自编码
电池(电)
特征选择
特征(语言学)
计算机科学
阶段(地层学)
荷电状态
非线性自回归外生模型
试验数据
人工智能
可靠性工程
机器学习
工程类
深度学习
功率(物理)
人工神经网络
古生物学
语言学
物理
哲学
量子力学
生物
程序设计语言
作者
Jiwei Yao,Kody M. Powell,Tao Gao
标识
DOI:10.3389/fenrg.2022.1059126
摘要
Lithium-ion batteries are a crucial element in the electrification and adoption of renewable energy. Accurately predicting the lifetime of batteries with early-stage data is critical to facilitating battery research, production, and deployment. But this problem remains challenging because batteries are complex, nonlinear systems, and data acquired at the early-stage exhibit a weak correlation with battery lifetime. In this paper, instead of building features from specific cycles, we extract features from multiple cycles to form a time series dataset. Then the time series data is compressed with a GRU-based autoencoder to reduce feature dimensionality and eliminate the time domain. Further, different regression models are trained and tested with a feature selection method. The elastic model provides a test RMSE of 187.99 cycles and a test MAPE of 10.14%. Compared with the state-of-art early-stage lifetime prediction model, the proposed framework can lower the test RMSE by 10.22% and reduce the test MAPE by 28.44%.
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