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Combustion system optimization for the integration of e-fuels (Oxymethylene Ether) in compression ignition engines

机译:燃烧系统优化E-燃料(奥甲基醚)在压缩点火发动机中的整合

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In this study, a numerical methodology for the optimization of the combustion chamber in compression ignited engines using OME as fuel is presented. The objective is to obtain a dedicated combustion system for an engine that is fueled with this alternative fuel improving the efficiency and reducing the emissions of NOx. This article proposes the integration between the optimization algorithm and CFD codes to evaluate the behavior of an engine fuelled with the low sooting fuel OME. Based on a diesel model validated against experimental data, a further model for OME fuel was implemented for evaluating the performance of the engine. The particle swarm algorithm (PSO) was modified based on the Novelty Search concepts and used as optimization algorithm. Several tools are coupled in order to create each CFD case where all the tools and optimization algorithm are coupled in a routine that automates the entire process. The result is an optimized combustion system that provides an increase of the efficiency (about 2.2%) and a NOx reduction (35.7%) in comparison with the baseline engine with conventional fuel. In addition, a neuronal network was trained with all the results of all simulations performed during the optimization process, studying the influence of each parameter on the emissions and efficiency. From this analysis it was concluded that the EGR rate and injection pressure affects the NOx emissions with a range of variability of 63% and 38% respectively.
机译:在这项研究中,作为燃料,提出了在压缩燃烧室的优化数值方法点燃使用OME引擎。的目的是获得一个专用的燃烧系统,其燃用该替代燃料提高了效率和降低NOx的排放量的发动机。本文提出的优化算法和CFD软件之间的集成,以评估与低积炭燃料OME燃料的发动机的行为。基于针对实验数据验证柴油模型,用于OME燃料进一步模型用于评价发动机的性能进行了实施。粒子群算法(PSO)是基于科技查新概念和用作优化算法修改。几个工具耦合,以创造,所有的工具和优化算法耦合在自动执行整个过程例行每个CFD情况。该结果是优化燃烧系统,其提供的效率的增加(约2.2%),并与用常规燃料基线发动机比较的NOx还原(35.7%)。此外,神经元网络用在优化过程中执行的所有模拟的所有结果的训练,研究对排放和效率的每个参数的影响。从这个分析中得出的结论是EGR率和喷射压力分别影响NOx排放与一系列的63%和38%的变异性。

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