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Endpoint forecast of different diesel-biodiesel soot filtration process in diesel participate filters considering ash deposition

机译:考虑灰分沉积的柴油参与式滤清器中不同柴油-生物柴油烟灰过滤过程的终点预测

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摘要

In order to effectively forecast endpoint of soot loading process in the diesel particulate filter (DPF), an efficient prediction method is presented in this work. Firstly, ash deposition mass is predicted by the fuzzy adaptive variable weight functional link neural network model. Then, pressure drop of the DPF is simulated by a modified soot filtration mathematical model considering ash deposition. Finally, the soot loading endpoints with different fuels and initial ash mass are forecasted based on the cusp catastrophe model. The results show that the fuzzy adaptive variable weight functional link neural network prediction model has higher prediction accuracy with 2.24% average error than other single prediction methods. In addition, pressure drop variation rate of the DPF increases over time and it obviously rises with the increase of the pre-loaded ash mass, DPF with larger initial ash mass has a shorter soot loading time to reach the same pressure drop, and soot mass decreases with the rise of biodiesel proportion in the fuels at the same moment. Moreover, predicted pressure drop and discriminant value A indicate that a DPF with elevated ash loads has shorter soot loading time and lower soot mass, biodiesel or its blends can prolong the soot filtration time and the optimal range of endpoint time during BO soot loading process is between 4.25 h and 4.5 h for a clean DPF. This work offers us great reference value for forecasting soot loading endpoint and managing regeneration of the periodic regenerated particulate filters.
机译:为了有效地预测柴油机微粒过滤器(DPF)中烟灰装载过程的终点,在这项工作中提出了一种有效的预测方法。首先,利用模糊自适应变权函数链接神经网络模型预测了粉煤灰的沉降量。然后,通过考虑灰分沉积的改进烟尘过滤数学模型来模拟DPF的压降。最后,基于尖顶突变模型预测了具有不同燃料和初始灰分质量的烟灰负荷终点。结果表明,模糊自适应变权函数链接神经网络预测模型具有较高的预测精度,平均误差为2.24%。此外,DPF的压降变化率随时间增加,并且随着预加载灰分质量的增加而明显增加,具有较大初始灰分质量的DPF具有较短的烟灰加载时间,以达到相同的压降,烟灰质量同时随着生物柴油中燃料比例的增加而降低。此外,预测的压降和判别值A表示灰分负荷较高的DPF具有较短的烟灰装载时间和较低的烟灰质量,生物柴油或其混合物可以延长烟灰过滤时间,并且BO烟灰装载过程中终点时间的最佳范围为清洁DPF的时间在4.25小时至4.5小时之间。这项工作为预测烟灰负荷终点和管理定期再生颗粒过滤器的再生提供了很好的参考价值。

著录项

  • 来源
    《Fuel》 |2020年第jul15期|117678.1-117678.14|共14页
  • 作者

  • 作者单位

    Xiangtan Univ Coll Mech Engn Xiangtan 411105 Peoples R China|Hunan Univ Inst New Energy & Energy Saving & Emiss Reduct Te Changsha 410082 Peoples R China;

    Hunan Inst Engn Sch Mech Engn Xiangtan 411104 Peoples R China;

    Xiangtan Univ Coll Mech Engn Xiangtan 411105 Peoples R China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Particulate filter; Diesel-biodiesel soot loading; Endpoint forecast; Functional link neural network; Catastrophe theory;

    机译:颗粒过滤器柴油-生物柴油烟灰负荷;端点预测;功能链接神经网络;突变理论;

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