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100 _aKoenig, Reinhard
_958002
245 _aIntegrating urban analysis, generative design, and evolutionary optimization for solving urban design problems/
260 _bSage,
_c2020.
300 _aVol. 47, Issue 6, 2020, ( 997–1013 p.)
520 _aTo better support urban designers in planning sustainable, resilient, and livable urban environments, new methods and tools are needed. A variety of computational approaches have been proposed, including different forms of spatial analysis to evaluate the performance of design proposals, or the automated generation of urban design proposals based on specific parameters. However, most of these propositions have produced separate tools and disconnected workflows. In the context of urban design optimization procedures, one of the main challenges of integrating urban analytics and generative methods is a suitable computational representation of the urban design problem. To overcome this difficulty, we present a holistic data representation for urban fabrics, including the layout of street networks, parcels, and buildings, which can be used efficiently with evolutionary optimization algorithms. We demonstrate the use of the data structure implemented for the software Grasshopper for Rhino3D as part of a flexible, modular, and extensible optimization system that can be used for a variety of urban design problems and is able to reconcile potentially contradicting design goals in a semi-automated design process. The proposed optimization system aims to assist a designer by populating the design space with options for more detailed exploration. We demonstrate the functionality of our system using the example of an urban master-design project for the city of Weimar.
700 _aMiao, Yufan
_958003
700 _aAichinger, Anna
_958004
700 _aKnecht, Katja
_958005
700 _aKonieva, Kateryna
_958006
773 0 _08876
_917104
_dLondon Pion Ltd. 2010
_tEnvironment and planning B: planning and design (Urban Analytics and City Science)
_x1472-3417
856 _uhttps://doi.org/10.1177/2399808319894986
942 _2ddc
_cEJR
999 _c14709
_d14709