Miao Gao, Xiaorui Bie, Yi Wang, Yuhang Li, Zhaoyang Zhai, Haoqi Lyu, Xudong Zou
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引用次数: 0
摘要
准确预测不同掺杂浓度和温度下的弹性性能对于设计可靠的硅基微/纳米机电系统(MEMS/NEMS)至关重要。经验势通常缺乏弹性预测的准确性,而密度泛函理论(DFT)的计算是精确的,但计算成本很高。在这项研究中,我们开发了一个高精度、高效的基于机器学习的深电位(DP)模型,用于预测磷掺杂硅(Si64-xPx, x = 0,1,2,3,4)在0-500 K温度范围内的弹性常数。DP模型对基准DFT结果进行了严格验证。在0 K时,DP模型预测的弹性常数与实验数据吻合良好,平均绝对百分比误差(MAPE)仅为2.88%。研究了掺杂对单晶硅弹性常数的影响,并确定了其二阶温度系数。计算结果显示出明显的兴奋剂引起的变化,C11和C44明显减少,C12适度增加。利用拟合温度系数进行的有限元分析表明,磷掺杂改善了硅谐振器的热稳定性。我们的研究探索了基于机器学习的原子尺度模拟与MEMS/NEMS设计的集成,为优化掺杂剂选择提供实用指导,以提高硅谐振器的热稳定性。
Accurate Deep Potential Model of Temperature-Dependent Elastic Constants for Phosphorus-Doped Silicon.
Accurate predictions of elastic properties under varying doping concentrations and temperatures are critical for designing reliable silicon-based micro-/nano-electro-mechanical systems (MEMS/NEMS). Empirical potentials typically lack accuracy for elastic predictions, whereas density functional theory (DFT) calculations are precise but computationally expensive. In this study, we developed a highly accurate and efficient machine learning-based Deep Potential (DP) model to predict the elastic constants of phosphorus-doped silicon (Si64-xPx, x = 0, 1, 2, 3, 4) within a temperature range of 0-500 K. The DP model was rigorously validated against benchmark DFT results. At 0 K, the elastic constants predicted by our DP model exhibited excellent agreement with experimental data, achieving a mean absolute percentage error (MAPE) of only 2.88%. We investigated the effects of doping on elastic constants in single-crystal silicon and determined their second-order temperature coefficients. The calculations demonstrated distinct doping-induced variations, showing pronounced decreases in C11 and C44 and a moderate increase in C12. Finite-element analyses using the fitted temperature coefficients indicated improved thermal stability of silicon resonators through phosphorus doping. Our study explores the integration of machine learning-based atomic-scale simulations with MEMS/NEMS design, providing practical guidance for optimal dopant selection to enhance silicon resonator thermal stability.
期刊介绍:
Nanomaterials (ISSN 2076-4991) is an international and interdisciplinary scholarly open access journal. It publishes reviews, regular research papers, communications, and short notes that are relevant to any field of study that involves nanomaterials, with respect to their science and application. Thus, theoretical and experimental articles will be accepted, along with articles that deal with the synthesis and use of nanomaterials. Articles that synthesize information from multiple fields, and which place discoveries within a broader context, will be preferred. There is no restriction on the length of the papers. Our aim is to encourage scientists to publish their experimental and theoretical research in as much detail as possible. Full experimental or methodical details, or both, must be provided for research articles. Computed data or files regarding the full details of the experimental procedure, if unable to be published in a normal way, can be deposited as supplementary material. Nanomaterials is dedicated to a high scientific standard. All manuscripts undergo a rigorous reviewing process and decisions are based on the recommendations of independent reviewers.