Digital Twin for Grey Box modeling of Multistory residential building thermal dynamics
Lina Morkunaite, Justas Kardoka, Darius Pupeikis, Paris Fokaides,, Vangelis Angelakis

TL;DR
This paper presents a digital twin architecture for multistory residential buildings that combines physics-based models with real-time IoT data to improve thermal dynamics understanding and optimize heating energy use.
Contribution
It introduces a grey box modeling approach integrating physical laws and real data within a digital twin platform for building thermal management.
Findings
Validated in a case study with a digital twin platform
Enables non-experts to analyze building thermal dynamics
Supports energy optimization decision making
Abstract
Buildings energy efficiency is a widely researched topic, which is rapidly gaining popularity due to rising environmental concerns and the need for energy independence. In Northern Europe heating energy alone accounts for up to 70 percent of the total building energy consumption. Industry 4.0 technologies such as IoT, big data, cloud computing and machine learning, along with the creation of predictive and proactive digital twins, can help to reduce this number. However, buildings thermal dynamics is a very complex process that depends on many variables. As a result, commonly used physics-based white box models are time-consuming and require vast expertise. On the contrary, black box forecasting models, which rely primarily on building energy consumption data, lack fundamental insights and hinder re-use. In this study we propose an architecture to facilitate grey box modelling of…
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Taxonomy
Topics3D Surveying and Cultural Heritage · Vehicle emissions and performance
