Artificial Neural Networks are widely used in various applications in engineering, as such solutions of nonlinear problems. The implementation of this technique in reconfigurable devices is a great challenge to researchers by several factors, such as floating point precision, nonlinear activation function, performance and area used in FPGA. The contribution of this work is the approximation of a nonlinear function used in ANN, the popular hyperbolic tangent activation function. The system architecture is composed of several scenarios that provide a tradeoff of performance, precision and area used in FPGA. The results are compared in different scenarios and with current literature on error analysis, area and system performance. © 2013 IEEE
Abstract-- Artificial Neural Network is widely used to learn data from systems for different types o...
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This paper is a mathematical introduction to Artificial Neural Network (ANN). We will show how it is...
Artificial neural networks (ANN) consist of a layered network of the neurons which compute the weigh...
This paper presents the high accuracy hardware implementation of the hyperbolic tangent and sigmoid ...
FATEMEH MOHAMMADI SHAKIBA, for the Master of Science degree in MAJOR Electrical and Computer Enginee...
The hyperbolic tangent function is commonly used as the activation function in articial neural netwo...
Tangent Sigmoid (TanSig) Transfer Function (TSTF) is one of the nonlinear functions used in Artifici...
In this paper we propose a low-error approximation of the sigmoid function and hyperbolic tangent, w...
Reconfigurable architectures targeting neural networks are an attractive option. They allow multiple...
The paper discusses issues connected with the use of an artificial neural network (ANN) to approxima...
This paper discusses the artificial neural network (ANN) implementation into a field programmable ga...
Deep Neural Networks (DNNs) are being used in more and more fields. Among the others, automotive is ...
Abstract. This paper proposes an efficient hardware architecture for an elementary function generato...
WOS: 000303226800011I. Sahin, I. Koyuncu. Design and Implementation of Neural Networks Neurons with ...
Abstract-- Artificial Neural Network is widely used to learn data from systems for different types o...
Artificial Neural Network (ANN) is very powerful to deal with signal processing, computer vision and...
This paper is a mathematical introduction to Artificial Neural Network (ANN). We will show how it is...
Artificial neural networks (ANN) consist of a layered network of the neurons which compute the weigh...
This paper presents the high accuracy hardware implementation of the hyperbolic tangent and sigmoid ...
FATEMEH MOHAMMADI SHAKIBA, for the Master of Science degree in MAJOR Electrical and Computer Enginee...
The hyperbolic tangent function is commonly used as the activation function in articial neural netwo...
Tangent Sigmoid (TanSig) Transfer Function (TSTF) is one of the nonlinear functions used in Artifici...
In this paper we propose a low-error approximation of the sigmoid function and hyperbolic tangent, w...
Reconfigurable architectures targeting neural networks are an attractive option. They allow multiple...
The paper discusses issues connected with the use of an artificial neural network (ANN) to approxima...
This paper discusses the artificial neural network (ANN) implementation into a field programmable ga...
Deep Neural Networks (DNNs) are being used in more and more fields. Among the others, automotive is ...
Abstract. This paper proposes an efficient hardware architecture for an elementary function generato...
WOS: 000303226800011I. Sahin, I. Koyuncu. Design and Implementation of Neural Networks Neurons with ...
Abstract-- Artificial Neural Network is widely used to learn data from systems for different types o...
Artificial Neural Network (ANN) is very powerful to deal with signal processing, computer vision and...
This paper is a mathematical introduction to Artificial Neural Network (ANN). We will show how it is...