Voltage models of lithium-ion batteries (LIB) are used to estimate their future voltages,
based on the assumption of a specific current profile, in order to ensure that the LIB remains in
a safe operation mode. Data of measurable physical features—current, voltage and temperature—are
processed using both over- and undersampling methods, in order to obtain evenly distributed and,
therefore, appropriate data to train the model. The trained recurrent neural network (RNN) consists
of two long short-term memory (LSTM) layers and one dense layer. Validation measurements over
a wide power and temperature range are carried out on a test bench, resulting in a mean absolute error
(MAE) of 0.43 V and a mean squared error (MSE) of 0.40 V 2 . The raw data and modeling process can be
carried out without any prior knowledge of LIBs or the tested battery. Due to the challenges involved
in modeling the state-of-charge (SOC), measurements are used directly to model the behavior without
taking the SOC estimation as an input feature or calculating it in an intermediate step.
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Voltage models of lithium-ion batteries (LIB) are used to estimate their future voltages,
based on the assumption of a specific current profile, in order to ensure that the LIB remains in
a safe operation mode. Data of measurable physical features—current, voltage and temperature—are
processed using both over- and undersampling methods, in order to obtain evenly distributed and,
therefore, appropriate data to train the model. The trained recurrent neural network (RNN) consists
of two long s...
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