The advances in satellite technology developments have recently seen a large number of small satellites being launched into space on Low Earth orbit (LEO) to collect massive data such as Earth observational imagery. The traditional way which downloads such data to a ground station (GS) to train a machine learning (ML) model is not desirable due to the bandwidth limitation and intermittent connectivity between LEO satellites and the GS. Satellite edge computing (SEC), on the other hand, allows each satellite to train an ML model onboard and uploads only the model to the GS which appears to be a promising concept. This paper proposes FedLEO, a novel federated learning (FL) framework that realizes the concept of SEC and overcomes the limitation (slow convergence) of existing FL-based solutions. FedLEO (1) augments the conventional FL's star topology with ``horizontal'' intra-plane communication pathways in which model propagation among satellites takes place; (2) optimally schedules communication between ``sink'' satellites and the GS by exploiting the predictability of satellite orbiting patterns. We evaluate FedLEO extensively and benchmark it with the state of the art. Our results show that FedLEO drastically expedites FL convergence, without sacrificing -- in fact it considerably increases -- the model accuracy.
翻译:卫星技术的发展最近看到大量小型卫星被发射到低地轨道(LEO)空间,以收集地球观测图像等大量数据;由于低地轨道卫星与GS之间的带宽限制和间歇连接,将这类数据下载到地面站以培训机器学习模型的传统方式并不可取;另一方面,卫星边缘计算(SEC)允许每颗卫星对机载ML模型进行培训,并将模型上传到GS,这似乎是一个很有希望的概念;本文提议FDLEO,这是一个新的联合学习框架,它能实现SEC的概念,克服现有FL解决方案的局限性(低趋同)。 FDELEO(1) 利用卫星轨道模式的可预测性,扩大常规FL星表表和“Horizontal”卫星之间的模型传播;(2) 最佳地安排“sink”卫星与GS之间的通信,我们广泛评价了FDEEO,并将它的基准与现有FL解决方案的精确性大大加快。</s>