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首页> 外文期刊>Turkish Journal of Electrical Engineering and Computer Sciences >Novel random models of entity mobility models and performance analysis of random entity mobility models
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Novel random models of entity mobility models and performance analysis of random entity mobility models

机译:独特移动模型的新型随机模型及随机实体移动模型的性能分析

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It has become possible to collect data from geographically large areas with smart devices that are prevalently used today. Sensors that are integrated into smart devices make it possible for these devices to receive and transmit data wirelessly. The most important problem of this model that is known as mobile crowd sensing and that allows inferences on the data obtained from its users is lack of data. The main reason for this problem is the lack of sufficient usage of the sensors on devices by the user. To increase the amount of data collected, while users may be incentivized in various ways, the amount and accuracy of the collected data may be increased by developing random entity mobility models REMMs . In this study, two new models random point and random journey were proposed as alternatives to existing REMMs. In the experiment environment that was created to measure the performances of the proposed models, their performances were compared to those that are currently used prevalently random waypoint RWP , random walk RW , and random direction RD . In the experiment environment, the performances were compared in terms of three different metrics visiting rates of nodes, rates of reaching the basis, and the number of messages they carried to the basis . The greatest increase in differently sized areas and at different numbers of nodes in the RP model in terms of rates of reaching the basis was 2.6% compared to RWP, 7% compared to RW, and 46.34% compared to RD, while these values for the number of nodes that were visited were 3% compared to RWP, 1.5% compared to RW, and 17.67% compared to RD. In the same conditions in terms of the metric on the number of messages, the model collected 1465.4, 2933.46, and 7260.12 more messages than those in respectively RWP, RW, and RD. The greatest increase in differently sized areas and at different numbers of nodes in the RJ model in terms of reaching the basis was 1% compared to RWP, 3.5% compared to RW, and 25% compared to RD, while these values for the number of nodes that were visited were 0.75% compared to RWP, 2% compared to RW, and 21.4% compared to RD. In the same conditions in terms of the metric on the number of messages, the model collected 1109.56, 1534.26, and 4488.5 more messages than those in RWP, RW, and RD, respectively.
机译:有可能利用当今普遍使用的智能设备收集来自地理位置大面积的数据。集成到智能设备中的传感器使得这些设备可以通过无线接收和传输数据。该模型中最重要的问题被称为移动人群感应,并且允许从用户获得的数据上的推断是缺乏数据。此问题的主要原因是用户对传感器缺乏足够的使用。为了增加收集的数据量,而用户可以以各种方式激励用户,则可以通过开发随机实体移动性模型emmm来增加收集数据的量和准确性。在这项研究中,建议两个新的模型随机点和随机之旅作为现有谷物的替代品。在创建衡量所提出的模型的性能的实验环境中,将它们的性能与当前普遍使用的随机航点RWP,随机步行RW和随机方向RD进行了比较。在实验环境中,根据节点的三种不同度量评分,达到基础的率和他们携带的信息的数量来进行比较。与RW的率达到率的速率范围内,不同大小的区域和不同数量的节点的最大增加与RWP相比,与RW相比,7%,与RD相比,46.34%,而这些值与RWP相比,访问的节点数为3%,与RW相比,1.5%,与RD相比,17.67%。在与消息数量的公制的相同条件下,模型收集了1465.4,2933.46和7260.12的消息,而不是分别的RWP,RW和RD。与RWP相比,与RWP相比,不同尺寸的区域和RJ模型中不同数量的节点的最大增长率为1%,与RW相比,与RD相比,25%,而这些值与RW相比,与RWP相比,访问的节点为0.75%,与RW相比,2%和21.4%。在邮件数量的公制方面的相同条件下,模型分别收集了1109.56,1534.26和4488.5的信息,而不是RWP,RW和RD中的信息。

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