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Lithium-Ion Battery State of Charge (SoC) Estimation with Non-Electrical parameter using Uniform Fiber Bragg Grating (FBG)

机译:使用均匀光纤布拉格光栅(FBG)的非电参数锂离子电池电量(SOC)估计

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摘要

Conventional SoC estimation methods mainly rely on electrical parameters such as the current and voltage of the battery. However, recent studies have shown that the non-electrical parameters such as strain and temperature that have non-linear relationships with the battery SoC can be adopted for SoC estimation. In this work, the use of non-electrical parameters for SoC estimation using Deep Neural Network (DNN) was proposed. Fiber Bragg Grating (FBG) sensors are employed for the simultaneous measurement of strain and temperature of the battery. Besides, Pseudohigh-Resolution interrogation (PHRI) method is adopted for demodulating the output spectra to improve the detection accuracy of the small wavelength signals from the FBG sensors. Our findings have shown a great improvement in the FBG signal quality based on a high up-sampling rate, k in the spectral processing using PHRI. This has a significant impact on the performance of the SoC estimation using DNN. In the comparison with SoC estimation based on electrical parameters, the proposed model based on non-electrical parameters has a better estimation performance.
机译:传统的SOC估计方法主要依赖于电池的电流和电压等电参数。然而,最近的研究表明,可以采用与电池SOC具有非线性关系的非电气参数,以便SOC估计。在这项工作中,提出了使用深神经网络(DNN)使用对SOC估计的非电气参数。使用光纤布拉格光栅(FBG)传感器用于同时测量电池的应变和温度。此外,采用伪分辨率询问(PHRI)方法来解调输出光谱,以提高来自FBG传感器的小波长信号的检测精度。我们的研究结果显示了基于高上采样率的FBG信号质量的巨大改进,使用PHRI的光谱处理。这对使用DNN进行SOC估计的性能产生了重大影响。在与基于电参数的SOC估计的比较中,基于非电参数的提出模型具有更好的估计性能。

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