Data management using Device-to-Device (D2D) communications and opportunistic networks (ONs) is one of the main focuses of human-centric pervasive Internet services. In the recently proposed "Internet of People" paradigm, accessing relevant data dynamically generated in the environment nearby is one of the key services. Moreover, personal mobile devices become proxies of their human users while exchanging data in the cyber world and, thus, largely use ONs and D2D communications for exchanging data directly. Recently, researchers have successfully demonstrated the viability of embedding human cognitive schemes in data dissemination algorithms for ONs. In this paper, we consider one such scheme based on the recognition heuristic, a human decision-making scheme used to efficiently assess the relevance of data. While initial evidence about its effectiveness is available, the evaluation of its behaviour in large-scale settings is still unsatisfactory. To overcome these limitations, we have developed a novel hybrid modelling methodology, which combines an analytical model of data dissemination within small-scale communities of mobile users, with detailed simulations of interactions between different communities. This methodology allows us to evaluate the algorithm in large-scale city- and country-wide scenarios. Results confirm the effectiveness of cognitive data dissemination schemes, even when content popularity is very heterogenous.
翻译:使用设备到设计(D2D)通信和机会网络的数据管理是以人为中心的普遍互联网服务的主要重点之一。在最近提出的“人际互联网”范式中,对附近环境中动态生成的相关数据进行访问是关键服务之一。此外,个人移动设备在网络世界中交换数据时成为其人类用户的代理人,因此,主要使用ONS和D2D通信直接交换数据。最近,研究人员成功地展示了将人类认知计划纳入以人为中心的普及互联网服务数据传播算法的可行性。在本文中,我们考虑了一种基于认知超常的人类决策方法,用于有效评估数据的相关性。虽然初步证据表明其有效性,但在大规模环境下对其行为进行的评估仍然不能令人满意。为了克服这些局限性,我们开发了一种新的混合建模方法,将小型移动用户社区内数据传播的分析模型结合起来,并详细模拟不同社区之间的互动。这一方法使我们能够评估大规模城市和国家范围的数据传播计划的算法,当他具有非常普遍的认知能力时,结果证实了数据传播的实效。