A Genetic Algorithm Optimized ANN for Prediction of Exergy and Energy Analysis Parameters of a Diesel Engine Different Fueled Blends

A. Yaşar
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引用次数: 1

Abstract

In this research, a hybrid artificial neural network (ANN) optimized by a genetic algorithm (GA) was used to estimate energy and exergy analyses parameters. This article presents an approach for estimating energy and exergy analyses parameters with optimized ANN model based on GA (GA-ANN) for different ternary blends consisting of diesel, biodiesel and bioethanol in a single-cylinder, water-cooled diesel engine. The data used in the experiments performed at twelve different engine speeds between 1000 and 3000 rpm with 200 rpm intervals for five different fuel mixtures consisting of fuel mixtures prepared by blends biodiesel, diesel and 5% bioethanol in different volumes constitute the input data of the models. Using these input data, engine torque (ET), amount of fuel consumed depending on fuels and speed (AFC), carbon monoxide emission values (CO), carbon dioxide emission values (CO2), hydrocarbon emission values (HC), nitrogen oxides emission values (NOx), the amount of air consumed (AAC), exhaust gas temperatures (EGT) and engine coolant temperatures (ECT) were estimated with the GA-ANN. In examining the results obtained were examined, it was proved that diesel, biodiesel and bioethanol blends were effective in predicting all the results mentioned in engine studies performed at 200 rpm intervals in the 1000-3000 rpm range. A standard ANN model used in the literature was also proposed to measure the prediction performance of GA-ANN model. The predictive results of both models were compared using various performance indices. As a result, it was revealed that the proposed GA-ANN model reached higher accuracy in estimating the exergy and energy analyses parameters of the diesel engine compared to the standard ANN technique.
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基于遗传算法优化的人工神经网络用于柴油机不同燃料混合物的火用预测和能量分析参数
本研究采用遗传算法优化的混合人工神经网络(ANN)来估计能量和火用分析参数。本文提出了一种基于遗传算法(GA-ANN)的优化神经网络模型,用于估算单缸水冷柴油机中柴油、生物柴油和生物乙醇三元混合物的能量和火用分析参数。实验中使用的数据是在12种不同的发动机转速下进行的,转速在1000到3000转/分之间,转速间隔为200转/分,使用5种不同的燃料混合物,这些燃料混合物由不同体积的生物柴油、柴油和5%生物乙醇混合而成。利用这些输入数据,利用GA-ANN估算出发动机扭矩(ET)、燃料和速度相关的燃油消耗量(AFC)、一氧化碳排放值(CO)、二氧化碳排放值(CO2)、碳氢化合物排放值(HC)、氮氧化物排放值(NOx)、空气消耗量(AAC)、废气温度(EGT)和发动机冷却液温度(ECT)。在测试中得到的结果进行了测试,证明柴油,生物柴油和生物乙醇混合物有效地预测了在1000-3000 rpm范围内以200 rpm间隔进行的发动机研究中提到的所有结果。本文还提出了文献中使用的标准神经网络模型来衡量GA-ANN模型的预测性能。采用各种性能指标对两种模型的预测结果进行比较。结果表明,与标准神经网络技术相比,所提出的GA-ANN模型在估计柴油机的火用和能量分析参数方面具有更高的精度。
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