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Prediction of future capacity and internal resistance of Li-ion cells from one cycle of input data 被引量:2
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作者 Calum Strange Gonçalo dos Reis 《Energy and AI》 2021年第3期209-216,共8页
There is a large demand for models able to predict the future capacity retention and internal resistance(IR)of Lithium-ion battery cells with as little testing as possible.We provide a data-centric model accurately pr... There is a large demand for models able to predict the future capacity retention and internal resistance(IR)of Lithium-ion battery cells with as little testing as possible.We provide a data-centric model accurately predicting a cell’s entire capacity and IR trajectory from one single cycle of input data.This represents a significant reduction in the amount of input data needed over previous works.Our approach characterises the capacity and IR curve through a small number of key points,which,once predicted and interpolated,describe the full curve.With this approach the remaining useful life is predicted with an 8.6%mean absolute percentage error when the input-cycle is within the first 100 cycles. 展开更多
关键词 Capacity degradation Internal resistance degradation Prediction of full degradation curve Knee and elbow-points Lithium-ion cells Machine learning Remaining useful life
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