Autonomous systems are becoming inherently ubiquitous with the advancements of computing and communication solutions enabling low-latency offloading and real-time collaboration of distributed devices. Decentralized technologies with blockchain and distributed ledger technologies (DLTs) are playing a key role. At the same time, advances in deep learning (DL) have significantly raised the degree of autonomy and level of intelligence of robotic and autonomous systems. While these technological revolutions were taking place, raising concerns in terms of data security and end-user privacy has become an inescapable research consideration. Federated learning (FL) is a promising solution to privacy-preserving DL at the edge, with an inherently distributed nature by learning on isolated data islands and communicating only model updates. However, FL by itself does not provide the levels of security and robustness required by today's standards in distributed autonomous systems. This survey covers applications of FL to autonomous robots, analyzes the role of DLT and FL for these systems, and introduces the key background concepts and considerations in current research.
翻译:随着计算和通信解决方案的进步,使低延迟卸载和实时合作分布式装置的低延迟卸载和实时合作的传播,自主系统已变得无处不在,分散式技术与块链和分布式分类账技术(DLT)正在发挥关键作用,与此同时,深层次学习的进步大大提高了机器人和自主系统自主和智能的程度;这些技术革命正在发生,在数据安全和终端用户隐私方面引起关切已成为一个不可回避的研究考虑因素;联合学习(FL)是将隐私保留在边缘的一个有希望的解决办法,通过在孤立的数据岛屿学习和仅传播模式更新,具有内在的分散性;然而,FL本身并不能提供当今标准在分布式自主系统中所要求的安全和稳健水平;这一调查涵盖了FL对自主机器人的应用,分析了DLT和终端用户隐私对这些系统的作用,并介绍了当前研究的主要背景概念和考虑。