基于卫星和地面站连接密度的动态聚合联邦学习

Jian Lin, Jianlong Xu, Yusen Li, Zhuo Xu
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引用次数: 2

摘要

近地轨道卫星采集的对地观测图像可以增强机器学习解决一些全球性问题的能力,如气候变化、疾病传播等。然而,从低轨道卫星下载所有数据用于地面建模是不可行的。这主要是由于地面站的下行带宽和卫星与地面站之间的连接时间有限。此外,卫星采集的图像往往分辨率很高,这进一步加剧了数据传输任务的难度。为了解决这一问题,我们提出了一种适用于LEO卫星星座的高效同步联邦学习(FL)优化方法,其中地面站和卫星协作训练全局模型,卫星不需要将原始数据传输到地面站。在这种方法中,地面站可以根据连接密度动态聚合卫星的局部模型。当连接稀疏时,地面站在预定义的时间段后进行聚合,忽略未能及时返回更新的掉队者。当连接密集时,地面站可以基于缓冲策略执行聚合,以增加全局模型更新的频率。在基于卫星的模拟网络和真实世界的图像数据集上进行的大量实验证明了我们的方法的有效性。与最先进的FL优化方法相比,该方法在IID设置下的收敛速度提高了4.0倍,在非IID设置下的收敛速度提高了1.9倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Federated Learning with Dynamic Aggregation Based on Connection Density at Satellites and Ground Stations
Earth observation images collected by low earth orbit (LEO) satellites can enhance the capability of machine learning to solve some global problems: e.g., climate change, disease transmission, etc. However, downloading all data from LEO satellites for modeling on the ground is not feasible. This is mainly due to the downlink bandwidth of ground stations and the limited connection time between satellites and ground stations. In addition, the images collected by satellites are often of high resolution, which further exacerbates the difficulty of the data transfer task. To address this problem, we propose an efficient synchronous federated learning (FL) optimization method applied to LEO satellite constellations, where the ground stations and the satellites collaborate to train a global model and the satellites do not need to transmit raw data to the ground stations. In this approach, the ground station can dynamically aggregate the local model of the satellites based on the density of connections. When connections are sparse, ground stations perform aggregation after a predefined time period, ignoring stragglers who fail to return in time for updates. When connections are dense, ground stations can perform aggregation based on a buffering strategy to increase the frequency of global model updates. Extensive experiments on both satellite-based simulated networks and real-world image datasets demonstrate the effectiveness of our approach. Compared to the state-of-the-art FL optimization method, the proposed method accelerates the speed of convergence by 4.0 times in the IID setting, and 1.9 times in the Non-IID setting.
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