A critical review of improved deep learning methods for the remaining useful life prediction of lithium-ion batteries
暂无分享,去创建一个
Shunli Wang | Carlos Fernandez | Dekui Bai | Yongcun Fan | Siyu Jin | Haotian Shi | Shunli Wang | C. Fernandez | Yongcun Fan | Siyu Jin | Dekui Bai | H. Shi
[1] Zhenpo Wang,et al. Fault prognosis of battery system based on accurate voltage abnormity prognosis using long short-term memory neural networks , 2019, Applied Energy.
[2] Thomas M. Jahns,et al. A Compact Methodology Via a Recurrent Neural Network for Accurate Equivalent Circuit Type Modeling of Lithium-Ion Batteries , 2019, IEEE Transactions on Industry Applications.
[3] Xuning Feng,et al. Experimental study on thermal runaway propagation of lithium-ion battery modules with different parallel-series hybrid connections , 2020 .
[4] Zifan Liu,et al. Synthesis and Experimental Validation of Battery Aging Test Profiles Based on Real-World Duty Cycles for 48-V Mild Hybrid Vehicles , 2017, IEEE Transactions on Vehicular Technology.
[5] Xuan Liu,et al. Lithium-ion battery capacity estimation — A pruned convolutional neural network approach assisted with transfer learning , 2021 .
[6] W. Dhammika Widanage,et al. An evaluation study of different modelling techniques for calendar ageing prediction of lithium-ion batteries , 2020 .
[7] Yongliang Zhang,et al. Energy storage and syngas production by switching cathode gas in nickel-yttria stabilized zirconia supported solid oxide cell , 2019, Applied Energy.
[8] Kun Li,et al. A review of the state of health for lithium-ion batteries: Research status and suggestions , 2020 .
[9] Kristen A. Severson,et al. Data-driven prediction of battery cycle life before capacity degradation , 2019, Nature Energy.
[10] Beitong Zhou,et al. Remaining useful life prediction of lithium-ion batteries based on false nearest neighbors and a hybrid neural network , 2019, Applied Energy.
[11] Jiankun Peng,et al. Energy management of hybrid electric bus based on deep reinforcement learning in continuous state and action space , 2019, Energy Conversion and Management.
[12] Bai-Xiang Xu,et al. A review on modeling of electro-chemo-mechanics in lithium-ion batteries , 2019, Journal of Power Sources.
[13] Shaojiang Dong,et al. Deep Residual Networks With Adaptively Parametric Rectifier Linear Units for Fault Diagnosis , 2021, IEEE Transactions on Industrial Electronics.
[14] Joongheon Kim,et al. Auction-Based Charging Scheduling With Deep Learning Framework for Multi-Drone Networks , 2019, IEEE Transactions on Vehicular Technology.
[15] Faeza Hafiz,et al. Real-Time Stochastic Optimization of Energy Storage Management Using Deep Learning-Based Forecasts for Residential PV Applications , 2020, IEEE Transactions on Industry Applications.
[16] Lucia Gauchia,et al. Electric Vehicle Battery Cycle Aging Evaluation in Real-World Daily Driving and Vehicle-to-Grid Services , 2018, IEEE Transactions on Transportation Electrification.
[17] Ala A. Hussein,et al. A Collaborative Gaussian Process Regression Model for Transfer Learning of Capacity Trends Between Li-Ion Battery Cells , 2020, IEEE Transactions on Vehicular Technology.
[18] Guangzhong Dong,et al. Data-Driven Battery Health Prognosis Using Adaptive Brownian Motion Model , 2020, IEEE Transactions on Industrial Informatics.
[19] K. Lozano,et al. Piezoelectric Properties of PVDF-Zn2GeO4 Fine Fiber Mats , 2021, Energies.
[20] Jianqiu Li,et al. Impact of high-power charging on the durability and safety of lithium batteries used in long-range battery electric vehicles , 2019 .
[21] Sangdo Park,et al. Diagnosis of Electric Vehicle Batteries Using Recurrent Neural Networks , 2017, IEEE Transactions on Industrial Electronics.
[22] Joeri Van Mierlo,et al. Data-driven health estimation and lifetime prediction of lithium-ion batteries: A review , 2019, Renewable and Sustainable Energy Reviews.
[23] Yunlong Shang,et al. A Data-Driven Approach With Uncertainty Quantification for Predicting Future Capacities and Remaining Useful Life of Lithium-ion Battery , 2021, IEEE Transactions on Industrial Electronics.
[24] Zuomin Dong,et al. Optimal energy management with balanced fuel economy and battery life for large hybrid electric mining truck , 2020, Journal of Power Sources.
[25] Michael Pecht,et al. Capacity-Fading Behavior Analysis for Early Detection of Unhealthy Li-Ion Batteries , 2021, IEEE Transactions on Industrial Electronics.
[26] Zonghai Chen,et al. An improved single particle model for lithium-ion batteries based on main stress factor compensation , 2021 .
[27] Pan Yue,et al. Internal short circuit detection for lithium-ion battery pack with parallel-series hybrid connections , 2020 .
[28] S. Han,et al. A generalized physics-based calendar life model for Li-ion cells , 2020 .
[29] Bo Wang,et al. An intelligent hybrid wavelet-adversarial deep model for accurate prediction of solar power generation , 2021 .
[30] 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.
[31] Zonghai Chen,et al. A comprehensive review of battery modeling and state estimation approaches for advanced battery management systems , 2020 .
[32] Daniel-Ioan Stroe,et al. A novel charged state prediction method of the lithium ion battery packs based on the composite equivalent modeling and improved splice Kalman filtering algorithm , 2020, Journal of Power Sources.
[33] Xiaosong Hu,et al. Battery Lifetime Prognostics , 2020 .
[34] M. A. Hannan,et al. A review of state of health and remaining useful life estimation methods for lithium-ion battery in electric vehicles: Challenges and recommendations , 2018, Journal of Cleaner Production.
[35] Lin Chen,et al. Battery state-of-health estimation based on a metabolic extreme learning machine combining degradation state model and error compensation , 2021 .
[36] Yong Guan,et al. The capacity estimation and cycle life prediction of lithium-ion batteries using a new broad extreme learning machine approach , 2020 .
[37] Zheng Chen,et al. Remaining Useful Life Prediction for Lithium-Ion Batteries Based on Capacity Estimation and Box-Cox Transformation , 2020, IEEE Transactions on Vehicular Technology.
[38] Hicham Chaoui,et al. Lithium-Ion Batteries Health Prognosis Considering Aging Conditions , 2019, IEEE Transactions on Power Electronics.
[39] Yunwei Li,et al. Signal-Disturbance Interfacing Elimination for Unbiased Model Parameter Identification of Lithium-Ion Battery , 2020, IEEE Transactions on Industrial Informatics.
[40] Amit Patra,et al. Online Estimation of the Electrochemical Impedance Spectrum and Remaining Useful Life of Lithium-Ion Batteries , 2018, IEEE Transactions on Instrumentation and Measurement.
[41] Weige Zhang,et al. Study of Parameters Identification Method of Li-Ion Battery Model for EV Power Profile Based on Transient Characteristics Data , 2021, IEEE Transactions on Intelligent Transportation Systems.
[42] Michael Pecht,et al. Remaining useful life estimation of lithium-ion cells based on k-nearest neighbor regression with differential evolution optimization , 2020 .
[43] Amit Patra,et al. State of Health Estimation of Lithium-Ion Batteries Using Capacity Fade and Internal Resistance Growth Models , 2018, IEEE Transactions on Transportation Electrification.
[44] Rui Xiong,et al. Fractional-Order Model-Based Incremental Capacity Analysis for Degradation State Recognition of Lithium-Ion Batteries , 2019, IEEE Transactions on Industrial Electronics.
[45] Hongwen He,et al. An improved vehicle to the grid method with battery longevity management in a microgrid application , 2020 .
[46] Rui Xiong,et al. Research progress, challenges and prospects of fault diagnosis on battery system of electric vehicles , 2020, Applied Energy.
[47] Donghua Zhou,et al. Remaining Useful Life Prediction for Degradation Processes With Long-Range Dependence , 2017, IEEE Transactions on Reliability.
[48] Ning Ma,et al. A hybrid transfer learning scheme for remaining useful life prediction and cycle life test optimization of different formulation Li-ion power batteries , 2021 .
[49] Jingda Wu,et al. Energy management based on reinforcement learning with double deep Q-learning for a hybrid electric tracked vehicle , 2019, Applied Energy.
[50] Devendra Patil,et al. Online Estimation of Capacity Fade and Power Fade of Lithium-Ion Batteries Based on Input–Output Response Technique , 2018, IEEE Transactions on Transportation Electrification.
[51] Datong Liu,et al. A hybrid statistical data-driven method for on-line joint state estimation of lithium-ion batteries , 2020 .
[52] K. Jermsittiparsert,et al. An Advanced Machine Learning Based Energy Management of Renewable Microgrids Considering Hybrid Electric Vehicles’ Charging Demand , 2021, Energies.
[53] Yazan M. Alsmadi,et al. Lifetime Test Design for Second-Use Electric Vehicle Batteries in Residential Applications , 2017, IEEE Transactions on Sustainable Energy.
[54] Tarek Medalel Masaud,et al. Correlating Optimal Size, Cycle Life Estimation, and Technology Selection of Batteries: A Two-Stage Approach for Microgrid Applications , 2020, IEEE Transactions on Sustainable Energy.
[55] Wenzhong Gao,et al. A low-temperature internal heating strategy without lifetime reduction for large-size automotive lithium-ion battery pack , 2018, Applied Energy.
[56] Chao Hu,et al. Physics-based prognostics of implantable-grade lithium-ion battery for remaining useful life prediction , 2021, Journal of Power Sources.
[57] Matteo Corno,et al. Active Adaptive Battery Aging Management for Electric Vehicles , 2020, IEEE Transactions on Vehicular Technology.
[58] Furong Gao,et al. Model Migration Neural Network for Predicting Battery Aging Trajectories , 2020, IEEE Transactions on Transportation Electrification.
[59] G. Rizzoni,et al. Prediction of remaining useful life for a composite electrode lithium ion battery cell using an electrochemical model to estimate the state of health , 2021 .
[60] Zhenpo Wang,et al. Multi-time-scale framework for prognostic health condition of lithium battery using modified Gaussian process regression and nonlinear regression , 2020 .
[61] Chao Wu,et al. Enabling Flexible Resource Allocation in Mobile Deep Learning Systems , 2019, IEEE Transactions on Parallel and Distributed Systems.
[62] Yujie Wang,et al. Experimental study of fractional-order models for lithium-ion battery and ultra-capacitor: Modeling, system identification, and validation , 2020 .
[63] Weige Zhang,et al. A Hybrid Method for the Prediction of the Remaining Useful Life of Lithium-Ion Batteries With Accelerated Capacity Degradation , 2020, IEEE Transactions on Vehicular Technology.
[64] Zhenpo Wang,et al. Synchronous multi-parameter prediction of battery systems on electric vehicles using long short-term memory networks , 2019, Applied Energy.
[65] Yung Yi,et al. Towards the swift prediction of the remaining useful life of lithium-ion batteries with end-to-end deep learning , 2020 .
[66] Fu-Kwun Wang,et al. A hybrid model based on support vector regression and differential evolution for remaining useful lifetime prediction of lithium-ion batteries , 2018, Journal of Power Sources.
[67] Changfu Zou,et al. Aging trajectory prediction for lithium-ion batteries via model migration and Bayesian Monte Carlo method , 2019, Applied Energy.
[68] Devendra Patil,et al. Electrothermal Modeling of Lithium-Ion Batteries for Electric Vehicles , 2019, IEEE Transactions on Vehicular Technology.
[69] Cheng Cheng,et al. Remaining useful life prediction of lithium-ion batteries with adaptive unscented kalman filter and optimized support vector regression , 2020, Neurocomputing.
[70] Zonghai Chen,et al. Degradation model and cycle life prediction for lithium-ion battery used in hybrid energy storage system , 2019, Energy.
[71] Xuezhe Wei,et al. An improved electro-thermal battery model complemented by current dependent parameters for vehicular low temperature application , 2019, Applied Energy.
[72] Rui Xiong,et al. Characterization of external short circuit faults in electric vehicle Li-ion battery packs and prediction using artificial neural networks , 2020 .
[73] Yao Zhang,et al. Identifying degradation patterns of lithium ion batteries from impedance spectroscopy using machine learning , 2020, Nature Communications.
[74] Chao Jiang,et al. Robust Remaining Useful Life Estimation Based on an Improved Unscented Kalman Filtering Method , 2020 .
[75] Jingda Wu,et al. Battery-Involved Energy Management for Hybrid Electric Bus Based on Expert-Assistance Deep Deterministic Policy Gradient Algorithm , 2020, IEEE Transactions on Vehicular Technology.
[76] Mohamed A. Mohamed,et al. A Demand-Supply Matching-Based Approach for Mapping Renewable Resources Towards 100% Renewable Grids in 2050 , 2021, IEEE Access.
[77] Donghua Zhou,et al. FBM-Based Remaining Useful Life Prediction for Degradation Processes With Long-Range Dependence and Multiple Modes , 2019, IEEE Transactions on Reliability.
[78] Song-Yul Choe,et al. New fast charging method of lithium-ion batteries based on a reduced order electrochemical model considering side reaction , 2019, Journal of Power Sources.
[79] Daniel S. Kirschen,et al. Modeling of Lithium-Ion Battery Degradation for Cell Life Assessment , 2018, IEEE Transactions on Smart Grid.
[80] Penghua Li,et al. State-of-health estimation and remaining useful life prediction for the lithium-ion battery based on a variant long short term memory neural network , 2020, Journal of Power Sources.
[81] Jun Liu,et al. High precision detection algorithm based on improved RetinaNet for defect recognition of transmission lines , 2020 .
[82] Junwei Han,et al. Particle Learning Framework for Estimating the Remaining Useful Life of Lithium-Ion Batteries , 2017, IEEE Transactions on Instrumentation and Measurement.
[83] Anuradha M. Annaswamy,et al. Online capacity estimation of lithium-ion batteries with deep long short-term memory networks , 2021, Journal of Power Sources.
[84] José R. Vázquez-Canteli,et al. Reinforcement learning for demand response: A review of algorithms and modeling techniques , 2019, Applied Energy.
[85] Simona Onori,et al. Stochastic capacity loss and remaining useful life models for lithium-ion batteries in plug-in hybrid electric vehicles , 2020, Journal of Power Sources.
[86] Jie Dong,et al. Remaining Useful Life Prediction of Lithium-Ion Batteries Based on Conditional Variational Autoencoders-Particle Filter , 2020, IEEE Transactions on Instrumentation and Measurement.
[87] Ki‐Yong Oh,et al. Prediction of compression force evolution over degradation for a lithium-ion battery , 2021 .
[88] Weixiong Wu,et al. Remaining useful life prediction of lithium-ion battery based on improved cuckoo search particle filter and a novel state of charge estimation method , 2020 .
[89] Xu Guo,et al. Multi-objective decision analysis for data-driven based estimation of battery states: A case study of remaining useful life estimation , 2020 .
[90] Qiang Miao,et al. Nonlinear-Drifted Fractional Brownian Motion With Multiple Hidden State Variables for Remaining Useful Life Prediction of Lithium-Ion Batteries , 2020, IEEE Transactions on Reliability.
[91] Meng Li,et al. Deep convolutional neural networks with ensemble learning and transfer learning for capacity estimation of lithium-ion batteries , 2020 .
[92] Ahmad M. Abubaker,et al. An integrated photovoltaic/wind/biomass and hybrid energy storage systems towards 100% renewable energy microgrids in university campuses , 2021 .
[93] Kwok-Leung Tsui,et al. Lifespan prediction of lithium-ion batteries based on various extracted features and gradient boosting regression tree model , 2020 .
[94] Erik Frisk,et al. Data-Driven Battery Lifetime Prediction and Confidence Estimation for Heavy-Duty Trucks , 2018, IEEE Transactions on Reliability.
[95] David Anseán,et al. Lithium-Ion Battery Degradation Indicators Via Incremental Capacity Analysis , 2019, IEEE Transactions on Industry Applications.
[96] Yunxia Chen,et al. Reliability Prediction of Battery Management System for Electric Vehicles Based on Accelerated Degradation Test: A Semi-Parametric Approach , 2020, IEEE Transactions on Vehicular Technology.
[97] Hongwen He,et al. Lithium-Ion Battery Remaining Useful Life Prediction With Box–Cox Transformation and Monte Carlo Simulation , 2019, IEEE Transactions on Industrial Electronics.
[98] Li Kai,et al. Battery life estimation based on cloud data for electric vehicles , 2020 .
[99] Caoimhe A. Sweeney,et al. Continuous modelling of cyclic ageing for lithium-ion batteries , 2021 .
[100] Chenghui Zhang,et al. A multi-fault diagnosis method based on modified Sample Entropy for lithium-ion battery strings , 2020 .
[101] Lin Chen,et al. Remaining useful life prediction for lithium-ion battery by combining an improved particle filter with sliding-window gray model , 2020, Energy Reports.
[102] Feng Wei,et al. A Practical Lithium-Ion Battery Model for State of Energy and Voltage Responses Prediction Incorporating Temperature and Ageing Effects , 2018, IEEE Transactions on Industrial Electronics.
[103] Linlin Li,et al. An electrochemical model based degradation state identification method of Lithium-ion battery for all-climate electric vehicles application , 2018, Applied Energy.
[104] Jin Zhao,et al. Predicting the state of charge and health of batteries using data-driven machine learning , 2020, Nature Machine Intelligence.
[105] Haifeng Dai,et al. A novel classification method of commercial lithium-ion battery cells based on fast and economic detection of self-discharge rate , 2020 .
[106] Yi Li,et al. Modified Gaussian Process Regression Models for Cyclic Capacity Prediction of Lithium-Ion Batteries , 2019, IEEE Transactions on Transportation Electrification.
[107] W. D. Widanage,et al. Theory of battery ageing in a lithium-ion battery: Capacity fade, nonlinear ageing and lifetime prediction , 2020, Journal of Power Sources.
[108] Yong Guan,et al. A novel online method for predicting the remaining useful life of lithium-ion batteries considering random variable discharge current , 2021 .
[109] Rui Xiong,et al. Lithium-ion battery aging mechanisms and diagnosis method for automotive applications: Recent advances and perspectives , 2020 .
[110] Krishnan S. Hariharan,et al. Deep Gaussian process regression for lithium-ion battery health prognosis and degradation mode diagnosis , 2020 .
[111] Yuemin Ding,et al. Multi-agent deep reinforcement learning based demand response for discrete manufacturing systems energy management , 2020, Applied Energy.
[112] Lifeng Wu,et al. A novel data-driven method for predicting the circulating capacity of lithium-ion battery under random variable current , 2021 .
[113] Gao Qi,et al. Expandable deep learning for real-time economic generation dispatch and control of three-state energies based future smart grids , 2020 .
[114] Jing Chen,et al. Remaining Useful Life Prediction of Battery Using a Novel Indicator and Framework With Fractional Grey Model and Unscented Particle Filter , 2020, IEEE Transactions on Power Electronics.
[115] Ehab E. Elattar,et al. Stochastic multi-carrier energy management in the smart islands using reinforcement learning and unscented transform , 2021 .
[116] Yan Ma,et al. Remaining Useful Life Prediction of Lithium-Ion Battery Based on Gauss–Hermite Particle Filter , 2019, IEEE Transactions on Control Systems Technology.
[117] Guangzhong Dong,et al. Remaining Useful Life Prediction and State of Health Diagnosis for Lithium-Ion Batteries Using Particle Filter and Support Vector Regression , 2018, IEEE Transactions on Industrial Electronics.
[118] Amin Kargarian,et al. Multi-agent microgrid energy management based on deep learning forecaster , 2019, Energy.
[119] Hongwen He,et al. Long Short-Term Memory Recurrent Neural Network for Remaining Useful Life Prediction of Lithium-Ion Batteries , 2018, IEEE Transactions on Vehicular Technology.
[120] Zhang Xiaoqin,et al. A novel endurance prediction method of series connected lithium-ion batteries based on the voltage change rate and iterative calculation , 2019, Journal of Cleaner Production.
[121] Hongwen He,et al. Validation and verification of a hybrid method for remaining useful life prediction of lithium-ion batteries , 2019, Journal of Cleaner Production.
[122] Sina Sharif Mansouri,et al. Intelligent data-driven prognostic methodologies for the real-time remaining useful life until the end-of-discharge estimation of the Lithium-Polymer batteries of unmanned aerial vehicles with uncertainty quantification , 2019, Applied Energy.
[123] Xuning Feng,et al. The Application of Data-Driven Methods and Physics-Based Learning for Improving Battery Safety , 2021 .
[124] S. Choe,et al. Online state of health and aging parameter estimation using a physics-based life model with a particle filter , 2020 .
[125] Yan Xu,et al. State-of-Health Estimation and Remaining-Useful-Life Prediction for Lithium-Ion Battery Using a Hybrid Data-Driven Method , 2020, IEEE Transactions on Vehicular Technology.
[126] Haibo He,et al. Constrained EV Charging Scheduling Based on Safe Deep Reinforcement Learning , 2020, IEEE Transactions on Smart Grid.
[127] Suk Joo Bae,et al. Battery state of health modeling and remaining useful life prediction through time series model , 2020, Applied Energy.
[128] Yang Gao,et al. A Copula-based battery pack consistency modeling method and its application on the energy utilization efficiency estimation , 2019 .
[129] Yong Tian,et al. State-of-charge estimation tolerant of battery aging based on a physics-based model and an adaptive cubature Kalman filter , 2021 .
[130] Chenghui Zhang,et al. A Robust Online Parameter Identification Method for Lithium-Ion Battery Model Under Asynchronous Sampling and Noise Interference , 2021, IEEE Transactions on Industrial Electronics.
[131] F. Roland,et al. Global CO2 emissions from dry inland waters share common drivers across ecosystems , 2020, Nature Communications.
[132] Furong Gao,et al. A novel framework for Lithium-ion battery modeling considering uncertainties of temperature and aging , 2019, Energy Conversion and Management.