TY - JOUR
T1 - An intelligent knowledge-based energy retrofit recommendation system for residential buildings at an urban scale
AU - Ali, Usman
AU - Shamsi, Mohammad Haris
AU - Hoare, Cathal
AU - Mangina, Eleni
AU - O'Donnell, James
N1 - Publisher Copyright:
© 2018 ASHRAE (www.ashrae.org) and IBPSA-USA (www.ibpsa.us).
PY - 2018
Y1 - 2018
N2 - Buildings play a significant role in driving the urban demand and supply of energy. Research conducted in the urban buildings sector indicates that there is a considerable potential to achieve significant reductions in energy consumption and greenhouse gas emissions. These reductions are possible through retrofitting existing buildings into more efficient and sustainable buildings. Building retrofitting poses a huge challenge for owners and city planners because they usually lack expertise and resources to identify and evaluate cost-effective energy retrofit strategies. This paper proposes a new methodology based on machine learning algorithms to develop an intelligent knowledge-based recommendation system which has the ability to recommend energy retrofit measures. The proposed methodology is based on the following four steps: archetypes development, knowledge-base development, recommendation system development and building retrofitting or performance analysis. A case study of Irish buildings dataset shows that the proposed system can provide effective energy retrofits recommendation and improve building energy performance.
AB - Buildings play a significant role in driving the urban demand and supply of energy. Research conducted in the urban buildings sector indicates that there is a considerable potential to achieve significant reductions in energy consumption and greenhouse gas emissions. These reductions are possible through retrofitting existing buildings into more efficient and sustainable buildings. Building retrofitting poses a huge challenge for owners and city planners because they usually lack expertise and resources to identify and evaluate cost-effective energy retrofit strategies. This paper proposes a new methodology based on machine learning algorithms to develop an intelligent knowledge-based recommendation system which has the ability to recommend energy retrofit measures. The proposed methodology is based on the following four steps: archetypes development, knowledge-base development, recommendation system development and building retrofitting or performance analysis. A case study of Irish buildings dataset shows that the proposed system can provide effective energy retrofits recommendation and improve building energy performance.
UR - https://www.scopus.com/pages/publications/85103695669
M3 - Conference article
AN - SCOPUS:85103695669
SN - 2574-6308
SP - 84
EP - 91
JO - ASHRAE and IBPSA-USA Building Simulation Conference
JF - ASHRAE and IBPSA-USA Building Simulation Conference
T2 - 2018 ASHRAE/IBPSA-USA Building Simulation Conference: Building Performance Modeling, SimBuild 2018
Y2 - 26 September 2018 through 28 September 2018
ER -