Murakami et al. Supplemental Data for "Microstructural Analysis of Li-Ion Conductors with Deep Learning and SEM Images"
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For details, please refer to the paper: Murakami et al., "Deep Learning–Based SEM Image Analysis for Predicting Ionic Conductivity in LiZr₂(PO₄)₃-Based Solid Electrolytes". DOI: 10.1039/d5dd00232j<b>data_table.xlsx:</b><b>Description of columns in the dataset (Excel file):</b><b>sample.No</b>: Sample index number.<br><b>Ca, Si, Li, Zr, P</b>: Elemental composition of each sample (Li<sub>1+2x+y</sub>Ca<sub>x</sub>Zr<sub>2-x</sub>Si<sub>y</sub>P<sub>3-y</sub>O<sub>12</sub>)<br><b>1st heating temperature, 2nd heating temperature</b>: The first and second sintering temperatures of the sample.<br><b>Measured_Li_conductivity, Measured_Li_conductivity (Log)</b>: Experimentally measured lithium-ion conductivity (S cm⁻¹ at 30 °C) and its logarithmic value.<br><b>pred_1 (Log), pred_2 (Log), pred_3 (Log), pred_mean (Log)</b>: Predicted lithium-ion conductivities obtained by regression analysis (logarithmic values). The first three columns correspond to predictions from individual SEM images, and the last column is their average.<br><b>Reference</b>: Source of the data.Reference 1: H. Takeda et al., <i>Next Materials</i> 8 (2025) 100574, https://doi.org/10.1016/j.nxmate.2025.100574<br>Reference 2: H. Takeda et al., <i>Mater. Adv.</i>, 3 (2022) 8141–8148, https://doi.org/10.1039/D2MA00731B<br><b>Number of SEM pictures</b>: Number of SEM images obtained for each sample.<b>SEM_images.zip</b>:These files consists of SEM images and numerical datasets (descriptors and objective variables) of composition, sintering temperature, and ionic conductivities for 52 samples (1-3 SEM images are included per 1 sample, total 130 images)<b>python_codes_rev1.zip</b>:Python codes for four convolutional neural network (CNN) models used to investigate the relationship between these image data and ionic conductivity are provided. (revised n 15th Oct.)<br><br>The program was verified to run successfully under the following environment:Python: 3.7.10 (see also <b>requirements.txt</b>)<br>cuDNN: 7.6.5CUDA: 10.2<br>GPU: NVIDIA GeForce RTX 2080 Ti<b>requirements.txt</b>:python environments for python_codes_rev1.zip.<b>Segmentation_images.zip</b>:Positive and negative segmentation images for Li ionic conductivities in LCZSP materials. (See Figure 5 in the main text.) List of sample#, compositions and process conditions (heating temperatures are also included as csv formatted file.
提供机构:
Takeda, Hayami; Murakami, Kento; Kato, Yo; Nakayama, Masanobu
创建时间:
2025-12-17



