Hybrid Approach Combining Machine Learning and Meta-Modeling to Predict Material Behavior


Hybrid Approach Combining Machine Learning and Meta-Modeling to Predict Material Behavior


In today’s highly competitive industrial landscape, we witness a pervasive economic pressure to constantly innovate and bring forward novel solutions at a faster rate. In the field of materials and ICME, there is a strong interconnection between manufacturing processes, environmental conditions and the underlying microstructure that drives the part performance. Understanding these connections would require exhaustive testing and trial-and-error, which are set against the current pressure to rapidly innovate and shrink development times. To this point, physical testing covering a broad spectrum of environmental scenarios and material conditions (temperature, strain rates, fiber content, additives, etc.) can be dauntingly large and impractical to cover exhaustively, leaving material suppliers and other OEMs to reluctantly accept large “voids” in the design space. As such, we propose a hybrid workflow based on data analytics, machine learning and meta-modeling in order to build and predict highly reliable virtual results for a broad spectrum of temperatures, strain rates, humidity contents, material types, etc. These results can also be used to construct material models able to predict part performance under given test conditions with requisite accuracy.

Document Details

Reference

SEM_230222_3726

Authors

Harb. R

Language

English

Type

Presentation Recording

Date

2022-02-23

Organisations

Hexagon

Region

Americas

 NAFEMS Member Download



This site uses cookies that enable us to make improvements, provide relevant content, and for analytics purposes. For more details, see our Cookie Policy. By clicking Accept, you consent to our use of cookies.