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Correlating the Effect of Covid-19 Lockdown with Mobility Impacts: A Time Series Study Using Noise Sensors Data
- Source :
- Transportation Research Procedia. 62:115-122
- Publication Year :
- 2022
- Publisher :
- Elsevier BV, 2022.
-
Abstract
- The Covid-19 crisis forced governments around the world to rapidly enact several restrictions to face the associated health emergency. The Portuguese government was no exception and, following the example of other countries, established various limitations to flat the contagions curve. This led to inevitable repercussions on mobility and environmental indicators including noise. This research aims to assess the impact of the lockdown due to Covid-19 disease on the noise levels recorded in the city of Porto, Portugal. Data from four noise sensors located in strategic spots of the city were used to calibrate and validate Time Series Models, allowing to impute the missing values in the datasets and rebuild them. The trend and the cyclic information were extracted from the reconstructed datasets using decomposition techniques. Finally, a Spearman correlation analysis between noise levels values and traffic volumes (extracted from five inductive loop detectors, located nearby the noise sensors) was performed. Results show that the noise levels series present a daily seasonal pattern and the trends values decreased from 6.7 to 7.5 dBA during the first lockdown period (March-May 2020). Moreover, the noise levels tend to gradually rise after the removal of restrictions. Finally, there is a monotonic relationship between noise levels and traffic volumes values, as confirmed by the positive moderate-to-high correlation coefficients found, and the sharp drop of the former during March-May 2020 can be attributed to the strong reduction of road traffic flows in the city. The authors acknowledge the municipality of Porto for having provided access to the data used in this work. published
- Subjects :
- Inductive Loops
Time Series Models
General Medicine
Traffic Noise
Covid-19
Subjects
Details
- ISSN :
- 23521465
- Volume :
- 62
- Database :
- OpenAIRE
- Journal :
- Transportation Research Procedia
- Accession number :
- edsair.doi.dedup.....171194dcfd58cfe298d34a536f6ec40c