基于LSTM神经网络的缓存点选择与传输减少

Q4 Computer Science
Malihe Bahekmat, Mohammad Hossein Yaghmaee Moghaddam
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引用次数: 0

摘要

在无线传感器网络中,由于链路问题或缓冲区拥塞导致丢包率高的情况下,数据传输的可靠性是非常重要的。因此,中间缓存点和拥塞控制等机制可以在丢包时提高传输协议的可靠性。另一方面,此类网络的能耗问题已成为影响其可靠性的一个重要参数。在本文中,考虑到传感器节点的能量约束以及节点能量消耗与传输次数的直接关系,系统通过优化缓存点和数据包缓存的选择,尽可能减少从源到目的发送数据包所需的传输次数。为了选择最佳缓存点,采用深度学习算法从网络行为分析中提取信息。在训练阶段,以长短期记忆(LSTM)能力为例,对递归神经网络(RNN)深度学习网络进行网络条件的学习。结果表明,该方法能较好地检验传输成本、端到端延迟、缓存使用和吞吐量的评估标准。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cache Point Selection and Transmissions Reduction using LSTM Neural Network
Reliability of data transmission in wireless sensor networks (WSN) is very important in the case of high lost packet rate due to link problems or buffer congestion. In this regard, mechanisms such as middle cache points and congestion control can improve the performance of the reliability of transmission protocols when the packet is lost. On the other hand, the issue of energy consumption in this type of networks has become an important parameter in their reliability. In this paper, considering the energy constraints in the sensor nodes and the direct relationship between energy consumption and the number of transmissions made by the nodes, the system tries to reduce the number of transmissions needed to send a packet from source to destination as much as possible by optimal selection of the cache points and packet caching. In order to select the best cache points, the information extracted from the network behavior analysis by deep learning algorithm has been used. In the training phase, long-short term memory (LSTM) capabilities as an example of recurrent neural network (RNN) deep learning networks to learn network conditions. The results show that the proposed method works better in examining the evaluation criteria of transmission costs, end-to-end delays, cache use and throughput.
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来源期刊
Journal of Information Systems and Telecommunication
Journal of Information Systems and Telecommunication Computer Science-Information Systems
CiteScore
0.80
自引率
0.00%
发文量
24
审稿时长
24 weeks
期刊介绍: This Journal will emphasize the context of the researches based on theoretical and practical implications of information Systems and Telecommunications. JIST aims to promote the study and knowledge investigation in the related fields. The Journal covers technical, economic, social, legal and historic aspects of the rapidly expanding worldwide communications and information industry. The journal aims to put new developments in all related areas into context, help readers broaden their knowledge and deepen their understanding of telecommunications policy and practice. JIST encourages submissions that reflect the wide and interdisciplinary nature of the subject and articles that integrate technological disciplines with social, contextual and management issues. JIST is planned to build particularly its reputation by publishing qualitative researches and it welcomes such papers. This journal aims to disseminate success stories, lessons learnt, and best practices captured by researchers in the related fields.
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