Comparative Analysis of State-of-Health Estimation Techniques DOI
Rakhee Kallimani, Krishna Pai,

Prachi Patil

и другие.

Advances in mechatronics and mechanical engineering (AMME) book series, Год журнала: 2024, Номер unknown, С. 53 - 69

Опубликована: Июнь 21, 2024

The advancement and transformation in batteries have given rise to high-power applications such as electric vehicles. Electric vehicles are widely accepted the automobile industries assessing most feasible alternatives for lowering carbon emissions addressing various global sustainable environmental challenges. Lithium-ion (Li-ion) prominent component energy storage system. Monitoring battery condition is a task of management system (BMS). Many parameters affect battery's health could lead degradation leading underperformance This chapter discusses methods computing state (SOH) presents an analysis SOH errors, estimation model, benefits, drawbacks, challenges provides recommendations development.

Язык: Английский

Joint estimation of State of Charge (SOC) and State of Health (SOH) for lithium ion batteries using Support Vector Machine (SVM), Convolutional Neural Network (CNN) and Long Sort Term Memory Network (LSTM) models DOI Creative Commons

Minggang Zheng,

Xing Luo

International Journal of Electrochemical Science, Год журнала: 2024, Номер 19(9), С. 100747 - 100747

Опубликована: Июль 31, 2024

This paper proposes a data-driven method for jointly estimating the State of Charge (SOC) and Health (SOH) batteries, addressing impact battery aging on SOC estimation. Initially, Support Vector Machine (SVM) is employed to estimate SOH battery, using constant voltage charging time discharging lithium-ion batteries as inputs, output. By training SVM model, accurate estimation achieved. Subsequently, rated capacity adjusted based estimated obtain current maximum available capacity. adjustment allows coupling SOC, resulting in that accounts factors. Leveraging advantages Convolutional Neural Networks (CNN) feature extraction Long Short-Term Memory (LSTM) neural networks handling long-term sequential data, CNN-LSTM model utilized The proposed utilizes Oxford Battery Dataset (Cells 1–8) NASA (B0005–B0007) estimation, (Cell 8) (B0007) results demonstrate Root Mean Square Error (RMSE) less than 0.81 % Absolute (MAE) 0.65 Cells 1–8, while B0005 B0007, RMSE 1.81 MAE 1.29 %. For show average over entire lifecycle Cell 8 0.3923 0.3339 %, whereas 0.6123 0.4976

Язык: Английский

Процитировано

15

Economic implications of enhanced stock market analysis using improved forecasting methods DOI

Jason Peng,

Yuming Yang

Expert Systems with Applications, Год журнала: 2025, Номер unknown, С. 127240 - 127240

Опубликована: Март 1, 2025

Язык: Английский

Процитировано

1

Remaining Useful Life Prediction of Lithium-Ion Batteries Based on Neural Network and Adaptive Unscented Kalman Filter DOI Open Access
Lingtao Wu, Wenhao Guo,

Yuben Tang

и другие.

Electronics, Год журнала: 2024, Номер 13(13), С. 2619 - 2619

Опубликована: Июль 4, 2024

Accurate prediction of remaining useful life (RUL) plays an important role in maintaining the safe and stable operation Lithium-ion battery management systems. Aiming at problem poor stability a single model, this paper combines advantages data-driven model-based methods proposes RUL method combining convolutional neural network (CNN), bi-directional long short-term memory (Bi-LSTM), SE attention mechanism (AM) adaptive unscented Kalman filter (AUKF). First, three types indirect features that are highly correlated with decay selected as inputs to model improve accuracy prediction. Second, CNN-BLSTM-AM is used further extract, select fuse form predictive measurements identified degradation metrics. In addition, we introduce AUKF increase uncertainty representation Finally, validated on NASA dataset CALCE compared other methods. The experimental results show able achieve accurate estimation RUL, minimum RMSE up 0.0030, MAE 0.0024, which has high robustness.

Язык: Английский

Процитировано

5

The Joint Estimation of SOC-SOH for Lithium-Ion Batteries Based on BiLSTM-SA DOI Open Access
Lingling Wu, Chao Chen, Zhenhua Li

и другие.

Electronics, Год журнала: 2024, Номер 14(1), С. 97 - 97

Опубликована: Дек. 29, 2024

Lithium-ion batteries are commonly employed in energy storage because of their extended service life and high density. This trend has coincided with the rapid growth renewable electric automobiles. However, as usage cycles increase, effectiveness diminishes over time, which can undermine both system’s performance security. Therefore, monitoring state charge (SOC) health (SOH) real time is particularly important. Traditional SOC calculation methods typically treat SOH independent variables, overlooking coupling between them. To tackle this issue, paper introduces a joint SOC-SOH estimation approach (BiLSTM-SA) that leverages bidirectional long short-term memory (BiLSTM) network combined self-attention (SA) mechanism. The proposed validated using publicly available dataset. With taken into account, MAE RMSE 0.84% 1.20%, showing notable increases accuracy relative to conventional methods. Additionally, it demonstrates strong robustness generalization across datasets multiple temperatures.

Язык: Английский

Процитировано

3

Prediction of electric vehicle battery state of health estimation using a hybrid deep learning mechanism DOI

Akshat Kant,

Manish Kumar,

Sajjan Sihag

и другие.

International Journal of Green Energy, Год журнала: 2025, Номер unknown, С. 1 - 14

Опубликована: Янв. 2, 2025

Lithium-ion batteries (LIBs) are widely employed, but fluctuations in temperature, overcharging, and overdischarging reduce their service lifetime. Battery health issues such as accelerated deterioration, loss of capacity, thermal runaway can also endanger battery safety functionality. This paper presents the integration a Bidirectional Recurrent Neural Network Long Short-Term Memory (biRNN-LSTM) network improve prediction capability Li-ion State Health (SoH) with complex patterns identification higher accuracy. Compared to traditional feed-forward neural networks, RNNs designed learn temporal dependencies perform sequence recognition on original data. After this, LSTM modules this by being an example long-term time series information, which helps solve problems vanishing gradients. To highlight effectiveness proposed method compare it Deep Convolutional (DCNN-LSTM), Gate Unit (GRU), (LSTM) from literature make accurate reliable predictions, Root Mean Square Error (RMSE), Maximum Accuracy (MAE), (MAX) assessment metrics were used for performance evaluation. GRU needs 8000 iterations identify SoH estimation errors because is less capable learning dependencies. The technique detect after 7000 since performs exceptionally well capturing fine-grained dynamics.

Язык: Английский

Процитировано

0

State of health estimation for lithium-ion batteries based on optimal feature subset algorithm DOI
Jing Sun, Haitao Wang

Energy, Год журнала: 2025, Номер unknown, С. 135685 - 135685

Опубликована: Март 1, 2025

Язык: Английский

Процитировано

0

An improved co-training architecture for Lithium-ion batteries state of health estimation with semi-supervised learning DOI
Jingbo Qu, Tianyu Wang, Yijie Wang

и другие.

Journal of Power Sources, Год журнала: 2025, Номер 643, С. 236928 - 236928

Опубликована: Апрель 17, 2025

Язык: Английский

Процитировано

0

An Analytical Approach for IGBT Life Prediction Using Successive Variational Mode Decomposition and Bidirectional Long Short-Term Memory Networks DOI Open Access

Kaitian Deng,

Xianglian Xu,

Fang Yuan

и другие.

Electronics, Год журнала: 2024, Номер 13(20), С. 4002 - 4002

Опубликована: Окт. 11, 2024

The precise estimation of the operational lifespan insulated gate bipolar transistors (IGBT) holds paramount significance for ensuring efficient and uncompromised safety industrial equipment. However, numerous methodologies models currently employed this purpose often fall short delivering highly accurate predictions. analytical approach that combines Pattern Optimization Algorithm (POA) with Successive Variational Mode Decomposition (SVMD) Bidirectional Long Short-term Memory (BiLSTM) network is introduced. Firstly, SVMD as an unsupervised feature learning method to partition data into intrinsic modal functions (IMFs), which are used eliminate noise preserve essential signal. Secondly, BiLSTM integrated supervised purposes, enabling prediction decomposed sequence. Additionally, hyperparameters penalty coefficients optimized utilizing POA technique. Subsequently, various predicted trained model, individual mode predictions subsequently aggregated yield model’s definitive final life prediction. Through case studies involving IGBT aging datasets, optimal model was formulated its capability validated. superiority proposed demonstrated by comparing it benchmark other state-of-the-art methods.

Язык: Английский

Процитировано

1

Application of state of health estimation and remaining useful life prediction for lithium-ion batteries based on AT-CNN-BiLSTM DOI Creative Commons

Fengming Zhao,

D. Gao,

Yuan-Ming Cheng

и другие.

Scientific Reports, Год журнала: 2024, Номер 14(1)

Опубликована: Ноя. 23, 2024

Ensuring the long-term safe usage of lithium-ion batteries hinges on accurately estimating State Health $$(\textrm{SOH})$$ and predicting Remaining Useful Life (RUL). This study proposes a novel prediction method based AT-CNN-BiLSTM architecture. Initially, key parameters such as voltage, current, temperature, SOH are extracted averaged for each cycle to ensure uniformity reliability input data. The CNN is utilized extract deep features from data, followed by BiLSTM analyze temporal dependencies in data sequences. Since multidimensional parameter used predict trend batteries, an attention mechanism employed enhance weight highly relevant vectors, improving model's analytical capabilities. Experimental results demonstrate that CNN-BiLSTM-Attention model achieves absolute error 0 RUL prediction, $$R^{2}$$ value greater than 0.9910 , MAPE less 0.9003 . Comparative analysis with hybrid neural network algorithms LSTM, BiLSTM, CNN-LSTM confirms proposed high accuracy stability estimation prediction.

Язык: Английский

Процитировано

1

EnerNet: Attention-based dilated CNN-BILSTM for state of health prediction of CS2 prismatic cells in energy systems DOI
Umar Saleem, Wenjie Liu, Saleem Riaz

и другие.

Electrochimica Acta, Год журнала: 2024, Номер 512, С. 145454 - 145454

Опубликована: Дек. 7, 2024

Язык: Английский

Процитировано

1