Zhu Chun, Shi Ying, Zhao Haitao, Chen Keqi, Zhang Tianyu, Bao Chongyu
College of Science, Nanjing University of Posts and Telecommunications, Nanjing 210003, China.
School of Communication and Information Engineering, Nanjing University of Posts and Telecommunications, Nanjing 210003, China.
Sensors (Basel). 2024 Feb 29;24(5):1599. doi: 10.3390/s24051599.
As the frequency of natural disasters increases, the study of emergency communication becomes increasingly important. The use of federated learning (FL) in this scenario can facilitate communication collaboration between devices while protecting privacy, greatly improving system performance. Considering the complex geographic environment, the flexible mobility and large communication radius of unmanned aerial vehicles (UAVs) make them ideal auxiliary devices for wireless communication. Using the UAV as a mobile base station can better provide stable communication signals. However, the number of ground-based IoT terminals is large and closely distributed, so if all of them transmit data to the UAV, the UAV will not be able to take on all of the computation and communication tasks because of its limited energy. In addition, there is competition for spectrum resources among many terrestrial devices, and all devices transmitting data will bring about an extreme shortage of resources, which will lead to the degradation of model performance. This will bring indelible damage to the rescue of the disaster area and greatly threaten the life safety of the vulnerable and injured. Therefore, we use user scheduling to select some terrestrial devices to participate in the FL process. In order to avoid the resource waste generated by the terrestrial device resource prediction, we use the multi-armed bandit (MAB) algorithm for equipment evaluation. Considering the fairness issue of selection, we try to replace the single criterion with multiple criteria, using model freshness and energy consumption weighting as reward functions. The state of the art of our approach is demonstrated by simulations on the datasets.
随着自然灾害发生频率的增加,应急通信的研究变得越发重要。在这种情况下使用联邦学习(FL)可以在保护隐私的同时促进设备间的通信协作,极大地提高系统性能。考虑到复杂的地理环境,无人机(UAV)灵活的机动性和较大的通信半径使其成为无线通信的理想辅助设备。将无人机用作移动基站可以更好地提供稳定的通信信号。然而,地面物联网终端数量众多且分布密集,所以如果所有终端都向无人机传输数据,无人机因其能量有限将无法承担所有的计算和通信任务。此外,众多地面设备之间存在频谱资源竞争,所有设备传输数据会导致资源极度短缺,进而导致模型性能下降。这将给灾区救援带来不可磨灭的损害,并严重威胁弱势群体和伤者的生命安全。因此,我们使用用户调度来选择一些地面设备参与联邦学习过程。为了避免地面设备资源预测产生的资源浪费,我们使用多臂老虎机(MAB)算法进行设备评估。考虑到选择的公平性问题,我们尝试用多个标准取代单一标准,使用模型新鲜度和能耗加权作为奖励函数。我们方法的先进性通过在数据集上的模拟得到了证明。