Human-Centric Computational Urban Design: Optimizing High-Density Urban Areas to Enhance Human Well-being

Joppe W. van Veghel, Gamze Z. Dane (Corresponding author), Giorgio Agugiaro, Aloys W.J. Borgers

Research output: Contribution to journalArticleAcademicpeer-review

3 Citations (Scopus)
48 Downloads (Pure)

Abstract

Urban areas face increasing pressure due to densification, presenting numerous challenges involving various stakeholders. The impact of densification on human well-being in existing urban areas can be both positive and negative, which requires a comprehensive understanding of its consequences. Computational Urban Design (CUD) emerges as a valuable tool in this context, offering rapid generation and evaluation of design solutions, although it currently lacks consideration for human perception in urban areas. This research addresses the challenge of incorporating human perception into computational urban design in the context of urban densification, and therefore demonstrates a complete process. Using Place Pulse 2.0 data and multinomial logit models, the study first quantifies the relationship between volumetric built elements and human perception (beauty, liveliness, and safety). The findings are then integrated into a Grasshopper-based CUD tool, enabling the optimization of parametric designs based on human perception criteria. The results show the potential of this approach. Finally, future research and development ideas are suggested based on the experiences and insights derived from this study.
Original languageEnglish
Article number13
Number of pages19
JournalComputational Urban Science
Volume4
Issue number1
Early online date28 May 2024
DOIs
Publication statusPublished - 2024

Keywords

  • Urban perception
  • Generative area design
  • Subjective well-being
  • Computational Urban Design
  • Optimization
  • Densification

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