Filtre afisare

Reset Filters to Default:

Reset All Filters

Detail Level:

Time Interval (Years):

From: To: Set Time Interval
Raport al citarilor
 
 
Lucrarea citata
[Jrnl 1]Novel battery wear leveling method for large-scale reconfigurable battery packs
(Metoda inovativa de uniformizare a degradarii bateriilor pentru grupuri reconfigurabile de mari dimensiuni de baterii)
Autor(i): Carstoiu, Gabriel; Micea, Mihai Victor; Ungurean, Lucian; Marcu, Marius
In: International Journal of Energy Research
Volumul 45, Numarul 2
Editor(i): Dincer, Ibrahim
Publicat de: Wiley
USA, Feb. 2021
Pagini: 1932 - 1947, ISSN 0363-907X, DOI: 10.1002/er.5879
Indexat in: ISI Web of Science, Thomson Reuters (WOS: 000566702500001), IF: 5.164
9
 [+] Keywords | [+] Abstract | Journal info | TOP (#1) Journal, "Science - NUCLEAR SCIENCE & TECHNOLOGY" Section
Battery; Large-scale battery pack; Reconfigurable battery management system; State of health; Wear leveling
As the market and the application areas of high capacity battery energy storage systems are rapidly increasing, there is a correspondingly high interest in the topic of minimizing battery state of health degradation in battery packs. In this article, a novel method for battery management in large-scale battery packs is introduced, aiming to minimize battery degradation by enforcing a special wear leveling (WL) policy, adapted from the flash memory arrays. Using this method in conjunction with a hybrid mathematical-electrochemical battery model, a reconfigurable battery management system (BMS) is proposed and evaluated. The results of the performance analysis and in-depth comparisons with other state-of-the-art solution shows that the proposed method achieves significantly longer operating times for the battery packs-for example, 415% improvement over the classical BMS in the load current variation scenario. As the computing and memory requirements are relatively low, the new battery WL method can also be implemented on embedded systems with limited resources.
1 Citari in total (cu un IF cumulat: 4.672)
 
 
Publicatiile care o citeaza
[Jrnl 1]
Jrnl
Seyed R. Hashemi, Afsoon B. Baghbadorani, Roja Esmaeeli, et al., "Machine learning-based model for lithium-ion batteries in BMS of electric/hybrid electric aircraft", International Journal of Energy Research, volume 45, issue 4, Wiley, USA, Mar., 2021, pp. (5747 - 5765), ISSN 0363-907X, DOI: 10.1002/er.6197. [Indexed: ISI Web of Science, Clarivate Analytics]. [IF: 4.672].