In this paper, a novel reactive power based model reference neural learning adaptive system (RP-MRNLAS) is proposed. The model reference adaptive system (MRAS) based speed estimation is one of the most popular methods used for sensor-less controlled induction motor drives. In conventional MRAS, the error adaptation is done using a Proportional-integral-(PI). The non-linear mapping capability of a neural network (NN) and the powerful learning algorithms have increased the applications of NN in power electronics and drives. Thus, a neural learning algorithm is used for the adaptation mechanism in MRAS and is often referred to as a model reference neural learning adaptive system (MRNLAS). In MRNLAS, the error between the reference and neural l...
This paper presents a comparative study of three algorithms for learning artificial neural network. ...
This paper describes a newly developed speed sensorless drive based on neural networks. A backpropag...
Abstract:- This paper presents a speed estimation method using neural networks (NN) in a vector cont...
In this paper, a novel reactive power based model reference neural learning adaptive system (RP-MRNL...
This paper presents a novel speed estimator using Reactive Power based Model Reference Neural Learni...
One of the primary advantages of field-oriented controlled induction motor for high performance appl...
This paper presents a novel Model Reference Adaptive System (MRAS) speed observer for induction moto...
This paper proposes a neural network (NN) model reference adaptive system (MRAS) speed observer suit...
This paper proposes a robust MRAS based speed estimator for sensorless vector controlled IM drives. ...
One of the primary advantages of field-oriented controlled induction motor for high performance appl...
Rotor Flux based Model Reference Adaptive System (RF-MRAS) is the most popularly used conventional s...
Rotor Flux based Model Reference Adaptive System (RF-MRAS) is the most popularly used conventional s...
This paper proposes a neural based MRAS (Model reference Adaptive System) speed observer suited for ...
This paper proposes a neural based MRAS (Model reference Adaptive System) speed observer suited for ...
This paper proposes the design of sensorless induction motor drive based on direct power control (DP...
This paper presents a comparative study of three algorithms for learning artificial neural network. ...
This paper describes a newly developed speed sensorless drive based on neural networks. A backpropag...
Abstract:- This paper presents a speed estimation method using neural networks (NN) in a vector cont...
In this paper, a novel reactive power based model reference neural learning adaptive system (RP-MRNL...
This paper presents a novel speed estimator using Reactive Power based Model Reference Neural Learni...
One of the primary advantages of field-oriented controlled induction motor for high performance appl...
This paper presents a novel Model Reference Adaptive System (MRAS) speed observer for induction moto...
This paper proposes a neural network (NN) model reference adaptive system (MRAS) speed observer suit...
This paper proposes a robust MRAS based speed estimator for sensorless vector controlled IM drives. ...
One of the primary advantages of field-oriented controlled induction motor for high performance appl...
Rotor Flux based Model Reference Adaptive System (RF-MRAS) is the most popularly used conventional s...
Rotor Flux based Model Reference Adaptive System (RF-MRAS) is the most popularly used conventional s...
This paper proposes a neural based MRAS (Model reference Adaptive System) speed observer suited for ...
This paper proposes a neural based MRAS (Model reference Adaptive System) speed observer suited for ...
This paper proposes the design of sensorless induction motor drive based on direct power control (DP...
This paper presents a comparative study of three algorithms for learning artificial neural network. ...
This paper describes a newly developed speed sensorless drive based on neural networks. A backpropag...
Abstract:- This paper presents a speed estimation method using neural networks (NN) in a vector cont...