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Real-time neural identification and inverse optimal control for a tracked robot

Alma Y. Alanís, Michel López-Franco, Carlos López-Franco, Nancy Arana‐Daniel

Year
2017
Citations
10
Access
Open access

Abstract

This work presents the implementation in real-time of a neural identifier based on a recurrent high-order neural network which is trained with an extended Kalman filter–based training algorithm and an inverse optimal control applied to a tracked robot. The recurrent high-order neural network identifier is developed without the knowledge of the plant model or its parameters; on the other hand, the inverse optimal control is designed for tracking velocity references. This article includes simulation and real-time results, both using MATLAB ® , and also the experimental tests use a modified HD2 ® Treaded ATR Tank Robot Platform with wireless communication.

Keywords

Artificial neural networkIdentifierMATLABComputer scienceKalman filterIdentification (biology)Extended Kalman filterRobotOptimal controlTracking (education)

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