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A Surrogate Fuel Formulation Approach for Real Transportation Fuels with Application to Multi-Dimensional Engine Simulations

机译:实际运输燃料的替代燃料配方方法在多维发动机仿真中的应用

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摘要

Real transportation fuels, such as gasoline and diesel, are mixtures of thousands of different hydrocarbons. For multidimensional engine applications, numerical simulations of combustion of real fuels with all of the hydrocarbon species included exceeds present computational capabilities. Consequently, surrogate fuel models are normally utilized. A good surrogate fuel model should approximate the essential physical and chemical properties of the real fuel. In this work, we present a novel methodology for the formulation of surrogate fuel models based on local optimization and sensitivity analysis technologies. Within the proposed approach, several important fuel properties are considered. Under the physical properties, we focus on volatility, density, lower heating value (LHV), and viscosity, while the chemical properties relate to the chemical composition, hydrogen to carbon (H/C) ratio, and ignition behavior. An error tolerance is assigned to each property for convergence checking. In addition, a weighting factor is given to each property indicating its individual importance among all properties considered; the overall quality of the surrogate fuel model is controlled by a weighted error tolerance. It is observed that the solver can find an accurate surrogate fuel model for a low-cetane diesel fuel with 11 iterations. Finally, to further check the fidelity of the approach, the proposed surrogate fuel model is validated using a multi-dimensional engine simulation operated under a low temperature combustion (LTC) condition against the available experimental data. The results are also compared with a conventional single component model, viz., n-tetradecane representing physical properties and n-heptane representing chemistry. The results show that the proposed surrogate fuel model can accurately predict the overall combustion process and emissions, simultaneously; while the single component model is unable to predict the combustion process and emissions in the LTC condition for the low cetane diesel fuel.
机译:实际的运输燃料,例如汽油和柴油,是数千种不同碳氢化合物的混合物。对于多维发动机应用,包含所有烃类在内的真实燃料燃烧的数值模拟超出了当前的计算能力。因此,通常使用替代燃料模型。好的替代燃料模型应近似于实际燃料的基本物理和化学性质。在这项工作中,我们提出了一种基于局部优化和敏感性分析技术的代用燃料模型制定的新方法。在提出的方法中,考虑了几种重要的燃料特性。在物理性质下,我们关注挥发性,密度,较低的热值(LHV)和粘度,而化学性质与化学成分,氢碳比(H / C)和点火行为有关。为每个属性分配一个容错性以进行收敛检查。另外,对每个属性都赋予一个权重因子,以表明其在所考虑的所有属性中的重要性。替代燃料模型的整体质量由加权误差容限控制。可以观察到,求解器可以通过11次迭代找到低十六烷柴油的精确替代燃料模型。最后,为了进一步检查该方法的逼真度,使用在低温燃烧(LTC)条件下针对可获得的实验数据进行的多维发动机仿真,对提出的替代燃料模型进行了验证。还将结果与常规的单组分模型(即代表物理性质的正十四烷和代表化学性质的正庚烷)进行比较。结果表明,所提出的替代燃料模型可以同时准确预测整个燃烧过程和排放。而单组分模型无法预测低十六烷值柴油在LTC条件下的燃烧过程和排放。

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