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Study of SOC Estimation by the Ampere-Hour Integral Method with Capacity Correction Based on LSTM

Xin Zhang, Jiawei Hou, Zekun Wang, Yueqiu Jiang

2022Batteries95 citationsDOIOpen Access PDF

Abstract

The estimation of the state of charge (SOC) of a battery’s power is one of the key technologies in a battery management system (BMS). As a common SOC estimation method, the traditional ampere-hour integral method regards the actual capacity of the battery, which is constantly changed by the usage conditions and environment, as a constant for calculation, which may cause errors in the results of SOC estimation. Considering the above problems, this paper proposes an improved ampere-hour integral method based on the Long Short-Term Memory (LSTM) network model. The LSTM network model is used to obtain the actual battery capacity variation, replacing the fixed value of battery capacity in the traditional ampere-hour integral method and optimizing the traditional ampere-hour integral method to improve the accuracy of the SOC estimation method. The experimental results show that the errors of the results obtained by the improved ampere-hour integral method for the SOC estimation are all less than 10%, which proves that the proposed design method is feasible and effective.

Topics & Concepts

AmpereBattery (electricity)Computer scienceKey (lock)State of chargeEstimationMathematical optimizationPower (physics)MathematicsElectrical engineeringVoltageEngineeringPhysicsComputer securityQuantum mechanicsSystems engineeringAdvanced Battery Technologies ResearchIoT-based Smart Home SystemsElectric Vehicles and Infrastructure
Study of SOC Estimation by the Ampere-Hour Integral Method with Capacity Correction Based on LSTM | Litcius