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Artificial Intelligence and Machine Learning Approaches for Indoor Air Quality Prediction: A Comprehensive Review of Methods and Applications

Dominik Latoń, Jakub Grela, Andrzej Ożadowicz, Łukasz Wiśniewski

2025Energies14 citationsDOIOpen Access PDF

Abstract

Indoor air quality (IAQ) is a critical determinant of health, comfort, and productivity, and is strongly connected to building energy demand due to the role of ventilation and air treatment in HVAC systems. This review examines recent applications of Artificial Intelligence (AI) and Machine Learning (ML) for IAQ prediction across residential, educational, commercial, and public environments. Approaches are categorized by predicted parameters, forecasting horizons, facility types, and model architectures. Particular focus is given to pollutants such as CO2, PM2.5, PM10, VOCs, and formaldehyde. Deep learning methods, especially the LSTM and GRU networks, achieve superior accuracy in short-term forecasting, while hybrid models integrating physical simulations or optimization algorithms enhance robustness and generalizability. Importantly, predictive IAQ frameworks are increasingly applied to support demand-controlled ventilation, adaptive HVAC strategies, and retrofit planning, contributing directly to reduced energy consumption and carbon emissions without compromising indoor environmental quality. Remaining challenges include data heterogeneity, sensor reliability, and limited interpretability of deep models. This review highlights the need for scalable, explainable, and energy-aware IAQ prediction systems that align health-oriented indoor management with energy efficiency and sustainability goals. Such approaches directly contribute to policy priorities, including the EU Green Deal and Fit for 55 package, advancing both occupant well-being and low-carbon smart building operation.

Topics & Concepts

HVACInterpretabilityIndoor air qualityRobustness (evolution)Machine learningArtificial intelligenceComputer scienceEnergy consumptionAir quality indexDeep learningSustainabilityEfficient energy useBuilding automationBuilding managementEngineeringArchitectural engineeringDemand responseArtificial neural networkIndoor airEnvironmental qualityApplications of artificial intelligenceBuilding management systemVentilation (architecture)Support vector machineEnergy managementAir Quality Monitoring and ForecastingAir Quality and Health ImpactsVehicle emissions and performance
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