GEO-PHLGJan 17, 2024

Inverse analysis of granular flows using differentiable graph neural network simulator

arXiv:2401.13695v314 citationsh-index: 4Comput Geotech
Originality Incremental advance
AI Analysis

This addresses the computational inefficiency and non-differentiability of traditional simulators for granular flow inverse problems, which is incremental as it combines existing techniques like graph neural networks and gradient-based optimization.

The authors tackled the inverse problem in granular flows, such as landslides, by developing a differentiable graph neural network simulator that estimates material parameters or boundary conditions from target runout profiles, achieving orders of magnitude faster solutions than conventional methods.

Inverse problems in granular flows, such as landslides and debris flows, involve estimating material parameters or boundary conditions based on target runout profile. Traditional high-fidelity simulators for these inverse problems are computationally demanding, restricting the number of simulations possible. Additionally, their non-differentiable nature makes gradient-based optimization methods, known for their efficiency in high-dimensional problems, inapplicable. While machine learning-based surrogate models offer computational efficiency and differentiability, they often struggle to generalize beyond their training data due to their reliance on low-dimensional input-output mappings that fail to capture the complete physics of granular flows. We propose a novel differentiable graph neural network simulator (GNS) by combining reverse mode automatic differentiation of graph neural networks with gradient-based optimization for solving inverse problems. GNS learns the dynamics of granular flow by representing the system as a graph and predicts the evolution of the graph at the next time step, given the current state. The differentiable GNS shows optimization capabilities beyond the training data. We demonstrate the effectiveness of our method for inverse estimation across single and multi-parameter optimization problems, including evaluating material properties and boundary conditions for a target runout distance and designing baffle locations to limit a landslide runout. Our proposed differentiable GNS framework offers an orders of magnitude faster solution to these inverse problems than the conventional finite difference approach to gradient-based optimization.

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