Feedforward and NARX Neural Network Battery State of Charge Estimation with Robustness to Current Sensor Error

2023 IEEE TRANSPORTATION ELECTRIFICATION CONFERENCE & EXPO, ITEC(2023)

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摘要
State of charge (SOC), the remaining usable charge of the battery divided by its nominal capacity, is one of the most important parameters for managing Li-ion battery packs. This work investigates two types of artificial neural network-based SOC estimators: a feedforward neural network (FNN) and a nonlinear autoregressive exogenous model (NARX) network. These networks are trained and tested with battery drive cycle and charging data for a Tesla Model 3 electric vehicle. Measured temperature, along with different combinations of filtered and unfiltered voltage and current, are used as model inputs. The NARX, which benefits from having SOC from the prior time step as an input, is shown to have substantially less error than the FNN, even when there is a significant current sensor offset error which prevents the NARX from simply functioning as a coulomb counter. Overall, the NARX is shown to be accurate for the most difficult highway drive cycles with steep grades and to be robust against large current sensor errors.
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关键词
Battery Modelling, Electric Vehicles, Filtered Data, FNN, Lithium Batteries, NARX, SOC Estimation
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