Bearing estimation using neural optimisation methods
- 4 December 2002
- conference paper
- Published by Institute of Electrical and Electronics Engineers (IEEE)
- p. 889-892 vol.2
- https://doi.org/10.1109/icassp.1990.115984
Abstract
The bearing estimation problem is mapped onto the Liapunov energy function of the Hopfield model neural network. However, the Hopfield model implements a gradient descent algorithm, and, in common with all such algorithms, it is liable to find a local minimum rather than the desired global minimum. To overcome this problem three modifications, gain annealing, iterated descent, and stochastic networks, have been proposed. The modifications to the neural algorithm are outlined and simulated, and results are presented to show their convergence properties in the context of the bearing estimation problem.<>Keywords
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