Using existing building stock to predict the electricity load profiles of new supermarkets

Bibliographic Details
Main Authors: Granell, R, Axon, C, Kolokotroni, M, Wallom, D
Format: Conference item
Published: 2018
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author Granell, R
Axon, C
Kolokotroni, M
Wallom, D
author_facet Granell, R
Axon, C
Kolokotroni, M
Wallom, D
author_sort Granell, R
collection OXFORD
description
first_indexed 2024-03-07T00:42:34Z
format Conference item
id oxford-uuid:8391ba27-3af7-4da5-8a46-eddb77a6f590
institution University of Oxford
last_indexed 2024-03-07T00:42:34Z
publishDate 2018
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spelling oxford-uuid:8391ba27-3af7-4da5-8a46-eddb77a6f5902022-03-26T21:44:59ZUsing existing building stock to predict the electricity load profiles of new supermarketsConference itemhttp://purl.org/coar/resource_type/c_c94fuuid:8391ba27-3af7-4da5-8a46-eddb77a6f590Symplectic Elements at Oxford2018Granell, RAxon, CKolokotroni, MWallom, D
spellingShingle Granell, R
Axon, C
Kolokotroni, M
Wallom, D
Using existing building stock to predict the electricity load profiles of new supermarkets
title Using existing building stock to predict the electricity load profiles of new supermarkets
title_full Using existing building stock to predict the electricity load profiles of new supermarkets
title_fullStr Using existing building stock to predict the electricity load profiles of new supermarkets
title_full_unstemmed Using existing building stock to predict the electricity load profiles of new supermarkets
title_short Using existing building stock to predict the electricity load profiles of new supermarkets
title_sort using existing building stock to predict the electricity load profiles of new supermarkets
work_keys_str_mv AT granellr usingexistingbuildingstocktopredicttheelectricityloadprofilesofnewsupermarkets
AT axonc usingexistingbuildingstocktopredicttheelectricityloadprofilesofnewsupermarkets
AT kolokotronim usingexistingbuildingstocktopredicttheelectricityloadprofilesofnewsupermarkets
AT wallomd usingexistingbuildingstocktopredicttheelectricityloadprofilesofnewsupermarkets