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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part D. Journal of Automobile Engineering >Optimization of a high-speed direct-injection diesel engine at low-load operation using computational fluid dynamics with detailed chemistry and a multi-objective genetic algorithm
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Optimization of a high-speed direct-injection diesel engine at low-load operation using computational fluid dynamics with detailed chemistry and a multi-objective genetic algorithm

机译:使用具有详细化学方法和多目标遗传算法的计算流体力学来优化低负荷运行的高速直喷式柴油发动机

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摘要

A passenger car high-speed direct-injection diesel engine operating at low-load conditions in the modulated kinetic combustion mode was optimized using a multidimensional computational fluid dynamics code and a multi-objective genetic algorithm. Spray targeting, piston bowl geometry, and swirl ratio were optimized. Since the combustion is mainly kinetics controlled, detailed chemistry was considered through a recently developed adaptive multi-grid chemistry (AMC) model. The numerical results from the AMC model, including the pressure and pollutant emissions, were first validated on the baseline engine for a parametric sweep by comparison with the results from the standard KIVA-CHEMKIN model. The AMC model was found to give consistent results with the KIVA-CHEMKIN model, with a computational cost that is less than half that of the KIVA-CHEMKIN model. Optimal designs from the optimization were also validated using the full KIVA-CHEMKIN model and were found to reduce the fuel consumption and/or pollutant emissions. Start-of-injection timing was found to be the primary parameter influencing the fuel consumption and soot emissions for the engine operating in the low-load condition. Later injection benefits the fuel consumption and soot reduction. However, further retardation of the injection timing leads to reduced combustion efficiency and even misfire, and results in higher unburned hydrocarbon emissions. Different piston bowl shapes have different responses to bulk flow motions and the resulting geometry-generated turbulence will affect soot formation and oxidation.
机译:使用多维计算流体动力学代码和多目标遗传算法,优化了在低负荷条件下以调制动力燃烧模式运行的乘用车高速直喷柴油发动机。优化了喷雾目标,活塞碗的几何形状和涡流比。由于燃烧主要是动力学控制的,因此通过最近开发的自适应多网格化学(AMC)模型考虑了详细的化学过程。通过与标准KIVA-CHEMKIN模型的结果进行比较,首先在基线引擎上对AMC模型的数值结果(包括压力和污染物排放)进行了参数化扫描验证。发现AMC模型可以提供与KIVA-CHEMKIN模型一致的结果,其计算成本不到KIVA-CHEMKIN模型的一半。还使用完整的KIVA-CHEMKIN模型验证了来自优化的最佳设计,并发现该设计可减少燃料消耗和/或污染物排放。发现喷射开始正时是影响在低负荷条件下运行的发动机的燃料消耗和烟尘排放的主要参数。后期喷射有利于燃料消耗和减少烟灰。然而,喷射正时的进一步延迟导致燃烧效率降低甚至失火,并导致更高的未燃烧碳氢化合物排放。不同的活塞碗形状对整体运动有不同的响应,并且由此产生的几何形状产生的湍流将影响烟灰的形成和氧化。

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