From Digital Twins to World Models:Opportunities, Challenges, and Applications for Mobile Edge General Intelligence
AI 摘要
探讨了从数字孪生到世界模型的演进,及其在边缘通用智能中的应用、挑战与机遇。
主要贡献
- 阐明数字孪生与世界模型的概念差异
- 综述世界模型的设计原则、架构和关键组件
- 探讨世界模型在无线边缘智能系统中的集成应用
方法论
系统性综述,分析了数字孪生到世界模型的演进,并探讨了其在边缘计算环境中的应用。
原文摘要
The rapid evolution toward 6G and beyond communication systems is accelerating the convergence of digital twins and world models at the network edge. Traditional digital twins provide high-fidelity representations of physical systems and support monitoring, analysis, and offline optimization. However, in highly dynamic edge environments, they face limitations in autonomy, adaptability, and scalability. This paper presents a systematic survey of the transition from digital twins to world models and discusses its role in enabling edge general intelligence (EGI). First, the paper clarifies the conceptual differences between digital twins and world models and highlights the shift from physics-based, centralized, and system-centric replicas to data-driven, decentralized, and agent-centric internal models. This discussion helps readers gain a clear understanding of how this transition enables more adaptive, autonomous, and resource-efficient intelligence at the network edge. The paper reviews the design principles, architectures, and key components of world models, including perception, latent state representation, dynamics learning, imagination-based planning, and memory. In addition, it examines the integration of world models and digital twins in wireless EGI systems and surveys emerging applications in integrated sensing and communications, semantic communication, air-ground networks, and low-altitude wireless networks. Finally, this survey provides a systematic roadmap and practical insights for designing world-model-driven edge intelligence systems in wireless and edge computing environments. It also outlines key research challenges and future directions toward scalable, reliable, and interoperable world models for edge-native agentic AI.