Generative methods for Urban design and rapid solution space exploration
Yue Sun, Timur Dogan

TL;DR
This paper presents a tensor-field-based generative urban modeling toolkit integrated with Rhino/Grasshopper, enabling rapid, multi-objective urban design exploration and optimization considering various constraints and performance feedback.
Contribution
It introduces a novel, generalized tensor-field modeling method for urban form generation that supports diverse constraints and integrates with simulation tools for sustainable urban planning.
Findings
Enables rapid generation of diverse urban configurations
Supports multi-objective optimization with environmental feedback
Demonstrates flexibility through a practical case study
Abstract
Rapid population growth and climate change drive urban renewal and urbanization at massive scales. New computational methods are needed to better support urban designers in developing sustainable, resilient, and livable urban environments. Urban design space exploration and multi-objective optimization of masterplans can be used to expedite planning while achieving better design outcomes by incorporating generative parametric modeling considering different stakeholder requirements and simulation-based performance feedback. However, a lack of generalizable and integrative methods for urban form generation that can be coupled with simulation and various design performance analysis constrain the extensibility of workflows. This research introduces an implementation of a tensor-field-based generative urban modeling toolkit that facilitates rapid design space exploration and multi-objective…
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