Abdullah Bajwa, Gongyi Zou, Fengyu Zhong, Xiaohang Fang, Felix Leach, Martin Davy
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引用次数: 0
Abstract
With emissions regulations becoming increasingly restrictive and the advent of real driving emissions limits, control of engine-out NOx emissions remains an important research topic for diesel engines. Progress in experimental engine development and computational modelling has led to the generation of a large amount of high-fidelity emissions and in-cylinder data, making it attractive to use data-driven emissions prediction and control models. While pure data-driven methods have shown robustness in NOx prediction during steady-state engine operation, deficiencies are found under transient operation and at engine conditions far outside the training range. Therefore, physics-based, mean value models that capture cyclic-level changes in in-cylinder thermo-chemical properties appear as an attractive option for transient NOx emissions modelling. Previous experimental studies have highlighted the existence of a very strong correlation between peak cylinder pressure and cyclic NOx emissions. In this study, a cyclic peak pressure-based semi-empirical NOx prediction model is developed. The model is calibrated using high-speed NO and NO2 emissions measurements during transient engine operation and then tested under different transient operating conditions. The transient performance of the physical model is compared to that of a previously developed data-driven (artificial neural network) model, and is found to be superior, with a better dynamic response and low (<10%) errors. The results shown in this study are encouraging for the use of such models as virtual sensors for real-time emissions monitoring and as complimentary models for future physics-guided neural network development.
随着排放法规的日益严格和实际驾驶排放限制的出现,控制发动机排出的氮氧化物排放仍然是柴油发动机的一个重要研究课题。发动机实验开发和计算建模方面的进步已经产生了大量高保真排放和缸内数据,这使得使用数据驱动的排放预测和控制模型变得非常有吸引力。虽然纯数据驱动方法在发动机稳态运行期间的氮氧化物预测中表现出了稳健性,但在瞬态运行和发动机工况远远超出训练范围时,就会发现其不足之处。因此,基于物理的平均值模型可以捕捉到气缸内热化学特性的周期性变化,是瞬态氮氧化物排放建模的一个有吸引力的选择。以前的实验研究已经强调了气缸压力峰值与氮氧化物周期性排放之间存在着非常强的相关性。本研究开发了一个基于循环峰值压力的半经验氮氧化物预测模型。该模型利用发动机瞬态运行期间的高速 NO 和 NO2 排放测量值进行校准,然后在不同的瞬态运行条件下进行测试。物理模型的瞬态性能与之前开发的数据驱动(人工神经网络)模型进行了比较,发现后者更优越,具有更好的动态响应和较低的(