Data-driven future wireless communication

Jian-hua Zhang
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引用次数: 1

Abstract

Besides supporting the traditional requirement of large-area coverage and high-data rate transmission services, IMT-2020 defined by ITU-R is also expected to supply smart and reliable interconnection among humans and things. Thus, the vision of IMT-2020 presents the convergence of wireless communication, Internet, Internet of Things (IoT) and machine-type communication (MTC), which together brings an explosive increase to traffic volume and stimulates wireless communication to the time of big data. Obviously, such vision poses big challenges to 5G and future wireless communication. This keynote speech discusses the application of computer science into future wireless communication, especially data mining techniques to accelerate the wireless research and development. Firstly, the big data tendency of wireless communication is presented and the possible ways to combine them are pointed out. In particular, a three-level structure of a wireless system is defined in order to classify the propagation environments, which will bring the complex combination into simplicity. Considering these three levels, there are different tasks like service prediction and pushing, self-organized networking, self-adapting large-scale fading modeling and so on, which can be abstracted into problems like regression, classification, clustering, etc. Since there are many powerful algorithms in the data mining domain to accomplish them, we can expect a data-driven future wireless communication to make our lives and society convenient.
数据驱动的未来无线通信
除了支持大面积覆盖和高数据速率传输业务的传统需求外,ITU-R定义的IMT-2020还有望提供人与物之间智能可靠的互联。因此,IMT-2020的愿景是无线通信、互联网、物联网(IoT)和机器型通信(MTC)的融合,共同带来业务量的爆炸式增长,将无线通信刺激到大数据时代。显然,这样的愿景对5G和未来的无线通信构成了巨大的挑战。本主题演讲讨论了计算机科学在未来无线通信中的应用,特别是数据挖掘技术,以加速无线通信的研究和发展。首先,提出了无线通信的大数据趋势,并指出了两者结合的可能途径。特别是,定义了无线系统的三层结构,对传播环境进行分类,使复杂的组合变得简单。考虑到这三个层次,有服务预测与推送、自组织组网、自适应大规模衰落建模等不同的任务,可以抽象为回归、分类、聚类等问题。由于在数据挖掘领域有许多强大的算法来完成它们,我们可以期待一个数据驱动的未来无线通信为我们的生活和社会带来便利。
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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