Extreme Learning Machine Based Prognostics of Battery Life

Author:

Razavi-Far Roozbeh1ORCID,Chakrabarti Shiladitya1,Saif Mehrdad1,Zio Enrico23,Palade Vasile4

Affiliation:

1. Department of Electrical and Computer Engineering, University of Windsor Windsor, Ontario N9B 3P4, Canada

2. Ecole CentraleSupélec, Université Paris Saclay, France

3. Department of Energy, Politecnico di Milano, Milano, Italy

4. School of Computing, Electronics and Mathematics Coventry University, CV1 5FB Coventry, United Kingdom

Abstract

This paper presents a prognostic scheme for estimating the remaining useful life of Lithium-ion batteries. The proposed scheme utilizes a prediction module that aims to obtain precise predictions for both short and long prediction horizons. The prediction module makes use of extreme learning machines for one-step and multi-step ahead predictions, using various prediction strategies, including iterative, direct and DirRec, which use the constant-current experimental capacity data for the estimation of the remaining useful life. The data-driven prognostic approach is highly dependent on the availability of high quantity of quality observations. Insufficient amount of available data can result in unsatisfactory prognostics. In this paper, the prognostics scheme is utilized to estimate the remaining useful life of a battery, with insufficient direct data available, but taking advantage of observations available from a fleet of similar batteries with similar working conditions. Experimental results show that the proposed prognostic scheme provides a fast and efficient estimation of the remaining useful life of the batteries and achieves superior results when compared with various state-of-the-art prediction techniques.

Publisher

World Scientific Pub Co Pte Lt

Subject

Artificial Intelligence,Artificial Intelligence

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