Communication networks are becoming increasingly complex towards 6G. Manual management is no longer an option for network operators. Network automation has been widely discussed in the networking community, and it is a sensible means to manage the complex communication network. Deep learning models developed to enable network automation for given operation practices have the limitations of 1) lack of explainability and 2) inapplicable across different networks and/or network settings. To tackle the above issues, in this article we propose a new knowledge-powered framework that provides a human-understandable explainable artificial intelligence (XAI) agent for network automation. A case study of path selection is developed to demonstrate the feasibility of the proposed framework. Research on network automation is still in its infancy. Therefore, at the end of this article, we provide a list of challenges and open issues that can guide further research in this important area.
翻译:6G. 人工管理已不再是网络操作者的一个选项,网络自动化已在网络界中广泛讨论,是管理复杂通信网络的明智手段。为特定业务做法而开发的使网络自动化的深思熟虑模式的局限性是:(1) 缺乏解释,(2) 在不同网络和(或)网络设置中不适用。为了解决上述问题,我们在本条中提议一个新的知识动力框架,为网络自动化提供一个人能理解的、可以解释的人工智能(XAI)代理。为证明拟议框架的可行性,进行了选择路径的个案研究。网络自动化研究仍处于初级阶段。因此,在本条末尾,我们提供了一份可以指导这一重要领域进一步研究的挑战和公开问题清单。