Abstract

Accurate prediction of the remaining useful life (RUL) of lithium-ion batteries is important for battery management systems. Traditional empirical data-driven approaches for RUL prediction usually require multidimensional physical characteristics including the current, voltage, usage duration, battery temperature, and ambient temperature. From a capacity fading analysis of lithium-ion batteries, it is found that the energy efficiency and battery working temperature are closely related to the capacity degradation, which account for all performance metrics of lithium-ion batteries with regard to the RUL and the relationships between some performance metrics. Thus, we devise a non-iterative prediction model based on flexible support vector regression (F-SVR) and an iterative multi-step prediction model based on support vector regression (SVR) using the energy efficiency and battery working temperature as input physical characteristics. The experimental results show that the proposed prognostic models have high prediction accuracy by using fewer dimensions for the input data than the traditional empirical models.

Highlights

  • Given the increase in economic development and the growing demand for energy, available energy supplies decrease sharply each year, oil supplies

  • We adopt the sum of squared errors (SSE), the root mean square error (RMSE), and the remaining useful life (RUL) estimate error to analyze the prediction results and quantitatively evaluate the comparison results

  • A lithium-ion battery will decrease in capacity over repeated charge and discharge cycles which may lead to failure of a battery even catastrophic failure

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Summary

Introduction

Given the increase in economic development and the growing demand for energy, available energy supplies decrease sharply each year, oil supplies. As compared with other types of batteries, lithium-ion batteries have high energy density, a long lifetime, stable electrochemical properties, the ability to store electrical energy with low loss, and no memory effect [2]. Despite their overall advantages, their rated capacity will fade over repeated charge and discharge cycles [3]. Estimating the end of life (EOL) or providing the remaining useful life (RUL) [16,17] estimates of lithium-ion batteries plays a significant role in PHM

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