Digitizing cities for urban weather: representing realistic cities for weather and climate simulations using computer graphics and artificial intelligence

被引:0
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作者
Daniel Aliaga
Dev Niyogi
机构
[1] Purdue University,Department of Computer Science
[2] Architectural,Department of Geological (Earth and Planetary) Sciences, Department of Civil
[3] and Environmental Engineering,undefined
[4] and Oden Institute of Computational Engineering and Sciences,undefined
[5] University of Texas at Austin,undefined
关键词
Urban computational science; Urban modeling; Artificial intelligence; Generative AI;
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摘要
Due to their importance in weather and climate assessments, there is significant interest to represent cities in numerical prediction models. However, getting high resolution multi-faceted data about a city has been a challenge. Further, even when the data were available the integration into a model is even more of a challenge due to the parametric needs, and the data volumes. Further, even if this is achieved, the cities themselves continually evolve rendering the data obsolete, thus necessitating a fast and repeatable data capture mechanism. We have shown that by using AI/graphics community advances we can create a seamless opportunity for high resolution models. Instead of assuming every physical and behavioral detail is sensed, a generative and procedural approach seeks to computationally infer a fully detailed 3D fit-for-purpose model of an urban space. We present a perspective building on recent success results of this generative approach applied to urban design and planning at different scales, for different components of the urban landscape, and related applications. The opportunities now possible with such a generative model for urban modeling open a wide range of opportunities as this becomes mainstream.
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