Not every bit counts: A resource allocation problem for data gathering in machine-to-machine communications

Chih-Hua Chang, Hung-Yun Hsieh
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引用次数: 7

Abstract

Many applications involving machine-to-machine (M2M) communications are characterized by the large amount of data to transport. To address the “big data” problem introduced by these M2M applications, we argue in this paper that instead of focusing on serving individual machines with better quality, one should focus on solutions that can better serve the data itself. To substantiate this concept, we consider the scenario of data gathering in a wide area by machines that are connected to a central aggregator through direct wireless links. The aggregator has limited radio resources to allocate to machines for uplink transmission of collected data, and hence the problem arises as to how the resources can be effectively utilized for supporting such an M2M application. In contrast to conventional approaches on maximizing the number of machines that can access the radio resources, we investigate an approach that takes into consideration “useful” information content that individual machines can provide for prioritization of resource allocation. Numerical results based on the proposed algorithms show that although the number of machines that can be supported is not maximized, the data so collected at the aggregator does exhibit significant quality gain for the target M2M scenario, thus motivating further investigation along this direction.
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不是每个比特都重要:机器对机器通信中数据收集的资源分配问题
许多涉及机器对机器(M2M)通信的应用程序的特点是需要传输大量数据。为了解决这些M2M应用程序带来的“大数据”问题,我们在本文中认为,与其专注于以更好的质量服务于单个机器,不如专注于更好地服务于数据本身的解决方案。为了证实这一概念,我们考虑了通过直接无线链路连接到中央聚合器的机器在大范围内收集数据的场景。聚合器有有限的无线电资源分配给机器用于上行传输收集到的数据,因此出现了如何有效地利用资源来支持这种M2M应用程序的问题。与最大化可以访问无线电资源的机器数量的传统方法相反,我们研究了一种考虑到单个机器可以为资源分配优先级提供的“有用”信息内容的方法。基于所提出算法的数值结果表明,尽管可以支持的机器数量没有最大化,但在聚合器上收集的数据确实显示出目标M2M场景的显著质量增益,因此激励沿着这个方向进一步研究。
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