自编码
辐射传输
等离子体
计算机科学
代表(政治)
生成模型
深度学习
人工智能
谱线
氩
模式识别(心理学)
生成语法
物理
光学
原子物理学
量子力学
政治
天文
政治学
法学
作者
Gregory Daly,Jonathan E. Fieldsend,Geoff Hassall,Gavin Tabor
标识
DOI:10.1088/2632-2153/aced7f
摘要
Abstract We have developed a deep generative model that can produce accurate optical emission spectra and colour images of an ICP plasma using only the applied coil power, electrode power, pressure and gas flows as inputs—essentially an empirical surrogate collisional radiative model. An autoencoder was trained on a dataset of 812 500 image/spectra pairs in argon, oxygen, Ar/O 2 , CF 4 /O 2 and SF 6 /O 2 plasmas in an industrial plasma etch tool, taken across the entire operating space of the tool. The autoencoder learns to encode the input data into a compressed latent representation and then decode it back to a reconstruction of the data. We learn to map the plasma tool’s inputs to the latent space and use the decoder to create a generative model. The model is very fast, taking just over 10 s to generate 10 000 measurements on a single GPU. This type of model can become a building block for a wide range of experiments and simulations. To aid this, we have released the underlying dataset of 812 500 image/spectra pairs used to train the model, the trained models and the model code for the community to accelerate the development and use of this exciting area of deep learning. Anyone can try the model, for free, on Google Colab.
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