Suppr超能文献

动态学习框架,用于平滑辅助的基于机器学习的骨干流量预测。

Dynamic Learning Framework for Smooth-Aided Machine-Learning-Based Backbone Traffic Forecasts.

机构信息

School of Electrical Engineering, University Technology Malaysia, Skudai, Johor 81310, Malaysia.

School of Telecommunication Engineering, Future University, Khartoum 10553, Sudan.

出版信息

Sensors (Basel). 2022 May 9;22(9):3592. doi: 10.3390/s22093592.

Abstract

Recently, there has been an increasing need for new applications and services such as big data, blockchains, vehicle-to-everything (V2X), the Internet of things, 5G, and beyond. Therefore, to maintain quality of service (QoS), accurate network resource planning and forecasting are essential steps for resource allocation. This study proposes a reliable hybrid dynamic bandwidth slice forecasting framework that combines the long short-term memory (LSTM) neural network and local smoothing methods to improve the network forecasting model. Moreover, the proposed framework can dynamically react to all the changes occurring in the data series. Backbone traffic was used to validate the proposed method. As a result, the forecasting accuracy improved significantly with the proposed framework and with minimal data loss from the smoothing process. The results showed that the hybrid moving average LSTM (MLSTM) achieved the most remarkable improvement in the training and testing forecasts, with 28% and 24% for long-term evolution (LTE) time series and with 35% and 32% for the multiprotocol label switching (MPLS) time series, respectively, while robust locally weighted scatter plot smoothing and LSTM (RLWLSTM) achieved the most significant improvement for upstream traffic with 45%; moreover, the dynamic learning framework achieved improvement percentages that can reach up to 100%.

摘要

近年来,人们对大数据、区块链、车对一切(V2X)、物联网、5G 等新应用和服务的需求不断增长。因此,为了保持服务质量(QoS),准确的网络资源规划和预测是资源分配的必要步骤。本研究提出了一种可靠的混合动态带宽切片预测框架,该框架结合了长短期记忆(LSTM)神经网络和局部平滑方法,以改进网络预测模型。此外,所提出的框架可以对数据序列中发生的所有变化做出动态反应。骨干流量用于验证所提出的方法。结果表明,所提出的框架和平滑过程中的最小数据丢失显著提高了预测精度。结果表明,混合移动平均 LSTM(MLSTM)在长期演进(LTE)时间序列的训练和测试预测中分别取得了最显著的改进,达到了 28%和 24%,在多协议标签交换(MPLS)时间序列中分别达到了 35%和 32%,而鲁棒局部加权散点平滑和 LSTM(RLWLSTM)在上行流量方面取得了最显著的改进,达到了 45%;此外,动态学习框架的改进幅度可高达 100%。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/f9a1/9103727/2e21d4c92336/sensors-22-03592-g001.jpg

相似文献

1
Dynamic Learning Framework for Smooth-Aided Machine-Learning-Based Backbone Traffic Forecasts.
Sensors (Basel). 2022 May 9;22(9):3592. doi: 10.3390/s22093592.
4
Comparative study of machine learning methods for COVID-19 transmission forecasting.
J Biomed Inform. 2021 Jun;118:103791. doi: 10.1016/j.jbi.2021.103791. Epub 2021 Apr 26.
7
Deep LSTM-Based Transfer Learning Approach for Coherent Forecasts in Hierarchical Time Series.
Sensors (Basel). 2021 Jun 26;21(13):4379. doi: 10.3390/s21134379.
8
Water quality assessment of a river using deep learning Bi-LSTM methodology: forecasting and validation.
Environ Sci Pollut Res Int. 2022 Feb;29(9):12875-12889. doi: 10.1007/s11356-021-13875-w. Epub 2021 May 14.
10
Contextually enhanced ES-dRNN with dynamic attention for short-term load forecasting.
Neural Netw. 2024 Jan;169:660-672. doi: 10.1016/j.neunet.2023.11.017. Epub 2023 Nov 8.

本文引用的文献

2
Machine Learning Algorithms are Superior to Conventional Regression Models in Predicting Risk Stratification of COVID-19 Patients.
Risk Manag Healthc Policy. 2021 Jul 29;14:3159-3166. doi: 10.2147/RMHP.S318265. eCollection 2021.

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验