DocumentCode :
1253361
Title :
Experiments with simple neural networks for real-time control
Author :
Campbell, Peter K. ; Christiansen, Alan ; Dale, Michael ; Ferrà, Herman L. ; Kowalczyk, Adam ; Szymanski, Jacek
Author_Institution :
Telstra Res. Lab., Vic., Australia
Volume :
15
Issue :
2
fYear :
1997
fDate :
2/1/1997 12:00:00 AM
Firstpage :
165
Lastpage :
178
Abstract :
We demonstrate the practical ability of neural networks (NNs) trained in a supervised mode to extract useful control “knowledge” from a large, high-dimensional empirical database, and then to deliver almost optimal control in “real time”. In particular, this paper describes experiments with NN-based controllers for allocating bandwidth capacity in a telecommunications network (SDH). This system was proposed in order to overcome a “real time” response constraint. Two basic architectures, each consisting of a combination of two methods, are evaluated: (1) a feedforward network-heuristic combination and (2) a feedforward network-recurrent network combination. These architectures are compared against a linear programming (LP) optimizer as a benchmark. This LP optimizer was also used as a teacher to label the data samples for the feedforward NN training algorithm. NN-based solutions are very accurate (~98% of optimal throughput) and, in contrast to the algorithmic approach, can be delivered in “real time”. It is found that while the “human” generated heuristics (greedy search optimization) fail to find a solution in approximately 30% of cases, the best NN fails only in 4.9% of cases. Moreover, it has been found that in spite of the very high dimensionality of the problem (55 inputs and 126 outputs), the solution can be delivered by surprisingly compact NNs, with as little as around 1000 synaptic weights. This proves that on this occasion the NNs were able to extract simple but powerful “heuristics” hidden in the complex sets of numerical data
Keywords :
backpropagation; feedforward neural nets; linear programming; multilayer perceptrons; neural net architecture; optical fibre networks; optimal control; real-time systems; recurrent neural nets; synchronous digital hierarchy; telecommunication computing; telecommunication congestion control; NN-based controllers; SDH network; algorithmic approach; backpropagation predictor; bandwidth capacity allocation; control knowledge extraction; data samples; experiments; feedforward NN training algorithm; feedforward network-heuristic combination; feedforward network-recurrent network combination; greedy search optimization; high-dimensional empirical database; human generated heuristics; linear programming optimizer; multilayer perceptron; neural network architectures; numerical data; optical fibres; optimal control; optimal throughput; real-time control; supervised mode; synaptic weights; teacher; telecommunications network; Bandwidth; Data mining; Databases; Linear programming; Neural networks; Optimal control; Recurrent neural networks; Telecommunication control; Throughput; Training data;
fLanguage :
English
Journal_Title :
Selected Areas in Communications, IEEE Journal on
Publisher :
ieee
ISSN :
0733-8716
Type :
jour
DOI :
10.1109/49.552067
Filename :
552067
Link To Document :
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