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首页> 外文期刊>Energies >Regression Models Using Fully Discharged Voltage and Internal Resistance for State of Health Estimation of Lithium-Ion Batteries
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Regression Models Using Fully Discharged Voltage and Internal Resistance for State of Health Estimation of Lithium-Ion Batteries

机译:利用完全放电电压和内阻的回归模型估算锂离子电池的健康状态

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Accurate estimation of lithium-ion battery life is essential to assure the reliable operation of the energy supply system. This study develops regression models for battery prognostics using statistical methods. The resultant regression models can not only monitor a battery’s degradation trend but also accurately predict its remaining useful life (RUL) at an early stage. Three sets of test data are employed in the training stage for regression models. Another set of data is then applied to the regression models for validation. The fully discharged voltage (Vdis) and internal resistance (R) are adopted as aging parameters in two different mathematical models, with polynomial and exponential functions. A particle swarm optimization (PSO) process is applied to search for optimal coefficients of the regression models. Simulations indicate that the regression models using Vdis and R as aging parameters can build a real state of health profile more accurately than those using cycle number, N. The Monte Carlo method is further employed to make the models adaptive. The subsequent results, however, show that this results in an insignificant improvement of the battery life prediction. A reasonable speculation is that the PSO process already yields the major model coefficients.
机译:准确估算锂离子电池寿命对于确保能源供应系统的可靠运行至关重要。这项研究使用统计方法开发了电池预测的回归模型。所得的回归模型不仅可以监控电池的退化趋势,而且可以在早期准确预测电池的剩余使用寿命(RUL)。在训练阶段为回归模型采用了三组测试数据。然后将另一组数据应用于回归模型以进行验证。在两个不同的具有多项式和指数函数的数学模型中,将完全放电电压(V dis )和内部电阻(R)用作老化参数。应用粒子群优化(PSO)过程搜索回归模型的最佳系数。仿真表明,与使用周期数N的回归模型相比,使用V dis 和R作为衰老参数的回归模型可以更准确地建立健康状况的真实状态。进一步采用蒙特卡洛方法进行建模适应性强。然而,随后的结果表明,这导致电池寿命预测的显着提高。一个合理的推测是,PSO过程已经产生了主要的模型系数。

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