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Exploring far-from-equilibrium ultrafast polarization control in ferroelectric oxides with excited-state neural network quantum molecular dynamics

Thomas Linker, Ken‐ichi Nomura, Anikeya Aditya, Shogo Fukshima, Rajiv K. Kalia, Aravind Krishnamoorthy, Aiichiro Nakano, Pankaj Rajak, Kohei Shimmura, Fuyuki Shimojo, Priya Vashishta

2022Science Advances24 citationsDOIOpen Access PDF

Abstract

Ferroelectric materials exhibit a rich range of complex polar topologies, but their study under far-from-equilibrium optical excitation has been largely unexplored because of the difficulty in modeling the multiple spatiotemporal scales involved quantum-mechanically. To study optical excitation at spatiotemporal scales where these topologies emerge, we have performed multiscale excited-state neural network quantum molecular dynamics simulations that integrate quantum-mechanical description of electronic excitation and billion-atom machine learning molecular dynamics to describe ultrafast polarization control in an archetypal ferroelectric oxide, lead titanate. Far-from-equilibrium quantum simulations reveal a marked photo-induced change in the electronic energy landscape and resulting cross-over from ferroelectric to octahedral tilting topological dynamics within picoseconds. The coupling and frustration of these dynamics, in turn, create topological defects in the form of polar strings. The demonstrated nexus of multiscale quantum simulation and machine learning will boost not only the emerging field of ferroelectric topotronics but also broader optoelectronic applications.

Topics & Concepts

Excited stateFerroelectricityQuantumUltrashort pulseExcitationMaterials sciencePolarization (electrochemistry)Topology (electrical circuits)PhysicsCondensed matter physicsChemical physicsOptoelectronicsChemistryQuantum mechanicsCombinatoricsDielectricLaserPhysical chemistryMathematicsElectronic and Structural Properties of OxidesMachine Learning in Materials SciencePhysics of Superconductivity and Magnetism
Exploring far-from-equilibrium ultrafast polarization control in ferroelectric oxides with excited-state neural network quantum molecular dynamics | Litcius