Multi-Agent Deep Reinforcement Learning for Dynamic Avatar Migration in AIoT-enabled Vehicular Metaverses with Trajectory Prediction

06/26/2023
by   Junlong Chen, et al.
0

Avatars, as promising digital assistants in Vehicular Metaverses, can enable drivers and passengers to immerse in 3D virtual spaces, serving as a practical emerging example of Artificial Intelligence of Things (AIoT) in intelligent vehicular environments. The immersive experience is achieved through seamless human-avatar interaction, e.g., augmented reality navigation, which requires intensive resources that are inefficient and impractical to process on intelligent vehicles locally. Fortunately, offloading avatar tasks to RoadSide Units (RSUs) or cloud servers for remote execution can effectively reduce resource consumption. However, the high mobility of vehicles, the dynamic workload of RSUs, and the heterogeneity of RSUs pose novel challenges to making avatar migration decisions. To address these challenges, in this paper, we propose a dynamic migration framework for avatar tasks based on real-time trajectory prediction and Multi-Agent Deep Reinforcement Learning (MADRL). Specifically, we propose a model to predict the future trajectories of intelligent vehicles based on their historical data, indicating the future workloads of RSUs.Based on the expected workloads of RSUs, we formulate the avatar task migration problem as a long-term mixed integer programming problem. To tackle this problem efficiently, the problem is transformed into a Partially Observable Markov Decision Process (POMDP) and solved by multiple DRL agents with hybrid continuous and discrete actions in decentralized. Numerical results demonstrate that our proposed algorithm can effectively reduce the latency of executing avatar tasks by around 25 and enhance user immersive experiences in the AIoT-enabled Vehicular Metaverse (AeVeM).

READ FULL TEXT

page 1

page 3

page 8

page 10

research
01/27/2022

A Deep Reinforcement Learning Approach for Service Migration in MEC-enabled Vehicular Networks

Multi-access edge computing (MEC) is a key enabler to reduce the latency...
research
09/10/2023

Learning-based Incentive Mechanism for Task Freshness-aware Vehicular Twin Migration

Vehicular metaverses are an emerging paradigm that integrates extended r...
research
08/14/2020

Multi-Agent Deep Reinforcement Learning enabled Computation Resource Allocation in a Vehicular Cloud Network

In this paper, we investigate the computational resource allocation prob...
research
10/19/2020

Deep Reinforcement Learning for Adaptive Network Slicing in 5G for Intelligent Vehicular Systems and Smart Cities

Intelligent vehicular systems and smart city applications are the fastes...
research
07/03/2023

GA-DRL: Graph Neural Network-Augmented Deep Reinforcement Learning for DAG Task Scheduling over Dynamic Vehicular Clouds

Vehicular clouds (VCs) are modern platforms for processing of computatio...
research
04/21/2023

Generative AI-enabled Vehicular Networks: Fundamentals, Framework, and Case Study

Recognizing the tremendous improvements that the integration of generati...
research
05/05/2022

Multi-Agent Deep Reinforcement Learning in Vehicular OCC

Optical camera communications (OCC) has emerged as a key enabling techno...

Please sign up or login with your details

Forgot password? Click here to reset