State of health estimation of lithium-ion batteries based on modified flower pollination algorithm-temporal convolutional network
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[1] Jiuxu Zhang,et al. Dig information of nanogenerators by machine learning , 2023, Nano Energy.
[2] Youbing Zhang,et al. Distributed Online Voltage Control With Fast PV Power Fluctuations and Imperfect Communication , 2023, IEEE Transactions on Smart Grid.
[3] Licheng Wang,et al. Sensing as the key to the safety and sustainability of new energy storage devices , 2023, Protection and Control of Modern Power Systems.
[4] Licheng Wang,et al. Research on Outdoor Mobile Music Speaker Battery Management Algorithm Based on Dynamic Redundancy , 2023, Technologies.
[5] Wanli Wang,et al. Triboelectric nanogenerators: the beginning of blue dream , 2023, Frontiers of Chemical Science and Engineering.
[6] Huanwei Xu,et al. An improved CNN-LSTM model-based state-of-health estimation approach for lithium-ion batteries , 2023, Energy.
[7] H. Su,et al. State of health estimation for lithium-ion batteries on few-shot learning , 2023, Energy.
[8] W. Wang,et al. A data-driven approach for estimating state-of-health of lithium-ion batteries considering internal resistance , 2023, Energy.
[9] Hanlei Sun,et al. A Review of SOH Prediction of Li-Ion Batteries Based on Data-Driven Algorithms , 2023, Energies.
[10] Licheng Wang,et al. Developments and Applications of Artificial Intelligence in Music Education , 2023, Technologies.
[11] Licheng Wang,et al. Aging Mechanism and Models of Supercapacitors: A Review , 2023, Technologies.
[12] Chao Wang,et al. A novel back propagation neural network-dual extended Kalman filter method for state-of-charge and state-of-health co-estimation of lithium-ion batteries based on limited memory least square algorithm , 2023, Journal of Energy Storage.
[13] Licheng Wang,et al. Electrochemical Impedance Spectroscopy: A New Chapter in the Fast and Accurate Estimation of the State of Health for Lithium-Ion Batteries , 2023, Energies.
[14] Weigen Chen,et al. A deep learning approach to estimate the state of health of lithium-ion batteries under varied and incomplete working conditions , 2023, Journal of Energy Storage.
[15] M. Pruckner,et al. State of health estimation of lithium-ion batteries with a temporal convolutional neural network using partial load profiles , 2023, Applied Energy.
[16] T. Sun,et al. A hybrid machine learning framework for joint SOC and SOH estimation of lithium-ion batteries assisted with fiber sensor measurements , 2022, Applied Energy.
[17] C. K. Sia,et al. A new flower pollination algorithm with improved convergence and its application to engineering optimization , 2022, Decision Analytics Journal.
[18] Licheng Wang,et al. A combined state-of-charge estimation method for lithium-ion battery using an improved BGRU network and UKF , 2022, Energy.
[19] Wanli Wang,et al. Electrodeless nanogenerator for dust recover , 2022, Energy Technology.
[20] Hanlei Sun,et al. A method for estimating the aging state of lithium‐ion batteries based on a multi‐linear integrated model , 2022, International Journal of Energy Research.
[21] YU Peng,et al. A state‐of‐health estimation method considering capacity recovery of lithium batteries , 2022, International Journal of Energy Research.
[22] Liang Zhao,et al. A Novel State-of-Health Estimation for the Lithium-Ion Battery Using a Convolutional Neural Network and Transformer Model , 2022, SSRN Electronic Journal.
[23] Ji Wu,et al. State of health estimation of lithium-ion battery with improved radial basis function neural network , 2022, Energy.
[24] S. A. Khajehoddin,et al. Online Estimations of Li-Ion Battery SOC and SOH Applicable to Partial Charge/Discharge , 2022, IEEE Transactions on Transportation Electrification.
[25] Jianping Wen,et al. SOH prediction of lithium battery based on IC curve feature and BP neural network , 2022, Energy.
[26] Dongliang Gong,et al. State of health estimation for lithium-ion battery based on energy features , 2022, Energy.
[27] Tonni Agustiono Kurniawan,et al. Estimation of the state of health (SOH) of batteries using discrete curvature feature extraction , 2022, Journal of Energy Storage.
[28] Jianrui Sun,et al. Hybrid Methods Using Neural Network and Kalman Filter for the State of Charge Estimation of Lithium-Ion Battery , 2022, Mathematical Problems in Engineering.
[29] Jianrui Sun,et al. Prediction of the Remaining Useful Life of Supercapacitors , 2022, Mathematical Problems in Engineering.
[30] Zemenu Endalamaw Amogne,et al. Online Remaining Useful Life Prediction of Lithium-Ion Batteries Using Bidirectional Long Short-Term Memory with Attention Mechanism , 2022, SSRN Electronic Journal.
[31] Jae-cheon Lee,et al. Performance Comparison of Long Short-Term Memory and a Temporal Convolutional Network for State of Health Estimation of a Lithium-Ion Battery using Its Charging Characteristics , 2022, Energies.
[32] Xiaoyong Liao,et al. An estimation model for state of health of lithium-ion batteries using energy-based features , 2022, Journal of Energy Storage.
[33] Tian Zhou,et al. FEDformer: Frequency Enhanced Decomposed Transformer for Long-term Series Forecasting , 2022, ICML.
[34] Jonghoon Kim,et al. A SOH estimation method based on ICA peaks on temperature-robust and aging mechanism analysis under high temperature , 2021, 2021 IEEE Applied Power Electronics Conference and Exposition (APEC).
[35] Remus Teodorescu,et al. An Automatic Weak Learner Formulation for Lithium-Ion Battery State of Health Estimation , 2021, IEEE Transactions on Industrial Electronics.
[36] Xianzhong Sun,et al. Electrochemical impedance spectroscopy study of lithium-ion capacitors: Modeling and capacity fading mechanism , 2021 .
[37] Yunhong Che,et al. Battery Health Prediction Using Fusion-Based Feature Selection and Machine Learning , 2020, IEEE Transactions on Transportation Electrification.
[38] Soohee Han,et al. Novel Data-Efficient Mechanism-Agnostic Capacity Fade Model for Li-Ion Batteries , 2020, IEEE Transactions on Industrial Electronics.
[39] Minggao Ouyang,et al. A novel capacity estimation method based on charging curve sections for lithium-ion batteries in electric vehicles , 2019, Energy.
[40] Ahmed A. Abusnaina,et al. Modified Global Flower Pollination Algorithm and its Application for Optimization Problems , 2019, Interdisciplinary Sciences: Computational Life Sciences.
[41] Eric W. Gill,et al. A new fully convolutional neural network for semantic segmentation of polarimetric SAR imagery in complex land cover ecosystem , 2019, ISPRS Journal of Photogrammetry and Remote Sensing.
[42] Minggao Ouyang,et al. A comparative study of global optimization methods for parameter identification of different equivalent circuit models for Li-ion batteries , 2019, Electrochimica Acta.
[43] Sungwon Kim,et al. FloWaveNet : A Generative Flow for Raw Audio , 2018, ICML.
[44] Lin Chen,et al. Novel battery state-of-health online estimation method using multiple health indicators and an extreme learning machine , 2018, Energy.
[45] D. Sauer,et al. Comparative study of reduced order equivalent circuit models for on-board state-of-available-power prediction of lithium-ion batteries in electric vehicles , 2018, Applied Energy.
[46] Vijayan K. Asari,et al. Improved inception-residual convolutional neural network for object recognition , 2017, Neural Computing and Applications.
[47] Sheng Shen,et al. Novel method for modelling and adaptive estimation for SOC and SOH of lithium-ion batteries , 2023, Journal of Energy Storage.
[48] X. Liu,et al. The co-estimation of states for lithium-ion batteries based on segment data , 2023, Journal of Energy Storage.
[49] Siheon Jeong,et al. Integrated framework for SOH estimation of lithium-ion batteries using multiphysics features , 2022 .
[50] Hamidreza Zareipour,et al. A New Feature Selection Technique for Load and Price Forecast of Electrical Power Systems , 2017, IEEE Transactions on Power Systems.