학술논문

Multivariate Time Series Characterization and Forecasting of VoIP Traffic in Real Mobile Networks
Document Type
Periodical
Source
IEEE Transactions on Network and Service Management IEEE Trans. Netw. Serv. Manage. Network and Service Management, IEEE Transactions on. 21(1):851-865 Feb, 2024
Subject
Communication, Networking and Broadcast Technologies
Computing and Processing
Time series analysis
Measurement
Forecasting
Behavioral sciences
Bandwidth
Autoregressive processes
Signal to noise ratio
VoIP traffic characterization
multivariate time series forecasting
machine learning for time series forecasting
mobility scenarios
Language
ISSN
1932-4537
2373-7379
Abstract
Predicting the behavior of real-time traffic (e.g., VoIP) in mobility scenarios could help the operators to better plan their network infrastructures and to optimize the allocation of resources. Accordingly, in this work the authors propose a forecasting analysis of crucial QoS/QoE descriptors (some of which neglected in the technical literature) of VoIP traffic in a real mobile environment. The problem is formulated in terms of a multivariate time series analysis. Such a formalization allows to discover and model the temporal relationships among various descriptors and to forecast their behaviors for future periods. Techniques such as Vector Autoregressive models and machine learning (deep-based and tree-based) approaches are employed and compared in terms of performance and time complexity, by reframing the multivariate time series problem into a supervised learning one. Moreover, a series of auxiliary analyses (stationarity, orthogonal impulse responses, etc.) are performed to discover the analytical structure of the time series and to provide deep insights about their relationships. The whole theoretical analysis has an experimental counterpart since a set of trials across a real-world LTE-Advanced environment has been performed to collect, post-process and analyze about 600,000 voice packets, organized per flow and differentiated per codec.