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Learning-based optimization of cache content in a small cell base station

机译:小型基站中基于学习的缓存内容优化

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Optimal cache content placement in a wireless small cell base station (sBS) with limited backhaul capacity is studied. The sBS has a large cache memory and provides content-level selective offloading by delivering high data rate contents to users in its coverage area. The goal of the sBS content controller (CC) is to store the most popular contents in the sBS cache memory such that the maximum amount of data can be fetched directly form the sBS, not relying on the limited backhaul resources during peak traffic periods. If the popularity profile is known in advance, the problem reduces to a knapsack problem. However, it is assumed in this work that, the popularity profile of the files is not known by the CC, and it can only observe the instantaneous demand for the cached content. Hence, the cache content placement is optimised based on the demand history. By refreshing the cache content at regular time intervals, the CC tries to learn the popularity profile, while exploiting the limited cache capacity in the best way possible. Three algorithms are studied for this cache content placement problem, leading to different exploitation-exploration trade-offs. We provide extensive numerical simulations in order to study the time-evolution of these algorithms, and the impact of the system parameters, such as the number of files, the number of users, the cache size, and the skewness of the popularity profile, on the performance. It is shown that the proposed algorithms quickly learn the popularity profile for a wide range of system parameters.
机译:研究了具有有限回程容量的无线小小区基站(SBS)中的最佳高速缓存内容放置。 SBS具有大的高速缓冲存储器,通过向其覆盖区域中的用户提供高数据速率内容来提供内容级选择性卸载。 SBS内容控制器(CC)的目标是将最流行的内容存储在SBS高速缓冲存储器中,使得可以直接提取的最大数据量直接形成SBS,而不是在峰值交通周期期间依赖于有限的回程资源。如果提前已知受欢迎程度型材,则问题降低了背包问题。但是,在这项工作中假设,CC中未知文件的普及配置文件,并且只能观察缓存内容的瞬时需求。因此,基于需求历史来优化高速缓存内容放置。通过以常规时间间隔刷新缓存内容,CC尝试以学习人气配置文件,同时以最佳方式利用有限的高速缓存容量。研究了三种算法,为此缓存内容放置问题进行了研究,导致不同的开发探索权衡。我们提供广泛的数值模拟,以研究这些算法的时间演变,以及系统参数的影响,例如文件数量,用户数量,高速缓存大小以及人气配置文件的歪曲,开启表现。结果表明,所提出的算法快速学习广泛的系统参数的人气配置文件。

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