A Smartphone enabled Approach to Manage COVID-19 Lockdown and Economic
Crisis
- URL: http://arxiv.org/abs/2004.12240v2
- Date: Tue, 19 May 2020 19:44:23 GMT
- Title: A Smartphone enabled Approach to Manage COVID-19 Lockdown and Economic
Crisis
- Authors: Halgurd S. Maghdid, Kayhan Zrar Ghafoor
- Abstract summary: The emergence of novel COVID-19 causing an overload in health system and high mortality rate.
In this paper, we developed a smartphone-based approach to automatically and widely trace the contacts for confirmed COVID-19 cases.
We also developed a dashboard to provide a plan for government officials on how lockdown/mass quarantine can be safely lifted.
- Score: 1.9188864062289428
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The emergence of novel COVID-19 causing an overload in health system and high
mortality rate. The key priority is to contain the epidemic and prevent the
infection rate. In this context, many countries are now in some degree of
lockdown to ensure extreme social distancing of entire population and hence
slowing down the epidemic spread. Further, authorities use case quarantine
strategy and manual second/third contact-tracing to contain the COVID-19
disease. However, manual contact tracing is time consuming and labor-intensive
task which tremendously overload public health systems. In this paper, we
developed a smartphone-based approach to automatically and widely trace the
contacts for confirmed COVID-19 cases. Particularly, contact-tracing approach
creates a list of individuals in the vicinity and notifying contacts or
officials of confirmed COVID-19 cases. This approach is not only providing
awareness to individuals they are in the proximity to the infected area, but
also tracks the incidental contacts that the COVID-19 carrier might not recall.
Thereafter, we developed a dashboard to provide a plan for government officials
on how lockdown/mass quarantine can be safely lifted, and hence tackling the
economic crisis. The dashboard used to predict the level of lockdown area based
on collected positions and distance measurements of the registered users in the
vicinity. The prediction model uses K-means algorithm as an unsupervised
machine learning technique for lockdown management.
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