Photostrictive Effect and Structure Phase Transition via Nonlinear Photocurrent
Ruixiang Fei, Li Yang

TL;DR
This paper proposes that nonlinear photocurrent, especially shift current, drives light-induced crystal size changes and phase transitions, offering a microscopic explanation and potential control mechanism for material properties.
Contribution
It introduces a microscopic theory linking nonlinear photocurrent to structural phase transitions, supported by first-principles simulations and experimental comparisons.
Findings
Shift current can induce photostriction and phase transitions.
Quantitative agreement with experiments on frequency, polarization, and intensity.
Proposes using various nonlinear photocurrents for enhanced control.
Abstract
The phenomena of crystal size changes and structural phase transitions induced by light irradiation have garnered significant interest due to their potential for tuning and controlling a wide range of material properties through highly cooperative interactions. However, a microscopic theory that can comprehensively explain these phenomena in correlation with photon frequency and polarization has remained highly desirable. In this work, we propose that nonlinear photocurrent may correspond to driving these effects, which arise from a competition between light-injected energy and structural variations. By conducting first-principles simulations and comparing them with two established experiments, we show that shift current, a second-order photocurrent, can induce photostriction and nonreciprocal structure phase transitions. The quantitative comparisons across key parameters such as light…
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Taxonomy
TopicsQuantum Dots Synthesis And Properties · Transition Metal Oxide Nanomaterials · Machine Learning in Materials Science
