[[abstract]]Global routing is a crucial step in circuit layout. Under the constraint of the relative positions of circuit blocks enforced by placement, the previous global routing develops an effective plan such that the interconnections of nets can be completed efficiently. This problem has been proven to be NP-complete, and most of the currently available algorithms are heuristic. The paper proposes a new previous neural-computation-network architecture based on the Hopfield and Tank model for the previous global-routing problem. This previous network is constructed using two layers of neurons. One layer is used for minimizing the total path length and distributing interconnecting wires evenly between channels. The other layer is use...
This paper presents a Hopfield neural network that solves the routing problem in a communication net...
The dynamic-routing problem in a packet-switching telecommunication network is addressed by a recedi...
This paper is concerned with neural networks which have the ability to solve linear and nonlinear co...
Neural network architectures are effectively applied to solve the channel routing problem. Algorithm...
Neural networks have shown promise as new computation tools for solving constrained optimization pro...
Generally, routing methods can be implemented using centralized and decentralized methods. In order ...
Abstract — It is necessary for designing VLSI to arrange wirings not to overlap each other in the wi...
This paper evaluates a self-organizing routing protocol for ad hoc network, called the neuron routin...
This paper presents the capability of the neural networks as a computational tool for solving constr...
This paper evaluates a self-organizing routing protocol for Ad Hoc network, called the NEUron Routin...
This paper presents a new neural network to solve the shortest path problem for internetwork routing...
Abstract—Progress in VLSI technologies is enabling the inte-gration of large numbers of spiking neur...
This paper presents a Hopfield neural network that solves the routing problem in a communication net...
Abstract: The problem of multi-agent routing in static telecommunication networks with fixed configu...
A feedback neural network approach to communication routing problems is developed, with emphasis on ...
This paper presents a Hopfield neural network that solves the routing problem in a communication net...
The dynamic-routing problem in a packet-switching telecommunication network is addressed by a recedi...
This paper is concerned with neural networks which have the ability to solve linear and nonlinear co...
Neural network architectures are effectively applied to solve the channel routing problem. Algorithm...
Neural networks have shown promise as new computation tools for solving constrained optimization pro...
Generally, routing methods can be implemented using centralized and decentralized methods. In order ...
Abstract — It is necessary for designing VLSI to arrange wirings not to overlap each other in the wi...
This paper evaluates a self-organizing routing protocol for ad hoc network, called the neuron routin...
This paper presents the capability of the neural networks as a computational tool for solving constr...
This paper evaluates a self-organizing routing protocol for Ad Hoc network, called the NEUron Routin...
This paper presents a new neural network to solve the shortest path problem for internetwork routing...
Abstract—Progress in VLSI technologies is enabling the inte-gration of large numbers of spiking neur...
This paper presents a Hopfield neural network that solves the routing problem in a communication net...
Abstract: The problem of multi-agent routing in static telecommunication networks with fixed configu...
A feedback neural network approach to communication routing problems is developed, with emphasis on ...
This paper presents a Hopfield neural network that solves the routing problem in a communication net...
The dynamic-routing problem in a packet-switching telecommunication network is addressed by a recedi...
This paper is concerned with neural networks which have the ability to solve linear and nonlinear co...