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On the Generalization in Topology Optimization via Sensitivity-Conditioned Bernoulli Flow Matching

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Surrogate models for topology optimization (TO) exhibit highly variable out-of-distribution (OOD) generalization under distribution shifts such as changing loads or boundary conditions, yet the source of this variability remains unclear. We hypothesize that OOD performance is governed by how much information the conditioning signal preserves about the adjoint sensitivity (reduced gradient) that drives classical TO. Modeling the TO pipeline as a causal Markov chain, the Data Processing Inequality establishes that, under this abstraction, the sensitivity field is an information-theoretically optimal conditioning signal for topology prediction. However, computing exact adjoint sensitivities can be expensive or unavailable in practice; we observe that certain physical fields can approximate sensitivities through monotone transformations. To formalize this, we introduce \textbf{pseudo-sensitivities} to characterize which fields enable generalization versus those that are information-poor. We then show that a sensitivity-conditioned Bernoulli flow-matching generator empirically confirms these predictions: conditioning on sensitivities yields state-of-the-art OOD performance, while increasingly distant physical fields degrade toward raw parameter conditioning. Results hold across structural TO benchmarks under load shifts and our new CFD-TO dataset under boundary-condition shifts such as multi-outlet configurations. Code and datasets are available at https://tum-pbs.github.io/topotransformer/ .

Mohammad Rashed, Duarte F. Valoroso Madeira, Babak Gholami, Caglar Guerbuez, Yunjia Yang, Nils Thuerey• 2026

Related benchmarks

TaskDatasetResultRank
Topology Optimization2D turbulent CFD benchmark
Time per Sample0.65
8
CFD Topology OptimizationCFD-TO OOD-Medium (2 Outlets) steady RANS, k-epsilon
Mean Relative Pressure Drop Error6.38
5
CFD Topology OptimizationCFD-TO OOD-Hard 3 Outlets steady RANS, k-epsilon
Mean Relative Pressure Drop Error6.12
5
CFD Topology OptimizationCFD-TO ID steady RANS, k-epsilon (test)
Mean Relative Pressure Drop Error3.68
5
Structural Topology OptimizationStructural Topology Optimization OOD (test)
Mean ErrC5.73
4
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