VANET中深度强化学习协议研究综述

Shweta S Doddalinganavar, P. Tergundi, Rudragouda S. Patil
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引用次数: 9

摘要

现在,许多应用都是基于机器学习(M-L)技术来提高数据的性能,M-L技术包括深度学习、强化学习(RL)、深度强化学习(DRL)、监督学习(SL)、无监督学习(UL)、深度Q学习(DQL)等。车载自组网(VANETS)是现代网络的重要组成部分,它是一种分散的网络形式。在这里,决策的挑战对于提高性能、效率和最小化M-L技术的能源消耗起着至关重要的作用。RL无法在大规模网络中解决这个问题。因此,强化学习与深度学习相结合,被称为深度强化学习(DRL),用于解决大规模网络中的挑战。在这里,我们主要关注VANET,它是移动自组织网络的一个子类型,提供街道基站和车辆之间的连接,目的是提供安全和有效的传输。我们还讨论了M-L技术的不同算法,如KNN,深度Q学习,支持向量机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey on Deep Reinforcement Learning Protocol in VANET
Now a day’s numerous application are based on machine learning (M-L) techniques for enhancing performance of data, M-L techniques consist deep learning, reinforcement learning (RL), deep reinforcement learning (DRL), supervised learning (SL), unsupervised learning(UL), deep Q learning (DQL) etc. Vehicular Adhoc Networks (VANETS) most crucial aspect in modern network, which are decentralized over network. Here the challenges of decision making plays vital role for increasing performance, efficiency and minimizing energy consumption for that M-L techniques are utilized. RL unable to address the problem in a large-scale network. Hence RL is combined with DL and is known as deep reinforcement learning (DRL) for addressing challenges in large-scale network. Here we mainly focus VANET, which is the sub type of Mobile Ad-Hoc Network that offers connection between base stations of street– side and vehicles with an objective of giving secure and efficient conveyance. We also discuss different algorithms of M-L technique like KNN, Deep Q learning, SVM.
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