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Optimization of Tremblay's battery model parameters for plug-in hybrid electric vehicle applications

机译:用于插入式混合动力电动汽车应用的Tremblay电池模型参数的优化

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Accurate modeling of batteries for plug-in hybrid vehicle applications is of fundamental importance to optimize the operation strategy, extend battery life and improve vehicle performance. Tremblay's battery model has been specifically designed and validated for electric vehicle applications. Tremblay's parameter identification method is based on evaluating the three remarkable points manually picked from a manufacturer's discharge curve. This method is error prone and the resultant discharge curve may deviate significantly from the experimental curve as reported in previous studies. This paper proposes to use a novel quantum-behaved particle swarm optimization (QPSO) parameter estimation technique to estimate the model parameters. The performance of QPSO is compared to that of genetic algorithm (GA) and particle swarm optimization (PSO) approaches. The QPSO technique needs less tuning effort than other techniques since it only uses one tuning parameter. Reducing the number of iterations should be a welcome development in most applications areas. Results show that the QPSO parameter estimation technique converges to acceptable solutions with fewer iterations than that obtained by the GA and the PSO approaches.
机译:对于插电式混合动力汽车应用而言,准确建模电池对于优化操作策略,延长电池寿命和改善车辆性能至关重要。 Tremblay的电池模型是专门为电动汽车应用设计和验证的。 Tremblay的参数识别方法是基于评估从制造商的排放曲线中手动选取的三个显着点。此方法容易出错,并且如先前研究中所报道的,所产生的放电曲线可能会与实验曲线有很大偏差。本文提出使用一种新颖的量子行为粒子群优化(QPSO)参数估计技术来估计模型参数。将QPSO的性能与遗传算法(GA)和粒子群优化(PSO)方法的性能进行了比较。由于QPSO技术仅使用一个调整参数,因此它比其他技术需要更少的调整工作。在大多数应用领域中,减少迭代数量应该是一个值得欢迎的发展。结果表明,与GA和PSO方法相比,QPSO参数估计技术收敛到可接受的解决方案,迭代次数更少。

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