首页> 外文期刊>Journal of Thermal Science and Engineering Applications: Transactions of the ASME >A Comparative Study of Artificial Intelligence Based Models to Predict Performance and Emission Characteristics of a Single Cylinder Diesel Engine Fueled With Diesosenol
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A Comparative Study of Artificial Intelligence Based Models to Predict Performance and Emission Characteristics of a Single Cylinder Diesel Engine Fueled With Diesosenol

机译:基于人工智能基于模型的比较研究,以预测柴油机燃料的单缸柴油机的性能和排放特性

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摘要

This study investigates the potential of oxygenated additive (ethanol) on adulterated diesel fuel on the performance and exhaust emission characteristics of a single cylinder diesel engine. Based on the engine experimental data, two artificial intelligence (AI) models, viz., artificial neural network (ANN) and adaptive-neuro fuzzy inference system (ANFIS), have been modeled for predicting brake thermal efficiency (B-th), brake specific energy consumption (BSEC), oxides of nitrogen (NOx), unburnt hydrocarbon (UBHC) and carbon monoxide (CO) with engine load (%), kerosene (vol %), and ethanol (vol %) as input parameters. Both the proposed AI models have the capacity for predicting input-output paradigms of diesel-kerosene-ethanol (diesosenol) blends with high accuracy. A (3-9-5) topology with Levenberg-Marquardt feed forward back propagation (trainlm) learning algorithm has been observed to be the ideal model for ANN. The comparative study of the two AI models demonstrated that ANFIS predicted results have higher accuracy than the ANN with a maximum R-ANFIS/R-ANN value of 1.000534.
机译:该研究研究了含氧添加剂(乙醇)对掺杂柴油燃料对单缸柴油发动机的性能和排气特性的潜力。基于发动机实验数据,两个人工智能(AI)模型,VIZ,人工神经网络(ANN)和Adaptive-Neuro模糊推理系统(ANFIS)被建模用于预测制动热效率(第四个),制动器具有发动机负荷(%),煤油(Vol%)和乙醇(Vol%)作为输入参数的特定能量消耗(BSEC),氮气(NOx),未燃烧的烃(UBHC)和一氧化碳(CO),作为输入参数。所提出的AI模型均具有以高精度预测柴油 - 煤油 - 乙醇(DIESENSOL)混合物的输入输出范例的能力。已经观察到与Levenberg-Marquardt进料前后反向传播(TrainLM)学习算法的拓扑结构是ANN的理想模型。两个AI模型的比较研究表明,ANFIS预测结果具有比ANN更高的精度,最大R-ANFIS / R-ANN值为1.000534。

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