2019 AEIT International Conference of Electrical and Electronic Technologies for Automotive (AEIT AUTOMOTIVE) 2019
DOI: 10.23919/eeta.2019.8804567
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State of Health Estimation of Lithium Batteries for Automotive Applications with Artificial Neural Networks

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Cited by 27 publications
(25 citation statements)
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“…Similarly for studies of LIBs, a number of data-driven estimation models for Figure 1), comprising a pair of resistors R e , R ct , accounting for the resistance of the electrolyte and current collector foils, capacitor C dl for charge transfer effects and electrical double-layers, and a Warburg impedance Z W element representing diffusion. 35 the battery SoC, 15,39,40 SoH 12,[15][16][17][18]41 and RUL have been developed. 12,42,43 Many of these studies focus on online estimation of SoH by capacity, with the prevailing approach involving following the evolution of the current, terminal voltage and partial capacity curves of the battery with time as applied by previous works.…”
Section: Machine Learning For Soh Estimationmentioning
confidence: 99%
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“…Similarly for studies of LIBs, a number of data-driven estimation models for Figure 1), comprising a pair of resistors R e , R ct , accounting for the resistance of the electrolyte and current collector foils, capacitor C dl for charge transfer effects and electrical double-layers, and a Warburg impedance Z W element representing diffusion. 35 the battery SoC, 15,39,40 SoH 12,[15][16][17][18]41 and RUL have been developed. 12,42,43 Many of these studies focus on online estimation of SoH by capacity, with the prevailing approach involving following the evolution of the current, terminal voltage and partial capacity curves of the battery with time as applied by previous works.…”
Section: Machine Learning For Soh Estimationmentioning
confidence: 99%
“…The high prediction accuracy is achieved based on application of highly complex NN models, with the caveat that as the number of neurons used to model the system increases, there is a larger requirement for training data to prevent over-fitting of the network to the training dataset, while the model becomes more computationally demanding due to the increased number of model parameters. 17 Most critically, it has been noted 6 that a principal limitation of many of these NN studies is the lack of detailed information regarding the battery ageing state, such as that exposed by the extraction of ECM parameters from EIS. Few approaches have been explored with an NN-based scheme to estimate cell SoH directly using ECM parameters, with prior studies proposing an extreme learning machine (ELM) monitoring the evolution of ECM parameters as SoH predictors with cell cycling 15 or a single hidden layer feed-forward NN 16 based on ECM parameters extracted with hybrid pulse-power characterisation (HPPC).…”
Section: Machine Learning For Soh Estimationmentioning
confidence: 99%
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“…The cooling system plays a fundamental role in the performance and the life of a battery [30] as well as in the performance of the electrical and electronics components [31], [32] which in turn have an influence on the battery life [33]. Furthermore, accurate systems for the estimation of the SOC and SOH could prolong the life of Lithium-ion batteries by avoiding deep discharge and charge cycles at extremely high or cold temperatures, which are one of the major factors that shorten the life of a battery [4], [5]. The efficiency of the battery depends on the collection rate and recycling efficiency.…”
Section: B) Technical Aspectsmentioning
confidence: 99%
“…Consequently, the public interest in Lithium-ion batteries is growing steadily worldwide [3]. In this framework, electric vehicles featuring one or more battery are one of the key technologies for the next generation of road transportation, along with novel algorithms for the battery State of Charge (SOC) and State of Health (SOH) monitoring and estimation [4], [5]. However, a wide range of raw materials and industrial processes is required for the manufacturing of Lithiumion batteries, resulting in supply risks, and a high economic importance of the production chain [6].…”
Section: Introductionmentioning
confidence: 99%