzzy logic have shown prom...
This paper presents a scrutinized investigation on system identification using artificial neural net...
Modeling of a complex air vehicle such as a helicopter is very challenging task. This is because of ...
The increased utilization of flexible structure systems, such as flexible manipulators and flexibl...
This paper presents an on-line nonlinear dynamic modelling and control approach based on adaptive ne...
Abstract: Artificial intelligence (AI) techniques have a natural harmony that can be made use of to ...
A dynamic control system design has been a great demand in the control engineering community, with ...
This paper presents an evolving neuro-fuzzy network approach (eNFN) to model a twin rotor MIMO syste...
Modelling of innovative aircraft such as unmanned air vehicles (UAVs), X-wing, tilt body and delta-w...
This paper presents a new technique to identify the system parameters without using the system gover...
Modelling of innovative aircraft such as unmanned air vehicles (UAVs), X-wing, tilt body and delta-w...
The BO105 IBC demonstrator of EUROCOPTER Deutschland (ECD) has shown the successful application of 2...
Three nonlinear approaches to model the nonlinear pneumatic servo- drive are presented. The three no...
In this study, an output-based neuro controller was built based on the idea of the adaptive neuro-fu...
Abstract:- The paper presents a hybrid modelling of electrical motors. To improve the performance, t...
Abstract-Artificial intelligence techniques, such as neural networks and fuzzy logic have shown prom...
This paper presents a scrutinized investigation on system identification using artificial neural net...
Modeling of a complex air vehicle such as a helicopter is very challenging task. This is because of ...
The increased utilization of flexible structure systems, such as flexible manipulators and flexibl...
This paper presents an on-line nonlinear dynamic modelling and control approach based on adaptive ne...
Abstract: Artificial intelligence (AI) techniques have a natural harmony that can be made use of to ...
A dynamic control system design has been a great demand in the control engineering community, with ...
This paper presents an evolving neuro-fuzzy network approach (eNFN) to model a twin rotor MIMO syste...
Modelling of innovative aircraft such as unmanned air vehicles (UAVs), X-wing, tilt body and delta-w...
This paper presents a new technique to identify the system parameters without using the system gover...
Modelling of innovative aircraft such as unmanned air vehicles (UAVs), X-wing, tilt body and delta-w...
The BO105 IBC demonstrator of EUROCOPTER Deutschland (ECD) has shown the successful application of 2...
Three nonlinear approaches to model the nonlinear pneumatic servo- drive are presented. The three no...
In this study, an output-based neuro controller was built based on the idea of the adaptive neuro-fu...
Abstract:- The paper presents a hybrid modelling of electrical motors. To improve the performance, t...