Battery Test Cycle
Application ID: 130291
This app demonstrates the usage of a surrogate model function for predicting the cell voltage, cell open circuit voltage and internal resistance of an NMC111/graphite battery cell undergoing a battery test cycle.
The surrogate function, a Deep Neural Network, has been fitted to a subset of the possible input data values. Five input data values can be set: the current in four segments of the cycle and the initial state of charge of the battery cell. The low computational cost of evaluating the surrogate function allows knobs to be used to interactively combine the input values and predict the cell voltage and internal resistance.
Once a combination of values has been selected, the prediction of the surrogate model can be verified by computing the actual physical Li-ion battery model.
This application example illustrates applications of this type that would nominally be built using the following products:
however, additional products may be required to completely define and model it. Furthermore, this example may also be defined and modeled using components from the following product combinations:
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