Evolvable neural networks are a more recent architecture, and differs from the conventional artificial neural networks (ANN) in the sense that it allows changes in the structure and design to cope with dynamic operating environments. Blockbased neural networks (BbNN) provide a more unified solution to the two fundamental problems of ANNs, which include simultaneous optimization of structure, and viable implementation in reconfigurable embedded hardware such as field programmable gate arrays (FPGAs) due to its modular structure. However, BbNNs still have several outstanding issues to be resolved for an effective implementation. An efficient hardware design can only be obtained with proper design consideration. To date, there has been no prev...
The Hardware-Evolved Digital Artificial Neural Network (HEDANN) design platform is a circuit design ...
This work is part of a project that studies the implementation of neural network algorithms in recon...
Neural networks are extensively used in software and hardware applications. In hardware applications...
Dedicated hardware implementations of neural networks promise to provide faster, lower power operati...
Block-based Neural Networks (BbNNs) provide a flexible and modular architecture to support adaptive ...
This dissertation presents personalized health monitoring using evolvable block-based neural network...
Block-based neural network (BbNN) was introduced to improve the training speed of artificial neural ...
This paper addresses the problem of accelerating large artificial neural networks (ANN), whose topol...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
The human brain, with its massive computational capability and power efficiency in small form factor...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
In contrast with analog design, digital design and implementation of any logic circuit suffer much f...
Recent advances in algorithm-hardware co-design for deep neural networks (DNNs) have demonstrated th...
The Hardware-Evolved Digital Artificial Neural Network (HEDANN) design platform is a circuit design ...
The Hardware-Evolved Digital Artificial Neural Network (HEDANN) design platform is a circuit design ...
This work is part of a project that studies the implementation of neural network algorithms in recon...
Neural networks are extensively used in software and hardware applications. In hardware applications...
Dedicated hardware implementations of neural networks promise to provide faster, lower power operati...
Block-based Neural Networks (BbNNs) provide a flexible and modular architecture to support adaptive ...
This dissertation presents personalized health monitoring using evolvable block-based neural network...
Block-based neural network (BbNN) was introduced to improve the training speed of artificial neural ...
This paper addresses the problem of accelerating large artificial neural networks (ANN), whose topol...
Artificial neural networks are systems composed of interconnected simple computing units known as a...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
The human brain, with its massive computational capability and power efficiency in small form factor...
In this paper, the ability of genetic algorithms in designing artificial neural network (ANN) is inv...
In contrast with analog design, digital design and implementation of any logic circuit suffer much f...
Recent advances in algorithm-hardware co-design for deep neural networks (DNNs) have demonstrated th...
The Hardware-Evolved Digital Artificial Neural Network (HEDANN) design platform is a circuit design ...
The Hardware-Evolved Digital Artificial Neural Network (HEDANN) design platform is a circuit design ...
This work is part of a project that studies the implementation of neural network algorithms in recon...
Neural networks are extensively used in software and hardware applications. In hardware applications...