Difference between revisions of "Elec3city"

From Geospatial Analytics and Applications
Jump to navigation Jump to search
 
(6 intermediate revisions by 2 users not shown)
Line 24: Line 24:
 
<!-- Body -->
 
<!-- Body -->
 
<br>
 
<br>
 
'''''Hi, we are making some updates to our project upon review and consultation, updating now - done by tonight, March 10!'''''
 
 
{| style="background-color:#ffffff ; margin: 3px 10px 3px 10px; width="80%"|
 
 
| style="font-family:Open Sans, Arial, sans-serif; font-size:24px; border-top:solid #ffffff; border-bottom:solid #7A9FC4" width="1200px" |
 
 
Group Members
 
|}
 
Darren Choy<br>
 
Fu Yu<br>
 
Silvester Lim<br>
 
 
 
<br>
 
<br>
{| style="background-color:#ffffff ; margin: 3px 10px 3px 10px; width="80%"|
+
[[File:Elec3city Home page.png|900 px|center]]
| style="font-family:Open Sans, Arial, sans-serif; font-size:24px; border-top:solid #ffffff; border-bottom:solid #7A9FC4" width="1200px" | Project Title
 
|}
 
Visualizing possible causes of geospatial variation in Energy Consumption in Singapore with spatial interpolation techniques
 
{| style="background-color:#ffffff ; margin: 3px 10px 3px 10px; width="80%"|
 
| style="font-family:Open Sans, Arial, sans-serif; font-size:24px; border-top:solid #ffffff; border-bottom:solid #7A9FC4" width="1200px" | Project Description
 
|}
 
When it comes to the government’s push for efficient energy usage, most effort is expended on the efficiency of energy sources – e.g. using less carbon-intensive fuels (https://www.nea.gov.sg/our-services/climate-change-energy-efficiency/energy-efficiency/energy-efficient-singapore). However, hitherto, there has been scant statistical analysis on possible causes of inexpedient energy usage by households, with consideration of their varied age structure and the geospatial variation of environmental conditions (e.g. temperature’s effect on energy consumption).
 
 
 
Our team sees geospatial analytical tools (such as R) as thus far largely unexploited in exploring the origins of geospatial variation in energy consumption and is thus using spatial interpolation techniques (such as kriging) to provide an app which allows for authorities in Singapore such as the National Environment Agency to understand with data-driven evidence the origins of variation in Singapore household energy consumption so as to have more targeted efforts to reduce energy wastage.
 

Latest revision as of 18:50, 14 April 2019