首页> 外文会议>Exhaust emission control modeling, 2012. >Simulation of Catalytic Oxidation and Selective Catalytic NOx Reduction in Lean-Exhaust Hybrid Vehicles
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Simulation of Catalytic Oxidation and Selective Catalytic NOx Reduction in Lean-Exhaust Hybrid Vehicles

机译:稀薄混合动力汽车催化氧化和选择性催化NOx还原的模拟

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We utilize physically-based models for diesel exhaust catalytic oxidation and urea-based selective catalytic NO_X reduction to study their impact on drive cycle performance of hypothetical light-duty diesel-powered hybrid and plug-in hybrid vehicles (HEVs and PHEVs). The models have been implemented as highly flexible SIMULINK block modules that can be used to study multiple engine-aftertreatment system configurations. The parameters of the NO_X reduction model have been adjusted to reflect the characteristics of commercially available Cu-zeolite catalysts, which are of widespread current interest. We demonstrate application of these models using the Powertrain System Analysis Toolkit (PSAT) software for vehicle simulations, along with a previously published methodology that accounts for emissions and temperature transients in the engine exhaust. Our results illustrate that the DOC-SCR combination can reduce CO, HC and NO_X emissions without creating a significant direct fuel penalty, but there is also an increase in the possibility of ammonia slip. Also, the addition of an upstream DOC increases aftertreatment thermal inertia, delaying light-off of the SCR catalyst. We find that the emissions reduction efficiency of the DOC-SCR combination is better for our simulated HEV compared to our simulated PHEV.
机译:我们利用基于物理的模型进行柴油机尾气催化氧化和基于尿素的选择性催化NO_X还原,以研究它们对假设的轻型柴油动力混合动力和插电式混合动力车辆(HEV和PHEV)的驾驶循环性能的影响。该模型已实现为高度灵活的SIMULINK块模块,可用于研究多种发动机后处理系统配置。已对NO_X还原模型的参数进行了调整,以反映目前广泛关注的可商购获得的Cu-沸石催化剂的特性。我们使用动力总成系统分析工具包(PSAT)软件演示了这些模型的应用,该软件可用于车辆仿真,以及先前发布的方法(可解决发动机排气中的排放物和温度瞬变)。我们的结果表明,DOC-SCR组合可以减少CO,HC和NO_X的排放,而不会产生明显的直接燃油损失,但是氨泄漏的可能性也有所增加。而且,上游DOC的添加增加了后处理热惯性,从而延迟了SCR催化剂的起燃。我们发现,与模拟PHEV相比,模拟HEV的DOC-SCR组合的减排效率更高。

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