Applied Materials, Inc.
IN-SITU MONITORING TO LABEL TRAINING SPECTRA FOR MACHINE LEARNING SYSTEM FOR SPECTROGRAPHIC MONITORING

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Abstract:

A method of training a neural network for spectrographic monitoring includes polishing a test substrate, measuring by an in-situ spectrographic monitoring system a sequence of test spectra of light reflected from the substrate and measuring by an in-situ non-optical monitoring system a sequence of test values from the substrate during polishing of the test substrate, measuring at least one of an initial characterizing value for the substrate before polishing or a final characterizing value for the substrate after polishing, inputting the sequence of test values and the initial characterizing value and/or final characterizing value into a thickness predictive model that outputs a sequence of training values with each respective training value in the sequence of training values associated with a respective test spectrum from the sequence of test spectra, and training an artificial neural network using the plurality of training spectra and the plurality of training values.

Status:
Application
Type:

Utility

Filling date:

16 Feb 2022

Issue date:

8 Sep 2022