Mobile ad hoc computing (MAHC), which allows mobile devices to directly share their computing resources, is a promising solution to address the growing demands for computing resources required by mobile devices. However, offloading a computation task from a mobile device to other mobile devices is a challenging task due to frequent topology changes and link failures because of node mobility, unstable and unknown communication environments, and the heterogeneous nature of these devices. To address these challenges, in this paper, we introduce a novel coded computation scheme based on multi-agent reinforcement learning (MARL), which has many promising features such as adaptability to network changes, high efficiency and robustness to uncertain system disturbances, consideration of node heterogeneity, and decentralized load allocation. Comprehensive simulation studies demonstrate that the proposed approach can outperform state-of-the-art distributed computing schemes.
翻译:移动临时计算(MAHC)使移动设备能够直接分享其计算资源,这是解决移动设备对计算资源需求不断增加的一个大有希望的解决办法,然而,由于频繁的地形变化和因节点流动性、不稳定和未知的通信环境以及这些设备的多样性而导致的联系失败,将一个计算任务从移动设备卸到其他移动设备,是一项具有挑战性的任务。 为了应对这些挑战,我们在本文件中引入了一个基于多试剂强化学习(MARL)的新编码计算计划,该计划有许多有希望的特点,如适应网络变化、高效和稳健应对不确定的系统扰动、考虑节点异性以及分散式的负载分配。 综合模拟研究表明,拟议的方法可以超越最先进的分布式计算计划。