利用前馈神经网络模型估计磷酸铁锂电池的充电状态

E. Dyartanti, Anif Jamaluddin, Muhammad Farrel Akshya, Dimas Zuda Fathul Akhir, H. S. E. A. Gustiana, Agus Purwanto, Aficena Himdani Ilmam Abharan, Muhammad Nizam
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摘要

磷酸铁锂电池(LiFePO4)等锂离子电池已成为世界电力能源的新选择,并可用于电动汽车。电动汽车电池管理系统对电池组的监控需要精确的监测。对这种特性的监测不准确会导致低安全性、低效率和电池寿命缩短。估算充电状态(SoC)可防止电池因过度充电和过度放电而损坏。用于估算 SoC 的一些方法(如库仑计数法)在充放电过程中会出现误差。本研究提出了一种利用人工神经网络(ANN)测量 SoC 的计数法,以提供更精确的估算。前馈神经网络(FFNN)是一种人工神经网络模型,可通过学习样本电池充放电过程的数据来准确估算 SoC。使用电池分析仪对样本电池进行测试,以获得由电压、电流、容量和时间等变量组成的充放电数据,其中包括 C 率变化。建模的 FFNN 通过学习这些变量数据来预测 SoC 值。FFNN 模型的第一层有 16 个神经元,第二层有 8 个神经元,第三层有 4 个神经元。FFNN 预测的 SoC 值与实际 SoC 值相似。SoC 与电池电压之间的关系绘制成一条曲线,并显示出与电池 SoC-Voltage 曲线相同的特征,且具有较低的 mae 值。该 FFNN 模型可进一步应用于电动汽车等领域,以确保其安全性和更长时间的使用。
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The State of Charge Estimation of LiFePO4 Batteries Performance Using Feed Forward Neural Network Model
Lithium-ion batteries like LiFePO4 become a new choice for electrical energy sources in the world and can be used on electric vehicles. Battery packs monitoring by Battery Management System in electric vehicles require accurate monitoring. The inaccuracy of monitoring such property can lead to low safety, low efficiency and battery’s life reduction. Estimating state of charge (SoC) to prevent battery damage from overcharging and over discharging. Some of the methods used to estimate SoC such as Coulomb Counting have errors during the charge and discharge process. This research proposes a counting method for measuring SoC with the artificial neural networks (ANN) to provide more precise estimation. Feed Forward Neural Network (FFNN) is an ANN model that can give an accurate estimation of SoC by learning data of the charge-discharge process performed on sample batteries. The sample batteries are tested with a battery analyzer to get its charging-discharging data consisting of variables such as voltage, current, capacity, and time with C-Rate variations. These variables data are then learned by the modeled FFNN to predict SoC value. The FFNN model consisted of 16 neurons in the first layer, 8 neurons in the second layer, and 4 neurons in the third layer. The predicted SoC value from FFNN has a similar value with its real SoC value. The relationship between SoC and battery voltage is plotted in a curve and shows an identical characteristic with how the SoC-Voltage curve of a battery should be and have a low mae value. This FFNN model can be applied further such as in electric vehicles to maintain its safety and for longer use.
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