面向物联网通信的深度学习:特邀演讲

Willie L. Thompson, Michael F. Talley
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引用次数: 4

摘要

近年来,被称为物联网(IoT)的技术研究出现了快速发展。因此,这种发展导致了连接设备的增加。根据Statista的数据,到2025年,物联网连接设备的数量将达到754.4亿台。考虑到连接设备的预期指数增长,到2025年,这也将导致传输数据的增加。《数据管理解决方案评论》指出,到2025年,数据创建量将达到163泽字节。这些情况将导致数据传输的升级,从而导致诸如延迟、数据速率、拥塞、非线性和其他复杂性等问题。虽然基于传统数学变换的通信系统表现良好,但需要提出新的解决方案来缓解这些问题。一个潜在的解决方案是采用先进的机器学习(ML)技术来帮助管理数据量和算法驱动应用程序的增长。深度学习(DL)最近的成功为解决这一领域的问题提供了新的强大工具。DL技术的独特参数能够正确地表征和分类传输和接收的复杂信号。本文将研究物理层(PHY)通信系统的优化,并使用1D卷积神经网络(CNN)在物联网硬件实现中的未来应用。
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Deep Learning for IoT Communications : Invited Presentation
In recent years there has been a rapid evolution in research in the technology known as the Internet of Things or IoT. Consequently, this development has caused an increase in connected devices. According to Statista, the amount of IoT connected devices by the year 2025 will be 75.44 billion. Given this expected exponential rise in connected devices, this will cause an increase in the transmitted data by the year 2025 as well. The Data Management Solutions Review states that data creation will reach 163 zettabytes by 2025. These conditions will cause an escalation in data transmission which will cause problems such as latency, data rates, congestion, nonlinearities, and other complexities. While communication systems have performed well based on traditional mathematical transforms, there is a need to present new solutions to mitigate these problems. One potential solution is to resort to advanced Machine Learning (ML) techniques to help manage the rise in data volumes and algorithm-driven applications. The recent success of Deep Learning (DL) underpins new and powerful tools that tackle problems in this space. The unique parameters of DL techniques are capable of properly characterizing and categorizing complex signals being transmitted and received. This paper will investigate the optimization of communication systems at the physical layer (PHY) with future applications in IoT hardware implementation using a 1D Convolutional Neural Networks (CNN).
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