Recent years have witnessed the emergence of mobile edge computing (MEC), on the premise of a cost-effective enhancement in the computational ability of hardware-constrained wireless devices (WDs) comprising the Internet of Things (IoT). In a general multi-server multi-user MEC system, each WD has a computational task to execute and has to select binary (off)loading decisions, along with the analog-amplitude resource allocation variables in an online manner, with the goal of minimizing the overall energy-delay cost (EDC) with dynamic system states. While past works typically rely on the explicit expression of the EDC function, the present contribution considers a practical setting, where in lieu of system state information, the EDC function is not available in analytical form, and instead only the function values at queried points are revealed. Towards tackling such a challenging online combinatorial problem with only bandit information, novel Bayesian optimization (BO) based approaches are put forth by leveraging the multi-armed bandit (MAB) framework. Per time slot, the discrete offloading decisions are first obtained via the MAB method, and the analog resource allocation variables are subsequently optimized using the BO selection rule. By exploiting both temporal and contextual information, two novel BO approaches, termed time-varying BO and contextual time-varying BO, are developed. Numerical tests validate the merits of the proposed BO approaches compared with contemporary benchmarks under different MEC network sizes.
翻译:近年来出现了移动边缘计算(MEC),其前提是以成本效益高的方式提高由Tings(IoT)互联网组成的硬件限制无线装置(WD)的计算能力。 在一般多服务器多用户多用户MEC系统中,每个WD都有一个计算任务,必须选择双向(卸载)决定,同时以在线方式选择双向(卸载)决定,同时选择模拟通用资源分配变量,目标是尽量降低具有动态系统状态的总体能量拉动成本(EDC)框架。过去的工作通常依赖EDC功能的清晰表达,而目前的贡献则考虑一种实际的设置,即EDC功能不能以系统状态信息取代系统状态信息。在一个通用的多服务器多用户多用户多用户MEC系统中,每个WC都有一个计算任务要执行,并不得不选择在线方式选择具有挑战性的在线组合问题,而新的BAYesian优化(BO)办法则通过利用拟议的多臂拉动键(MAB)框架来提出。每个时间档,通过MAB方法首次获得离散的卸载决定,而采用系统状态方法,同时利用BBBB的逻辑选择的双向背景资源配置工具进行。