When 5G began its commercialisation journey around 2020, the discussion on the vision of 6G also surfaced. Researchers expect 6G to have higher bandwidth, coverage, reliability, energy efficiency, lower latency, and an integrated "human-centric" network system powered by artificial intelligence (AI). Such a 6G network will lead to an excessive number of automated decisions made in real-time. These decisions can range widely, from network resource allocation to collision avoidance for self-driving cars. However, the risk of losing control over decision-making may increase due to high-speed, data-intensive AI decision-making beyond designers' and users' comprehension. The promising explainable AI (XAI) methods can mitigate such risks by enhancing the transparency of the black-box AI decision-making process. This paper surveys the application of XAI towards the upcoming 6G age in every aspect, including 6G technologies (e.g., intelligent radio, zero-touch network management) and 6G use cases (e.g., industry 5.0). Moreover, we summarised the lessons learned from the recent attempts and outlined important research challenges in applying XAI for 6G in the near future.
翻译:当5G在2020年左右开始商业化旅程时,关于6G愿景的讨论也浮现出来。研究人员预计6G将拥有更高的带宽、覆盖面、可靠性、能效、低潜值和由人工智能驱动的综合“以人为中心的”网络系统(AI)。这样的6G网络将导致大量实时自动决策。这些决定的范围很广,从网络资源分配到自行驾驶汽车避免碰撞,范围很广,从网络资源分配到自行驾驶汽车避免碰撞不等。然而,由于设计师和用户无法理解的高速、数据密集的AI决策,失去决策控制的风险可能会增加。有希望解释的AI(XAI)方法可以通过提高黑箱AI决策过程的透明度来减轻这种风险。本文调查XAI在各个方面的应用情况,包括6G技术(例如智能无线电、零触摸网络管理)和6G使用案例(例如工业5.0)。此外,我们总结了最近尝试中的经验教训,并概述了在近未来应用6GXAI方面的重要研究挑战。