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 optimization by integrating with Rhino/Grasshopper ecosystem and its urban analysis and environmental performance simulation tools. Our tensor-field modeling method provides users with a generalized way to encode contextual constraints such as waterfront edges, terrain, view-axis, existing streets, landmarks, and non-geometric design inputs such as network directionality, desired densities of streets, amenities, buildings, and people as forces that modelers can weigh. This allows users to generate many, diverse urban fabric configurations that resemble real-world cities with very few model inputs. We present a case study to demonstrate the proposed framework's flexibility and applicability and show how modelers can identify design and environmental performance synergies that would be hard to find otherwise
翻译:城市设计空间探索和多目标优化总体规划可以用于加快规划,同时通过纳入基因化参数模型,考虑到不同的利益攸关方要求和模拟业绩反馈,实现更好的设计结果。然而,城市形态生成缺乏可普遍适用的综合方法,加上模拟和各种设计绩效分析,限制了工作流程的可扩展性。这一研究推出一个基于高压地基的具有基因特征的城市模型工具包,该工具包通过与Rhino/Garschaps生态系统及其城市分析和环境性能模拟工具相结合,促进快速设计空间探索和多目标优化。我们的高压地模型方法为用户提供了一个通用方法,以解析背景制约因素,如水边边缘、地形、视觉轴、现有街道、地标和各种设计绩效分析等,从而制约了工作流程的扩展性。我们让许多用户能够找到网络方向、希望的街道密度、生活设施、建筑物和人,以及能够快速设计空间探索和多目标的城市模型工具,从而以其他方式衡量城市的适应性能结构。这样可以让用户形成一个能够展示当前环境结构的硬性能研究模型,从而展示各种城市的模型结构。