通过深度学习技术提高物联网服务质量

Adil M. Salman, Haider Rasheed Abdulshaheed, Zinah S. Jabbar, Ahmed Dheyaa Radhi, Poh Soon JosephNg
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引用次数: 0

摘要

在评估物联网(IoT)平台时,将服务质量(QoS)作为关键标准至关重要。随着个人和商业用途的关键设备依赖物联网技术,确保其安全性至关重要。然而,物联网设备产生的大量数据使得使用传统技术管理QoS具有挑战性,特别是当试图从数据中提取有价值的特征时。为了解决这个问题,我们提出了一种动态渐进式深度强化学习(DPDRL)技术来增强物联网中的QoS。我们的方法包括收集和预处理数据样本,然后将其存储在物联网云中并监控用户访问。我们使用诸如丢包、吞吐量、处理延迟和整体系统数据速率等指标来评估我们的框架。我们的结果表明,我们开发的框架实现了94%的最大吞吐量,表明它在提高QoS方面的有效性。我们相信,我们的深度学习优化方法可以在未来进一步利用,以提高物联网平台的QoS。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing quality of service in IoT through deep learning techniques
When evaluating an Internet of Things (IoT) platform, it is crucial to consider the quality of service (QoS) as a key criterion. With critical devices relying on IoT technology for both personal and business use, ensuring its security is paramount. However, the vast amount of data generated by IoT devices makes it challenging to manage QoS using conventional techniques, particularly when attempting to extract valuable characteristics from the data. To address this issue, we propose a dynamic-progressive deep reinforcement learning (DPDRL) technique to enhance QoS in IoT. Our approach involves collecting and preprocessing data samples before storing them in the IoT cloud and monitoring user access. We evaluate our framework using metrics such as packet loss, throughput, processing delay, and overall system data rate. Our results show that our developed framework achieved a maximum throughput of 94%, indicating its effectiveness in improving QoS. We believe that our deep learning optimization approach can be further utilized in the future to enhance QoS in IoT platforms.
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