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Grant Award View - GA54675

Dynamic Deep Learning for Electricity Demand Forecasting

Contact Details

ARC NCGP General Enquiries

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02 6287 6600

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GA ID:
GA54675
Agency:
Australian Research Council
Approval Date:
5-Jul-2019
Publish Date:
9-Jul-2019
Category:
Science, Technology, Engineering and Mathematics (STEM) Research
Grant Term:
13-Apr-2020 to 3-Dec-2022
Original: 5-Jul-2019 to 30-Jun-2022
Value (AUD):
$321,000.00 (GST inclusive where applicable)
Variations:

One-off/Ad hoc:
No
Aggregate Grant Award:
No

PBS Program Name:
ARC 18/19 Linkage
Grant Program:
Linkage Projects
Grant Activity:
Dynamic Deep Learning for Electricity Demand Forecasting
Purpose:
This project aims at developing a deep learning technology for high resolution electricity demand forecasting and residential demand response modelling. Electricity consumption data are dynamic and highly uncertain. The deep learning technology expects to provide accurate demand forecasting, and thus enabling optimal use of existing grid assets and guiding future investments. The expected outcome can support data-driven decision-making in Australia's electricity distribution network planning and operation by considering future challenges such as integrating battery storage and electric vehicles into the grid, and thus providing reliable energy. The project expects to train next generation expert workforce for Australia's future power grid.

GO ID:
GO Title:
Linkage Projects for funding applied for in 2018
Internal Reference ID:
LP18 Round 1
Selection Process:
Targeted or Restricted Competitive

Confidentiality - Contract:
No
Confidentiality - Outputs:
No

Grant Recipient Details

Recipient Name:
RMIT University
Recipient ABN:
49 781 030 034

Grant Recipient Location

Suburb:
MELBOURNE
Town/City:
MELBOURNE
Postcode:
3000
State/Territory:
VIC
Country:
AUSTRALIA

Grant Delivery Location

State/Territory:
VIC
Postcode:
3000
Country:
AUSTRALIA

Contact Details

ARC NCGP General Enquiries

:
02 6287 6600

: