固体材料随频率变化的光谱预测:多输出和多保真度机器学习方法。

IF 8.2 2区 材料科学 Q1 MATERIALS SCIENCE, MULTIDISCIPLINARY
ACS Applied Materials & Interfaces Pub Date : 2024-08-07 Epub Date: 2024-07-24 DOI:10.1021/acsami.4c07328
Akram Ibrahim, Can Ataca
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引用次数: 0

摘要

频率相关的光学光谱在从材料表征到光电子学和能量收集等广泛应用中至关重要。在密度泛函理论(DFT)数据基础上训练的数据驱动代用模型有效地缓解了 DFT 的可扩展性限制,同时保持了其化学准确性,从而加快了材料发现的速度。然而,目前的机器学习(ML)工作往往侧重于带隙等标量属性,忽略了光学光谱的复杂性。在这项工作中,我们采用了深度图神经网络(GNN),直接从晶体结构预测红外、可见和紫外光谱中与频率相关的复值介电函数。我们探索了介电函数光谱多输出表示的多种架构,并利用各种多保真度学习策略(如迁移学习和保真度嵌入)来应对与高保真 DFT 数据稀缺相关的挑战。此外,我们还对关键的太阳能电池吸收效率指标进行了建模,证明在学习频率相关的吸收系数时,通过学习偏差的整合,可以增强对这些参数的学习。这项研究表明,利用多输出和多保真度 ML 技术可以从晶体结构中准确预测光学光谱,为快速筛选光电子学、光学传感和太阳能应用材料提供了一种跨频谱的多功能工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Prediction of Frequency-Dependent Optical Spectrum for Solid Materials: A Multioutput and Multifidelity Machine Learning Approach.

Prediction of Frequency-Dependent Optical Spectrum for Solid Materials: A Multioutput and Multifidelity Machine Learning Approach.

The frequency-dependent optical spectrum is pivotal for a broad range of applications from material characterization to optoelectronics and energy harvesting. Data-driven surrogate models, trained on density functional theory (DFT) data, have effectively alleviated the scalability limitations of DFT while preserving its chemical accuracy, expediting material discovery. However, prevailing machine learning (ML) efforts often focus on scalar properties such as the band gap, overlooking the complexities of optical spectra. In this work, we employ deep graph neural networks (GNNs) to predict the frequency-dependent complex-valued dielectric function across the infrared, visible, and ultraviolet spectra directly from the crystal structures. We explore multiple architectures for the spectral multioutput representation of the dielectric function and utilize various multifidelity learning strategies, such as transfer learning and fidelity embedding, to address the challenges associated with the scarcity of high-fidelity DFT data. Additionally, we model key solar cell absorption efficiency metrics, demonstrating that learning these parameters is enhanced when integrated through a learning bias within the learning of the frequency-dependent absorption coefficient. This study demonstrates that leveraging multioutput and multifidelity ML techniques enables accurate predictions of optical spectra from crystal structures, providing a versatile tool for rapidly screening materials for optoelectronics, optical sensing, and solar energy applications across an extensive frequency spectrum.

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来源期刊
ACS Applied Materials & Interfaces
ACS Applied Materials & Interfaces 工程技术-材料科学:综合
CiteScore
16.00
自引率
6.30%
发文量
4978
审稿时长
1.8 months
期刊介绍: ACS Applied Materials & Interfaces is a leading interdisciplinary journal that brings together chemists, engineers, physicists, and biologists to explore the development and utilization of newly-discovered materials and interfacial processes for specific applications. Our journal has experienced remarkable growth since its establishment in 2009, both in terms of the number of articles published and the impact of the research showcased. We are proud to foster a truly global community, with the majority of published articles originating from outside the United States, reflecting the rapid growth of applied research worldwide.
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