1718t1is428T15

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OnTheFlyLogo.png


PROJECT PROPOSAL

PROJECT POSTER

PROJECT APPLICATION

RESEARCH PAPER


Project Motivation

Experts have warned that power demand is set to double by 2030 globally despite authoritative control. High power consumption can already be observed locally. According Energy Market Authority (EMA), Singapore has faced increasing power consumption from 1965 to 2013 [1].

1718t1is428T15-Motivation.png

As Singapore is land-scarce and does not have significant renewable energy options such as hydro-power, wave, or sufficient land for mass solar energy production, energy has been a top concern in the urban nation[2]. It is thus important to promote energy saving concepts to the public as well as deploying energy saving solution island wide. However, the usual analysis tools are not enough to provide a different perspective to facilitate the deployment of the solution. Information about the energy consumption levels of residents in Singapore are often not conveyed adequately enough in data visualisation. While EMA and Singstat provide annual data and reports on energy usage in Singapore, a powerful visualisation technique should be used to gain insights effectively.


Project Objective

Our team aims to create a visualisation that leverages on energy datasets provided by EMA to perform spatial analysis to identify energy usage clusters with hexagonal binning.


Dataset

Data Source

The analysis will be based on EMA dataset:

  • Public housing's average monthly household electricity consumption (kwh) (2013 - 2015)
  • Private apartment's average monthly household electricity consumption (kwh) (2013 - 2015)

Data Attributes

Public Housing

  • Postal code
  • 1-room
  • 2-room
  • 3-room
  • 4-room
  • 5-room/executive

Private Apartment

  • Postal code
  • Jan
  • Feb
  • Mar
  • Apr
  • May
  • Jun
  • Jul
  • Aug
  • Sep
  • Oct
  • Nov
  • Dec


Related Works

Inspirations

Hexbin inspiration.PNG


EMA publishes energy statistics on an annual basis to provide readers with a comprehensive understanding of the Singapore energy landscape through a detailed coverage of various energy-related topics. As project Enerlyst focuses on analysing households' energy consumption, only private and public households data will be used. This study will be based on EMA dataset from 2013 to 2015. 2013 data will be prepared manually whereas 2014 and 2015 data will be uploaded to the application and process on the fly.


Proposed Storyboard

Technical Challenges

Timeline

Week No(s). Task Status
7
Prepares Project Proposal Completed
8
Attend D3.js workshop, research on technologies/tools and project wiki Completed
9
Clean data, start visualisation Incomplete
10-11
Continue with visualisation Incomplete
12
Prepare poster, final report and wiki page Incomplete
13
Poster submission and final deliverables Incomplete


Technologies/Tools

The following are technologies and tools which we used:

  • Microsoft Excel
  • D3.js
  • Leaflet
  • Github


Reference


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