Difference between revisions of "Assignment ZUOANNA Task 2"
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− | + | =Spatio-temporal Analysis of Citizen Science Air Quality Measurements= | |
− | ==Data Preparation | + | ==Methodology== |
+ | <big>'''Data Preparation'''</big> | ||
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|| [[File:T1Z.png|400px|center]] | || [[File:T1Z.png|400px|center]] | ||
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− | ==Characterize the Sensors’ Coverage, Performance and Operation== | + | |
+ | ==Insights & Dashboard Design== | ||
+ | |||
+ | ===Characterize the Sensors’ Coverage, Performance and Operation=== | ||
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− | ==Air Pollution Measurements == | + | ===Air Pollution Measurements === |
− | + | <big>'''Which part of the city shows relatively higher readings than others?'''</big> | |
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! Description !! Dashboard Visualization | ! Description !! Dashboard Visualization | ||
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− | | '''Sensors in Year 2017'''<br> | + | | '''Sensors in Year 2017'''<br><br><br><br> |
− | * Since December in 2017 is the month with higher pollution, we filtered the time period to December so that more easily to obtain the patterns on the discharge of the pollution. <br><br> | + | * Since December in 2017 is the month with higher pollution, we filtered the time period to December so that more easily to obtain the patterns on the discharge of the pollution. <br><br><br><br> |
* Firstly, we know that P1 and P2 have a strong positive correlation by exploring the relationship of P1, P2 on those data points recorded hourly. The Treemap tells us that the Geohash “sx8derj5kqf” has the highest pollution both on P1 and P2, so we keep this sensor only in the Calendar heatmap. By zooming into this specific location on air pollution, the differences in the relatively higher readings are time dependent because the concentration ranges on P1 and P2 become larger from Sep to Dec in 2017 and the average readings are extremely high during the days from 5th to 12th in December. | * Firstly, we know that P1 and P2 have a strong positive correlation by exploring the relationship of P1, P2 on those data points recorded hourly. The Treemap tells us that the Geohash “sx8derj5kqf” has the highest pollution both on P1 and P2, so we keep this sensor only in the Calendar heatmap. By zooming into this specific location on air pollution, the differences in the relatively higher readings are time dependent because the concentration ranges on P1 and P2 become larger from Sep to Dec in 2017 and the average readings are extremely high during the days from 5th to 12th in December. | ||
|| [[File:T5Z.png|500px|center]][[File:T6Z.png|500px|center]] | || [[File:T5Z.png|500px|center]][[File:T6Z.png|500px|center]] | ||
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− | |'''Sensors in Year 2018'''<br> | + | |'''Sensors in Year 2018'''<br><br><br><br><br> |
− | * From the calendar heatmap, the air quality seems to become better from Jan to Aug in 2018.<br><br> | + | * From the calendar heatmap, the air quality seems to become better from Jan to Aug in 2018.<br><br><br><br><br><br><br><br><br><br> |
− | * The density maps also show the same trend on air pollution which become not that serious in Aug. The difference between 2017 and 2018 is that there are more sensors working in 2018 which illustrate a larger part of Sofia City than in 2017 have been facing with serious air pollution. However, the same phenomenon with 2017 is that the arears with higher readings are also have higher meteorological variables on Humidity, Temperature and Pressure than the other places in the city.<br><br><br> | + | * The density maps also show the same trend on air pollution which become not that serious in Aug. The difference between 2017 and 2018 is that there are more sensors working in 2018 which illustrate a larger part of Sofia City than in 2017 have been facing with serious air pollution. However, the same phenomenon with 2017 is that the arears with higher readings are also have higher meteorological variables on Humidity, Temperature and Pressure than the other places in the city.<br><br><br><br><br><br><br> |
* The Treemap show us the detail on which specific location has the most pollution on P1 and P2. The most serious polluted area is the place with geohash “sx8d8vjerh”. Apart from this area, there are five more areas are also in serious air condition. This is also the difference between 2017 and 2018, since in 2017 there are only one area that has obvious air pollution on P1 and P2. | * The Treemap show us the detail on which specific location has the most pollution on P1 and P2. The most serious polluted area is the place with geohash “sx8d8vjerh”. Apart from this area, there are five more areas are also in serious air condition. This is also the difference between 2017 and 2018, since in 2017 there are only one area that has obvious air pollution on P1 and P2. | ||
|| [[File:T7Z.png|500px|center]] [[File:T9Z.png|500px|center]] [[File:T8Z.png|500px|center]] | || [[File:T7Z.png|500px|center]] [[File:T9Z.png|500px|center]] [[File:T8Z.png|500px|center]] | ||
|} | |} |
Latest revision as of 09:31, 18 November 2018
Contents
Spatio-temporal Analysis of Citizen Science Air Quality Measurements
Methodology
Data Preparation
Description | Illustration |
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Insights & Dashboard Design
Characterize the Sensors’ Coverage, Performance and Operation
Description | Dashboard Visualization |
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Coverage—Sensors are not only distributed over the Sofia City
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Performance—Not all the sensors perform well at any time
The dashboard above provides more information on the timeseries for each sensor in 2017.
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Operation
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Air Pollution Measurements
Which part of the city shows relatively higher readings than others?
Description | Dashboard Visualization |
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Sensors in Year 2017
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Sensors in Year 2018
|