• شماره ركورد كنفرانس
    4567
  • عنوان مقاله

    Developing Lifetime Prediction Model of Lithium-ion Battery Based on Minimizing Prediction Errors of Cycling and Operational Time Degradation Using Genetic Algorithm Mohammad

  • Author/Authors
    Mohammad Zarei-Jelyani Institute of Mechanics - Iranian Space Research Center, Shiraz, Iran , Mohammad Sarshar Institute of Mechanics - Iranian Space Research Center, Shiraz, Iran , Mohsen Babaiee Institute of Mechanics - Iranian Space Research Center, Shiraz, Iran , Nima Tashakor Institute of Mechanics - Iranian Space Research Center, Shiraz, Iran
  • كليدواژه
    Lithium-ion battery , capacity loss , charge and discharge , cycle-life , operational time
  • سال انتشار
    اسفند 1397
  • عنوان كنفرانس
    ششمين كنفرانس ملي ساليانه انرژي پاك
  • زبان مدرك
    لاتين
  • چكيده لاتين
    Accurate prediction of the useful life of lithium-ion batteries is a great challenge for the researchers and engineers who are involved in battery applications such as electric vehicle and satellite. In this work, a semi-empirical model is introduced to predict the capacity loss of lithium-ion batteries as a function of charge and discharge cycles, operational time and temperature. The model parameters are obtained via minimizing prediction errors of the experimental capacity loss for each charge/discharge cycles at 25oC, 35oC, and 45oC. The optimum values of the model parameters are obtained using a genetic algorithm as one of the optimization tools of Matlab software. The model accurately predicts the capacity loss of lithium-ion battery for more charge and discharge cycles at 25 °C with an average error of 4%. The mentioned cycles are used only to validate the prediction.
  • كشور
    ايران
  • تعداد صفحه 2
    5
  • از صفحه
    1
  • تا صفحه
    5