基于低延迟、高可靠性的无人机群CNN分布式推理

Marwan Dhuheir, A. Erbad, Sinan Sabeeh
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引用次数: 0

摘要

近年来,无人机在监视、搜救行动、环境监测等许多关键应用中表现出令人印象深刻的性能。在许多这些应用中,无人机捕获图像以及其他传感数据,然后将数据处理请求发送到远程服务器。然而,由于不稳定的连接、有限的带宽、有限的能量和严格的端到端延迟,这种方法在基于实时的应用程序中并不总是实用的。一种很有希望的解决方案是将推理请求划分为子任务,这些子任务可以根据可用资源在蜂群中的无人机之间进行分配。此外,这些任务产生的中间结果需要在蜂群移动覆盖该区域时可靠地传输。我们的系统模型处理实时请求,旨在找到保证高可靠性和低延迟的最优传输功率。我们将低延迟和高可靠性(LLHR)分布式推理作为一个优化问题,并且由于问题的复杂性,我们将其分为三个子问题。在第一个子问题中,我们在保证传输可靠性的前提下,求出连接无人机的最优发射功率。第二个子问题的目的是找到无人机在网格中的最优位置,而最后一个子问题的目的是找到CNN层在可用无人机中的最优位置。我们进行了广泛的模拟,并将我们的工作与两个基线模型进行比较,证明我们的模型优于竞争模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
LLHR: Low Latency and High Reliability CNN Distributed Inference for Resource-Constrained UAV Swarms
Recently, Unmanned Aerial Vehicles (UAVs) have shown impressive performance in many critical applications, such as surveillance, search and rescue operations, environmental monitoring, etc. In many of these applications, the UAVs capture images as well as other sensory data and then send the data processing requests to remote servers. Nevertheless, this approach is not always practical in real-time-based applications due to unstable connections, limited bandwidth, limited energy, and strict end-to-end latency. One promising solution is to divide the inference requests into subtasks that can be distributed among UAVs in a swarm based on the available resources. Moreover, these tasks create intermediate results that need to be transmitted reliably as the swarm moves to cover the area. Our system model deals with real-time requests, aiming to find the optimal transmission power that guarantees higher reliability and low latency. We formulate the Low Latency and High-Reliability (LLHR) distributed inference as an optimization problem, and due to the complexity of the problem, we divide it into three subproblems. In the first subproblem, we find the optimal transmit power of the connected UAVs with guaranteed transmission reliability. The second subproblem aims to find the optimal positions of the UAVs in the grid, while the last subproblem finds the optimal placement of the CNN layers in the available UAVs. We conduct extensive simulations and compare our work to two baseline models demonstrating that our model outperforms the competing models.
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