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基于软计算的建模及碳纳米颗粒水/柴油乳液燃料喷射柴油机的排放控制/减排。

Soft computing-based modeling and emission control/reduction of a diesel engine fueled with carbon nanoparticle-dosed water/diesel ‎emulsion fuel.

机构信息

Henan Province Engineering Research Center for Biomass Value-Added Products, School of Forestry, Henan Agricultural University, Zhengzhou 450002, China; Department of Mechanical Engineering of Agricultural Machinery, Faculty of Agricultural Engineering and Technology, College of Agriculture and Natural Resources, University of Tehran, Karaj, Iran.

Mechatronics Engineering Department, College of Engineering, International University of Erbil, Erbil, Iraq; Biofuel Research Team (BRTeam), Terengganu, Malaysia.

出版信息

J Hazard Mater. 2021 Apr 5;407:124369. doi: 10.1016/j.jhazmat.2020.124369. Epub 2020 Oct 25.

Abstract

This study was set up to model and optimize the performance and emission characteristics of a diesel engine fueled with carbon nanoparticle-dosed water/‎diesel emulsion fuel using a combination of soft computing techniques. Adaptive neuro-fuzzy inference system tuned by particle ‎swarm algorithm was used for modeling the performance and emission parameters of the engine, while optimization of the engine operating parameters and the fuel composition was conducted via multiple-objective particle ‎swarm algorithm. The model input variables were: injection timing (35-41° CA BTDC), engine load (0-100%), nanoparticle dosage (0-150 μM), and water content (0-3 wt%). The model output variables included: brake specific fuel consumption, brake thermal efficiency, as well as carbon monoxide, carbon dioxide, nitrogen oxides, and unburned hydrocarbons emission concentrations. The training and testing of the modeling system were performed on the basis of 60 data patterns obtained from the experimental trials. The effects of input variables on the performance and emission characteristics of the engine were thoroughly analyzed and comprehensively discussed as well. According to the experimental results, injection timing and engine load could significantly affect all the investigated performance and emission parameters. Water and nanoparticle addition to diesel could markedly affect some performance and emission parameters. The modeling system could predict the output parameters with an R > 0.93, MSE < 5.70 × 10, RMSE < 7.55 × 10, and MAPE < 3.86 × 10. The optimum conditions were: injection timing of 39° CA BTDC, engine load of 74%, nanoparticle dosage of 112 μM, and water content of 2.49 wt%. The carbon dioxide, carbon monoxide, nitrogen oxides, and unburned hydrocarbon emission concentrations ‎were found to be ‎7.26‎ vol%‎, ‎0.46 vol%‎, ‎95.7‎ ppm, and‎ 36.2 ppm, respectively, under the ‎selected optimal operating conditions while the quantity of brake thermal efficiency was found at an acceptable level (‎34.0‎%).‎ In general, the applied soft computing combination appears to be a promising approach to model and optimize operating parameters and fuel composition of diesel engines.

摘要

本研究旨在使用软计算技术组合建立和优化以碳纳米粒子剂量水/柴油乳液燃料为燃料的柴油机的性能和排放特性。采用经粒子群算法调整的自适应神经模糊推理系统对发动机的性能和排放参数进行建模,同时通过多目标粒子群算法对发动机工作参数和燃料组成进行优化。模型输入变量包括:喷射正时(35-41° CA BTDC)、发动机负荷(0-100%)、纳米颗粒剂量(0-150μM)和水含量(0-3wt%)。模型输出变量包括:比燃油消耗率、制动热效率以及一氧化碳、二氧化碳、氮氧化物和未燃烧烃的排放浓度。建模系统的训练和测试是基于从实验试验中获得的 60 个数据模式进行的。还彻底分析和综合讨论了输入变量对发动机性能和排放特性的影响。根据实验结果,喷射正时和发动机负荷可以显著影响所有研究的性能和排放参数。水和纳米粒子添加到柴油中可以显著影响一些性能和排放参数。该建模系统可以以 R>0.93、MSE<5.70×10、RMSE<7.55×10 和 MAPE<3.86×10 的精度预测输出参数。最佳条件为:喷射正时 39° CA BTDC、发动机负荷 74%、纳米颗粒剂量 112μM 和水含量 2.49wt%。在选择的最佳运行条件下,二氧化碳、一氧化碳、氮氧化物和未燃烧烃的排放浓度分别为 7.26vol%、0.46vol%、95.7ppm 和 36.2ppm,而制动热效率的数量保持在可接受的水平(34.0%)。总的来说,所应用的软计算组合似乎是一种很有前途的方法,可以对柴油机的运行参数和燃料组成进行建模和优化。

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