Edge Continual Learning for Dynamic Digital Twins over Wireless Networks

Omar Hashash, Christina Chaccour, W. Saad
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引用次数: 18

Abstract

Digital twins (DTs) constitute a critical link between the real-world and the metaverse. To guarantee a robust connection between these two worlds, DTs should maintain accurate representations of the physical applications, while preserving synchronization between real and digital entities. In this paper, a novel edge continual learning framework is proposed to accurately model the evolving affinity between a physical twin (PT) and its corresponding cyber twin (CT) while maintaining their utmost synchronization. In particular, a CT is simulated as a deep neural network (DNN) at the wireless network edge to model an autonomous vehicle traversing an episodically dynamic environment As the vehicular PT updates its driving policy in each episode, the CT is required to concurrently adapt its DNN model to the PT, which gives rise to a de-synchronization gap. Considering the history-aware nature of DTs, the model update process is posed a dual objective optimization problem whose goal is to jointly minimize the loss function over all encountered episodes and the corresponding de-synchronization time. As the de-synchronization time continues to increase over sequential episodes, an elastic weight consolidation (EWC) technique that regularizes the DT history is proposed to limit de-synchronization time. Furthermore, to address the plasticity-stability tradeoff accompanying the progressive growth of the EWC regularization terms, a modified EWC method that considers fair execution between the historical episodes of the DTs is adopted. Ultimately, the proposed framework achieves a simultaneously accurate and synchronous CT model that is robust to catastrophic forgetting. Simulation results show that the proposed solution can achieve an accuracy of 90% while guaranteeing a minimal desynchronization time.
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无线网络上动态数字孪生的边缘持续学习
数字孪生(DTs)构成了现实世界和虚拟世界之间的关键联系。为了保证这两个世界之间的可靠连接,dt应该保持物理应用程序的准确表示,同时保持真实实体和数字实体之间的同步。本文提出了一种新的边缘持续学习框架,以准确地模拟物理双胞胎(PT)与其相应的网络双胞胎(CT)之间不断演变的亲和力,同时保持它们的最大同步。特别是,CT被模拟为无线网络边缘的深度神经网络(DNN)来模拟穿越偶发动态环境的自动驾驶汽车。由于车辆PT在每一集更新其驾驶策略,CT需要同时调整其DNN模型以适应PT,这就产生了去同步间隙。考虑到dt的历史感知特性,模型更新过程提出了一个双目标优化问题,其目标是共同最小化所有遇到的事件的损失函数和相应的去同步时间。由于去同步时间在连续事件中持续增加,提出了一种弹性权重巩固(EWC)技术,该技术对DT历史进行正则化,以限制去同步时间。此外,为了解决伴随EWC正则化项逐渐增长的塑性-稳定性权衡,采用了一种改进的EWC方法,该方法考虑了DTs历史事件之间的公平执行。最终,提出的框架实现了一个同时准确和同步的CT模型,该模型对灾难性遗忘具有鲁棒性。仿真结果表明,该方法在保证最小的去同步时间的同时,精度达到90%。
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