SOTAVerified

Semantic Communication and Control Co-Design for Multi-Objective Correlated Dynamics

2024-10-03Unverified0· sign in to hype

Abanoub M. Girgis, Hyowoon Seo, Mehdi Bennis

Unverified — Be the first to reproduce this paper.

Reproduce

Abstract

This letter introduces a machine-learning approach to learning the semantic dynamics of correlated systems with different control rules and dynamics. By leveraging the Koopman operator in an autoencoder (AE) framework, the system's state evolution is linearized in the latent space using a dynamic semantic Koopman (DSK) model, capturing the baseline semantic dynamics. Signal temporal logic (STL) is incorporated through a logical semantic Koopman (LSK) model to encode system-specific control rules. These models form the proposed logical Koopman AE framework that reduces communication costs while improving state prediction accuracy and control performance, showing a 91.65% reduction in communication samples and significant performance gains in simulation.

Tasks

Reproductions