Difference between revisions of "Charge Metrics Proposal"

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Revision as of 04:51, 15 October 2018

IS428_ChargeMetrics_Project
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PROPOSAL

  PROJECT POSTER  

PROJECT APPLICATION

  RESEARCH PAPER


Motivation

Household electricity consumption in Singapore has increased by about 17% over the past decade, according to a report by the National Environment Agency in May 2018. On aggregate levels, Singapore households consumed 7,295 GWh (gigawatt hours) in 2017, which roughly translates to an average expenditure of $1,000 a year on electricity per household. [1]

Electricity consumption is a national issue, especially given that about 95% of Singapore's electricity supply is imported. [2] It is therefore important to encourage households to consume electricity in more sustainable ways.

Traditionally, the lack of transparency surrounding electricity use has been acknowledged as a possible challenge in raising awareness on electricity consumption. [3] Improving visualisation of household electricity consumption can help people in Singapore gain better clarity of their consumption habits and expenditure, and thus more incentive to reduce electricity usage. [3]

Our project visualises the distribution of household electricity consumption across planning regions in Singapore, accounting for type of residential homes, income and demographic profiles. We aim to better communicate electricity consumption in everyday life to people in Singapore, and ultimately engage them to reduce electricity consumption.


Objectives

This project aims to create an interactive data visualisation tool to achieve the following objectives:

  1. Provide a clear geographical visualisation for household electricity consumption across planning areas
  2. Provide an overview of the relationship between resident population and electricity consumption for the various housing types across time
  3. Allow users to explore household electricity consumption in Singapore by comparing across planning regions
  4. Ensure a smooth interactivity for a better user experience


Data

Datasets Data Attributes Rationale Of Usage
EMA Household Energy Consumption
Datasource1.png
Source: https://www.ema.gov.sg/Statistics.aspx
  • Postal Code
  • Type of Dwelling
  • Month, 2013-2016
  • Electricity Consumption

There are 2 groups of datasets.

  1. Household monthly electricity consumption by postal code and type of housing from 2013 to 2016.
  2. Household yearly electricity consumption from 2007 to 2017. This group of datasets will be used to visualise the historical trend of household electricity consumption in Singapore.
Singapore Residents by Planning Area and Type of Dwelling, 2000 - 2017
Datasource2.png
Source: https://www.singstat.gov.sg/find-data/search-by-theme/population/geographic-distribution/latest-data
  • Planning Area
  • Type of Dwelling
  • Resident Population
  • Year

This dataset is used to complement the main dataset by providing detailed information about the number of Singapore residents in each planning area, according to dwelling type.

HDB Property Information
Datasource3.png
Source: https://data.gov.sg/dataset/hdb-property-information
  • Block Number
  • Street
  • Residential
  • Total Dwelling Units
  • Number of 1-room Sold
  • Number of 2-rooms Sold
  • Number of 3-rooms Sold
  • Number of 4-rooms Sold
  • Number of 5-rooms Sold
  • Number of 5-rooms Sold
  • Number of Executive Condominiums Sold

This dataset provides a comprehensive record of Singapore HDB Property Information, and enables us to scale the average electricity consumption by the number of units for the given dwelling type for the block.

Private Apartment Information
Datasource5.png
Source: Real Estate Information System
  • Block Number
  • Street
  • Residential
  • No of Units
  • Property Type
  • Postal District
  • Postal Sector
  • Postal Code
  • Planning Region
  • Planning Area

This dataset will be a complementary dataset for private housing types by providing information on the number of units.

List of Postal Districts
Datasource4.png
Source: https://www.ura.gov.sg/realEstateIIWeb/resources/misc/list_of_postal_districts.htm
  • Postal District
  • Postal Sector
  • General Location

This dataset is used to map the postal sector, also the first two digits of the postal code, to the corresponding postal district.


Related Works


Related Works What We Can Learn

Dashboard Visualisation of Average Monthly Household Energy Consumption Per Year in Singapore

ChargeMetrics Related1.png

Source: https://analyticsandintelligentsystems.wordpress.com/2017/04/28/dashboard-visualisation-of-average-monthly-household-energy-consumption-per-year-in-singapore/

  • Interactive dashboard allows the user to view the top ranking planning regions in terms of energy consumption, as well as choose the number of top ranking planning regions they are interested in.
  • The use of a filter dashboard action also allows the user to view information only for selected planning regions.

Prediction of Buildings Energy Consumption

ChargeMetrics Related2.png

Source: http://cs109-energy.github.io/building-energy-consumption-prediction.html

  • Calendar view map allows the user to view the daily trend of energy consumption, and detect any hourly patterns easily, if present.
  • Provide multiple possible machine learning models for the prediction on energy consumption.
  • Direct illustration of graphs and models on python Jupyter notebook for effective reproducable communication.

Visualizing Energy Consumption in Philadelpia

ChargeMetrics Related3.png

Source: http://www.kennethelder.com/visualizing-energy-consumption-in-philadelphia/

  • Allows the user to hide or view the scatter plot without leaving the landing page or changing the map view.
  • Measures for heat map and scatter plot can also be customised by the user.
  • Project incorporated an added dimension to their scatter plot by sizing the points by the energy rating. This is useful for adding another dimension on top of the two variables typically represented on a scatter plot.

Visualizing U.S. Energy Consumption in One Chart

ChargeMetrics Related4.png

Source: http://www.visualcapitalist.com/visualizing-u-s-energy-consumption-one-chart/

  • This graph provides a clear flow view of how different energy sources was be used and classified


Prototype

Landing Page

Prototype 1


[1]Logo
[2]Bivariate Chloropleth Map
[3]Filter
[4]Button to Historical Trend Page
[5]Slope Graph

Historical Trend Page

Prototype 1


[1]Area Chart for Total Electricity Consumption
[2]Area Chart for Number of Singapore Resident
[3]Connected Scatter Plot
[4]Rate of Change of Number of Singapore Resident and Total Electricity Consumption




Project Schedules

ChargeMetrics_Project_Schedule

Project Schedule on Google Sheet:https://docs.google.com/spreadsheets/d/1IlT3Na8Ujlv9izY-0PWvCWEWzfqOmzq3jGHIbWCDiwk/edit?usp=sharing

ChargeMetrics_Timeline



Challenges

Challenges Possible Solutions

Unfamiliarity with D3.js

  • Independent learning through online learning resources
  • Validating learning outcome through review and coding practices

Data merge, cleaning and transformation

  • Planning area electricity consumption data: Since the data provided by Energy Market Authority is an average of type of dwelling for each block, we will scale the average electricity consumption by the number of units for the given dwelling type for the block, then sum all the blocks in the relevant planning area to get the aggregate monthly consumption per planning area.
  • Missing NA records: Due to privacy concerns, Energy Market Authority does not disclose some data points. We will examine the effect of removing the NA records to decide the appropriate action to take.

Choice of web hosting provider

  • A quick production pipeline required due to the time limit
  • Examine the requirements of the data visualisation: dynamic or static
  • Current solution is to use Github Page as a hosting provider as there is no dynamic data retrieval required

Unfamiliar with implementation efforts required for customised D3.js interactivity

  • We will be spending 2 weeks to familiarise ourselves with D3.js structure and syntax
  • The following 2 weeks will involve us trying out the customised D3.js interactivity
  • The project scope and plan will be re-examined based on the project objective, complexity and time available


References

[1] The Straits Times (https://www.straitstimes.com/singapore/singapores-household-electricity-consumption-up-17-per-cent-over-past-decade)
[2] Energy Market Authority (https://www.ema.gov.sg/electricity_market_overview.aspx)
[3] National Center for Biotechnology Information (https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4746293/)
[4] Energy Market Authority (https://www.ema.gov.sg/singapore_energy_statistics.aspx)
[5] Data.gov Database (https://data.gov.sg)
[6] D3.js (Documentation https://d3js.org/)
[7] Observale (https://beta.observablehq.com/)
[8] OneMap (https://www.onemap.sg/main/v2/)
[9] Prediction of Buildings Energy Consumption (http://cs109-energy.github.io/building-energy-consumption-prediction.html)


Feedback

Please feel free leave your comments, suggestions or anything interesting :)