Hamza Mustafa , Carmine Bourelly , Michele Vitelli , Filippo Milano , Mario Molinara , Luigi Ferrigno
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The dataset includes repeated EIS measurements using different battery discharging cycles, allowing researchers to examine the frequency domain properties and develop data-driven algorithms for assessing battery SoC and predicting performance. The data acquisition system employs a battery specific impedance meter and an electronic load, ensuring accurate and controlled measurements. The dataset, comprising EIS measurements from multiple LFP batteries, serves as a valuable resource for researchers in the fields of battery technology, electrochemistry, power sources, and energy storage. Moreover, industries such as consumer electronics, power systems, and electric transportation can benefit from the dataset's insights for effectively managing rechargeable battery devices. 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引用次数: 0
摘要
锂离子(Li-ion)电池在便携式电子产品、电动汽车和储能系统等众多应用中至关重要。电化学阻抗能谱(EIS)是表征电池特性的一项强大技术,可为离子扩散和界面反应等电荷转移动力学提供有价值的见解。然而,由于电池操作的复杂性和测试过程的时间密集性,为电池充电状态(SoC)研究获取全面、多样的数据集仍然具有挑战性。本文介绍了一个新颖的原始 EIS 数据集,该数据集专门针对不同 SoC 水平的 600 mAh 容量磷酸铁锂电池而设计。该数据集包括使用不同电池放电周期进行的重复 EIS 测量,使研究人员能够检查频域特性并开发数据驱动算法,以评估电池 SoC 和预测性能。数据采集系统采用了电池特定阻抗计和电子负载,确保了测量的准确性和可控性。该数据集包括多个 LFP 电池的 EIS 测量值,是电池技术、电化学、电源和储能领域研究人员的宝贵资源。此外,消费电子、电力系统和电动交通等行业也可以从数据集的见解中获益,从而有效地管理充电电池设备。所展示的数据集扩大了阻抗光谱测量的范围,为锂离子电池技术的未来应用和进步带来了巨大潜力。
SoC estimation on Li-ion batteries: A new EIS-based dataset for data-driven applications
Lithium-ion (Li-ion) batteries are crucial in numerous applications, including portable electronics, electric vehicles, and energy storage systems. Electrochemical Impedance Spectroscopy (EIS) is a powerful technique for characterizing batteries, providing valuable insights into charge transfer kinetics like ion diffusion and interfacial reactions. However, obtaining comprehensive and diverse datasets for battery State of Charge (SoC) studies remains challenging due to the complex nature of battery operations and the time-intensive testing process. This paper presents a novel and original EIS dataset specifically designed for 600 mAh capacity Lithium Iron Phosphate (LFP) batteries at various SoC levels. The dataset includes repeated EIS measurements using different battery discharging cycles, allowing researchers to examine the frequency domain properties and develop data-driven algorithms for assessing battery SoC and predicting performance. The data acquisition system employs a battery specific impedance meter and an electronic load, ensuring accurate and controlled measurements. The dataset, comprising EIS measurements from multiple LFP batteries, serves as a valuable resource for researchers in the fields of battery technology, electrochemistry, power sources, and energy storage. Moreover, industries such as consumer electronics, power systems, and electric transportation can benefit from the dataset's insights for effectively managing rechargeable battery devices. The presented dataset expands the scope of impedance spectroscopy measurements and holds significant potential for future applications and advancements in Li-ion battery technologies.
期刊介绍:
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