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Engine Performance, Emission and Combustion in Common Rail Turbocharged Diesel Engine from Jatropha Curcas Using Artificial Neural Network

机译:利用人工神经网络,来自Joatropha Curcas的共同轨道涡轮增压柴油发动机发动机性能,排放和燃烧

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This paper investigates the performance, emission and combustion of a four cylinder common-rail turbocharged diesel engine using jatropha curcas biodiesel blends (JCB). The test was performed with various ratios of jatropha curcas methyl ester (JCME) in the blends (JCB10, JCB20, JCB30, and JCB50). An artificial neural networks (ANN) model based on standard back-propagation algorithm was used to predict combustion, performance and emissions characteristics of the engine using MATLAB. To acquire data for training and testing of the proposed ANN, the different engine speeds (1500-3500 rpm) was selected as the input parameter, whereas combustion, performance and emissions were chosen as the output parameters for ANN modeling of a common-rail turbocharged diesel engine. The performance, emissions and combustion of the ANN were validated by comparing the prediction dataset with the experimental results. The results show that the correlation coefficient was successfully controlled within the range 0.9798-0.9999 for the ANN model and test data. The value of MAPE (Mean Absolute Percentage Error) was within the range 1.2373-6.4217 and the Root Mean Square (RSME) value was below 0.05 by the model, which is acceptable. This study shows that modeling techniques as an approach in alternative energy can give improvement advantage of reliability in the prediction of performance and emission of internal combustion engines.
机译:本文调查了使用麻风手套Curcas生物柴油混合物(JCB)的四缸共轨涡轮增压柴油机的性能,排放和燃烧。在共混物(JCB10,JCB20,JCB30和JCB50)中,用各种比例进行试验的JATROPHA CURCAS甲酯(JCME)。基于标准回波传播算法的人工神经网络(ANN)模型用于预测使用MATLAB发动机的燃烧,性能和排放特性。要获取建议ANN的培训和测试数据,选择了不同的发动机速度(1500-3500rpm)作为输入参数,而燃烧,性能和排放被选中作为共同轨道涡轮增压的ANN建模的输出参数柴油发动机。通过将预测数据集与实验结果进行比较来验证ANN的性能,排放和燃烧。结果表明,相关系数成功控制在ANN模型和测试数据的0.9798-0.9999范围内。 MAPE的值(平均绝对百分比误差)在1.2373-6.4217的范围内,并且均线的均方根(RSME)值低于0.05,这是可接受的。该研究表明,在替代能量中的方法的建模技术可以提供改进的可靠性在内燃机的性能和排放中的可靠性的优点。

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