TY - GEN
T1 - AI-Driven Recommendations for Strategic Urban Renewal
AU - Brama, Haya
AU - Grinshpoun, Tal
AU - Landau, Oded
AU - Dortheimer, Jonathan
N1 - Publisher Copyright:
© 2025 and published by the Association for Computer-Aided Architectural Design Research in Asia (CAADRIA), Hong Kong.
PY - 2025
Y1 - 2025
N2 - This paper presents a novel approach to urban renewal planning through a decision support system that integrates advanced algorithms and machine learning techniques. The system allows municipal stakeholders to explore new parcel combinations for renewal, going beyond the constraints of the existing urban layout. This unique approach, combined with a modular plugin architecture of the system, offers flexibility and transparency in the decision-making process. The plugins consist of custom-designed algorithmic solutions that address the specific and nuanced requirements of the field. Additionally, deep learning techniques are employed to predict the potential of future projects based on historical data. Identifying areas with the greatest potential for redevelopment is particularly crucial in peripheral regions, where profit margins are typically low. However, successful renewal in these areas can serve as a catalyst, fostering additional growth and development where it is most needed. Thus, the proposed model offers an effective solution to this challenge and has the potential to enhance urban renewal initiatives.
AB - This paper presents a novel approach to urban renewal planning through a decision support system that integrates advanced algorithms and machine learning techniques. The system allows municipal stakeholders to explore new parcel combinations for renewal, going beyond the constraints of the existing urban layout. This unique approach, combined with a modular plugin architecture of the system, offers flexibility and transparency in the decision-making process. The plugins consist of custom-designed algorithmic solutions that address the specific and nuanced requirements of the field. Additionally, deep learning techniques are employed to predict the potential of future projects based on historical data. Identifying areas with the greatest potential for redevelopment is particularly crucial in peripheral regions, where profit margins are typically low. However, successful renewal in these areas can serve as a catalyst, fostering additional growth and development where it is most needed. Thus, the proposed model offers an effective solution to this challenge and has the potential to enhance urban renewal initiatives.
KW - Graph Search
KW - Machine Learning
KW - Recommendations System
KW - Urban Planning
KW - Urban Renewal
UR - https://www.scopus.com/pages/publications/105023386865
U2 - 10.52842/conf.caadria.2025.4.091
DO - 10.52842/conf.caadria.2025.4.091
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AN - SCOPUS:105023386865
SN - 9789887891871
T3 - Proceedings of the International Conference on Computer-Aided Architectural Design Research in Asia
SP - 91
EP - 100
BT - Architectural Informatics - Proceedings of the 30th International Conference on Computer-Aided Architectural Design Research in Asia, CAADRIA 2025
A2 - Reinhardt, Dagmar
A2 - Globa, Anastasia
A2 - Rogeau, Nicolas
A2 - Herr, Christiane M
A2 - Chen, Jielin
A2 - Narahara, Taro
PB - The Association for Computer-Aided Architectural Design Research in Asia
T2 - 30th International Conference on Computer-Aided Architectural Design Research in Asia, CAADRIA 2025
Y2 - 22 March 2025 through 29 March 2025
ER -