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Toward Developing Fog Decision Making on the Transmission Rate of Various IoT Devices Based on Reinforcement Learning

机译:基于加固学习的各种物联网传输速度开发迷雾决策

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摘要

In recent years, the focus on reducing the delay and the cost of transferring data to the cloud has led to data processing near end devices. Therefore, fog computing has emerged as a powerful complement to the cloud to handle the large data volume belonging to the Internet of Things (IoT) and the requirements of communications. Over time, because of the increasing number of IoT devices, managing them by a fog node has become more complicated. The problem addressed in this study is the transmission rate of various IoT devices to a fog node in order to prevent delays in emergency cases. We formulate the decision making problem of a fog node by using a reinforcement learning approach in a smart city as an example of a smart environment and then develop a Qlearning algorithm to achieve efficient decisions for IoT transmission rates to the fog node. Although to the best of our knowledge, thus far, there has been no research with this objective, in this study two more approaches, random-based and greedy-based, are simulated to show that our method performs considerably better (over 99.8 percent) than these algorithms.
机译:近年来,重点是降低延迟和将数据传输到云的成本导致了终端设备附近的数据处理。因此,雾计算已成为云的强大补充,以处理属于物联网(物联网)的大数据量和通信的要求。随着时间的推移,由于IOT设备数量越来越多,通过雾节点管理它们已经变得更加复杂。本研究中解决的问题是各种IOT设备到雾节点的传输速率,以防止紧急情况下的延迟。我们通过在智能城市中使用智能城市中的增强学习方法作为智能环境的示例,制定雾节点的决策问题,然后开发QLearnearning算法,以实现对雾节点的IOT传输速率的有效决策。虽然我们所知的知识,但到目前为止,在这一目标上没有研究,在这项研究中,更多的方法,基于随机的和基于贪婪的,模拟了我们的方法更好地表现出更好(超过99.8%)而不是这些算法。

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