Characterization of the degradation process of lithium-ion batteries when discharged at different current rates
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Marcos E. Orchard | Vanessa Quintero | Diego Jiménez | Rodrigo Moreno | Francisco Jaramillo | Aramis Perez | Heraldo Rozas | Vanessa L. Quintero | M. Orchard | Francisco Jaramillo | Heraldo Rozas | Rodrigo Moreno | Aramis Pérez | Diego Jimenez
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