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Optimization of diesel engine operating parameters fueled with palm oil-diesel blend: Comparative evaluation between response surface methodology (RSM) and artificial neural network (ANN)

机译:用棕榈油柴油混合物推动柴油发动机操作参数的优化:响应面法(RSM)和人工神经网络(ANN)之间的比较评价

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摘要

Engine performance and emission characteristics of palm oil-diesel blends tested on single-cylinder diesel engine by several engine loads and injection advances. Exhaust emissions and smoke were recorded using MRU Delta 1600L and MRU Optrans 1600 model gas analyzer, respectively. Brake thermal efficiency (BTE), exhaust gas temperature (EGT), carbon monoxide (CO), hydrocarbon (HC), smoke and nitrogen oxides (NOx) were optimized as output factors considering engine load, injection advance and palm oil percentage as input variables using response surface methodology (RSM) and artificial neural network (ANN). The developed ANN and RSM models showed superior predictive certainty with big R-2 (correlation coefficient) values. The RSM models showed better performance and have higher R-2 values than ANN models. The developed RSM model has R-2 values over 0.90 while the R-2 values of ANN model are between 0.88 and 0.95. The values of mean relative error (MRE) and root mean square error (RMSE) for all the responses were low. Optimum responses were found by 69.11%, 196.25 ppm, 0.126%, 189.764 ppm, 155.49 degrees C and 30.75%, respectively for smoke, NOx, CO, HC, EGT and BTE with optimum operating factors as 17.88% palm oil percentage, 35 degrees CA injection advance and 780-watt engine load. The applied models gave good results that are beneficial for estimating and optimizing the engine performance and emission characteristics.
机译:通过多个发动机负荷和喷射进展在单缸柴油机上测试的棕榈油柴油机的发动机性能和排放特性。使用MRU Delta 1600L和MRU OPTRANS 1600模型气体分析仪记录废气排放和烟雾。制动热效率(BTE),废气温度(EGT),一氧化碳(CO),烃(HC),烟雾和氮氧化物(NOx)被优化为考虑发动机负荷,注射前进和棕榈油百分比作为输入变量的输出因素使用响应面方法(RSM)和人工神经网络(ANN)。开发的ANN和RSM模型显示出具有大的R-2(相关系数)值的卓越的预测确定。 RSM模型显示出更好的性能,并且具有比ANN模型更高的R-2值。开发的RSM模型具有超过0.90的R-2值,而ANN模型的R-2值均为0.88和0.95。所有响应的平均相对误差(MRE)和均方根误差(RMSE)的值较低。 69.11%,196.25 ppm,0.126%,189.764 ppm,155.49℃和30.75%的最佳反应分别发现烟雾,NOx,CO,HC,EGT和BTE,最佳操作因子为17.88%棕榈油百分比,35度CA注入前进和780瓦发动机负荷。所应用的模型得到了良好的效果,有利于估计和优化发动机性能和排放特性。

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