Physics-Prior Bayesian Neural Networks in Semiconductor Processing

被引:10
|
作者
Chen, Chun Han [1 ]
Parashar, Parag [2 ]
Akbar, Chandni [2 ]
Fu, Sze Ming [1 ]
Syu, Ming-Ying [1 ]
Lin, Albert [1 ]
机构
[1] Natl Chiao Tung Univ, Dept Elect Engn, Hsinchu 300, Taiwan
[2] Natl Chiao Tung Univ, Coll Elect Engn & Comp Sci EECS, Hsinchu 300, Taiwan
关键词
Artificial intelligence; manufacturing; physics; Bayesian methods; intelligent manufacturing systems; VIRTUAL METROLOGY; FAULT-DETECTION; EQUIPMENT; DIAGNOSIS; INDUSTRY; RECONSTRUCTION; PREDICTION; INFERENCE; MODELS;
D O I
10.1109/ACCESS.2019.2940130
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
With the fast scaling-down and evolution of integrated circuit (IC) manufacturing technology, the fabrication process becomes highly complex, and the experimental cost of the processes is significantly elevated. Therefore, in many cases, it is very costly to obtain a sufficient amount of experimental data. To develop an efficient method to predict the results of semiconductor experiments with a small amount of known data, we use a novel method based on Bayesian framework with the prior distribution constructed by technology computer-aided-design (TCAD) physical models. This method combines the advantages of statistical models and physical models in the aspect that TCAD can provide visionary guidance on an experiment when a limited amount of experimental data is available, and a machine learning model can account for subtle anomalous effects. Specifically, we use aspect ratio dependent etching (ARDE) phenomenon as an example and use variational inference with Kullback-Leibler divergence minimization to achieve the approximation to the posterior distribution. The relation between etching process input parameters and etching depth is learned using the Bayesian neural network with TCAD priors. Using this method with 35 neurons per hidden layer, mean square error (MSE) in the test set is reduced from 0.2896 to 0.0175, 0.058 to 0.0183, 0.0563 to 0.0188, 0.058 to 0.019 for partition =10, 20, 30, 40, respectively, reference to the baseline BNN where a regular normal distribution prior with zero mean and unity standard deviation N(0,1) is used.
引用
收藏
页码:130168 / 130179
页数:12
相关论文
共 50 条
  • [41] Nuclear physics with neural networks
    Gernoth, KA
    SCIENTIFIC APPLICATIONS OF NEURAL NETS, 1999, 522 : 139 - 169
  • [42] Incorporating modelling uncertainty and prior knowledge into landslide susceptibility mapping using Bayesian neural networks
    Chen, Chongzhi
    Shen, Zhangquan
    Fang, Luming
    Lin, Jingya
    Li, Sinan
    Wang, Ke
    GEORISK-ASSESSMENT AND MANAGEMENT OF RISK FOR ENGINEERED SYSTEMS AND GEOHAZARDS, 2024,
  • [43] Statistical physics of neural networks
    Kinzel, W
    COMPUTER PHYSICS COMMUNICATIONS, 1999, 121 : 86 - 93
  • [44] Efficient Bayesian inference using physics-informed invertible neural networks for inverse problems
    Guan, Xiaofei
    Wang, Xintong
    Wu, Hao
    Yang, Zihao
    Yu, Peng
    MACHINE LEARNING-SCIENCE AND TECHNOLOGY, 2024, 5 (03):
  • [45] Efficient Bayesian Physics Informed Neural Networks for inverse problems via Ensemble Kalman Inversion
    Pensoneault, Andrew
    Zhu, Xueyu
    JOURNAL OF COMPUTATIONAL PHYSICS, 2024, 508
  • [46] Adaptive weighting of Bayesian physics informed neural networks for multitask and multiscale forward and inverse problems
    Perez, Sarah
    Maddu, Suryanarayana
    Sbalzarini, Ivo F.
    Poncet, Philippe
    JOURNAL OF COMPUTATIONAL PHYSICS, 2023, 491
  • [47] Scalable Bayesian optimization with randomized prior networks
    Bhouri, Mohamed Aziz
    Joly, Michael
    Yu, Robert
    Sarkar, Soumalya
    Perdikaris, Paris
    COMPUTER METHODS IN APPLIED MECHANICS AND ENGINEERING, 2023, 417
  • [48] Bayesian Physics Informed Neural Networks for data assimilation and spatio-temporal modelling of wildfires
    Dabrowski, Joel Janek
    Pagendam, Daniel Edward
    Hilton, James
    Sanderson, Conrad
    MacKinlay, Daniel
    Huston, Carolyn
    Bolt, Andrew
    Kuhnert, Petra
    SPATIAL STATISTICS, 2023, 55
  • [49] Markov chain generative adversarial neural networks for solving Bayesian inverse problems in physics applications
    Mucke, Nikolaj T.
    Sanderse, Benjamin
    Bohte, Sander M.
    Oosterlee, Cornelis W.
    COMPUTERS & MATHEMATICS WITH APPLICATIONS, 2023, 147 : 278 - 299
  • [50] Bayesian rock-physics inversion with Kumaraswamy prior models
    Grana, Dario
    GEOPHYSICS, 2022, 87 (03) : M87 - M97