Stitch-Able 分离式学习辅助多无人机系统

Tingkai Sun;Xiaoyan Wang;Xiucai Ye;Biao Han
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引用次数: 0

摘要

无人驾驶飞行器(UAVs),俗称无人机,因其易于部署和在各种应用中的高度灵活性而广受欢迎。在搜索任务和目标跟踪等场景中,在多无人机系统中执行复杂的计算密集型任务变得至关重要。最近的研究探索了将协作集中学习(CL)和联合学习(FL)整合到多无人机系统中。然而,集中学习方法会引起隐私方面的问题,而且可能会受到通信延迟的影响,而联合学习方法对无人机端的计算能力要求很高。为了应对这些挑战,分裂学习(SL)成为一种有前途的替代方法,它能在资源受限的边缘客户端减少学习迭代时间并提高准确性。在本研究中,我们利用分裂学习和可分裂神经网络(SN-NET),为多无人机系统提出了一种新颖的可分裂学习(SSL)方法。所提出的 SSL 方法能够应对多无人机系统中设备不稳定性和模型异质性方面的挑战。我们进行了对比模拟,评估了 SSL 与 CL、FL、传统 SL 和 SFLV1(SplitFed Learning V1)方法的性能,以确定其优越性。
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Stitch-Able Split Learning Assisted Multi-UAV Systems
Unmanned aerial vehicles (UAVs), commonly known as drones, have gained widespread popularity due to their ease of deployment and high agility in various applications. In scenarios such as search missions and target tracking, conducting complex and computation-intensive tasks in multi-UAV systems have become essential. Recent investigations have explored the integration of collaborative centralized learning (CL) and federated learning (FL) into multi-UAV systems. However, CL methods raise privacy concerns and may suffer from communication delays, while FL methods demand high UAV-side computation capability. To address these challenges, split learning (SL) emerges as a promising alternative, offering reduced learning iteration time and improved accuracy in resource-constrained edge clients. In this study, we leverage SL and Stitch-able Neural Network (SN-NET) to propose a novel Stitch-able Split Learning (SSL) approach for multi-UAV systems. The proposed SSL approach is capable of tackling challenges in terms of device instability and model heterogeneity that associated in multi-UAV systems. Comparative simulations are conducted, evaluating its performance against CL, FL, traditional SL and SFLV1 (SplitFed Learning V1) approaches to establish its superiority.
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