Zen: LSTM-based generation of individual spatiotemporal cellular traffic with interactions

01/05/2023
by   Anne Josiane Kouam, et al.
0

Domain-wide recognized by their high value in human presence and activity studies, cellular network datasets (i.e., Charging Data Records, named CdRs), however, present accessibility, usability, and privacy issues, restricting their exploitation and research reproducibility.This paper tackles such challenges by modeling Cdrs that fulfill real-world data attributes. Our designed framework, named Zen follows a four-fold methodology related to (i) the LTSM-based modeling of users' traffic behavior, (ii) the realistic and flexible emulation of spatiotemporal mobility behavior, (iii) the structure of lifelike cellular network infrastructure and social interactions, and (iv) the combination of the three previous modules into realistic Cdrs traces with an individual basis, realistically. Results show that Zen's first and third models accurately capture individual and global distributions of a fully anonymized real-world Cdrs dataset, while the second model is consistent with the literature's revealed features in human mobility. Finally, we validate Zen Cdrs ability of reproducing daily cellular behaviors of the urban population and its usefulness in practical networking applications such as dynamic population tracing, Radio Access Network's power savings, and anomaly detection as compared to real-world CdRs.

READ FULL TEXT
research
04/05/2020

Routine pattern discovery and anomaly detection in individual travel behavior

Discovering patterns and detecting anomalies in individual travel behavi...
research
01/04/2022

Generating synthetic mobility data for a realistic population with RNNs to improve utility and privacy

Location data collected from mobile devices represent mobility behaviors...
research
07/30/2019

Understanding and Partitioning Mobile Traffic using Internet Activity Records Data -- A Spatiotemporal Approach

The internet activity records (IARs) of a mobile cellular network posses...
research
07/19/2019

Inferring Accurate Bus Trajectories from Noisy Estimated Arrival Time Records

Urban commuting data has long been a vital source of understanding popul...
research
10/23/2020

How does enterprise IoT traffic evolve? Real-world evidence from a Finnish operator

The adoption of Internet of Things (IoT) technologies in businesses is i...
research
09/13/2021

RWP+: A New Random Waypoint Model for High-Speed Mobility

In this letter, we emulate real-world statistics for mobility patterns o...
research
03/20/2015

Country-scale Exploratory Analysis of Call Detail Records through the Lens of Data Grid Models

Call Detail Records (CDRs) are data recorded by telecommunications compa...

Please sign up or login with your details

Forgot password? Click here to reset