DocumentCode
616716
Title
An optimized Relevance Vector Machine with incremental learning strategy for lithium-ion battery remaining useful life estimation
Author
Jianbao Zhou ; Datong Liu ; Yu Peng ; Xiyuan Peng
Author_Institution
Dept. of Autom. Test & Control, Harbin Inst. of Technol. (HIT), Harbin, China
fYear
2013
fDate
6-9 May 2013
Firstpage
561
Lastpage
565
Abstract
In most industrial fields, it needs to evaluate the performance degradation and remaining useful life (RUL) of lithium-ion battery. With the uncertainty representation of the RUL, the Relevance Vector Machine (RVM) becomes an effective approach in lithium-ion battery RUL prognostics. But, the small sample size and low precision of multi-step prediction will bring district to RUL prediction for sparse RVM algorithm. With the on-line monitoring data updating, the dynamic training ability and online algorithm are necessary to improve the prediction precision for battery RUL model. Moreover, the operating efficiency and computing complexity are needed for on-line and real-time processing. A simple and effective on-line training strategy is introduced for RVM algorithm to realize high prediction performance. An incremental optimized RVM algorithm is proposed to achieve efficient online training for model updating. Furthermore, with the on-line training strategy, the prediction precision can increase for battery RUL estimation. Using proposed method, we carry out experiments with NASA battery data and the results show that our method has excellent performance on predicting the RUL of lithium-ion battery.
Keywords
computational complexity; electrical engineering computing; learning (artificial intelligence); lithium; remaining life assessment; secondary cells; support vector machines; Li; NASA battery data; battery RUL estimation; computing complexity; incremental learning strategy; incremental optimized RVM algorithm; lithium-ion battery RUL prognostics; multistep prediction; online processing; online training strategy; optimized relevance vector machine; real-time processing; remaining useful life estimation; sparse RVM algorithm; Algorithm design and analysis; Batteries; Estimation; Heuristic algorithms; Prediction algorithms; Support vector machines; Training; Incremental Learning; Lithium-ion battery; Relevance Vector Machine; Remaining Useful Life;
fLanguage
English
Publisher
ieee
Conference_Titel
Instrumentation and Measurement Technology Conference (I2MTC), 2013 IEEE International
Conference_Location
Minneapolis, MN
ISSN
1091-5281
Print_ISBN
978-1-4673-4621-4
Type
conf
DOI
10.1109/I2MTC.2013.6555479
Filename
6555479
Link To Document