Analysis of Heating Expenses in a Large Social Housing Stock Using Artificial Neural Networks
This paper presents an analysis of heating expenses in a large social housing stock in the North of France. An artificial neural network (ANN) approach is taken for the analysis of heating consumption data collected over four years in 84 social housing residences containing 13,179 dwellings that use...
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Online Access: | https://www.mdpi.com/1996-1073/10/12/2086 |
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doaj-4c1d3ac9d45340c0a9eaedb7cf5ce8252020-11-25T00:29:48ZengMDPI AGEnergies1996-10732017-12-011012208610.3390/en10122086en10122086Analysis of Heating Expenses in a Large Social Housing Stock Using Artificial Neural NetworksShaker Zabada0Isam Shahrour1Economic Department, An-Najah National University, P.O. Box 7, Nablus, PalestineLaboratoire de Génie Civil et géo-Environnement, Lille University, 59650 Villeneuve d’Ascq, FranceThis paper presents an analysis of heating expenses in a large social housing stock in the North of France. An artificial neural network (ANN) approach is taken for the analysis of heating consumption data collected over four years in 84 social housing residences containing 13,179 dwellings that use collective heating. Analysis provides an understanding of the influence of both physical and socio-economic parameters on heating expenses and proposes a predictive model for these expenses. The model shows that the heating expenses are influenced by both the buildings’ physical parameters and social indicators. Concerning the physical parameters, the most important indicators are the area of the dwellings, followed by the building age and the DPE (energy performance diagnostic). The family size as well as tenant age and income have an important influence on heating expense. The model is then used for establishing a data-based strategy for social housing stock renovation.https://www.mdpi.com/1996-1073/10/12/2086social housingheating expensesartificial neural networkincomeenergy performance diagnosticsavingsrenovation |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Shaker Zabada Isam Shahrour |
spellingShingle |
Shaker Zabada Isam Shahrour Analysis of Heating Expenses in a Large Social Housing Stock Using Artificial Neural Networks Energies social housing heating expenses artificial neural network income energy performance diagnostic savings renovation |
author_facet |
Shaker Zabada Isam Shahrour |
author_sort |
Shaker Zabada |
title |
Analysis of Heating Expenses in a Large Social Housing Stock Using Artificial Neural Networks |
title_short |
Analysis of Heating Expenses in a Large Social Housing Stock Using Artificial Neural Networks |
title_full |
Analysis of Heating Expenses in a Large Social Housing Stock Using Artificial Neural Networks |
title_fullStr |
Analysis of Heating Expenses in a Large Social Housing Stock Using Artificial Neural Networks |
title_full_unstemmed |
Analysis of Heating Expenses in a Large Social Housing Stock Using Artificial Neural Networks |
title_sort |
analysis of heating expenses in a large social housing stock using artificial neural networks |
publisher |
MDPI AG |
series |
Energies |
issn |
1996-1073 |
publishDate |
2017-12-01 |
description |
This paper presents an analysis of heating expenses in a large social housing stock in the North of France. An artificial neural network (ANN) approach is taken for the analysis of heating consumption data collected over four years in 84 social housing residences containing 13,179 dwellings that use collective heating. Analysis provides an understanding of the influence of both physical and socio-economic parameters on heating expenses and proposes a predictive model for these expenses. The model shows that the heating expenses are influenced by both the buildings’ physical parameters and social indicators. Concerning the physical parameters, the most important indicators are the area of the dwellings, followed by the building age and the DPE (energy performance diagnostic). The family size as well as tenant age and income have an important influence on heating expense. The model is then used for establishing a data-based strategy for social housing stock renovation. |
topic |
social housing heating expenses artificial neural network income energy performance diagnostic savings renovation |
url |
https://www.mdpi.com/1996-1073/10/12/2086 |
work_keys_str_mv |
AT shakerzabada analysisofheatingexpensesinalargesocialhousingstockusingartificialneuralnetworks AT isamshahrour analysisofheatingexpensesinalargesocialhousingstockusingartificialneuralnetworks |
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1725329770454974464 |