The widespread adoption of Electric Vehicles (EVs) is limited by their reliance on batteries with presently low energy and power densities compared to liquid fuels and are subject to aging and performance deterioration over time. For this reason, monitoring the battery State Of Charge (SOC) and State Of Health (SOH) during the EV lifetime is a very relevant problem. This work proposes a battery digital twin structure designed to accurately reflect battery dynamics at the run time. To ensure a high degree of correctness concerning non-linear phenomena, the digital twin relies on data-driven models trained on traces of battery evolution over time: a SOH model, repeatedly executed to estimate the degradation of maximum battery capacity, and a SOC model, retrained periodically to reflect the impact of aging. The proposed digital twin structure will be exemplified on a public dataset to motivate its adoption and prove its effectiveness, with high accuracy and inference and retraining times compatible with onboard execution.
翻译:广泛采用电动车辆(EVs)受到限制,因为其依赖的电池目前与液体燃料相比能量和电力密度较低,而且随着时间的推移会老化和性能下降,因此,在EV寿命期内监测电池充电状态(SOC)和健康状况(SOH)是一个非常相关的问题。这项工作提出了一个电池数字双结构,旨在准确反映运行时的电池动态。为确保非线性现象的高度正确性,数字双胞胎依靠数据驱动模型,该模型经过长期的电池演变轨迹培训:SOH模型,反复执行以估计最大电池容量的退化,SOH模型定期接受再培训以反映老化的影响。提议的数字双胞胎结构将在公共数据集上展示,以激励其采用并证明其有效性,并具有高度准确性,且与机载执行时相容和再培训时间相容。