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Multiobjective Optimization of Hybrid Electrical Vehicle Powertrain Mounting System Using Hybrid Genetic Algorithm

机译:混合电动汽车动力总成安装系统的多目标优化使用杂交遗传算法

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Powertrain mounting system of a Hybrid Electrical Vehicle (HEV) is analyzed and researched, the expression of energy distribution matrix and that of mounting reaction force are derived, and mathematical model of the system is established in Matlab. Correctness of the model established is tested and verified through model establishing for simulation and calculation in ADAMS. Features of Hybrid Genetic Algorithm (HGA) for multiobjective optimization are analyzed and researched, model for calculation of multiobjective optimization using Hybrid Genetic Algorithm is established, targets for optimization of the system are determined, and optimization is executed based on the mounting stiffness parameters. The result that the system is optimized apparently by Hybrid Genetic Algorithm is revealed through contrast of the energy distribution matrix and mounting reaction force of pre and post-optimization.
机译:分析并研究了混合动力电动车辆(HEV)的动力总成安装系统,推导了能量分布矩阵的表达和安装反作用力的表达,并在MATLAB中建立了系统的数学模型。通过建立亚当斯模拟和计算的模型测试和验证建立的模型的正确性。分析和研究了混合遗传算法(HGA)的特征,确定了使用混合遗传算法计算多目标优化的模型,确定了系统优化的目标,并且基于安装刚度参数执行优化。通过混合遗传算法显然通过混合遗传算法进行了优化的结果,通过能量分布矩阵和预优化后的安装反作用力来揭示了混合遗传算法。

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