4.7 Article

Data-Enhanced Deep Greedy Optimization Algorithm for the On-Demand Inverse Design of TMDC-Cavity Heterojunctions

期刊

NANOMATERIALS
卷 12, 期 17, 页码 -

出版社

MDPI
DOI: 10.3390/nano12172976

关键词

inverse design; transition metal dichalcogenides; photonic cavity; integrated heterojunction; strong coupling effect; deep learning; data enhancement; reinforcement learning

资金

  1. National Natural Science Foundation of China [11902358, 41904167, 62075240]
  2. Natural Science Foundation for Distinguished Young Scholars of Hunan Province [2020JJ2036]

向作者/读者索取更多资源

A data-enhanced deep greedy optimization (DEDGO) algorithm is proposed for efficient and on-demand inverse design of multiple TMDC-phonic cavity-integrated heterojunctions. DEDGO integrates the decision theory of reinforcement learning and employs iterative optimization and data enhancement methods, achieving higher accuracy and effectiveness compared to conventional methods.
A data-enhanced deep greedy optimization (DEDGO) algorithm is proposed to achieve the efficient and on-demand inverse design of multiple transition metal dichalcogenides (TMDC)-photonic cavity-integrated heterojunctions operating in the strong coupling regime. Precisely, five types of photonic cavities with different geometrical parameters are employed to alter the optical properties of monolayer TMDC, aiming at discovering new and intriguing physics associated with the strong coupling effect. Notably, the traditional rigorous coupled wave analysis (RCWA) approach is utilized to generate a relatively small training dataset for the DEDGO algorithm. Importantly, one remarkable feature of DEDGO is the integration the decision theory of reinforcement learning, which remedies the deficiencies of previous research that focused more on modeling over decision making, increasing the success rate of inverse prediction. Specifically, an iterative optimization strategy, namely, deep greedy optimization, is implemented to improve the performance. In addition, a data enhancement method is also employed in DEDGO to address the dependence on a large amount of training data. The accuracy and effectiveness of the DEDGO algorithm are confirmed to be much higher than those of the random forest algorithm and deep neural network, making possible the replacement of the time-consuming conventional scanning optimization method with the DEDGO algorithm. This research thoroughly describes the universality, interpretability, and excellent performance of the DEDGO algorithm in exploring the underlying physics of TMDC-cavity heterojunctions, laying the foundations for the on-demand inverse design of low-dimensional material-based nano-devices.

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