Joint Energy and Latency Optimization in Federated Learning over Cell-Free Massive MIMO Networks
CoRR(2024)
摘要
Federated learning (FL) is a distributed learning paradigm wherein users
exchange FL models with a server instead of raw datasets, thereby preserving
data privacy and reducing communication overhead. However, the increased number
of FL users may hinder completing large-scale FL over wireless networks due to
high imposed latency. Cell-free massive multiple-input
multiple-output (CFmMIMO) is a promising architecture for implementing FL
because it serves many users on the same time/frequency resources. While
CFmMIMO enhances energy efficiency through spatial multiplexing and
collaborative beamforming, it remains crucial to meticulously allocate uplink
transmission powers to the FL users. In this paper, we propose an uplink power
allocation scheme in FL over CFmMIMO by considering the effect of each user's
power on the energy and latency of other users to jointly minimize the users'
uplink energy and the latency of FL training. The proposed solution algorithm
is based on the coordinate gradient descent method. Numerical results show that
our proposed method outperforms the well-known max-sum rate by increasing up
to 27% and max-min energy efficiency of the Dinkelbach method by increasing
up to 21% in terms of test accuracy while having limited uplink energy and
latency budget for FL over CFmMIMO.
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关键词
Federated learning,Cell-free massive MIMO,Power allocation,Energy,Latency
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