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An Accurate and Precise Grey Box Model of a Low-Power Lithium-Ion Battery and Capacitor/Supercapacitor for Accurate Estimation of State-of-Charge

机译:低功率锂离子电池和电容器/超级电容器的精确精确灰盒模型,可准确估算充电状态

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The fluctuating nature of power produced by renewable energy sources results in a substantial supply and demand mismatch. To curb the imbalance, energy storage systems comprising batteries and supercapacitors are widely employed. However, due to the variety of operational conditions, the performance prediction of the energy storage systems entails a substantial complexity that leads to capacity utilization issues. The current article attempts to precisely predict the performance of a lithium-ion battery and capacitor/supercapacitor under dynamic conditions to utilize the storage capacity to a fuller extent. The grey box modeling approach involving the chemical and electrical energy transfers/interactions governed by ordinary differential equations was developed in MATLAB. The model parameters were extracted from experimental data employing regression techniques. The state-of-charge (SoC) of the battery was predicted by employing the extended Kalman (EK) estimator and the unscented Kalman (UK) estimator. The model was eventually validated via loading profile tests. As a performance indicator, the extended Kalman estimator indicated the strong competitiveness of the developed model with regard to tracking of the internal states (e.g., SoC) which have first-order nonlinearities.
机译:由可再生能源产生的电力的波动性导致严重的供需不匹配。为了抑制这种不平衡,广泛使用了包括电池和超级电容器的能量存储系统。然而,由于操作条件的变化,能量存储系统的性能预测带来相当大的复杂性,这导致容量利用问题。当前文章试图精确预测锂离子电池和电容器/超级电容器在动态条件下的性能,以充分利用存储容量。在MATLAB中开发了灰箱建模方法,该方法涉及由常微分方程控制的化学和电能传递/相互作用。使用回归技术从实验数据中提取模型参数。通过使用扩展卡尔曼(EK)估计器和无味卡尔曼(UK)估计器来预测电池的充电状态(SoC)。该模型最终通过加载配置文件测试进行了验证。作为性能指标,扩展的卡尔曼估计量表明开发的模型在跟踪具有一阶非线性的内部状态(例如SoC)方面具有很强的竞争力。

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