Droplet-LNO: Physics-Informed Laplace Neural Operators for Accurate Prediction of Droplet Spreading Dynamics on Complex Surfaces

arXiv cs.LG / 4/24/2026

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Key Points

  • The paper introduces PI-LNO, a physics-informed Laplace neural operator architecture designed to accurately predict droplet spreading dynamics on complex surfaces.
  • It addresses the high cost of transient CFD simulations (over 18–24 hours per run) by learning physics-aware functional bases using the Laplace integral transform.
  • PI-LNO is benchmarked against UNet, UNet-AM, DeepONet, PI-UNet, and the baseline Laplace Neural Operator, showing how Laplace-domain modeling captures the problem’s exponential transient behavior.
  • The approach uses TensorFlow training on multi-surface CFD data across contact angles from 20 to 160, with a composite physics-regularized loss enforcing data accuracy plus Navier–Stokes, Cahn–Hilliard, and causality constraints.

Abstract

Spreading of liquid droplets on solid substrates constitutes a classic multiphysics problem with widespread applications ranging from inkjet printing, spray cooling, to biomedical microfluidic systems. Yet, accurate computational fluid dynamic (CFD) simulations are prohibitively expensive, taking more than 18 to 24 hours for each transient computation. In this paper, Physics-Informed Laplace Operator Neural Network (PI-LNO) is introduced, representing a novel architecture where the Laplace integral transform function serves as a learned physics-informed functional basis. Extensive comparative benchmark studies were performed against five other state-of-the-art approaches: UNet, UNet with attention modules (UNet-AM), DeepONet, Physics-Informed UNet (PI-UNet), and Laplace Neural Operator (LNO). Through complex Laplace transforms, PI-LNO natively models the exponential transient dynamics of the spreading process. A TensorFlow-based PI-LNO is trained on multi-surface CFD data spanning contact angles \theta_s \epsilon [20,160], employing a physics-regularized composite loss combining data fidelity (MSE, MAE, RMSE) with Navier-Stokes, Cahn-Hilliard, and causality constraints.