
GAN-based Data Mapping for Model Adaptation
Author(s) -
Miguel Arevalo-Castiblanco,
César A. Uribe,
Eduardo MojicaNava
Publication year - 2021
Language(s) - English
Resource type - Conference proceedings
DOI - 10.52591/lxai202107242
Subject(s) - computer science , task (project management) , adaptation (eye) , reuse , machine learning , artificial intelligence , task analysis , multi task learning , labeled data , training set , data modeling , data mining , database , ecology , physics , management , optics , economics , biology
We propose an online adaptive synchronization method for leader follower networks of heterogeneous agents. Synchronization is achieved using a distributed Model Reference Adaptive Control (DMRAC-RL) that enables the improved performance of Reinforcement Learning (RL)-trained policies on a reference model. The leader observes the performance of the reference model, and the followers observe the states and actions of the agents they are connected to, but not the reference model. Notably, both the leader and followers models might differ from the reference model the RL-control policy was trained. DMRAC-RL uses an internal loop that adjusts the learned policy for the agents in the form of an augmented input to solve the distributed control problem. Numerical examples of the synchronization of a network of inverted pendulums support our theoretical findings