电网储能系统中的锂离子电池建模:大数据和人工智能方法

Yong Miao, Xinyuan He, C. Gu
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引用次数: 0

摘要

电网储能系统在智能家居和电网中得到了广泛的应用,但其安全问题影响了其应用。电池是影响GESS性能的关键部件之一。它的性能和工作状态直接影响电网的安全可靠性。随着数据分析和机器学习技术的发展,电池状态估计模型的准确性和自适应能力得到了极大的提高。本文提出了一种基于低质量数据的电池建模新方法。首先,设计了GESS电池运行数据的数据清洗方法,包括缺失数据的填充和离群数据的修复。然后,利用修复后的数据对电池进行建模。提出了一种基于深度学习算法的电池数学模型,以实现准确的GESS状态估计。将所开发的深度学习方法与传统BP神经网络和广义回归神经网络的性能进行了比较,以突出其技术优点。本文的研究结果为高效运行和能源管理提供了坚实的基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling lithium-ion Battery in Grid Energy Storage Systems: A Big Data and Artificial Intelligence Approach
Grid energy storage system (GESS) has been widely used in smart homes and grids, but its safety problem has impacted its application. Battery is one of the key components that affect the performance of GESS. Its performance and working conditions directly affect the safety and reliability of the power grid. With the development of data analytics and machine learning, the accuracy and adaptability of the battery state estimation model can be greatly improved. This paper proposes a new method to model battery, with low-quality data. First, it designs a data cleaning method for GESS battery operating data, including missing data filling and outlier data repair. Then, the repaired data is used to model battery. A battery mathematical model is proposed based on a deep learning algorithm to realize accurate GESS state estimation. The performance of the developed deep learning method is compared with conventional BP neural network and generalized regression neural network to highlight the technical merits. Results derived in this paper provide a solid basis for high-efficiency GESS operation and energy management.
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