无线多跳设备到设备缓存网络

Sang-Woon Jeon, Songnam Hong, Mingyue Ji, G. Caire, A. Molisch
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引用次数: 41

摘要

我们考虑一个无线设备到设备网络,其中$n$节点在网络区域上均匀随机分布。我们让每个节点从大小为$m\geq M$的库中缓存$M$文件。网络中的每个节点根据流行度分布独立随机地从库中请求文件,并由其他节点通过(可能的)多跳传输在其本地缓存中提供请求文件。在无线网络的经典“协议模型”下,我们描述了一大类重尾流行分布(包括指数小于1的Zipf分布)的最优每节点容量缩放律。在感兴趣的参数范围内,即$m=o(nM)$,我们展示了在库上具有均匀概率的分散随机缓存策略,对于重尾流行分布,可以产生$\Theta (\sqrt {M/m})$的最佳每节点容量扩展。这种扩展对于$n$是恒定的,因此可以根据网络大小产生吞吐量可伸缩性。此外,多跳容量扩展明显优于单跳缓存网络,单跳缓存网络的每个节点容量为$\Theta (M/m)$。对于指数大于某个阈值> 1的Zipf分布,可以通过在库中最受欢迎的文件子集上统一使用分散的随机缓存来进一步改进多跳容量缩放律。也就是说,忽略一个不太流行的文件子集(即,有效地减少库的大小)可以显著提高吞吐量扩展,同时保证随着$n$的增加,所有节点都将以高概率得到服务。
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Wireless Multihop Device-to-Device Caching Networks
We consider a wireless device-to-device network, where $n$ nodes are uniformly distributed at random over the network area. We let each node caches $M$ files from a library of size $m\geq M$ . Each node in the network requests a file from the library independently at random, according to a popularity distribution, and is served by other nodes having the requested file in their local cache via (possibly) multihop transmissions. Under the classical “protocol model” of wireless networks, we characterize the optimal per-node capacity scaling law for a broad class of heavy-tailed popularity distributions, including Zipf distributions with exponent less than one. In the parameter regime of interest, i.e., $m=o(nM)$ , we show that a decentralized random caching strategy with uniform probability over the library yields the optimal per-node capacity scaling of $\Theta (\sqrt {M/m})$ for heavy-tailed popularity distributions. This scaling is constant with $n$ , thus yielding throughput scalability with the network size. Furthermore, the multihop capacity scaling can be significantly better than for the case of single-hop caching networks, for which the per-node capacity is $\Theta (M/m)$ . The multihop capacity scaling law can be further improved for a Zipf distribution with exponent larger than some threshold > 1, by using a decentralized random caching uniformly across a subset of most popular files in the library. Namely, ignoring a subset of less popular files (i.e., effectively reducing the size of the library) can significantly improve the throughput scaling while guaranteeing that all nodes will be served with high probability as $n$ increases.
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