Author: Zagatti, G. A.; Wu, T.; Ng, S. K.; Bressan, S.
Title: A Large-scale Disease Outbreak Analytics System based on Wi-Fi Session Logs Cord-id: k2sykg1h Document date: 2021_1_1
ID: k2sykg1h
Snippet: Unraveling human mobility patterns is critical for understanding disease spread and implementing effective controls during large-scale disease outbreaks such as the COVID-19 pandemic. Given the urgency associated with such situations, it is important to leverage on the common existing digital infrastructures that can be readily activated for disease outbreak analytics. We introduce an integrated system for disease outbreak investigation using data from Wi-Fi sessions. The system offers outbreak
Document: Unraveling human mobility patterns is critical for understanding disease spread and implementing effective controls during large-scale disease outbreaks such as the COVID-19 pandemic. Given the urgency associated with such situations, it is important to leverage on the common existing digital infrastructures that can be readily activated for disease outbreak analytics. We introduce an integrated system for disease outbreak investigation using data from Wi-Fi sessions. The system offers outbreak analytics, simulation, and visualization capabilities to assist in the identification of infection hot-spots and in contacttracing exercises. The system has been developed and experimentally deployed for research purposes on a large local university campus in Singapore. © 2021 IEEE.
Search related documents:
Co phrase search for related documents- Try single phrases listed below for: 1
Co phrase search for related documents, hyperlinks ordered by date