Accurate and reliable state of charge (SoC) estimation becomes increasingly important to provide a stable and efficient environment for Lithium-ion batteries (LiBs) powered devices. Most data-driven SoC models are built for a fixed ambient temperature, which neglect the high sensitivity of LiBs to temperature and may cause severe prediction errors. Nevertheless, a systematic evaluation of the impact of temperature on SoC estimation and ways for a prompt adjustment of the estimation model to new temperatures using limited data have been hardly discussed. To solve these challenges, a novel SoC estimation method is proposed by exploiting temporal dynamics of measurements and transferring consistent estimation ability among different temperatures. First, temporal dynamics, which is presented by correlations between the past fluctuation and the future motion, is extracted using canonical variate analysis. Next, two models, including a reference SoC estimation model and an estimation ability monitoring model, are developed with temporal dynamics. The monitoring model provides a path to quantitatively evaluate the influences of temperature on SoC estimation ability. After that, once the inability of the reference SoC estimation model is detected, consistent temporal dynamics between temperatures are selected for transfer learning. Finally, the efficacy of the proposed method is verified through a benchmark. Our proposed method not only reduces prediction errors at fixed temperatures (e.g., reduced by 24.35% at -20{\deg}C, 49.82% at 25{\deg}C) but also improves prediction accuracies at new temperatures.
翻译:准确可靠的电量估计( SoC)越来越重要。 准确可靠的电量估计( SoC)对于为液离电池(LiBs)动力设备提供一个稳定有效的环境来说,越来越重要。 大多数数据驱动的 SoC模型是为固定环境温度而建造的,该模型忽视了利Bs对温度的高度敏感性,并可能造成严重的预测错误。然而,对温度对苏C估计的影响的系统评估以及利用有限数据迅速调整估计模型以适应新温度的方法几乎没有讨论。为了应对这些挑战,提出了一个新的 SoC估计方法。为了解决这些挑战,通过利用测量时间动态的时间动态和在不同温度之间转移一致的估计能力,提出了一个新的 SoC估计方法。首先,根据过去波动与未来运动之间的相互关系所显示的时间动态,是使用罐体变分析来提取的。接下来,两个模型,包括参考苏C估计模型和估计能力监测模型,都以时间动态为对温度对新温度对苏C估计能力的影响进行定量评估的路径。 之后,一旦检测到参考模型的不便选择在不同的温度之间进行一致的温度测量,然后在25个预测时, 也通过固定的测测算方法来降低我们24个预测的效能。最后, 方法将降低方法的效能。