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Support vector machine to predict diesel engine performance and emission parameters fueled with nano-particles additive to diesel fuel

机译:支持向量机预测柴油发动机性能和发射参数,用纳米颗粒添加剂加入柴油燃料

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This paper studies the use of adaptive Support Vector Machine (SVM) to predict the performance parameters and exhaust emissions of a diesel engine operating on nanodiesel blended fuels. In order to predict the engine parameters, the whole experimental data were randomly divided into training and testing data. For SVM modelling, different values for radial basis function (RBF) kernel width and penalty parameters (C) were considered and the optimum values were then found. The results demonstrate that SVM is capable of predicting the diesel engine performance and emissions. In the experimental step, Carbon nano tubes (CNT) (40, 80 and 120 ppm) and nano silver particles (40, 80 and 120 ppm) with nano-structure were prepared and added as additive to the diesel fuel. Six cylinders, four-stroke diesel engine was fuelled with these new blended fuels and operated at different engine speeds. Experimental test results indicated the fact that adding nano particles to diesel fuel, increased diesel engine power and torque output. For nano-diesel it was found that the brake specific fuel consumption (bsfc) was decreased compared to the net diesel fuel. The results proved that with increase of nano particles concentrations (from 40 ppm to 120 ppm) in diesel fuel, CO2 emission increased. CO emission in diesel fuel with nano-particles was lower significantly compared to pure diesel fuel. UHC emission with silver nano-diesel blended fuel decreased while with fuels that contains CNT nano particles increased. The trend of NOx emission was inverse compared to the UHC emission. With adding nano particles to the blended fuels, NOx increased compared to the net diesel fuel. The tests revealed that silver & CNT nano particles can be used as additive in diesel fuel to improve complete combustion of the fuel and reduce theexhaust emissions significantly.
机译:本文研究了使用自适应支持向量机(SVM)的预测性能参数和上nanodiesel柴油发动机操作的废气排放混合燃料。为了预测的发动机参数,在整个实验数据,随机分为训练和测试数据。对于SVM建模,径向基函数(RBF)核宽度和惩罚参数(C)不同的值被认为是和随后发现的最佳值。结果表明,SVM能够预测柴油机性能和排放。在实验步骤中,碳纳米管(CNT)(40,80和120ppm的)和纳米银粒子(40,80和120ppm的)与纳米结构的制备和作为添加剂添加到柴油燃料。六缸,四冲程柴油发动机燃用这些新的混合燃料,并在不同的发动机速度运行。实验测试结果表明以下事实:添加纳米颗粒的柴油燃料,提高了柴油机的功率和扭矩输出。用于纳米柴油,发现制动燃料消耗率(BSFC)中的溶液相比,净柴油燃料减少。结果证明,用纳米颗粒浓度的增加(从40ppm至120ppm的)在柴油燃料中,CO 2排放增加。在柴油燃料具有纳米颗粒的CO排放物较低显著相比纯柴油燃料。而与含有CNT的纳米颗粒的燃料增加了与银纳米柴油混合燃料UHC排放减少。 NOx排放的趋势逆相比UHC排放。与添加纳米颗粒与混合燃料,NOx的增加相比的净柴油燃料。其结果可以确认银&CNT纳米颗粒可以在柴油燃料中使用作为添加剂,以改善燃料的完全燃烧,并减少排放theexhaust显著。

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