Abstract

AbstractThis study developed a method to detect and analyze deterioration in sections of a battery during charge–discharge tests in real time. This method is based on a time‐series analysis using x‐ray computed tomography, three‐dimensional reconstruction of the battery volume, and unsupervised machine learning. The developed method detects not only electrochemical changes in a battery through the conventional voltage‐capacity diagram but also physical changes such as the deterioration of the parts of a battery that cannot be found via human inspection directly from the sliced images of the three‐dimensional reconstructed volumes. Furthermore, the characteristics of these changes inside a battery can be captured through precise analysis using persistent homology, a mathematical machinery, at degrees 0 and 1. This demonstrates that our method can capture both continuous and discrete structural changes (e.g., a continuous deformation of active materials and compounds that are precipitated randomly in the electrolytes) within a battery. As a by‐product, the start of the venting system implemented near the anode of a battery can be detected using the method from a specific cycle during the charge–discharge tests.

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