Litcius/Paper detail

Learning Complexity to Guide Light-Induced Self-Organized Nanopatterns

Eduardo Brandão, Anthony Nakhoul, Stefan Duffner, Rémi Emonet, Florence Garrelie, Amaury Habrard, François Jacquenet, Florent Pigeon, Marc Sebban, Jean‐Philippe Colombier

2023Physical Review Letters13 citationsDOIOpen Access PDF

Abstract

Ultrafast laser irradiation can induce spontaneous self-organization of surfaces into dissipative structures with nanoscale reliefs. These surface patterns emerge from symmetry-breaking dynamical processes that occur in Rayleigh-Bénard-like instabilities. In this study, we demonstrate that the coexistence and competition between surface patterns of different symmetries in two dimensions can be numerically unraveled using the stochastic generalized Swift-Hohenberg model. We originally propose a deep convolutional network to identify and learn the dominant modes that stabilize for a given bifurcation and quadratic model coefficients. The model is scale-invariant and has been calibrated on microscopy measurements using a physics-guided machine learning strategy. Our approach enables the identification of experimental irradiation conditions for a desired self-organization pattern. It can be generally applied to predict structure formation in situations where the underlying physics can be approximately described by a self-organization process and data is sparse and nontime series. Our Letter paves the way for supervised local manipulation of matter using timely controlled optical fields in laser manufacturing.

Topics & Concepts

PhysicsDissipative systemStatistical physicsActive matterSelf-organizationQuadratic equationLaserComputer scienceOpticsArtificial intelligenceMathematicsQuantum mechanicsGeometryBiologyCell biologyLaser Material Processing TechniquesAdvanced Fluorescence Microscopy TechniquesBiocrusts and Microbial Ecology