Knowledge-Based Ultra-Low-Latency Semantic Communications for Robotic Edge Intelligence

IF 8.3 2区 计算机科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Communications Pub Date : 2024-12-16 DOI:10.1109/TCOMM.2024.3511931
Qunsong Zeng;Zhanwei Wang;You Zhou;Hai Wu;Lin Yang;Kaibin Huang
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Abstract

The sixth-generation (6G) mobile networks will feature the widespread deployment of artificial intelligence (AI) algorithms at the network edge, which provides a platform for supporting robotic edge intelligence systems. In such a system, a large-scale knowledge graph (KG) is operated at an edge server as a “remote brain” to guide remote robots on environmental exploration or task execution. In this paper, we present a new air-interface framework targeting the said systems, called knowledge-based robotic semantic communications (SemCom), which consists of a protocol and relevant transmission techniques. First, the proposed robotic SemCom protocol defines a sequence of system operations for executing a given robotic task. They include identification of all task-relevant knowledge paths (KPs) on the KG, semantic matching between KG and object classifier, and uploading of robot’s observations for objects recognition and feasible KP identification. Next, to support ultra-low-latency (observation) feature transmission (ULL-FT), we propose a novel transmission approach that exploits classifier’s robustness, which is measured by classification margin, to compensate for a high bit error probability (BEP) resulting from ultra-low-latency transmission (e.g., short packet and/or no coding). By utilizing the tractable Gaussian mixture (GM) model, we mathematically derive the relation between BEP and classification margin under constraints on classification accuracy and transmission latency. The result sheds light on system requirements to support ULL-FT. Furthermore, for the case where the classification margin is insufficient for coping with channel distortion, we enhance the ULL-FT approach by studying retransmission and multi-view classification for enlarging the margin and further quantifying corresponding requirements. Finally, experiments using deep neural networks as classifier models and real datasets are conducted to demonstrate the effectiveness of ULL-FT in communication latency reduction while providing a guarantee on accurate feasible KP identification.
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用于机器人边缘智能的基于知识的超低延迟语义通信
第六代(6G)移动网络将在网络边缘广泛部署人工智能(AI)算法,为支持机器人边缘智能系统提供平台。在该系统中,大型知识图(KG)在边缘服务器上作为“远程大脑”运行,指导远程机器人进行环境探索或任务执行。在本文中,我们针对上述系统提出了一种新的空中接口框架,称为基于知识的机器人语义通信(SemCom),它由协议和相关的传输技术组成。首先,提出的机器人SemCom协议定义了执行给定机器人任务的系统操作序列。它们包括识别KG上的所有任务相关知识路径(KPs), KG与目标分类器之间的语义匹配,以及上传机器人的观察结果以进行目标识别和可行的KP识别。接下来,为了支持超低延迟(观察)特征传输(ULL-FT),我们提出了一种新的传输方法,利用分类器的鲁棒性(由分类裕度衡量)来补偿由超低延迟传输(例如,短数据包和/或无编码)导致的高误码率(BEP)。利用可处理高斯混合(GM)模型,从数学上推导了在分类精度和传输延迟约束下,BEP与分类余量之间的关系。结果揭示了支持ULL-FT的系统需求。此外,针对分类余量不足以应对信道失真的情况,我们通过研究重传和多视图分类来扩大余量并进一步量化相应的要求,对ULL-FT方法进行了改进。最后,利用深度神经网络作为分类器模型和真实数据集进行了实验,验证了ULL-FT在降低通信延迟方面的有效性,同时为准确的可行KP识别提供了保证。
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来源期刊
IEEE Transactions on Communications
IEEE Transactions on Communications 工程技术-电信学
CiteScore
16.10
自引率
8.40%
发文量
528
审稿时长
4.1 months
期刊介绍: The IEEE Transactions on Communications is dedicated to publishing high-quality manuscripts that showcase advancements in the state-of-the-art of telecommunications. Our scope encompasses all aspects of telecommunications, including telephone, telegraphy, facsimile, and television, facilitated by electromagnetic propagation methods such as radio, wire, aerial, underground, coaxial, and submarine cables, as well as waveguides, communication satellites, and lasers. We cover telecommunications in various settings, including marine, aeronautical, space, and fixed station services, addressing topics such as repeaters, radio relaying, signal storage, regeneration, error detection and correction, multiplexing, carrier techniques, communication switching systems, data communications, and communication theory. Join us in advancing the field of telecommunications through groundbreaking research and innovation.
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