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Artificial intelligence techniques for the vibration, noise, and emission characteristics of a hydrogen-enriched diesel engine

机译:用于富含氢柴油发动机的振动,噪声和排放特性的人工智能技术

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摘要

The present paper investigates the prediction of vibration, noise level, and emission characteristics of a four-stroke, four-cylinder diesel engine fueled with sunflower, canola, and corn biodiesel blends while H-2 injected through inlet manifold using two different artificial intelligence methods: artificial neural network(ANN) and support vector machines(SVM). The aim of using these methods is to predict vibration, noise, carbon monoxide (CO), CO2, and NOx based on the initial experimental study by varying engine speed, blends of biodiesel, and H-2 energy substitution ratio. Experimental data weregathered from the literature. For theANN method, LevenbergMarquardt backpropagation training algorithm with logarithmic sigmoid and linear transfer function for hidden and output layers, respectively, gives the best results for prediction of vibration, noise, and emission characteristics. For SVM, a regression model is implemented with Gaussian kernel function. Results show that the ANN performs better than SVM, and the bestmean average percent error and R-2 for the models developed are 2.03 and 0.988 for vibration acceleration, 0.39 and 0.9615 for noise, 7.27 and 0.8549 for CO, 5.09 and 0.9398 for NOx, and2.21 and 0.993 for CO2 values, respectively. Eventually, it is found that the ANN method is a good choice for simulation and prediction of dual fueled hydrogen sunflower, canola, and corn biodiesel blends.
机译:本文研究了四冲程的振动,噪声水平和排放特性的预测,四缸柴油发动机用向日葵,油菜,玉米生物柴油混合,而H-2使用两种不同的人工智能方法注入入口歧管:人工神经网络(ANN)和支持向量机(SVM)。使用这些方法的目的是通过改变发动机速度,生物柴油的混合物和H-2能量取代比来预测初始实验研究的振动,噪声,一氧化碳(CO),CO2和NOx。从文献中获得的实验数据。对于Theann方法,分别具有用于隐藏和输出层的对数矩形和线性传递函数的LevenbergMarquardt BackPropagation训练算法,给出了预测振动,噪声和发射特性的最佳效果。对于SVM,回归模型用高斯内核功能实现。结果表明,ANN表现优于SVM,振动加速度为2.03和0.988,噪声为0.39和0.9615,噪声为0.39和0.8549,NOX为0.09和0.9398,为NOx,5.09和0.9398的最佳模型的最佳平均误差和R-2。和2.21和0.993分别用于CO2值。最终,发现ANN方法是模拟和预测双燃料氢向日葵,油菜和玉米生物柴油混合物的良好选择。

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