Deep Neural Networks with 3D Point Clouds for Empirical Friction Measurements in Hydrodynamic Flood Models
Francisco Haces-Garcia, Vasileios Kotzamanis, Craig Glennie, Hanadi, Rifai

TL;DR
This paper introduces a deep neural network trained on laboratory data to measure Manning's n from 3D point clouds, significantly improving flood modeling accuracy and standardizing friction factor measurements in hydrodynamic flood models.
Contribution
It presents a novel DNN approach trained with flume experiments to directly estimate friction factors from lidar point clouds, enhancing flood prediction accuracy.
Findings
Lidar-based Manning's n measurements improved flood extent predictions.
Enhanced model agreement with flood insurance claims and validation gauges.
Better in-channel water depth estimates compared to land cover proxies.
Abstract
Friction is one of the cruxes of hydrodynamic modeling; flood conditions are highly sensitive to the Friction Factors (FFs) used to calculate momentum losses. However, empirical FFs are challenging to measure because they require laboratory experiments. Flood models often rely on surrogate observations (such as land use) to estimate FFs, introducing uncertainty. This research presents a laboratory-trained Deep Neural Network (DNN), trained using flume experiments with data augmentation techniques, to measure Manning's n based on Point Cloud data. The DNN was deployed on real-world lidar Point Clouds to directly measure Manning's n under regulatory and extreme storm events, showing improved prediction capabilities in both 1D and 2D hydrodynamic models. For 1D models, the lidar values decreased differences with regulatory models for in-channel water depth when compared to land cover…
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Taxonomy
TopicsModel Reduction and Neural Networks · Anomaly Detection Techniques and Applications · Lattice Boltzmann Simulation Studies
