Successive-approximation algorithm for estimating capacity of Li-ion batteries
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Taedong Goh | Minjun Park | Minhwan Seo | S. W. Kim | Minhwan Seo | Taedong Goh | Minjun Park | Jun Gu Kim | Sang-Woo Kim
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