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Introspection-Based Periodicity Awareness Model for Intermittently Connected Mobile Networks

机译:间歇连接移动网络的基于内省的周期性意识模型

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Recently, context awareness in Intermittently Connected Mobile Networks (ICMNs) has gained popularity in order to discover social similarities among mobile entities. Nevertheless, most of the contextual methods depend on network knowledge obtained with unrealistic scenarios. Mobile entities should have a self-knowledge determination in order to estimate their activity routines in a group of communities. This paper presents a periodicity awareness model which relies on introspective spatiotemporal observations. In this model, hourly, daily, and weekly locations of mobile entities are being tracked to predict future trajectories and periodicities within a targeted time period. Realistic simulations are utilized to analyze the predictions in weekly observation sets. The results show that a reasonable accuracy with an increasing level of determination can be obtained which does not require global network knowledge. In this regard, the presented model can give insights for any type of ICMN objectives.
机译:最近,在间歇地连接的移动网络(ICMNS)中的语境意识已经获得了流行,以便在移动实体之间发现社交相似性。然而,大多数上下文方法都依赖于使用不切实际的方案获得的网络知识。移动实体应该具有自我知识的确定,以估算一组社区中的活动例程。本文呈现了依赖于内省时尚观测的周期性意识模型。在该模型中,正在跟踪每小时,每日和每周移动实体的位置,以预测目标时间段内的未来轨迹和周期。利用现实模拟来分析每周观测集中的预测。结果表明,可以获得具有越来越多的确定水平的合理精度,其不需要全局网络知识。在这方面,所呈现的模型可以为任何类型的ICMN目标提供见解。

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