Restrictions related to the ongoing pandemic serve as an experiment allowing us to learn how dependent are the urban environment characteristics on extensive population density and human activity.
Our project is an early study aimed to reveal and document changes in Urban Heat Island effect and its internal pattern resulting from the relocation of people from city centres to residential areas during the day using Earth Observations data. The integral part of the project was to assess the response time of urban temperature in relation to covid-related socio-economic changes.
Being able to assess the magnitude of the UHI change within city boundaries may help local authorities to deploy life-saving resources more effectively to residential areas.
Quantification of the occurring UHI change may also serve as a useful data source for researchers working on pollution, greenhouse gases emission, energy efficiency use whether as an input or control dataset.
We live in large towns or cities it was only natural to think about phenomenons occurring in urban environments. Thinking how COVID and lockdown changed our usual daily routines, we have noticed that on one hand there are abandoned brick and concrete desserts in the city centre where we used to go to work, school, do our shopping and on the other hand there are now full houses and people going out to local parks for their daily exercises.
Urban Heat Island is a phenomenon observed in built-up areas. It affects the everyday lives of residents and increases heat-related mortality. There are observed correlations of growing UHI with increased usage of air conditioning. As we are approaching Summer time, with lockdown measures in place, we can expect increased use of private air conditioning appliances in residential areas. It is important to understand the possible increased risk of heat-related heart problems, especially for elderly residents locked down in residential areas. Being able to assess the magnitude of the change local authorities will be able to deploy life-saving resources more effectively to residential areas.
Quantification of the occurring UHI change may also serve as an useful data source for researchers working on pollution, greenhouse gases emission, energy efficiency use whether as an input or control dataset.
Having time limitations in mind we have focused on London and Paris and their surroundings to study the UHI phenomena, formulating following research questions:
We have identified potential locations that may have been affected the most and studied them on a case by case basis.
For places that have experienced reduced human traffic we looked at office areas, main commuter stations, shopping areas and tourist landmarks. For places that have experienced an increase in day time population we looked at residential areas and local parks adjacent to them.
To make our analysis insusceptible to seasonal meteorological changes we have used relative Urban Thermal Field Variance Index (UTFVI) calculated as the difference of Land Surface Temperature (LST) in any given point to mean Land Surface Temperature (LST mean) for the study area.
UTFVI = (LST - LST mean) / LST mean
Next step was to create a difference map between the two snapshots in time to compare the data.
We have also used the same principles for comparing meteorological data from Meteomatics. We identified locations within London and outside London, calculated the difference between them for two points in time. Comparisons were made for day-time temperatures for the period of March and April for both 2019 and 2020.
We did that for both London and Paris. We used Landsat-8 OLI/TIRS bands 4 and 5 for NDVI calculation and band 10 to assess Land Surface Temperature and further to derive relative Urban Heat Index using the above equation.
We downloaded LANDSAT data using the Earth Explorer engine and explored it in QGIS software, using Python to speed up the process. Time series analysis of temperature data was conducted in Python. For chart plotting, we used Matplotlib library. Meteorological data provided by Meteomatics was accessed using REST API.
The major problems that we encountered were:
The major achievements of our team were:
https://github.com/xmichele/DataRoamers/blob/master/Presentation - Quiet Planet Challenge .pdf
Data:
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