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Artificial neural network approach to predict the engine performance of fish oil biodiesel with diethyl ether using back propagation algorithm

机译:反向传播算法的人工神经网络方法预测鱼油生物柴油与乙醚的发动机性能

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摘要

An artificial neural network (ANN) model is developed to predict the engine performance of fish oil biodiesel blended with diethyl ether. Engine performance and emission characteristics such as brake thermal efficiency, hydrocarbon, exhaust gas temperature, oxides of nitrogen (NO_x), carbon monoxide (CO), smoke and carbon dioxide (CO_2) were considered. Experimental investigations on single-cylinder, constant speed, direct injection diesel engine are carried out under variable load conditions. The performance and emission characteristics are measured using an exhaust gas analyser, smoke metre, piezoelectric pressure transducer and crank angle encoder for different fuel blends and engine load conditions. In this model, a back propagation algorithm is used to predict the performance. Computational results clearly demonstrated that the developed ANN models produced less deviations and exhibited higher predictive accuracy with acceptable determination correlation coefficients of 0.97-1 and mean relative error of 0-3.061% with experimental values. The root mean square errors were found to be low. The developed model produces the idealised results and it has been found to be useful for predicting the engine performance and emission characteristics with limited number of available data.
机译:建立了人工神经网络(ANN)模型来预测鱼油生物柴油与乙醚混合的发动机性能。考虑了发动机性能和排放特性,例如制动热效率,碳氢化合物,废气温度,氮氧化物(NO_x),一氧化碳(CO),烟气和二氧化碳(CO_2)。在可变负载条件下进行了单缸,恒速,直喷柴油机的实验研究。使用废气分析仪,烟度计,压电压力传感器和曲轴转角编码器针对不同的混合燃料和发动机负载条件测量性能和排放特性。在此模型中,反向传播算法用于预测性能。计算结果清楚地表明,所开发的人工神经网络模型产生的偏差较小,并且具有较高的预测精度,可接受的测定相关系数为0.97-1,平均相对误差为0-0.061%(具有实验值)。发现均方根误差低。所开发的模型可以产生理想的结果,并且发现该模型可用于有限数量的可用数据预测发动机性能和排放特性。

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