Abstract:- In this paper, we present FPGA recurrent neural network systems with learning capability using the simultaneous perturbation learning rule. In the neural network systems, outputs and internal values are represented by pulse train. That is, analog recurrent neural networks with pulse frequency representation are considered. The pulse density representation and the simultaneous perturbation enable the systems with learning capability to easily implement as a hardware system. As typical examples of the recurrent neural networks, Hopfield neural network and the bidirectional associative memory are considered. Details of the systems and the circuit design are described. Analog and digital examples for these Hopfield neural network and...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
The objectives are to investigate the use of FPGA-based reconfigurable architecture to implement art...
Abstract. The usage of the FPGA (Field Programmable Gate Array) for neural network implementation pr...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
This research investigates a digital hardware oriented system that uses a genetic algorithm (GA) fo...
The architecture of an analog recurrent neural network that can learn a continuous-time trajectory i...
This thesis presents a digital hardware implementation of an artificial neuron with learning ability...
New digital architecture of the frequency-based multi-layer neural network (MNN) with on-chip learni...
We present experimental results on supervised learning of dynamical features in an analog VLSI neura...
This thesis presents a modular hardware artificial neural network architecture using the random puls...
This project presented a backpropagation neural network on FPGA which can conduct inference and tra...
Living creatures pose amazing ability to learn and adapt, therefore researchers are trying to apply ...
This paper presents a simple continuous analog hardware realization of the Random Neural Network (RN...
The pulse-stream technique, which represents neural states as sequences of pulses, is reviewed. Seve...
In contrast with analog design, digital design and implementation of any logic circuit suffer much f...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
The objectives are to investigate the use of FPGA-based reconfigurable architecture to implement art...
Abstract. The usage of the FPGA (Field Programmable Gate Array) for neural network implementation pr...
English In this thesis we are concerned with the hardware implementation of learning algorithms for...
This research investigates a digital hardware oriented system that uses a genetic algorithm (GA) fo...
The architecture of an analog recurrent neural network that can learn a continuous-time trajectory i...
This thesis presents a digital hardware implementation of an artificial neuron with learning ability...
New digital architecture of the frequency-based multi-layer neural network (MNN) with on-chip learni...
We present experimental results on supervised learning of dynamical features in an analog VLSI neura...
This thesis presents a modular hardware artificial neural network architecture using the random puls...
This project presented a backpropagation neural network on FPGA which can conduct inference and tra...
Living creatures pose amazing ability to learn and adapt, therefore researchers are trying to apply ...
This paper presents a simple continuous analog hardware realization of the Random Neural Network (RN...
The pulse-stream technique, which represents neural states as sequences of pulses, is reviewed. Seve...
In contrast with analog design, digital design and implementation of any logic circuit suffer much f...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
The objectives are to investigate the use of FPGA-based reconfigurable architecture to implement art...
Abstract. The usage of the FPGA (Field Programmable Gate Array) for neural network implementation pr...