4.7 Article

A sample entropy based prognostics method for lithium-ion batteries using relevance vector machine

Journal

JOURNAL OF MANUFACTURING SYSTEMS
Volume 61, Issue -, Pages 773-781

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.jmsy.2021.03.019

Keywords

Sample entropy; Remaining useful life; Prediction; Relevance vector machine; Linear weighting

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This paper proposes a new method combining sample entropies and relevance vector machine (RVM) to estimate the remaining useful life (RUL) of lithium-ion batteries. Experimental results show that the method with multiple entropy inputs can more accurately describe the battery degradation process, achieving higher prediction accuracy, and has potential for estimating the remaining useful life of industrial machinery.
Over the increasing number of charging and discharging cycling processes of lithium-ion batteries, the aging and even failure of lithium-ion batteries may occur. If anomalies are not detected in time, lithium-ion batteries could cause major safety accidents. In this paper, a prognostics method integrating the sample entropies and relevance vector machine (RVM) is proposed to estimate the remaining useful life (RUL) of lithium-ion batteries. First, RUL prediction using multiple inputs, including the voltage sample entropy and the current sample entropy, are compared with prediction methods based on a single entropy input. The multiple entropy input method indicates better capability of describing the battery degradation process. In addition, the wavelet denoising method is used to pre-process the inputs to remove sudden and unusual changes in the battery capacity degradation data. A prediction model using the denoised entropy inputs is constructed through linearly weighting the entropy inputs in the RVM model. The weight for each input is assigned according to the individual contribution to the prediction accuracy. Experimental data from lithium-ion battery testing are applied to three prediction models with different entropy inputs. The results indicate that the proposed method has higher prediction accuracy than those in existing models only using a single sample entropy. The proposed method has potentials for the RUL estimation of industrial machinery in manufacturing.

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