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Soot emission prediction of a waste-gated turbo-charged DI diesel engine using artificial neural network

机译:基于人工神经网络的废气门涡轮增压DI柴油机烟尘排放预测

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This study is about soot emission prediction of a waste-gated turbo-charged DI diesel engine using artificial neural network (ANN). For training the ANN model, six ranges of experimental data in previous study were used, and one range of data was kept for testing the accuracy of ANN predictions. The input parameters for the ANN are inlet manifold pressure, inlet manifold temperature, inlet air mass flow rate, fuel consumption, engine torque, and speed. Output parameter is the density of soot in the exhaust. The results show the ANN approach can be used to accurately predict soot emission of a turbo-charged diesel engine in different opening ranges of waste-gate (ORWG). Root mean-squared error (RMSE), fraction of variance (R2), and mean absolute percentage error (MAPE) for predictions were found to be 1.19 (mg/m~3), 0.9998, and 6.4%, respectively.
机译:这项研究是关于使用人工神经网络(ANN)预测带有门控的涡轮增压DI柴油发动机的烟尘排放的。为了训练ANN模型,使用了先前研究中的6个范围的实验数据,并保留了1个范围的数据以测试ANN预测的准确性。 ANN的输入参数是进气歧管压力,进气歧管温度,进气质量流量,燃油消耗,发动机扭矩和转速。输出参数是废气中烟灰的密度。结果表明,ANN方法可用于准确预测废气门(ORWG)不同打开范围内的涡轮增压柴油机的烟尘排放。预测的均方根误差(RMSE),方差分数(R2)和平均绝对百分比误差(MAPE)分别为1.19(mg / m〜3),0.9998和6.4%。

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