Interpreting Machine Learning Models for Room Temperature Prediction in Non-domestic Buildings
Jianqiao Mao, Grammenos Ryan

TL;DR
This paper develops an interpretable machine learning model for predicting room temperature in non-domestic buildings, enhancing transparency in HVAC control and energy efficiency optimization.
Contribution
It introduces a novel PF-FRA method to quantify predictor contributions in the frequency domain, improving interpretability of ML models in building management.
Findings
The model accurately forecasts 8-hour ahead room temperatures in real-time.
Historical room temperature is the most influential predictor.
The PF-FRA method effectively identifies key features impacting predictions.
Abstract
An ensuing challenge in Artificial Intelligence (AI) is the perceived difficulty in interpreting sophisticated machine learning models, whose ever-increasing complexity makes it hard for such models to be understood, trusted and thus accepted by human beings. The lack, if not complete absence, of interpretability for these so-called black-box models can lead to serious economic and ethical consequences, thereby hindering the development and deployment of AI in wider fields, particularly in those involving critical and regulatory applications. Yet, the building services industry is a highly-regulated domain requiring transparency and decision-making processes that can be understood and trusted by humans. To this end, the design and implementation of autonomous Heating, Ventilation and Air Conditioning systems for the automatic but concurrently interpretable optimisation of energy…
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Taxonomy
TopicsBuilding Energy and Comfort Optimization · Energy Load and Power Forecasting · Explainable Artificial Intelligence (XAI)
