Enhancing indoor temperature mapping: High-resolution insights through deep learning and computational fluid dynamics

Filippos Sofos, Dimitris Drikakis, Ioannis William Kokkinakis

    Research output: Contribution to journalArticlepeer-review

    Abstract

    This paper examines the temperature distribution in a closed, rectangular room equipped with an air conditioning system, employing a computational fluid dynamics model to simulate a virtual thermal camera that captures detailed temperature snapshots. A super-resolution framework enhances the postprocessing of these results. Specifically, convolutional neural networks, trained on simulation data, are used to accurately model temperature fields' high-resolution spatial and temporal evolution. The model demonstrates strong performance by accurately reconstructing temperature profiles from low-resolution inputs obtained from filtering data obtained using high-resolution numerical simulations, with quantitative metrics indicating acceptable accuracy for resolutions reduced by up to 50 times. This effectively aligns with ground truth profiles under various conditions. These results underscore the super-resolution model's potential to transform environmental monitoring in smart buildings and complex structures by generating high-resolution thermal maps from low-resolution cameras or limited sensor input. This approach offers a fast, cost-effective, and reliable method for accurately modeling thermal dynamics within the turbulent flow environments of interior spaces.

    Original languageEnglish
    Article number015206
    JournalPhysics of Fluids
    Volume37
    Issue number1
    DOIs
    Publication statusPublished - 1 Jan 2025

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