Litcius/Paper detail

A hybrid method for online cycle life prediction of lithium‐ion batteries

Fu‐Kwun Wang, Zemenu Endalamaw Amogne, Cheng Tseng, Jia‐Hong Chou

2022International Journal of Energy Research21 citationsDOI

Abstract

Many industrial applications use lithium-ion batteries, but lack of maintenance, harsh use environments, and poor charging operations accelerate their degradation. Therefore, online remaining useful lifetime (RUL) prediction is a hot research topic. The RUL estimation analysis of a battery can be based on the normalized capacity as the state of health of its cycle life. We propose a hybrid method based on a bidirectional long short-term memory model with an attention mechanism (BiLSTM-AM) model and a support vector regression (SVR) model for online cycle life prediction. Once the sensor collects temperature readings, it uses SVR to update the initial data online to obtain a multistep advance prediction of the temperature and then uses BiLSTM-AM to predict cycle life. The proposed model is verified using 12 lithium-ion phosphate/graphite cells, and the results show that the average RUL estimation error is 3.72%.

Topics & Concepts

Lithium (medication)IonComputer scienceMaterials scienceAutomotive engineeringProcess engineeringEngineeringChemistryPsychologyOrganic chemistryPsychiatryAdvanced Battery Technologies ResearchAdvancements in Battery MaterialsReliability and Maintenance Optimization