AI RESEARCH
U-Net-Accelerated Quality-Diversity Optimization for Climate-Adaptive Urban Layouts
arXiv CS.LG
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ArXi:2606.04658v1 Announce Type: cross Optimizing urban layouts for climate adaptation requires balancing building density with cold-air ventilation. Because physics-based climate simulations are computationally expensive, planners typically evaluate fewer than ten manual designs. \gls{qd} algorithms offer a way to systematically illuminate the design space, but they require surrogate models to be practical. In this paper, we replace a slow, regulatory physics simulator with a spatial deep-learning surrogate (U-Net) inside an offline MAP-Elites loop.