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Threshold-Based Data Exclusion Approach for Energy-Efficient Federated Edge Learning

机译:基于阈值的数据排除方法,用于节能联邦边缘学习

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Federated edge learning (FEEL) is a promising distributed learning technique for next-generation wireless networks. FEEL preserves the user’s privacy, reduces the communication costs, and exploits the unprecedented capabilities of edge devices to train a shared global model by leveraging a massive amount of data generated at the network edge. However, FEEL might significantly shorten energy-constrained participating devices’ lifetime due to the power consumed during the model training round. This paper proposes a novel approach that endeavors to minimize computation and communication energy consumption during FEEL rounds to address this issue. First, we introduce a modified local training algorithm that intelligently selects only the samples that enhance the model’s quality based on a predetermined threshold probability. Then, the problem is formulated as joint energy minimization and resource allocation optimization problem to obtain the optimal local computation time and the optimal transmission time that minimize the total energy consumption considering the worker’s energy budget, available bandwidth, channel states, beamforming, and local CPU speed. After that, we introduce a tractable solution to the formulated problem that ensures the robustness of FEEL. Our simulation results show that our solution substantially outperforms the baseline FEEL algorithm as it reduces the local consumed energy by up to 79%.
机译:联邦边缘学习(诱导)是下一代无线网络的有希望的分布式学习技术。允许保留用户的隐私,降低通信成本,并利用边缘设备的前所未有的功能来通过利用网络边缘生成的大量数据来培训共享全局模型。然而,由于模型训练期间消耗的功率,感觉可能会显着缩短能量受限的参与设备的寿命。本文提出了一种新的方法,使得在感受到这种问题的感觉中最大限度地减少计算和通信能量消耗。首先,我们介绍了一种修改的本地训练算法,智能地仅根据预定的阈值概率选择提高模型质量的样本。然后,该问题被制定为联合能量最小化和资源分配优化问题,以获得最佳的本地计算时间和最佳传输时间,最小化考虑工作者的能量预算,可用带宽,信道状态,波束成形和本地CPU的总能量消耗速度。之后,我们向制定的问题引入了一个易解的解决方案,确保了感觉的稳健性。我们的仿真结果表明,我们的解决方案显着优于基线感觉算法,因为它将当地消耗的能量降低至79%。

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