2021
DOI: 10.1252/jcej.20we139
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Convolutional Neural Networks for Multi-Stage Semiconductor Processes

Abstract: In semiconductor manufacturing processes, there are certain quality measurements cannot be easily obtained at a low cost. In such cases, virtual metrology (VM) is typically used to predict the relevant quality variables without increasing the number of physical measurements. Faced with large volumes of raw data, the traditional data-driven VM methods adopt data pre-processing for feature extraction before modeling with a prede ned model. However, if the constructed model and the extracted features are not suit… Show more

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Cited by 3 publications
(1 citation statement)
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“…[ 24 ] As a new process intensification technology, the impinging stream had strong micro‐mixing performance and high mass transfer coefficient, which could create the conditions needed for the reaction. Wu et al [ 25 ] prepared ultrafine silica in a submerged circulative impinging stream reactor (SCISR). The reaction time, reaction temperature, rotor speed, and other factors were studied by orthogonal, and an ultrafine silica with a particle size of 2.1 μm was prepared.…”
Section: Introductionmentioning
confidence: 99%
“…[ 24 ] As a new process intensification technology, the impinging stream had strong micro‐mixing performance and high mass transfer coefficient, which could create the conditions needed for the reaction. Wu et al [ 25 ] prepared ultrafine silica in a submerged circulative impinging stream reactor (SCISR). The reaction time, reaction temperature, rotor speed, and other factors were studied by orthogonal, and an ultrafine silica with a particle size of 2.1 μm was prepared.…”
Section: Introductionmentioning
confidence: 99%