基于学习的MEC抗干扰目标检测高效联邦学习

Zihan Lin, Pengmin Li, Yilin Xiao, Liang Xiao, Fucai Luo
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引用次数: 0

摘要

联邦学习使移动边缘计算(MEC)能够训练具有隐私保护和减少通信开销的对象检测模型。然而,移动设备和训练数据集的选择决定了移动设备的能量消耗以及检测精度和延迟,必须在不依赖已知信道和干扰模型的情况下进行优化,以对抗旨在降低模型训练性能的干扰攻击。本文提出了一种基于强化学习(RL)的高效抗干扰联邦学习训练方案。该方案设计了一种共享参数的快速强化学习算法,根据信道增益、之前的训练性能、传输性能和计算性能来选择移动设备上目标检测模型的训练策略。边缘服务器使用共享q表来确定每个移动设备的策略,以加速学习过程。仿真结果表明,与基准方案相比,该方案能有效提高目标检测精度,降低能耗,降低时延。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning Based Efficient Federated Learning for Object Detection in MEC Against Jamming
Federated learning enables mobile edge computing (MEC) to train the object detection model with privacy protection and reduced communication overhead. However, the selection of the mobile devices and the training dataset that determines the energy consumption of the mobile devices and the detection accuracy and latency has to be optimized without relying on the known channel and jamming model against jamming attacks that aim to degrade the model training performance. In this paper, we propose a reinforcement learning (RL) based efficient federated learning training scheme against jamming. This scheme designs a fast RL algorithm with shared parameters to choose the training policy of the object detection model at the mobile devices based on the channel gain, the previous training, transmission and computation performance. The edge server uses a shared Q-table to determine the policy for each mobile device to accelerate the learning process. Simulation results show that this scheme can effectively improve the object detection accuracy, decrease the energy consumption and reduce the latency compared with the benchmark scheme.
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