Predicting compressive strength of consolidated molecular solids using computer vision and deep learning

被引:29
作者
Gallagher, Brian [1 ]
Rever, Matthew [2 ]
Loveland, Donald [3 ]
Mundhenk, T. Nathan [2 ]
Beauchamp, Brock [2 ]
Robertson, Emily [3 ]
Jaman, Golam G. [4 ]
Hiszpanski, Anna M. [3 ]
Han, T. Yong-Jin [3 ]
机构
[1] Lawrence Livermore Natl Lab, Ctr Appl Sci Comp, Livermore, CA 94550 USA
[2] Lawrence Livermore Natl Lab, Computat Engn Div, Livermore, CA 94550 USA
[3] Lawrence Livermore Natl Lab, Div Mat Sci, Livermore, CA 94550 USA
[4] Idaho State Univ, Dept Elect Engn, Pocatello, ID 83209 USA
关键词
Mechanical performance prediction; Image analysis; Random forest; Deep neural network; Machine learning; FEATURES; MICROSTRUCTURE;
D O I
10.1016/j.matdes.2020.108541
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
We explore the application of computer vision and machine learning (ML) techniques to predict material properties (e.g., compressive strength) based on SEM images. We show that it's possible to train ML models to predict materials performance based on SEM images alone, demonstrating this capability on the real-world problem of predicting uniaxially compressed peak stress of consolidated molecular solids samples. Our image-based ML approach reduces mean absolute percentage error (MAPE) by an average of 24% over baselines representative of the current state-of-the-practice (i.e., domain-expert's analysis and correlation). We compared two complementary approaches to this problem: (1) a traditional ML approach, random forest (RF), using state-of-the-art computer vision features and (2) an end-to-end deep learning (DL) approach, where features are learned automatically from raw images. We demonstrate the complementarity of these approaches, showing that RF performs best in the "small data" regime in which many real-world scientific applications reside (up to 24% lower RMSE than DL), whereas DL outpaces RF in the "big data" regime, where abundant training samples are available (up to 24% lower RMSE than RF). Finally, we demonstrate that models trained using machine learning techniques are capable of discovering and utilizing informative crystal attributes previously underutilized by domain experts. (C) 2020 The Authors. Published by Elsevier Ltd.
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页数:11
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