锂离子电池寿命预测的机器学习框架

Afroditi Fouka, Katerina Lepenioti, Alexandros Bousdekis, G. Mentzas
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引用次数: 0

摘要

锂离子电池已广泛应用于电动汽车等储能系统。数据驱动的电池健康估计和预测方法正引起学术界和工业界越来越多的兴趣。这些方法是由机器学习的最新进展推动的,机器学习利用大量可用数据来提高BMS的性能。这个方向决定了需要有效地将各种算法嵌入到统一的软件框架中,以支持各种目标和数据需求。在本文中,我们提出了一个架构框架,能够支持多个动态预测分析过程,使用来自异构数据源的数据。我们还在三种场景中展示了该框架的功能,以演示其适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Machine Learning Framework for Li-Ion Battery Lifetime Prognostics
Li-Ion batteries have been widely applied as energy storage systems, such as EVs. Data-driven methods for battery health estimation and prediction are gaining increasing interest in both academia and industry. These methods have been driven by recent advances in ML that exploit the large amounts of available data to improve BMS performance. This direction dictates the need for efficiently embedding various algorithms into a unified software framework in order to support various objectives and data requirements. In this paper, we propose an architectural framework capable of supporting several and dynamic predictive analytics processes, employing data from the heterogeneous data sources. We also present the functionalities of the framework in three scenarios in order to demonstrate its applicability.
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