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首页> 外文期刊>Applied thermal engineering: Design, processes, equipment, economics >SVM and ANFIS for prediction of performance and exhaust emissions of a SI engine with gasoline-ethanol blended fuels
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SVM and ANFIS for prediction of performance and exhaust emissions of a SI engine with gasoline-ethanol blended fuels

机译:SVM和ANFIS用于预测汽油-乙醇混合燃料的SI发动机的性能和废气排放

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摘要

This paper studies the use of support vector machine (SVM) and adaptive neuro-fuzzy inference system (ANFIS) to predict the performance parameters and the exhaust emissions of a spark ignition (SI) engine, which operates on ethanol-gasoline blends of 0%, 5%, 10%, 15% and 20% called E0, E5, E10, E15 and E20, respectively. In the experiments, the engine was run at various speeds for each test fuel, and 45 different test conditions were created. In comparison with gasoline fuel, the brake power, the engine torque, the brake thermal efficiency, and the volumetric efficiency increased using ethanol blends, while the brake specific fuel consumption (bsfc) decreased. Moreover, the concentration of CO and HC in the exhaust pipe decreased after ethanol blends were introduced, but CO2 and NOx emissions increased. In order to predict the engine parameters, all the experimental data were randomly divided into training and testing data. For SVM modelling, different values for the radial basis function (RBF) kernel width and the penalty parameters (C) were considered, and the optimum values were then found. For ANFIS modelling, the Gaussian curve membership function (gaussmf) and 200 training epochs were found to be the optimum choices for the training process. The results showed that the SVM predicted the engine performance and the exhaust emissions with the correlation coefficient (R) and the accuracy in the ranges of 0.660-1 and 65.310-99.330%, respectively, while these same parameters were in the ranges of 0.760-1 and 79.270-98.810%, respectively, for the ANFIS. The results demonstrate that the SVM and ANFIS are capable of predicting the SI engine performance and emissions. However, the performance of the ANFIS is significantly higher than that of the SVM. (C) 2015 Elsevier Ltd. All rights reserved.
机译:本文研究了使用支持向量机(SVM)和自适应神经模糊推理系统(ANFIS)来预测火花点火(SI)发动机的性能参数和废气排放的情况,该发动机在乙醇汽油混合比为0%的情况下运行,5%,10%,15%和20%分别称为E0,E5,E10,E15和E20。在实验中,每种测试燃料的发动机都以不同的速度运行,并创建了45种不同的测试条件。与汽油燃料相比,使用乙醇混合燃料可提高制动功率,发动机扭矩,制动热效率和容积效率,而降低制动比燃料消耗(bsfc)。此外,引入乙醇混合物后,排气管中的CO和HC浓度降低,但CO2和NOx排放增加。为了预测发动机参数,将所有实验数据随机分为训练和测试数据。对于SVM建模,考虑了径向基函数(RBF)内核宽度和惩罚参数(C)的不同值,然后找到了最佳值。对于ANFIS建模,发现高斯曲线隶属函数(gaussmf)和200个训练时期是训练过程的最佳选择。结果表明,SVM通过相关系数(R)和精度分别在0.660-1和65.310-99.330%的范围内预测发动机性能和废气排放,而这些相同的参数在0.760-70%的范围内。对于ANFIS,分别为1和79.270-98.810%。结果表明,SVM和ANFIS能够预测SI发动机的性能和排放。但是,ANFIS的性能明显高于SVM。 (C)2015 Elsevier Ltd.保留所有权利。

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