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Autori principali: Singla, Pratham, Singh, Ayush, Gupta, Adesh, Garg, Shivank
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2412.15349
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author Singla, Pratham
Singh, Ayush
Gupta, Adesh
Garg, Shivank
author_facet Singla, Pratham
Singh, Ayush
Gupta, Adesh
Garg, Shivank
contents Urban planning faces a critical challenge in balancing city-wide infrastructure needs with localized demographic preferences, particularly in rapidly developing regions. Although existing approaches typically focus on top-down optimization or bottom-up community planning, only some frameworks successfully integrate both perspectives. Our methodology employs a two-tier approach: First, a deterministic solver optimizes basic infrastructure requirements in the city region. Second, four specialized planning agents, each representing distinct sub-regions, propose demographic-specific modifications to a master planner. The master planner then evaluates and integrates these suggestions to ensure cohesive urban development. We validate our framework using a newly created dataset comprising detailed region and sub-region maps from three developing cities in India, focusing on areas undergoing rapid urbanization. The results demonstrate that this hybrid approach enables more nuanced urban development while maintaining overall city functionality.
format Preprint
id arxiv_https___arxiv_org_abs_2412_15349
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Adaptive Urban Planning: A Hybrid Framework for Balanced City Development
Singla, Pratham
Singh, Ayush
Gupta, Adesh
Garg, Shivank
Multiagent Systems
Machine Learning
Urban planning faces a critical challenge in balancing city-wide infrastructure needs with localized demographic preferences, particularly in rapidly developing regions. Although existing approaches typically focus on top-down optimization or bottom-up community planning, only some frameworks successfully integrate both perspectives. Our methodology employs a two-tier approach: First, a deterministic solver optimizes basic infrastructure requirements in the city region. Second, four specialized planning agents, each representing distinct sub-regions, propose demographic-specific modifications to a master planner. The master planner then evaluates and integrates these suggestions to ensure cohesive urban development. We validate our framework using a newly created dataset comprising detailed region and sub-region maps from three developing cities in India, focusing on areas undergoing rapid urbanization. The results demonstrate that this hybrid approach enables more nuanced urban development while maintaining overall city functionality.
title Adaptive Urban Planning: A Hybrid Framework for Balanced City Development
topic Multiagent Systems
Machine Learning
url https://arxiv.org/abs/2412.15349