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Real Time Prediction of Particle Sizing at the Exhaust of a Diesel Engine by Using a Neural Network Model

机译:利用神经网络模型将颗粒尺寸的实时预测柴油机排气

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In order to meet the increasingly strict emission regulations, several solutions for NO_x and PM emissions reduction have been studied. Exhaust gas recirculation (EGR) technology has become one of the more used methods to accomplish the NO_x emissions reduction. However, actual control strategies do not consider, in the definition of optimal EGR, its effect on particle size and density. These latter have a great importance both for the optimal functioning of after-treatment systems, but also for the adverse effects that small particles have on human health. Epidemiological studies, in fact, highlighted that the toxicity of particulate particles increases as the particle size decreases. The aim of this paper is to present a Neural Network model able to provide real time information about the characteristics of exhaust particles emitted by a Diesel engine. In particular, the model acts as a virtual sensor able to estimate the concentration of particles with a specific aerodynamic diameter on the basis of some engine parameters such as engine speed, engine load and EGR ratio.
机译:为了满足日益严格的排放法规,已经研究了几种NO_X和PM排放的解决方案。废气再循环(EGR)技术已成为实现NO_X排放减少的更常用方法之一。然而,在最佳EGR的定义中,实际控制策略不考虑其对粒度和密度的影响。这些后者对于后处理系统的最佳功能非常重要,而且对于小颗粒对人体健康的不利影响也很重要。事实上,流行病学研究突出显示颗粒颗粒的毒性随着粒度的降低而增加。本文的目的是提供一种能够提供关于柴油发动机发射的排气粒子特性的实时信息的神经网络模型。特别地,该模型用作虚拟传感器,该虚拟传感器能够基于一些发动机参数(例如发动机速度,发动机负荷和EGR比)估计具有特定空气动力直径的粒子浓度。

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