A four-layer neural network with 49 neurons trained on analytical dynamic model data predicts joint torques for 7-DOF exoskeleton trajectory tracking, augmented by a PD controller, achieving comparable performance to traditional controllers with reduced computation in simulations.
The main reason for the popularity of the deep neural network is that the trained network is computationally light in weight and can model complex dynamic systems accurately
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Development of a Deep Learning-Driven Control Framework for Exoskeleton Robots
A four-layer neural network with 49 neurons trained on analytical dynamic model data predicts joint torques for 7-DOF exoskeleton trajectory tracking, augmented by a PD controller, achieving comparable performance to traditional controllers with reduced computation in simulations.