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Task-Oriented Cross-System Design for Timely and Accurate Modeling in the Metaverse

Authors :
Meng, Zhen
Chen, Kan
Diao, Yufeng
She, Changyang
Zhao, Guodong
Imran, Muhammad Ali
Vucetic, Branka
Publication Year :
2023

Abstract

In this paper, we establish a task-oriented cross-system design framework to minimize the required packet rate for timely and accurate modeling of a real-world robotic arm in the Metaverse, where sensing, communication, prediction, control, and rendering are considered. To optimize a scheduling policy and prediction horizons, we design a Constraint Proximal Policy Optimization(C-PPO) algorithm by integrating domain knowledge from relevant systems into the advanced reinforcement learning algorithm, Proximal Policy Optimization(PPO). Specifically, the Jacobian matrix for analyzing the motion of the robotic arm is included in the state of the C-PPO algorithm, and the Conditional Value-at-Risk(CVaR) of the state-value function characterizing the long-term modeling error is adopted in the constraint. Besides, the policy is represented by a two-branch neural network determining the scheduling policy and the prediction horizons, respectively. To evaluate our algorithm, we build a prototype including a real-world robotic arm and its digital model in the Metaverse. The experimental results indicate that domain knowledge helps to reduce the convergence time and the required packet rate by up to 50%, and the cross-system design framework outperforms a baseline framework in terms of the required packet rate and the tail distribution of the modeling error.<br />Comment: This paper is accepted by IEEE Journal on Selected Areas in Communications, JSAC-SI-HCM 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.05622
Document Type :
Working Paper