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Battery identification methods based on equivalent circuit model.

机译:基于等效电路模型的电池识别方法。

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摘要

Development of an intelligent battery diagnostic system is a necessity for future transportation industry. These technologies will have the potential to create profound impact in other industries such as portable electronics. This theses reports on a pattern recognition method that is primarily engineered to detect the chemistry, number of cells, and state of charge in an unknown package of batteries. The proposed method has the potential to be used for condition monitoring in a known set of batteries thereby, creating a health monitoring apparatus that can be an integral part of a battery management system using any of the prominent lead acid, lithium-ion, and Nickel Metal Hydride batteries. The proposed method is based on distinct signatures that one can identify in a relatively straightforward equivalent circuit of a battery. These signatures are extracted using time domain diagnostics and are used in combination v with nonlinear mappings such as exponential regression and artificial neural networks for pattern recognition purposes.;This thesis presents the design and development of three battery identification methods based on a single RC equivalent circuit model. The first method compares measured circuit parameters with lookup tables using MSE analysis to identify chemistry, cell count, and SOC of the battery. The second method uses an artificial neural network to identify battery chemistry based on measured circuit parameters. The final method uses an artificial neural network to identify battery chemistry and SOC based on raw voltage waveforms, bypassing the need to calculate equivalent circuit parameters.
机译:开发智能电池诊断系统是未来交通运输业的必要条件。这些技术将有可能在便携式电子等其他行业产生深远的影响。这些论文报告了一种模式识别方法,该方法主要用于检测未知包装电池中的化学成分,电池数量和充电状态。所提出的方法有潜力用于已知一组电池的状态监测,从而创建一种健康监测设备,该设备可以是使用任何重要的铅酸,锂离子和镍的电池管理系统的组成部分。金属氢化物电池。所提出的方法基于可以在电池的相对简单的等效电路中识别的独特特征。这些签名是使用时域诊断提取的,并与非线性映射(例如指数回归和人工神经网络)组合用于模式识别。;本文提出了基于单个RC等效电路的三种电池识别方法的设计和开发。模型。第一种方法是使用MSE分析将测量的电路参数与查找表进行比较,以识别电池的化学成分,电池数量和SOC。第二种方法使用人工神经网络,基于测量的电路参数来识别电池化学成分。最终方法使用人工神经网络基于原始电压波形来识别电池化学成分和SOC,从而无需计算等效电路参数。

著录项

  • 作者

    Ragsdale, Matthew.;

  • 作者单位

    The University of Texas at Arlington.;

  • 授予单位 The University of Texas at Arlington.;
  • 学科 Engineering Electronics and Electrical.
  • 学位 M.S.
  • 年度 2009
  • 页码 166 p.
  • 总页数 166
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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