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Performance and emission prediction of a compression ignition engine fueled with biodiesel-diesel blends: A combined application of ANN and RSM based optimization

机译:用生物柴油 - 柴油混合燃料的压缩点火发动机的性能和排放预测:基于ANN和RSM优化的组合应用

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In the present study, the performance and emission parameters of a single cylinder diesel engine powered by biodiesel-diesel fuel blends were predicted by Artificial Neural Network (ANN) and optimized by Response Surface Methodology (RSM). The data to be used for ANN and RSM applications were obtained by using biodiesel/diesel fuel blends at different engine loads and various injection pressures. ANN model has been developed to predict the outputs such as brake thermal efficiency (BTE), brake specific fuel consumption (BSFC), exhaust gas temperature (EGT), nitrogen oxides (NOx), hydrocarbons (HC), carbon monoxide (CO) and smoke regarding engine load, biodiesel ratio and injection pressure. A feed-forward multi-layer perceptron network is used to show the correlation among the input factors and the output factors. The RSM is applied to find the optimum engine operating parameters with the purpose of simultaneous reduction of emissions, EGT, BSFC and increase BTE. The obtained results reveal that the ANN can correctly model the exhaust emission and performance parameters with the regression coefficients (R-2) between 0.8663 and 0.9858. It is seen that the maximum mean relative error (MRE) is less than 10%, compared with the experimental results. The RSM study demonstrated that, biodiesel ratio of 32% with 816-W engine load and 470 bar injection pressure are the optimum engine operating parameters. It is found that the ANN with RSM support is a good tool for predict and optimize of diesel engine parameters powered with diesel/biodiesel mixtures.
机译:在本研究中,由人工神经网络(ANN)预测由生物柴油 - 柴油燃料混合物供电的单个汽缸柴油发动机的性能和发射参数,并通过响应表面方法(RSM)进行优化。通过在不同发动机负载和各种注射压力下使用生物柴油/柴油燃料混合来获得用于ANN和RSM应用的数据。已开发了ANN模型以预测制动热效率(BTE),制动特定燃料消耗(BSFC),废气温度(EGT),氮氧化物(NOx),烃(HC),一氧化碳(CO)和烟雾有关发动机负荷,生物柴油比和注射压力。前馈多层Perceptron网络用于显示输入因子和输出因子之间的相关性。 RSM应用于找到最佳发动机操作参数,目的是同时减少排放,EGT,BSFC和增加BTE。所获得的结果表明,ANN可以在0.8663和0.9858之间使用回归系数(R-2)正确地模拟废气发射和性能参数。可以看出,与实验结果相比,最大平均相对误差(MRE)小于10%。 RSM研究证明,使用816-W发动机负荷和470巴进入压力的生物柴油比为32%,是最佳发动机操作参数。有人发现,具有RSM支持的ANN是一种良好的工具,用于预测和优化柴油发动机参数,该柴油发动机参数用于柴油/生物柴油混合物。

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