基于数值模拟和机器学习的均匀石墨烯合成衬底温度优化

IF 1.5 4区 材料科学 Q3 CRYSTALLOGRAPHY Crystal Research and Technology Pub Date : 2021-06-04 DOI:10.1002/crat.202100006
W. Deng, Yaosong Huang
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引用次数: 1

摘要

高均匀性石墨烯以其优异的特性在许多重要领域具有广泛的应用前景。在化学气相沉积法大面积合成石墨烯过程中,优化衬底温度可以提高石墨烯的均匀性。在这里,机器学习被用于设计和优化衬底表面温度,以实现均匀的石墨烯沉积。首先基于建立的计算模型进行计算流体动力学模拟,获得气体温度、速度、浓度等机器学习训练数据。然后,利用仿真数据,利用神经网络模型对衬底温度进行优化。通过对测试集的验证,发现该方法具有较高的准确率。最终得到最优的衬底温度分布,其中积碳速率和均匀性优化到规定值。
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Optimization of Substrate Temperature for Uniform Graphene Synthesis by Numerical Simulation and Machine Learning
High uniformity graphene has extensive application prospect in many important fields due to its excellent features. During large‐area graphene synthesis by chemical vapor deposition, the optimization of the substrate temperature can improve the uniformity of graphene. Here, machine learning is used to design and optimize the substrate surface temperature for uniform graphene deposition. The computational fluid dynamics simulations based on a developed computational model are first performed to obtain the training data for machine learning, such as the gas temperature, velocity, concentrations, etc. Then, the neural network model is used to optimize the substrate temperature using the simulated data. It is found that the high accuracy is achieved through the validation of testing set. The optimal substrate temperature distribution is finally obtained, in which the carbon deposition rate and its uniformity are optimized to the specified values.
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来源期刊
自引率
6.70%
发文量
121
审稿时长
1.9 months
期刊介绍: The journal Crystal Research and Technology is a pure online Journal (since 2012). Crystal Research and Technology is an international journal examining all aspects of research within experimental, industrial, and theoretical crystallography. The journal covers the relevant aspects of -crystal growth techniques and phenomena (including bulk growth, thin films) -modern crystalline materials (e.g. smart materials, nanocrystals, quasicrystals, liquid crystals) -industrial crystallisation -application of crystals in materials science, electronics, data storage, and optics -experimental, simulation and theoretical studies of the structural properties of crystals -crystallographic computing
期刊最新文献
Determination of Thermal Properties of Carbon Materials above 2000 °C for Application in High Temperature Crystal Growth Development of the VGF Crystal Growth Recipe: Intelligent Solutions of Ill‐Posed Inverse Problems using Images and Numerical Data Masthead: Crystal Research and Technology 12'2021 (Crystal Research and Technology 12/2021) Masthead: Crystal Research and Technology 11'2021
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