Data-Driven Nonparametric Li-Ion Battery Ageing Model Aiming At Learning From Real Operation Data: Holistic Validation With Ev Driving Profiles

M. Lucu, Markel Azkue, H. Camblong, E. Martinez-Laserna
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引用次数: 4

Abstract

Conventional Li-ion battery ageing models require a significant amount of time and experimental resources to provide accurate predictions under realistic operating conditions. Furthermore, there is still an uncertainty on the validity of purely laboratory data-based ageing models for the accurate ageing prediction of battery systems deployed in field.At the same time, there is significant interest from industry in the introduction of new data collection telemetry technology. This implies the forthcoming availability of a significant amount of in-field battery operation data. In this context, the development of ageing models able to learn from in-field battery operation data is an interesting solution to mitigate the need for exhaustive laboratory testing, reduce the development cost of ageing models and at the same time ensure the validity of the model for prediction under real operating conditions.In this paper, a holistic data-driven ageing model developed under the Gaussian Process framework is validated with experimental battery ageing data. Both calendar and cycle ageing are considered, to predict the capacity loss within real EV driving scenarios. The model can learn from the driving data progressively observed, improving continuously its performances and providing more accurate and confident predictions.
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基于实际运行数据学习的数据驱动非参数锂离子电池老化模型:基于电动汽车驾驶剖面的整体验证
传统的锂离子电池老化模型需要大量的时间和实验资源,才能在实际操作条件下提供准确的预测。此外,纯基于实验室数据的老化模型对于现场部署的电池系统的准确老化预测的有效性仍然存在不确定性。与此同时,工业界对引入新的数据收集遥测技术非常感兴趣。这意味着即将获得大量现场电池运行数据。在这种情况下,开发能够从现场电池运行数据中学习的老化模型是一个有趣的解决方案,可以减轻对详尽的实验室测试的需求,降低老化模型的开发成本,同时确保模型在实际运行条件下预测的有效性。本文在高斯过程框架下建立了一个数据驱动的整体老化模型,并用实验电池老化数据进行了验证。同时考虑了日历和周期老化,以预测真实电动汽车驾驶场景下的容量损失。该模型可以从逐步观察到的驾驶数据中学习,不断提高其性能,并提供更准确和自信的预测。
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