Publication | Open Access
Creating a Robust SoC Estimation Algorithm Based on LSTM Units and Trained with Synthetic Data
14
Citations
32
References
2023
Year
Artificial IntelligenceEngineeringMachine LearningNeural NetworkSoc AlgorithmsState EstimationNonlinear System IdentificationChemical EngineeringHyperparameter EstimationStatistical Signal ProcessingLi-ion BatteriesElectrical EngineeringLithium-ion BatteryLithium-ion BatteriesComputer EngineeringEnergy StorageComputer ScienceSystem IdentificationSignal ProcessingElectrochemistryElectric BatterySynthetic DataBattery ConfigurationElectrochemical Energy StorageBatteriesLstm Units
Creating SoC algorithms for Li-ion batteries based on neural networks requires a large amount of training data, since it is necessary to test the batteries under different conditions so that the algorithm learns the relationship between the different inputs and the output. Obtaining such data through laboratory tests is costly and time consuming; therefore, in this article, a neural network has been trained with data generated synthetically using electrochemical models. These models allow us to obtain relevant data related to different conditions at a minimum cost over a short period of time. By means of the different training rounds carried out using these data, it has been studied how the different hyperparameters affect the behaviour of the algorithm, creating a robust and accurate algorithm. To adapt this approach to new battery references or chemistries, transfer learning techniques can be employed.
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