Experiments with Neural Networks for Real Time Implementation of Control
Campbell, Peter K., Dale, Michael, Ferrá, Herman L., Kowalczyk, Adam
–Neural Information Processing Systems
This paper describes a neural network based controller for allocating capacity in a telecommunications network. This system was proposed in order to overcome a "real time" response constraint. Two basic architectures are evaluated: 1) a feedforward network-heuristic and; 2) a feedforward network-recurrent network. These architectures are compared against a linear programming (LP) optimiser as a benchmark. This LP optimiser was also used as a teacher to label the data samples for the feedforward neural network training algorithm. It is found that the systems are able to provide a traffic throughput of 99% and 95%, respectively, of the throughput obtained by the linear programming solution. Once trained, the neural network based solutions are found in a fraction of the time required by the LP optimiser.
Neural Information Processing Systems
Dec-31-1996
- Country:
- Europe (0.68)
- North America > United States
- Massachusetts (0.14)
- Industry:
- Telecommunications (0.90)
- Technology: