Benutzer: Gast  Login
Titel:

Reinforcement learning-driven decision support for target-oriented branch pruning on urban trees

Dokumenttyp:
Zeitschriftenaufsatz
Autor(en):
Shu, Qiguan; Boey, \Kai Zhe\; Ludwig, Ferdinand
Abstract:
Purpose: The conventional design and management of urban trees often overlook the benefits of specific canopy shapes, despite their crucial role in enhancing thermal comfort and optimizing direct sunlight utilization. This study presents a novel workflow in which designers define target leaf areas, and a decision-support algorithm guides tree management specialists in regulating growth through branch pruning to meet these targets. Design/methodology/approach: We developed a framework that integr...     »
Stichworte:
Branch pruning, Computational design, Quantitative structure model for trees, Reinforcement learning, Tree information modeling, Voxel approach in design
Zeitschriftentitel:
Smart and Sustainable Built Environment
Jahr:
2025
Sprache:
English
Volltext / DOI:
doi:10.1108/SASBE-10-2024-0427
Verlag / Institution:
Emerald Group Publishing Ltd.
Print-ISSN:
2046-6099
Hinweise:
Publisher Copyright: © 2025, Qiguan Shu, Kai Zhe Boey and Ferdinand Ludwig.
 BibTeX