Investigating the use of Machine Learning for Resource Intensive Agent-Based Simulation and Optimisation of Domestic Energy Retrofit AdoptionTools Hey, James (2022) Investigating the use of Machine Learning for Resource Intensive Agent-Based Simulation and Optimisation of Domestic Energy Retrofit Adoption. PhD thesis, University of Nottingham.
AbstractThe existing domestic urban built environment contributes significantly to the environ- mental issues facing the international community. Whole house energy retrofits per- formed on this stock are a key tool for the mitigation of greenhouse gas emissions. As such, researchers have built a set of bottom-up retrofit adoption models to understand, model, and predict household energy use and retrofit decisions in this space. However, the existing methods are limited in their ability to estimate complex decisions for large housing stocks due to computational restraints of optimisation. While machine learning has been applied to the problem of retrofit optimisation for performance improvements, the methods still scale poorly when applied to bottom-up agent-based models due to the large number of heterogeneous problems to be solved. This thesis aims to advance this toolset by extending state of the art data science approaches to domestic retrofit decision modelling across urban housing stocks.
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