We design efficient online scheduling policies to maximize the freshness of information delivered to the users in a cellular network under both adversarial and stochastic channel and mobility assumptions. The information freshness achieved by a policy is investigated through the lens of a recently proposed metric - Age-of-Information (AoI). We show that a natural greedy scheduling policy is competitive against any optimal offline policy in minimizing the AoI in the adversarial setting. We also derive universal lower bounds to the competitive ratio achievable by any online policy in the adversarial framework. In the stochastic setting, we show that a simple index policy is near-optimal for minimizing the average AoI in two different mobility scenarios. Further, we prove that the greedy scheduling policy minimizes the peak AoI for static users in the stochastic setting. Simulation results show that the proposed policies perform well under realistic conditions.
翻译:我们设计了高效的在线日程安排政策,以最大限度地增加在对抗性和随机性渠道和流动性假设下向蜂窝网络用户提供的信息的新鲜度。一项政策实现的信息新鲜度通过最近提出的信息年龄衡量标准(AoI)的透镜调查。我们表明,自然贪婪的日程安排政策与任何最佳离线政策相比具有竞争力,在对抗性环境中最大限度地减少AoI。我们还从任何在线政策在对抗性框架内可以实现的竞争比率中获得普遍较低的界限。在随机化环境中,我们表明在两种不同的流动性假设中,简单指数政策接近于最大限度地减少平均AoI。此外,我们证明,贪婪的日程安排政策最大限度地减少了静态用户在随机化环境中的状态。模拟结果表明,拟议政策在现实条件下运作良好。