The patent badge is an abbreviated version of the USPTO patent document. The patent badge does contain a link to the full patent document.

The patent badge is an abbreviated version of the USPTO patent document. The patent badge covers the following: Patent number, Date patent was issued, Date patent was filed, Title of the patent, Applicant, Inventor, Assignee, Attorney firm, Primary examiner, Assistant examiner, CPCs, and Abstract. The patent badge does contain a link to the full patent document (in Adobe Acrobat format, aka pdf). To download or print any patent click here.

Date of Patent:
Feb. 27, 2024

Filed:

Feb. 05, 2020
Applicant:

Baldur Andrew Steingrimsson, Hillsboro, OR (US);

Inventors:

Baldur Andrew Steingrimsson, Hillsboro, OR (US);

Peter K Liaw, Knoxville, TN (US);

Xuesong Fan, Knoxville, TN (US);

Anand A Kulkarni, Charlotte, NC (US);

Duckbong Kim, Cookeville, TN (US);

Assignee:

IMAGARS LLC, Wilsonville, OR (US);

Attorney:
Primary Examiner:
Assistant Examiner:
Int. Cl.
CPC ...
G06N 20/00 (2019.01); G06F 30/27 (2020.01); G16C 20/30 (2019.01); G06N 7/01 (2023.01); B29C 64/393 (2017.01); B29C 64/153 (2017.01); B29C 64/268 (2017.01); B33Y 50/02 (2015.01); G16C 20/70 (2019.01); G16C 60/00 (2019.01); B22F 12/45 (2021.01); B22F 12/90 (2021.01); B22F 10/366 (2021.01); B22F 10/368 (2021.01); B22F 10/80 (2021.01); B22F 10/85 (2021.01); G06F 18/211 (2023.01); G06F 18/213 (2023.01); B33Y 70/10 (2020.01); B33Y 10/00 (2015.01); B33Y 30/00 (2015.01); G06F 119/08 (2020.01); G06F 113/10 (2020.01); B22F 10/22 (2021.01); B22F 10/25 (2021.01); B22F 10/28 (2021.01); B22F 10/36 (2021.01);
U.S. Cl.
CPC ...
G06N 20/00 (2019.01); B22F 10/366 (2021.01); B22F 10/368 (2021.01); B22F 10/80 (2021.01); B22F 10/85 (2021.01); B22F 12/45 (2021.01); B22F 12/90 (2021.01); B29C 64/153 (2017.08); B29C 64/268 (2017.08); B29C 64/393 (2017.08); B33Y 50/02 (2014.12); G06F 18/211 (2023.01); G06F 18/213 (2023.01); G06F 30/27 (2020.01); G06N 7/01 (2023.01); G16C 20/30 (2019.02); G16C 20/70 (2019.02); G16C 60/00 (2019.02); B22F 10/22 (2021.01); B22F 10/25 (2021.01); B22F 10/28 (2021.01); B22F 10/36 (2021.01); B33Y 10/00 (2014.12); B33Y 30/00 (2014.12); B33Y 70/10 (2020.01); G06F 2113/10 (2020.01); G06F 2119/08 (2020.01);
Abstract

This invention presents an innovative framework for the application of machine learning for identification of alloys or composites with desired properties of interest. For each output property of interest, we identify the corresponding driving (input) factors. These input factors may include the material composition, heat treatment, process, microstructure, temperature, strain rate, environment or testing mode. Our framework assumes selection of optimization technique suitable for the application at hand and data available, starting with simple linear, or quadratic, regression analysis. We present a physics-based model for predicting the ultimate tensile strength, a model that accounts for physical dependencies, and factors in the underlying physics as a priori information. In case an artificial neural network is deemed suitable, we suggest employing custom kernel functions consistent with the underlying physics, for the purpose of attaining tighter coupling, better prediction, and extracting the most out of the—usually limited—input data available.


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