A2PC: Augmented Advantage Pointer-Critic Model for Low Latency on Mobile IoT With Edge Computing

Rodrigo Carvalho;Faroq Al-Tam;Noélia Correia
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Abstract

As a growing trend, edge computing infrastructures are starting to be integrated with Internet of Things (IoT) systems to facilitate time-critical applications. These systems often require the processing of data with limited usefulness in time, so the edge becomes vital in the development of such reactive IoT applications with real-time requirements. Although different architectural designs will always have advantages and disadvantages, mobile gateways appear to be particularly relevant in enabling this integration with the edge, particularly in the context of wide area networks with occasional data generation. In these scenarios, mobility planning is necessary, as aspects of the technology need to be aligned with the temporal needs of an application. The nature of this planning problem makes cutting-edge deep reinforcement learning (DRL) techniques useful in solving pertinent issues, such as having to deal with multiple dimensions in the action space while aiming for optimum levels of system performance. This article presents a novel scalable DRL model that incorporates a pointer-network (Ptr-Net) and an actor-critic algorithm to handle complex action spaces. The model synchronously determines the gateway location and visit time. Ultimately, the gateways are able to attain high-quality trajectory planning with reduced latency.
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A2PC:基于边缘计算的移动物联网低延迟增强优势指针批判模型
作为一种日益增长的趋势,边缘计算基础设施开始与物联网(IoT)系统集成,以促进时间关键型应用。这些系统通常需要及时处理有用性有限的数据,因此在开发具有实时要求的响应式物联网应用程序时,边缘变得至关重要。尽管不同的架构设计总是有优点和缺点,但移动网关在实现与边缘的集成方面似乎特别相关,特别是在偶尔产生数据的广域网环境中。在这些场景中,移动性规划是必要的,因为技术的各个方面需要与应用程序的临时需求保持一致。这个规划问题的本质使得尖端的深度强化学习(DRL)技术在解决相关问题时非常有用,例如必须在行动空间中处理多个维度,同时以最佳系统性能为目标。本文提出了一种新颖的可扩展DRL模型,该模型结合了一个指针网络(Ptr-Net)和一个actor-critic算法来处理复杂的动作空间。该模型同步确定网关位置和访问时间。最终,网关能够在减少延迟的情况下获得高质量的轨迹规划。
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