Grant-Free (GF) access has been recognized as a promising candidate for Ultra-Reliable and Low-Latency Communications (URLLC). However, even with GF access, URLLC still may not effectively gain high reliability and millimeter-level latency, simultaneously. This is because the network load is typically time-varying and not known to the base station (BS), and thus, the resource allocated for GF access cannot well adapt to variations of the network load, resulting in low resource utilization efficiency under light network load and leading to severe collisions under heavy network load. To tackle this problem, we propose a multi-tier-driven computing framework and the associated algorithms for URLLC to support users with different QoS requirements. Especially, we concentrate on K - repetition GF access in light of its simplicity and well-balanced performance for practical systems. In particular, our framework consists of three tiers of computation, namely network-load learning, network-load prediction, and adaptive resource allocation. In the first tier, the BS can learn the network-load information from the states (success, collision, and idle) of random-access resources in terms of resource blocks (RB) and time slots. In the second tier, the network-load variation is effectively predicted based on estimation results from the first tier. Finally, in the third tier, by deriving and weighing the failure probabilities of different groups of users, their QoS requirements, and the predicted network loads, the BS is able to dynamically allocate sufficient resources accommodating the varying network loads. Simulation results show that our proposed approach can estimate the network load more accurately compared with the baseline schemes. Moreover, our adaptive resource allocation offers an effective way to enhance the QoS for different URLLC services, simultaneously.
翻译:免赠(GF)接入被公认为是超可靠和低寿命通信(URLLC)的一个大有希望的候选人。然而,即使有GF接入,URLLC仍可能无法同时有效地获得高度可靠性和毫米悬浮度,这是因为网络负荷通常具有时间差异,而且基站并不知晓,因此,分配给GF接入的资源不能很好地适应网络负荷的变化,导致轻网络负荷下的资源利用效率低,导致网络负荷沉重负荷下的严重碰撞。为解决这一问题,我们建议为URLC提供多层驱动的计算框架和相关算法,以支持不同QOS要求的用户。特别是,我们集中关注K-重复GF接入,因为其简单性,而且实际系统的运作功能也非常均衡。 特别是,为GF接入分配的资源框架包括三个层次的计算,即网络负荷学习、网络负荷预测和调整资源配置。 在第一层,BS的快速网络成本配置和运行水平的计算方法可以从国家(偏差、碰撞和闲置)的计算结果。