APP-PHCVLGDATA-ANAug 27, 2020

Machine Learning and Computer Vision Techniques to Predict Thermal Properties of Particulate Composites

arXiv:2010.01968v11 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the challenge of rapid thermal analysis for composites in applications like batteries, though it is incremental as it applies existing techniques to a specific domain problem.

The paper tackles rapid thermal property prediction for particulate composites, such as lithium-ion battery electrodes, by developing a computer vision and deep learning method that uses 3D micro-images to predict effective conductivity, reducing training time by up to three orders of magnitude and halving prediction error compared to volume fraction-based methods.

Accurate thermal analysis of composites and porous media requires detailed characterization of local thermal properties in small scale. For some important applications such as lithium-ion batteries, changes in the properties during the operation makes the analysis even more challenging, necessitating a rapid characterization. We propose a new method to characterize the thermal properties of particulate composites based on actual micro-images. Our computer-vision-based approach constructs 3D images from stacks of 2D SEM images and then extracts several representative elemental volumes (REVs) from the reconstructed images at random places, which leads to having a range of geometrical features for different REVs. A deep learning algorithm is designed based on convolutional neural nets to take the shape of the geometry and result in the effective conductivity of the REV. The training of the network is performed in two methods: First, based on implementing a coarser grid that uses the average values of conductivities from the fine grid and the resulted effective conductivity from the DNS solution of the fine grid. The other method uses conductivity values on cross sections from each REV in different directions. The results of training based on averaging show that using a coarser grid in the network does not have a meaningful effect on the network error; however, it decreases the training time up to three orders of magnitude. We showed that one general network can make accurate predictions using different types of electrode images, representing the difference in the geometry and constituents. Moreover, training based on averaging is more accurate than training based on cross sections. The study of the robustness of implementing a machine learning technique in predicting the thermal percolation shows the prediction error is almost half of the error from predictions based on the volume fraction.

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