基于神经网络和支持向量机的CRDI发动机喷射参数排放预测模型改进SOOT-NOx权衡

IF 1.1 4区 工程技术 Q4 MECHANICS Journal of Applied Fluid Mechanics Pub Date : 2023-10-01 DOI:10.47176/jafm.16.10.1801
W. Liao, J. H. Shi, G. X. Li
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引用次数: 0

摘要

人工神经网络(ANN)和支持向量机(SVM)被广泛应用于求解非线性问题。本研究基于112组实验数据,建立了ANN和SVM模型并进行了对比,以改善使用F-T柴油的CRDI发动机在不同工况和喷射参数下烟灰和NOx排放的权衡关系。通过评估均方误差(MSE)和决定系数选择不同预测目标的模型参数。与网络迭代次数相比,隐含节点数对ANN模型的MSE的影响更大。与惩罚参数相比,宽度系数对支持向量机性能的影响较小。对比分析表明,SVM的预测精度和泛化能力优于人工神经网络,最大误差不超过5%,决定系数大于0.9。随后,将最优SVM模型与NSGA-II算法相结合,确定CRDI发动机的最优喷射参数,得到同时降低SOOT和NOx排放的解决方案。通过优化后的喷射参数,与发动机原有工况相比,烟尘排放降低3.7-7.1%,氮氧化物排放降低1.2-2.6%。基于有限的实验样本,推断支持向量机是预测F-T柴油发动机排气排放的有用工具,可以为优化喷射参数提供支持。
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CRDI Engine Emission Prediction Models with Injection Parameters Based on ANN and SVM to Improve the SOOT-NOx Trade-Off
Artificial Neural Network (ANN) and Support Vector Machine (SVM) have been widely used to solve non-linear problems. In the current study, based on 112 groups of experimental data, ANN and SVM models were established and compared to improve the trade-off relationship between SOOT and NOx emissions of a Common Rail Diesel Injection (CRDI) engine fueled with Fischer-Tropsch (F-T) diesel under different operating conditions and injection parameters. The model parameters for the different predictive targets were selected by evaluating the mean square error (MSE) and determination coefficient. Compared to the number of network iterations, the number of implied nodes had a greater effect on the MSE of the ANN model. Compared to the penalty parameter, the width coefficient had a weaker impact on the SVM performance. A comparative analysis showed that the SVM had better predictive accuracy and generalization ability than the ANN, with a maximum error not exceeding five percent and a determination coefficient of over 0.9. Subsequently, the optimal SVM model was combined with the NSGA-II algorithm to determine the optimal injection parameters for the CRDI engine, resulting in solutions to simultaneously decrease the SOOT and NOx emissions. The optimized injection parameters resulted in a 3.7–7.1% reduction in SOOT emission and a 1.2–2.6% reduction in NOx emissions compared to the original engine operating conditions. Based on limited experimental samples, SVM is inferred to be a useful tool for predicting the exhaust emissions of engines fueled with F-T diesel and can provide support for optimizing injection parameters.
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来源期刊
Journal of Applied Fluid Mechanics
Journal of Applied Fluid Mechanics THERMODYNAMICS-MECHANICS
CiteScore
2.00
自引率
20.00%
发文量
138
审稿时长
>12 weeks
期刊介绍: The Journal of Applied Fluid Mechanics (JAFM) is an international, peer-reviewed journal which covers a wide range of theoretical, numerical and experimental aspects in fluid mechanics. The emphasis is on the applications in different engineering fields rather than on pure mathematical or physical aspects in fluid mechanics. Although many high quality journals pertaining to different aspects of fluid mechanics presently exist, research in the field is rapidly escalating. The motivation for this new fluid mechanics journal is driven by the following points: (1) there is a need to have an e-journal accessible to all fluid mechanics researchers, (2) scientists from third- world countries need a venue that does not incur publication costs, (3) quality papers deserve rapid and fast publication through an efficient peer review process, and (4) an outlet is needed for rapid dissemination of fluid mechanics conferences held in Asian countries. Pertaining to this latter point, there presently exist some excellent conferences devoted to the promotion of fluid mechanics in the region such as the Asian Congress of Fluid Mechanics which began in 1980 and nominally takes place in one of the Asian countries every two years. We hope that the proposed journal provides and additional impetus for promoting applied fluids research and associated activities in this continent. The journal is under the umbrella of the Physics Society of Iran with the collaboration of Isfahan University of Technology (IUT) .
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