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Model Prediction for Lead-acid Batteries with Super-capacitor Anodes.

机译:具有超级电容器阳极的铅酸电池的模型预测。

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摘要

The existing prediction models used in Battery Management Systems (BMS) for lead-acid batteries have difficulty in applying to lead-acid batteries with changed structure or materials. Four different lifetime prediction models of lead-acid batteries to be mainly used as energy storage for PV systems, EV, and hybrid EV are examined. Equivalent full cycles to failure, "Rain flow" cycles were counting, the Schiffer weighted Ah-throughput model and recurrent Neural Network-based Model are discussed for the accessibility and availability of the lead-acid batteries with the supercapacitor anode (hybrid batteries). By examining the mechanism, "Rain flow" cycles counting, the Schiffer weighted Ah-throughput model and recurrent Neural Network-based Model were three models could be used in hybrid batteries. By comparing the accuracy of these models in photovoltaic systems, the Schiffer weighted Ah-throughput model and recurrent Neural Network-based Model were selected to be the promising solutions. A modification of the Schiffer weighted Ah-throughput model is discussed based on the chemical mechanism. All possible effects are taking into account in the modified model based on the detailed analysis. Further estimations can be simply conducted through the factory data sheet of hybrid batteries.
机译:铅酸电池的电池管理系统(BMS)中使用的现有预测模型很难应用于结构或材料已更改的铅酸电池。研究了四种主要用于光伏系统,电动汽车和混合电动汽车的储能的铅酸电池寿命预测模型。计算了等效的失效全周期,“雨流”周期,讨论了Schiffer加权Ah吞吐量模型和基于递归神经网络的模型,以了解带有超级电容器阳极的铅酸蓄电池(混合动力蓄电池)的可及性和可用性。通过检查机理,“雨流”循环计数,Schiffer加权Ah吞吐量模型和基于递归神经网络的模型,可以在混合电池中使用三种模型。通过比较这些模型在光伏系统中的准确性,选择了Schiffer加权Ah吞吐量模型和基于递归神经网络的模型作为有前途的解决方案。基于化学机理,讨论了对Schiffer加权Ah吞吐量模型的修改。在详细分析的基础上,修改后的模型考虑了所有可能的影响。可以通过混合电池的出厂数据表简单地进行进一步估算。

著录项

  • 作者

    LI, WENDI.;

  • 作者单位

    University of California, Los Angeles.;

  • 授予单位 University of California, Los Angeles.;
  • 学科 Chemical engineering.
  • 学位 M.S.
  • 年度 2016
  • 页码 57 p.
  • 总页数 57
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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