User Selection of Mobility Control for Throughput Improvement in Ad Hoc Networks

Takumi Anjiki, T. Murase
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引用次数: 4

Abstract

We propose an optimal user selection method on mobility control for ad hoc networks to improve QoS. In the proposed method, the best user, which is the best movable user for QoS, is selected based on physical distances between users in an ad hoc network and on the connection relationships between the users. The method also indicates the best destination to move that user to within a reasonable time. To reduce the search cost to obtain the best destination, the proposed method reduces the areas to be searched by identifying the discrete positions where transmission rates change according to the measurement data model. All the identified positions are examined to determine whether to relay another user to determine the best position. The evaluation results show that the proposed method achieved 99.0% of the maximum throughput obtained by moving the best user to the best destination. Throughput improvement of 10.3% was achieved compared with the conventional user mobility control method, which adopts a heuristic approach. Although the proposed method requires more running time than the conventional heuristic approach, it remains within a reasonable time.
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基于移动性控制的Ad Hoc网络吞吐量改进用户选择
提出了一种基于移动控制的ad hoc网络最优用户选择方法,以提高网络服务质量。该方法根据自组网中用户之间的物理距离和用户之间的连接关系来选择最佳用户,即QoS的最佳可移动用户。该方法还指示在合理时间内将该用户移动到的最佳目的地。该方法根据测量数据模型,通过识别传输速率变化的离散位置,减少需要搜索的区域,从而降低搜索成本以获得最佳目标。检查所有已识别的位置,以确定是否中继另一个用户以确定最佳位置。评估结果表明,通过将最佳用户移动到最佳目的地,该方法获得了99.0%的最大吞吐量。与传统的启发式用户移动性控制方法相比,吞吐量提高了10.3%。虽然所提出的方法比传统的启发式方法需要更多的运行时间,但仍然在合理的时间内。
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