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Main Authors: Tian, Yongfu, Ding, Shan, Su, Guofeng, Chen, Jianguo
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2605.02959
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author Tian, Yongfu
Ding, Shan
Su, Guofeng
Chen, Jianguo
author_facet Tian, Yongfu
Ding, Shan
Su, Guofeng
Chen, Jianguo
contents Calibrating the urban underlying surface parameters is crucial for urban flood simulation. We formulate the parameter calibration problem into an optimization problem within the Bayesian framework using the maximum likelihood principle. We adopt the urban flood dynamical system model as the surrogate model and innovatively introduce latent variables inspired by machine learning to represent more uncertainties, which can also be compatible with common physical parameter calibration. For more efficient optimization, we construct the adjoint equation of the surrogate model to obtain gradient information and propose the parameter sharing technique and the localization technique to reduce the computation complexity of the adjoint equation. A simple case verifies the proposed method can converge quickly and is insensitive to the observation time interval. In the case derived from Test 8A, we calibrate Manning's coefficient of urban roads, with a maximum relative error of 13.88% and a minimum of 1.16%.
format Preprint
id arxiv_https___arxiv_org_abs_2605_02959
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Calibration of the underlying surface parameters for urban flood using latent variables and adjoint equation
Tian, Yongfu
Ding, Shan
Su, Guofeng
Chen, Jianguo
Machine Learning
Calibrating the urban underlying surface parameters is crucial for urban flood simulation. We formulate the parameter calibration problem into an optimization problem within the Bayesian framework using the maximum likelihood principle. We adopt the urban flood dynamical system model as the surrogate model and innovatively introduce latent variables inspired by machine learning to represent more uncertainties, which can also be compatible with common physical parameter calibration. For more efficient optimization, we construct the adjoint equation of the surrogate model to obtain gradient information and propose the parameter sharing technique and the localization technique to reduce the computation complexity of the adjoint equation. A simple case verifies the proposed method can converge quickly and is insensitive to the observation time interval. In the case derived from Test 8A, we calibrate Manning's coefficient of urban roads, with a maximum relative error of 13.88% and a minimum of 1.16%.
title Calibration of the underlying surface parameters for urban flood using latent variables and adjoint equation
topic Machine Learning
url https://arxiv.org/abs/2605.02959