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A Two-Stage Model for Sequential Engine-Out and Tailpipe Emission Estimation

机译:发动机连续排放和尾气排放的两阶段模型

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This paper presents models for the estimation of vehicular NO_x emissions of gasoline-powered vehicles and presents an analysis of the performance based on real driving data. The main contribution is a two-stage model for the sequential estimation of engine-out and tailpipe emissions. This structure allows on-board operation (i.e. the computations can be performed on standard automotive ECUs) and achieves an accurate estimation performance as indicated by a statistical analysis. The estimation of engine-out emissions is based on multiple linear regressions (with a low number of parameters) using training data from driving cycle data. The test data is taken from road measurements to obtain a realistic assessment of the performance of the models under real driving conditions. The accuracy is within 3% for a cumulated error index. For the second model stage, a reduced physical model of the conversion efficiency of a catalytic converter is proposed. This stage is based on physical knowledge about typical conversion behaviour of a three-way catalytic converter. We further provide a comparison with a regression-based model of the second model stage and observe that both approaches are feasible. Both achieve an accuracy within 7% for a cumulated error index. However, the physical model performs better at detecting particular emission events, while regression-based estimation tends to average out these effects.
机译:本文介绍了用于估算汽油动力车辆的车辆NO_x排放的模型,并基于实际驾驶数据对性能进行了分析。主要贡献是一个两阶段模型,用于顺序估算发动机熄火和尾气排放。这种结构允许车载操作(即可以在标准汽车ECU上执行计算),并可以实现准确的估算性能,如统计分析所示。发动机废气排放的估算是基于多个线性回归(参数数量少),其中使用了来自驾驶循环数据的训练数据。从道路测量中获取测试数据,以获得对实际驾驶条件下模型性能的真实评估。累积误差指数的精度在3%以内。对于第二模型阶段,提出了催化转化器转化效率的简化物理模型。该阶段基于有关三元催化转化器典型转化行为的物理知识。我们进一步提供了与第二阶段模型的基于回归模型的比较,并观察到这两种方法都是可行的。对于累积的误差指数,两者的精度均在7%之内。但是,物理模型在检测特定的排放事件方面表现更好,而基于回归的估计则倾向于将这些影响平均化。

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