Digital Twin for Grey Box modeling of Multistory residential building
thermal dynamics
- URL: http://arxiv.org/abs/2402.02909v1
- Date: Mon, 5 Feb 2024 11:25:42 GMT
- Title: Digital Twin for Grey Box modeling of Multistory residential building
thermal dynamics
- Authors: Lina Morkunaite, Justas Kardoka, Darius Pupeikis, Paris Fokaides,
Vangelis Angelakis
- Abstract summary: In Northern Europe heating energy alone accounts for up to 70 percent of the total building energy consumption.
In this study we propose an architecture to facilitate grey box modelling of building thermal dynamics.
The architecture is validated in a case study creating a digital twin platform.
- Score: 1.0987093127987972
- License: http://creativecommons.org/licenses/by/4.0/
- 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 building thermal dynamics
while integrating real time IoT data with 3D representation of buildings. The
architecture is validated in a case study creating a digital twin platform that
enables users to define the thermal dynamics of buildings based on physical
laws and real data, thus facilitating informed decision making for the best
heating energy optimization strategy. Also, the created user interface enables
stakeholders such as facility managers, energy providers or governing bodies to
analyse, compare and evaluate buildings thermal dynamics without extensive
expertise or time resources.
Related papers
- vHeat: Building Vision Models upon Heat Conduction [63.00030330898876]
vHeat is a novel vision backbone model that simultaneously achieves both high computational efficiency and global receptive field.
The essential idea is to conceptualize image patches as heat sources and model the calculation of their correlations as the diffusion of thermal energy.
arXiv Detail & Related papers (2024-05-26T12:58:04Z) - The Forecastability of Underlying Building Electricity Demand from Time
Series Data [1.3757257689932039]
Forecasting building energy consumption has become a promising solution in Building Energy Management Systems.
Different data-driven approaches to forecast the future energy demand of buildings can be found in the scientific literature.
The identification of the most accurate forecaster model which can be utilized to predict the energy demand of such a building is still challenging.
arXiv Detail & Related papers (2023-11-29T20:47:47Z) - Data-driven building energy efficiency prediction using physics-informed neural networks [2.572906392867547]
We introduce a physics-informed neural network model for predicting energy performance of residential buildings.
A function, based on physics equations, calculates the energy consumption of the building based on heat losses and enhances the loss function of the deep learning model.
This methodology is tested on a real case study for 256 buildings located in Riga, Latvia.
arXiv Detail & Related papers (2023-11-14T09:55:03Z) - Global Transformer Architecture for Indoor Room Temperature Forecasting [49.32130498861987]
This work presents a global Transformer architecture for indoor temperature forecasting in multi-room buildings.
It aims at optimizing energy consumption and reducing greenhouse gas emissions associated with HVAC systems.
Notably, this study is the first to apply a Transformer architecture for indoor temperature forecasting in multi-room buildings.
arXiv Detail & Related papers (2023-10-31T14:09:32Z) - ClimaX: A foundation model for weather and climate [51.208269971019504]
ClimaX is a deep learning model for weather and climate science.
It can be pre-trained with a self-supervised learning objective on climate datasets.
It can be fine-tuned to address a breadth of climate and weather tasks.
arXiv Detail & Related papers (2023-01-24T23:19:01Z) - Low Emission Building Control with Zero-Shot Reinforcement Learning [70.70479436076238]
Control via Reinforcement Learning (RL) has been shown to significantly improve building energy efficiency.
We show it is possible to obtain emission-reducing policies without a priori--a paradigm we call zero-shot building control.
arXiv Detail & Related papers (2022-08-12T17:13:25Z) - Zero Shot Learning for Predicting Energy Usage of Buildings in
Sustainable Design [2.929237637363991]
The 2030 Challenge is aimed at making all new buildings and major renovations carbon neutral by 2030.
It is important to understand how the various building factors contribute to energy usage of a building, right at design time.
Rich training datasets are needed for AI-based solutions to achieve good prediction accuracy.
arXiv Detail & Related papers (2022-02-10T18:08:58Z) - Compute and Energy Consumption Trends in Deep Learning Inference [67.32875669386488]
We study relevant models in the areas of computer vision and natural language processing.
For a sustained increase in performance we see a much softer growth in energy consumption than previously anticipated.
arXiv Detail & Related papers (2021-09-12T09:40:18Z) - Times Series Forecasting for Urban Building Energy Consumption Based on
Graph Convolutional Network [20.358180125750046]
Building industry accounts for more than 40% of energy consumption in the United States.
UBEM is the foundation to support the design of energy-efficient communities.
Data-driven models integrated engineering or physical knowledge can significantly improve the urban building energy simulation.
arXiv Detail & Related papers (2021-05-27T19:02:04Z) - AI Chiller: An Open IoT Cloud Based Machine Learning Framework for the
Energy Saving of Building HVAC System via Big Data Analytics on the Fusion of
BMS and Environmental Data [12.681421165031576]
Energy saving and carbon emission reduction in buildings is one of the key measures in combating climate change.
The optimization of chiller system power consumption had been extensively studied in the mechanical engineering and building service domains.
With the advance of big data and AI, the adoption of machine learning into the optimization problems becomes popular.
arXiv Detail & Related papers (2020-10-09T09:51:03Z) - NeurOpt: Neural network based optimization for building energy
management and climate control [58.06411999767069]
We propose a data-driven control algorithm based on neural networks to reduce this cost of model identification.
We validate our learning and control algorithms on a two-story building with ten independently controlled zones, located in Italy.
arXiv Detail & Related papers (2020-01-22T00:51:03Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.