@misc{0e5380aac2254272bb7f8ddffcc34e46,
title = "AI-Driven Frameworks for Characterizing Urban Energy Systems",
abstract = "We develop AI-driven frameworks to characterize urban energy systems with the goal of transforming planning by reducing the labor of model generation, scaling scenario exploration, and improving accuracy for localized analysis. The approach integrates top-down and bottom-up data to train different AI models that predict missing information and generate inputs and targeted scenarios for district-scale models. The result is a scalable framework that provides actionable insights for reliable and efficient planning.",
keywords = "buildings energy, deep learning, generative AI, urban energy model characterization, urban energy modeling",
author = "\{El Kontar\}, Rawad",
year = "2025",
language = "American English",
series = "Presented at the NREL Analysis Council Meeting, 13 May 2025, Golden, Colorado",
type = "Other",
}