4.7 Article

Genetic Algorithm-Driven Surface-Enhanced Raman Spectroscopy Substrate Optimization

期刊

NANOMATERIALS
卷 11, 期 11, 页码 -

出版社

MDPI
DOI: 10.3390/nano11112905

关键词

surface-enhanced Raman spectroscopy; genetic algorithm; metasurface

资金

  1. TUBITAK [119S362]

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Surface-enhanced Raman spectroscopy (SERS) is a highly sensitive and molecule-specific detection technique that enhances Raman scattering from analytes using surface plasmon resonances. This study presents a genetic-algorithm (GA)-based optimization method for SERS substrates, demonstrating strong electric field localization over wide areas and validating model predictions. The optimized SERS substrates enable detailed Raman profile generation and could pave the way for photonic chips with arbitrary design constraints and performance targets.
Surface-enhanced Raman spectroscopy (SERS) is a highly sensitive and molecule-specific detection technique that uses surface plasmon resonances to enhance Raman scattering from analytes. In SERS system design, the substrates must have minimal or no background at the incident laser wavelength and large Raman signal enhancement via plasmonic confinement and grating modes over large areas (i.e., squared millimeters). These requirements impose many competing design constraints that make exhaustive parametric computational optimization of SERS substrates prohibitively time consuming. Here, we demonstrate a genetic-algorithm (GA)-based optimization method for SERS substrates to achieve strong electric field localization over wide areas for reconfigurable and programmable photonic SERS sensors. We analyzed the GA parameters and tuned them for SERS substrate optimization in detail. We experimentally validated the model results by fabricating the predicted nanostructures using electron beam lithography. The experimental Raman spectrum signal enhancements of the optimized SERS substrates validated the model predictions and enabled the generation of a detailed Raman profile of methylene blue fluorescence dye. The GA and its optimization shown here could pave the way for photonic chips and components with arbitrary design constraints, wavelength bands, and performance targets.

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