X-Ray "Computer Vision" Unveils Unprecedented Battery Secrets
Researchers from SLAC, Stanford, MIT, and Toyota Research Institute have used machine learning and computer vision to analyze X-ray movies of lithium ions flowing in and out of battery electrode nanoparticles. By extracting pixel-by-pixel information, they were able to uncover unprecedented physical and chemical details of battery cycling. The study focused on lithium iron phosphate (LFP) particles, commonly used in lithium-ion batteries, and revealed variations in the rate of lithium insertion reactions within a single particle. The researchers also discovered that the thickness of an LFP particle's carbon coating directly affects the flow rate of lithium ions. This new understanding could lead to more efficient charging and discharging of batteries.
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