Component prediction method combining machine learning and CVD modeling

A technology of machine learning and prediction method, applied in CAD numerical modeling, instrument, computer-aided design, etc., can solve the problems of high production cost, difficult in-depth and accurate measurement of experimental measurement, long preparation period of boron carbide, etc., and achieve good quality. , The effect of controllable composition of deposition products

Active Publication Date: 2020-08-28
SOUTH CHINA UNIV OF TECH
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Problems solved by technology

[0005] Although the experiment has intuitive observation results, due to the guarantee of deposition quality, deposition usually occurs at lower temperature and pressure, resulting in long production cycle and high production cost of boron carbide deposition
Moreover, due to the special reaction system and harsh reaction conditions of the chemical vapor phase method, it is difficult to determine the depth and accuracy of the experimental determination.
like figure 2 As shown, two machine learning methods of error backpropagation neural network (BP) and support vector machine (SVM) were used to establish macroscopic process parameters (temperature, mole fraction of inlet components, pressure, flow rate) and the ratio of boron to carbon of deposition products ( The correlation between the molar ratio of B / C) is not satisfactory, indicating that the macroscopic process parameter correlation product component ratio is not the best way to describe the deposition mechanism (function)

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  • Component prediction method combining machine learning and CVD modeling
  • Component prediction method combining machine learning and CVD modeling
  • Component prediction method combining machine learning and CVD modeling

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Embodiment Construction

[0032] In order to make the present invention's objectives, technical solutions and points clearer, the present invention will be described in further detail below in conjunction with the accompanying drawings.

[0033] In order to specify the problem of CVD multi-element deposition component control, the present invention selects BCl 3 / CH 4 / H 2 Gas source deposited boron carbide as an example. Boron carbide is a non-oxidizing ceramic material. It is the hardest material besides diamond and hexagonal boron nitride. It has a high melting point (2450 ° C), low density, high strength, high temperature resistance, good neutron absorption capacity (which makes it have potential application prospects in the nuclear industry), good chemical stability (can be used to make The shaft tip of the flow transmitter for rocket liquid engine fuel or used as a corrosion-resistant and friction-resistant device in a ceramic gas turbine). Although CVD boron carbide has intuitive observatio...

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Abstract

The invention provides a component prediction method combining machine learning and CVD modeling. The method comprises the following steps: determining the size of a reactor and the shape and size ofa substrate; establishing a corresponding reactor geometric model; adding material attributes to the geometric region and the boundary; carrying out model mesh generation; selecting to establish a multi-physical field model, and carrying out multi-physical field coupling; establishing a fluid heat transfer and laminar flow model; establishing a concentrated substance transfer model; calculating aphysical field of laminar flow and fluid heat transfer coupling, and calculating a physical field interface of chemical and concentrated substance transfer by taking the obtained solution as an initial value to obtain concentration distribution of various intermediate substances obtained by reaction of the boron-carbon system precursor gas; respectively obtaining different results for contrastiveanalysis, and finally obtaining substance concentration distribution results under various deposition process conditions; a machine learning algorithm is utilized to associate the deposited boron-carbon ratio with the boron-carbon ratio, the boron-carbon ratio deposited under different deposition conditions is predicted, and the error is analyzed. The method can accurately predict the component ratio of the deposition product.

Description

technical field [0001] The invention relates to the technical field of material component analysis, in particular to a component prediction method combining machine learning and CVD modeling. Background technique [0002] Ceramic matrix composites are a type of composite material that is based on ceramics and combined with other fibers. It has good properties such as high strength, high modulus, low density, high temperature resistance, wear resistance and corrosion resistance. In particular, the high temperature resistance of ceramic matrix composites has drawn attention to their application research in high temperature environments. However, the biggest disadvantage of ceramic materials is that they are brittle and easily oxidized and corroded in high-temperature water-oxygen environments. Therefore, introducing a coating on the surface of ceramic matrix composites or designing a multi-component ceramic matrix is ​​an effective way to improve its high temperature perform...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F30/20G06F111/10G06F113/08G06F119/14
CPCG06F30/20G06F2111/10G06F2113/08G06F2119/14
Inventor 关康曾庆丰高勇卢振亚吴建青刘建涛冯志强
Owner SOUTH CHINA UNIV OF TECH
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