AI enhancing prefabricated aesthetics and low carbon coupled with 3D printing in chain hotel buildings from multidimensional neural networks

Abstract There are approximately 70,000 economy chain hotels worldwide, generating about 300 million tons of carbon dioxide annually. While reducing carbon emissions can lower energy consumption, these hotels must also continually attract guests to ensure revenue growth and achieve sustainable devel...

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Main Authors: Gangwei Cai, Yin Lou, Feidong Lu
Format: Article
Language:English
Published: Nature Portfolio 2025-04-01
Series:Scientific Reports
Subjects:
Online Access:https://doi.org/10.1038/s41598-025-97858-8
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author Gangwei Cai
Yin Lou
Feidong Lu
author_facet Gangwei Cai
Yin Lou
Feidong Lu
author_sort Gangwei Cai
collection DOAJ
description Abstract There are approximately 70,000 economy chain hotels worldwide, generating about 300 million tons of carbon dioxide annually. While reducing carbon emissions can lower energy consumption, these hotels must also continually attract guests to ensure revenue growth and achieve sustainable development. This study focuses on the application of Artificial Intelligence (AI) in the prefabricated renovation of hotels, investigating how AI plays a crucial role in coupling low-carbon construction and aesthetic design. Using multidimensional algorithms within machine learning (ML), neural networks (NN), and statistical modeling (SM), this paper analyzes the impact of AI-driven prefabricated room renovations on tourist satisfaction and carbon emissions. The results indicate that AI can not only optimize energy consumption and structural efficiency in the renovation process but also achieve low-carbon goals while maintaining high-quality aesthetic designs. This study offers new theoretical insights into the integration of low-carbon and aesthetic design, filling gaps in the current literature, providing a pathway for achieving sustainable development goals (SDG 7, 8, and 12), and offering valuable implications for robotic intelligent construction and 3D printing in prefabricated buildings industry.
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publishDate 2025-04-01
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spelling doaj-art-ec96c095b34b42d0be589d7106f4f06e2025-08-20T02:27:53ZengNature PortfolioScientific Reports2045-23222025-04-0115111310.1038/s41598-025-97858-8AI enhancing prefabricated aesthetics and low carbon coupled with 3D printing in chain hotel buildings from multidimensional neural networksGangwei Cai0Yin Lou1Feidong Lu2College of Architecture and Urban Planning, Tongji UniversityShaoxing Keqiao District Science and Technology Innovation Service CenterTongji Architectural Design (Group) Co., LtdAbstract There are approximately 70,000 economy chain hotels worldwide, generating about 300 million tons of carbon dioxide annually. While reducing carbon emissions can lower energy consumption, these hotels must also continually attract guests to ensure revenue growth and achieve sustainable development. This study focuses on the application of Artificial Intelligence (AI) in the prefabricated renovation of hotels, investigating how AI plays a crucial role in coupling low-carbon construction and aesthetic design. Using multidimensional algorithms within machine learning (ML), neural networks (NN), and statistical modeling (SM), this paper analyzes the impact of AI-driven prefabricated room renovations on tourist satisfaction and carbon emissions. The results indicate that AI can not only optimize energy consumption and structural efficiency in the renovation process but also achieve low-carbon goals while maintaining high-quality aesthetic designs. This study offers new theoretical insights into the integration of low-carbon and aesthetic design, filling gaps in the current literature, providing a pathway for achieving sustainable development goals (SDG 7, 8, and 12), and offering valuable implications for robotic intelligent construction and 3D printing in prefabricated buildings industry.https://doi.org/10.1038/s41598-025-97858-8Artificial intelligence (AI)Low-carbon aesthetic designMachine learning (ML)Neural networks (NN)Statistical modeling (SM)Prefabricated hotels
spellingShingle Gangwei Cai
Yin Lou
Feidong Lu
AI enhancing prefabricated aesthetics and low carbon coupled with 3D printing in chain hotel buildings from multidimensional neural networks
Scientific Reports
Artificial intelligence (AI)
Low-carbon aesthetic design
Machine learning (ML)
Neural networks (NN)
Statistical modeling (SM)
Prefabricated hotels
title AI enhancing prefabricated aesthetics and low carbon coupled with 3D printing in chain hotel buildings from multidimensional neural networks
title_full AI enhancing prefabricated aesthetics and low carbon coupled with 3D printing in chain hotel buildings from multidimensional neural networks
title_fullStr AI enhancing prefabricated aesthetics and low carbon coupled with 3D printing in chain hotel buildings from multidimensional neural networks
title_full_unstemmed AI enhancing prefabricated aesthetics and low carbon coupled with 3D printing in chain hotel buildings from multidimensional neural networks
title_short AI enhancing prefabricated aesthetics and low carbon coupled with 3D printing in chain hotel buildings from multidimensional neural networks
title_sort ai enhancing prefabricated aesthetics and low carbon coupled with 3d printing in chain hotel buildings from multidimensional neural networks
topic Artificial intelligence (AI)
Low-carbon aesthetic design
Machine learning (ML)
Neural networks (NN)
Statistical modeling (SM)
Prefabricated hotels
url https://doi.org/10.1038/s41598-025-97858-8
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