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Abstract
Energy performance in detached homes is critical for reducing carbon emissions in United Kingdom. However, understanding the complex factors that affect Energy Performance Certificate (EPC) ratings remains limited. Detached homes face unique challenges due to their larger floor areas and greater environmental exposure. Despite the significance of EPCs in driving energy efficiency, the diagnostic analysis of feature interactions at the class level (A–G) is underexplored, especially in detached homes. This study addresses this gap by employing predictive explainability to provide a detailed, rating class-wise diagnostic analysis of the predictive power of structural and operational features for detached homes. We investigate key factors such as CO2 emissions per floor area, heating costs, window, floor, walls efficiency, and construction age, and explore how these features interact to drive EPC ratings. Our findings show that CO2 emissions and heating costs are the primary drivers of EPC classification, but their impact varies across EPC bands. Detached homes in lower EPC categories (E–G) exhibit heightened sensitivity to high emissions and inefficient heating, while properties in EPC A and B benefit from improved insulation and efficient systems. This study introduces an innovative diagnostic framework that not only identifies key predictive features for each EPC class but also uncovers the synergistic effects of feature combinations. The results provide actionable insights for retrofit strategies and policy interventions, particularly for detached homes, offering a roadmap for improving energy efficiency and advancing sustainable energy practices.
Original language | English |
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Article number | 116022 |
Journal | Energy and Buildings |
Volume | 344 |
DOIs | |
Publication status | Accepted/In press - 16 Jun 2025 |
MoE publication type | A1 Journal article-refereed |
Funding
Hassam ur Rehman was funded by the Research Council of Finland, ”Energy Resilience in Buildings in Extreme Cold Weather Conditions in Finland 2022–2025 (FinERB), grant number: 348060"
Keywords
- Buildings features
- Detached homes
- Energy efficiency
- Energy performance certificate
- Explainability
- Machine learning
- Predictive power
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FinERB: Energy Resilience in Buildings in Extreme Cold Weather Conditions in Finland
Rehman, H. (Manager)
1/09/22 → 31/08/25
Project: Academy of Finland project