Dual Mind World Model Inspired Network Digital Twin for Access Scheduling
AI 摘要
提出基于双脑世界模型的数字孪生网络接入调度框架,优化网络控制策略。
主要贡献
- 提出基于双脑世界模型(DMWM)的数字孪生网络调度框架
- 结合短时预测规划和符号模型推理
- 在复杂网络环境中表现出优越的性能,并保持可解释性和样本效率
方法论
结合DMWM架构,利用数字孪生技术构建网络环境,通过预测规划和模型推理优化调度决策。
原文摘要
Emerging networked systems such as industrial IoT and real-time cyber-physical infrastructures demand intelligent scheduling strategies capable of adapting to dynamic traffic, deadlines, and interference constraints. In this work, we present a novel Digital Twin-enabled scheduling framework inspired by Dual Mind World Model (DMWM) architecture, for learning-informed and imagination-driven network control. Unlike conventional rule-based or purely data-driven policies, the proposed DMWM combines short-horizon predictive planning with symbolic model-based rollout, enabling the scheduler to anticipate future network states and adjust transmission decisions accordingly. We implement the framework in a configurable simulation testbed and benchmark its performance against traditional heuristics and reinforcement learning baselines under varied traffic conditions. Our results show that DMWM achieves superior performance in bursty, interference-limited, and deadline-sensitive environments, while maintaining interpretability and sample efficiency. The proposed design bridges the gap between network-level reasoning and low-overhead learning, marking a step toward scalable and adaptive NDT-based network optimization.