Implementation of Group-Based Human Movement Model in Opportunistic Network

Vittalis Ayu, B. Soelistijanto
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Abstract

As an instance of a distributed computing system, opportunistic networks facilitate message dissemination in a store-carry-forward manner. In this setting, the mobile devices are communicating in opportunistic contacts as they move across the network areas. However, the movement of these mobile devices is exclusively reliant on the mobility of their human owner, thereby limiting the likelihood of contact. The current state of the art typically simulates human movement based on randomness, which is unsuitable for representing how people move in groups. Therefore, this paper proposes an implementation of a group-based human mobility model to simulate device-to-device communication in opportunistic networks. In this model, individuals are able to move as a set within a group and have the ability to join and leave the group dynamically We built the model in BonnMotion and subsequently implemented it in an opportunistic environment simulator, ONE Simulator. To evaluate the proposed model, we compared them to the random-based model as a benchmark. Subsequently, we assess the impact of the movement model on two major areas of network performance: message delivery performance and resource utilization, such as nodes’ energy consumption. We are concerned about these aspects since the mobile agents have limited resources yet are expected to achieve a high rate of message delivery as well. The simulation results show that our model outperformed the random-based model in terms of the number of successfully delivered messages and average delay. However, the number of message replications and the energy consumption is fairly higher than those of the benchmarks.
机会网络中基于群体的人类运动模型的实现
作为分布式计算系统的一个实例,机会网络以存储-前转的方式促进消息的传播。在这种情况下,移动设备在跨网络区域移动时以机会接触方式进行通信。然而,这些移动设备的移动完全依赖于其人类所有者的移动性,从而限制了接触的可能性。目前的技术水平通常是基于随机性模拟人类运动,这并不适合代表人们如何在群体中移动。因此,本文提出了一种基于群体的人类移动模型的实现,以模拟机会网络中设备对设备的通信。在这个模型中,个体能够在一个群体中作为一个整体移动,并且有能力动态地加入和离开这个群体。我们在BonnMotion中建立了这个模型,随后在一个机会主义环境模拟器ONE simulator中实现了它。为了评估提出的模型,我们将它们与基于随机的模型作为基准进行了比较。随后,我们评估了移动模型对网络性能的两个主要领域的影响:消息传递性能和资源利用,如节点的能量消耗。我们关注这些方面,因为移动代理资源有限,但也期望实现高消息传递率。仿真结果表明,我们的模型在成功传递消息的数量和平均延迟方面优于基于随机的模型。但是,消息复制的数量和能耗要比基准测试高得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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12 weeks
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