The direct-current (DC) motor has been widely utilized in many industrial applications, such as a multi-motor system, due to its excellent speed control features regardless of its greater maintenance costs. A synchronous regulator is utilized to verify the response of the speed control. The motor speed can be improved utilizing artificial intelligence techniques, for example fuzzy neural networks (FNNs). These networks can be learned and predicted, and they are useful when dealing with nonlinear systems or when severe turbulence occurs. This work aims to design an FNN based on a model reference controller for separately excited DC motor drive systems, which will be applied in a multi-machine system with two DC motors. The MATLAB/Simulink so...
The automatic control has played a vital role in the advance of engineering and science. Nowadays in...
Speed control of DC-DC converter fed DC motor using robust adaptive intelligent controller Raghupath...
In this paper an Adaptive Neuro Fuzzy Inference System (ANFIS) controller using error and derivative...
The direct-current (DC) motor has been widely utilized in many industrial applications, such as a mu...
ABSTRACT Conventional controllers are generally used to control the speed of the separately excited...
The dynamic behavior of a PID-type fuzzy logic control depends on the appropriate choice of its scal...
This paper presented the speed control of DC motor based on neural net and fuzzy logic. To bypass th...
Abstract — In this article, the speed of the DC motor is controlled by Hybrid Fuzzy-Neuro controller...
The widespread use of direct current (DC) motors has persisted despite advancements in power electro...
This paper demonstrates the importance of a fuzzy logic controller over conventional method. The per...
Because of its simple structure, high efficiency, low noise, and high reliability, the brushless dir...
The Research Presents a New Methodology for Controlling DC Motor’s Speed by using Controller Depends...
Abstract The paper presents speed control of a separately excited DC motor using fuzzy logic contro...
drive systems are often used in electrical drives because of their simple structures, ease of mainte...
This paper deals with the application of Fuzzy-Neural Networks (FNNs) in multi-machine system contro...
The automatic control has played a vital role in the advance of engineering and science. Nowadays in...
Speed control of DC-DC converter fed DC motor using robust adaptive intelligent controller Raghupath...
In this paper an Adaptive Neuro Fuzzy Inference System (ANFIS) controller using error and derivative...
The direct-current (DC) motor has been widely utilized in many industrial applications, such as a mu...
ABSTRACT Conventional controllers are generally used to control the speed of the separately excited...
The dynamic behavior of a PID-type fuzzy logic control depends on the appropriate choice of its scal...
This paper presented the speed control of DC motor based on neural net and fuzzy logic. To bypass th...
Abstract — In this article, the speed of the DC motor is controlled by Hybrid Fuzzy-Neuro controller...
The widespread use of direct current (DC) motors has persisted despite advancements in power electro...
This paper demonstrates the importance of a fuzzy logic controller over conventional method. The per...
Because of its simple structure, high efficiency, low noise, and high reliability, the brushless dir...
The Research Presents a New Methodology for Controlling DC Motor’s Speed by using Controller Depends...
Abstract The paper presents speed control of a separately excited DC motor using fuzzy logic contro...
drive systems are often used in electrical drives because of their simple structures, ease of mainte...
This paper deals with the application of Fuzzy-Neural Networks (FNNs) in multi-machine system contro...
The automatic control has played a vital role in the advance of engineering and science. Nowadays in...
Speed control of DC-DC converter fed DC motor using robust adaptive intelligent controller Raghupath...
In this paper an Adaptive Neuro Fuzzy Inference System (ANFIS) controller using error and derivative...