Unmanned aerial vehicles (UAVs), or say drones, are envisioned to support extensive applications in next-generation wireless networks in both civil and military fields. Empowering UAVs networks intelligence by artificial intelligence (AI) especially machine learning (ML) techniques is inevitable and appealing to enable the aforementioned applications. To solve the problems of traditional cloud-centric ML for UAV networks such as privacy concern, unacceptable latency, and resource burden, a distributed ML technique, i.e., federated learning (FL), has been recently proposed to enable multiple UAVs to collaboratively train ML model without letting out raw data. However, almost all existing FL paradigms are server-based, i.e., a central entity is in charge of ML model aggregation and fusion over the whole network, which could result in the issue of a single point of failure and are inappropriate to UAV networks with both unreliable nodes and links. To address the above issue, in this article, we propose a novel architecture called SELF-UN (\underline{SE}rver\underline{L}ess \underline{F}L for \underline{U}AV \underline{N}etworks), which enables FL within UAV networks without a central entity. We also conduct a preliminary simulation study to validate the feasibility and effectiveness of the SELF-UN architecture. Finally, we discuss the main challenges and potential research directions in the SELF-UN.
翻译:无人驾驶航空飞行器(无人驾驶飞行器)或无人驾驶无人机(指无人机),设想用于支持民用和军事领域下一代无线网络的广泛应用。通过人工智能(AI)赋予无人驾驶航空器网络情报能力,特别是机器学习(ML)技术是不可避免的,而且有利于上述应用。为了解决无人驾驶航空器网络的传统云中ML问题,如隐私关切、不可接受的潜伏度和资源负担等,最近提议采用分布式ML技术,即联合学习(FLF),以使多个无人驾驶航空器能够合作培训ML模型,而不释放原始数据。然而,几乎所有现有的FL模式都以服务器为基础,也就是说,一个中央实体负责ML模型的聚合和融合,这可能导致单一的故障点问题,并且不适合具有不可靠的节点和链接的UAV网络。为了解决上述问题,我们提议建立一个名为SLF-UN(直线{SEUrverline{L} ) 和SEUAF-L主结构的新结构,这也使得F-L(联合国) 核心网络在不进行初步的可行性研究中可以进行。