Today, modern unmanned aerial vehicles (UAVs) are equipped with increasingly advanced capabilities that can run applications enabled by machine learning techniques, which require computationally intensive operations such as matrix multiplications. Due to computation constraints, the UAVs can offload their computation tasks to edge servers. To mitigate stragglers, coded distributed computing (CDC) based offloading can be adopted. In this paper, we propose an Optimal Task Allocation Scheme (OTAS) based on Stochastic Integer Programming with the objective to minimize energy consumption during computation offloading. The simulation results show that amid uncertainty of task completion, the energy consumption in the UAV network is minimized.
翻译:今天,现代无人驾驶飞行器(无人驾驶飞行器)拥有越来越先进的能力,能够运行机器学习技术所促成的应用,这需要诸如矩阵乘数等计算密集操作。由于计算限制,无人驾驶飞行器可以将其计算任务卸到边缘服务器。为了减轻累赘,可以采用基于卸载的编码分布计算(CDC)。在本文中,我们提议基于斯托切斯内特机编程的优化任务分配计划(OTAS),目的是在计算卸载时尽量减少能源消耗。模拟结果显示,在任务完成的不确定性下,无人驾驶飞行器网络的能源消耗最小化。