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Online estimation of SOH for lithium-ion battery based on SSA-Elman neural network 被引量:8
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作者 Yu Guo Dongfang Yang +2 位作者 Yang Zhang Licheng Wang Kai Wang 《Protection and Control of Modern Power Systems》 2022年第1期602-618,共17页
The estimation of state of health(SOH)of a lithium-ion battery(LIB)is of great significance to system safety and economic development.This paper proposes a SOH estimation method based on the SSA-Elman model for the fi... The estimation of state of health(SOH)of a lithium-ion battery(LIB)is of great significance to system safety and economic development.This paper proposes a SOH estimation method based on the SSA-Elman model for the first time.To improve the correlation rates between features and battery capacity,a method combining median absolute deviation filtering and Savitzky-Golay filtering is proposed to process the data.Based on the aging characteristics of the LIB,five features with correlation rates above 0.99 after data processing are then proposed.Addressing the defects of the Elman model,the sparrow search algorithm(SSA)is used to optimize the network parameters.In addition,a data incremental update mechanism is added to improve the generalization of the SSA-Elman model.Finally,the performance of the proposed model is verified based on NASA dataset,and the outputs of the Elman,LSTM and SSA-Elman models are compared.The results show that the proposed method can accurately estimate the SOH,with the root mean square error(RMSE)being as low as 0.0024 and the mean absolute percentage error(MAPE)being as low as 0.25%.In addition,RMSE does not exceed 0.0224 and MAPE does not exceed 2.21%in high temperature and low temperature verifications. 展开更多
关键词 Lithium-ion battery State of health DATA-DRIVEN ssa-elman
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基于麻雀搜索算法优化Elman残差自校正地面沉降预测模型 被引量:2
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作者 侯明华 袁颖 +2 位作者 杨丛铭 李云鹏 黄虎城 《科学技术与工程》 北大核心 2023年第13期5470-5480,共11页
地面沉降是一种常见的地质灾害,严重阻碍当地居民的生产生活,如何对地面沉降进行准确预测已经成为相关专家学者讨论的热点话题,但常规数学模型难以对地面沉降量做出准确预测。提出了麻雀搜索算法(sparrow search algorithm,SSA)优化Elma... 地面沉降是一种常见的地质灾害,严重阻碍当地居民的生产生活,如何对地面沉降进行准确预测已经成为相关专家学者讨论的热点话题,但常规数学模型难以对地面沉降量做出准确预测。提出了麻雀搜索算法(sparrow search algorithm,SSA)优化Elman的地面沉降量预测方法,同时根据组合模型原理提出了SSA-Elman残差自校正(SSA-Elman residual self-correction,SSA-Elman-RSC)模型的策略,通过残差校正的方式降低神经网络预测误差,成功地将地面沉降量预测模型应用于山西省大同市潇河产业园,将预测结果与未进行残差修正的模型预测结果进行比较分析。结果表明,对于均方根误差(root mean squared error,RMSE)、平均绝对误差(mean absolute error,MAE)、均方误差(mean square error,MSE)3个指标,SSA-Elman-RSC拥有更高的精度。该模型的提出为山西地区地面沉降量预测提供了一种新方法,并且组合模型的建立提供了一种新思路。 展开更多
关键词 Elman神经网络 麻雀搜索算法(SSA) 残差自校正(RSC) 地面沉降预测
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