Trajectory Tracking on Uncertain Complex Networks via NN-Based Inverse Optimal Pinning Control
IEEE Transactions on Neural Networks and Learning Systems 31(3): 854-864
Article 2019 English
Authors
CV
Carlos J. Vega
OS
Oscar J. Suárez
ES
Edgar N. Sánchez
Abstract
1 min read
A new approach for trajectory tracking on uncertain complex networks is proposed. To achieve this goal, a neural controller is applied to a small fraction of nodes (pinned ones). Such controller is composed of an on-line identifier based on a recurrent high-order neural network, and an inverse optimal controller to track the desired trajectory; a complete stability analysis is also included. In order to verify the applicability and good performance of the proposed control scheme, a representative example is simulated, which consists of a complex network with each node described by a chaotic Lorenz oscillator.
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