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Hybrid electric vehicle modeling accuracy verification and global optimal control algorithm research

机译:混合动力汽车建模精度验证与全局最优控制算法研究

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摘要

Vehicle modeling and simulation is a very important part in the design and development of electric and hybrid vehicles. To precisely simulate the powertrain running status, many commercial software products are applied into the development of control strategy. However, these models cost too much time in the simulation analysis, which would be difficult to apply in the control strategy optimization. Therefore, vehicle dynamic system model is built by the software of matlab/Simulink and this vehicle model is compared with the commercial vehicle simulation model. Simulation results show that this model has relatively high simulation accuracy, which lays the foundation for further vehicle performance optimization. In this study, dynamic programming global optimization algorithm is applied on the hybrid electric vehicle to search the optimal solution in the determinate speed cycle. Obviously, this method can obtain the minimum fuel economy while keep the balance of battery state of charge (SOC), but it is difficult to apply in the real-time control system. Therefore, the optimal gear-shifting rules, vehicle operation mode control rules and engine torque control rules under the different of battery SOC are extracted into the rule-based control algorithm. Simulation results show that rule-based optimized control based on the DP control rules can reduce about 13.20% of fuel consumption when compared to original logic rule control algorithm under the China's urban driving cycle. It could obtain better fuel economy under the Beijing driving cycle and easily be implemented in a vehicle prototype.
机译:车辆建模和仿真是电动和混合动力车辆设计和开发中非常重要的部分。为了精确地模拟动力总成的运行状态,许多商业软件产品被应用到控制策略的开发中。然而,这些模型在仿真分析中花费太多时间,这将难以应用于控制策略优化。因此,通过matlab / Simulink软件建立了车辆动态系统模型,并将该车辆模型与商用车辆仿真模型进行了比较。仿真结果表明,该模型具有较高的仿真精度,为进一步优化车辆性能奠定了基础。在这项研究中,将动态规划全局优化算法应用于混合动力电动汽车,以在确定的速度循环中搜索最优解。显然,该方法可以在保持电池电量平衡(SOC)的平衡的同时获得最低的燃油经济性,但是很难在实时控制系统中应用。因此,将基于电池SOC不同的最优换挡规则,车辆运行模式控制规则和发动机扭矩控制规则提取到基于规则的控制算法中。仿真结果表明,与传统的逻辑规则控制算法相比,基于DP控制规则的基于规则的优化控制可以减少约13.20%的燃油消耗。它可以在北京行驶周期内获得更好的燃油经济性,并且可以在车辆原型中轻松实现。

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