Toward AI-Driven Digital Twins for Metropolitan Floods: A Conditional Latent Dynamics Network Surrogate of the Shallow Water Equations
Phillip Si, Yuan Qiu, Omar Sallam, Jeremy Feinstein, Ziang He, Eugene Yan, Peng Chen

TL;DR
This paper introduces CLDNet, a neural surrogate model for flood simulation that achieves rapid, accurate basin-wide forecasts at metropolitan scales, surpassing traditional solvers in speed and accuracy.
Contribution
The paper presents CLDNet, a novel neural network architecture that efficiently models flood dynamics on irregular watersheds, enabling fast and precise metropolitan-scale flood forecasting.
Findings
CLDNet halves the error compared to an unconditional baseline.
It outperforms existing VAE--ConvLSTM and FNO models on benchmarks.
It produces 96-hour basin-wide forecasts in approximately 29 seconds.
Abstract
AI-driven flood digital twins demand fast hydrodynamic surrogates for ensemble forecasting and observation assimilation. Yet even GPU-accelerated two-dimensional shallow water equation (SWE) solvers still require minutes per -hour run on a -million-active-cell metropolitan basin (the Des~Plaines River basin at resolution), making such workloads prohibitive at native resolution. We present the Conditional Latent Dynamics Network (CLDNet): a low-dimensional latent neural ODE driven by rainfall, paired with a coordinate-based decoder conditioned on static terrain (elevation, slope, Manning roughness) that reconstructs depth and discharge at arbitrary query points. Pointwise decoding decouples memory from grid size and handles irregular watersheds natively, enabling metropolitan-scale training on a single compute node and direct queries at exact…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
