Hopfield neural networks for optimization: study of the different dynamics

This work summarizes a tutorial on the main aspects of the application of Hopfield networks to optimization. The main formulations of the dynamics are studied, and the particular problems that arise in their application to optimization are brought to light. As a particular engineering problem, systems identification is formulated as an optimization problem and the Hopfield methodology is adapted to its solution.

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