ELECgrid Proposal

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PROJECT DETAILS

POSTER

PROJECT APPLICATION

RESEARCH PAPER

ABOUT US


PROJECT DESCRIPTION

Singapore is rolling out its plan for the privatisation of the electricity market. Currently, there are as many as 12 electricity retailers who typically charge a price lower than that set by Singapore Power – the de facto energy retailer. These retailers purchase electricity in bulk from electricity generating companies. At the moment, electricity retailers are unable to forecast electricity consumption accurately with the kind of data available publicly (average electricity consumption per postal code). This inevitably means that retailers are not buying a close enough amount of electricity to meet the actual electricity demand of their customers. Resources and potential revenue are therefore being wasted and lost because of this. This project therefore utilises Small Area Estimate to improve accuracy of forecasting by combining the already available data on average electricity consumption per postal code and other auxiliary information.

PROJECT OBJECTIVE

To reduce electricity retailers’ cost and wasted resources by accurately estimating the total monthly electricity consumption per subzone.

PROJECT MOTIVATION

Ultimately, cost-savings for retailers would be passed onto the consumers. This is of great opportunity to look into as various consumers even our families are shifting into private-provided electricity.


PROJECT MILESTONES
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PROJECT PROTOTYPE
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DATA SOURCES
Label Data Set Format Attributes
elec1 Average Monthly Household Electricity Consumption Jan- June 2016 xls
  • Average electricity consumption
  • Dwelling type
elec2 Average Monthly Household Electricity Consumption Jul- Dec 2016 xls
  • Average electricity consumption
  • Dwelling type
Singapore Residents by Subzone and Type of Dwelling June 2016 shapefile
  • Population living in subzone (auxiliary variable)
Subzone_HDB_Postal shapefile
  • Number of units/dwelling type/postal code


TECHNIQUES USED

1. Small Area Estimate (SAE) - SAE is a statistical technique which involves estimating parameters for small sub-populations.

2. R Shiny Applications