首页> 外文期刊>International Journal of Automotive Technology >DETAILED EXAMINATION OF INVERSE-ANALYSIS PARAMETERS FOR PARTICLE TRAPPING IN SINGLE CHANNEL DIESEL PARTICULATE FILTER
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DETAILED EXAMINATION OF INVERSE-ANALYSIS PARAMETERS FOR PARTICLE TRAPPING IN SINGLE CHANNEL DIESEL PARTICULATE FILTER

机译:单通道柴油机颗粒过滤器中颗粒捕集的逆分析参数的详细检查

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摘要

Predictions of diesel particulate filtration are typically made by modeling of a particle collection, and providing particle trapping levels in terms of a pressure drop. In the present study, a series of single channel diesel particulate filter (DPF) experiments are conducted, the pressure traces are inversely analyzed and essential filtration parameters are deducted for model closure. A DPF filtration model is formulated with a non-linear description of soot cake regression. Dependence of soot cake porosity, packing density, permeability, and soot density in filter walls on convective-diffusive particle transportation is examined. Sensitivity analysis was conducted on model parameters, relevant to the mode of transition. Soot cake porosity and soot packing density show low degrees of dispersion with respect to the Peclet number and have asymptotes at 0.97 and 70 kg/m{sup}3, respectively, at high Peclet number. Soot density in the filter wall, which is inversely proportional to filter wall Peclet number, controls the filtration mode transition but exerts no influence on termination pressure drop. The percolation constant greatly alters the extent of pressure drop, but is insensitive to volumetric flow rate or temperature of exhaust gas at fixed operation mode.
机译:柴油机微粒过滤的预测通常通过对颗粒收集进行建模,并根据压降提供颗粒捕获水平来进行。在本研究中,进行了一系列单通道柴油机微粒过滤器(DPF)实验,对压力迹线进行了反分析,并推导出了基本的过滤参数以进行模型闭合。使用烟灰饼回归的非线性描述来公式化DPF过滤模型。研究了对流扩散颗粒运输中滤饼壁中烟灰饼孔隙率,堆积密度,渗透性和烟灰密度的依赖性。对与过渡模式有关的模型参数进行了敏感性分析。烟灰饼的孔隙率和烟灰堆积密度相对于Peclet数显示出较低的分散度,并且在高Peclet数下具有渐近线,分别为0.97和70 kg / m {sup} 3。过滤器壁中的烟ot密度与过滤器壁的Peclet数成反比,它控制过滤模式的转变,但对终止压降没有影响。渗透常数极大地改变了压降的程度,但是在固定操作模式下对体积流量或废气温度不敏感。

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