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A genetic algorithm-based artificial neural network model with TOPSIS approach to optimize the engine performance

机译:基于遗传算法的人工神经网络模型及TOPSIS方法优化发动机性能

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This paper describes the application of an artificial neural network, genetic algorithm and analytic network process-technique for order preference by similarity to ideal solution for the selection of the optimum fuel blend. A single-cylinder, constant-speed direct-injection diesel engine with a rated output of 4.4 kW was used for exploratory analysis at different load conditions. Ten objectives ? brake thermal efficiency, maximum rate of pressure rise, NOx, CO2, CO, HC, smoke, exhaust gas temperature, ignition delay and combustion delay were considered. The proposed ANN model is integrated with GA and the hybrid multi-criteria decision-making technique of ANP-TOPSIS to evaluate the optimum blend. First the ANN model was developed to predict the performance, combustion and emission parameters of the engine. A multi-layer perception network was used for non-linear mapping between input and output parameters. The performance of the ANN model is determined and shows the efficiency of the model to predict the performance, emission and combustion parameters, with a determination coefficient of 0.9627. Second, GA was used to determine the optimum load and blend based on the predicted ANN output parameter. Third, an approach based on the TOPSIS method was used for finding the best blend from the observed optimum parameters of GA.
机译:本文介绍了一种人工神经网络,遗传算法和解析网络过程技术的应用,该方法通过类似于理想方案的顺序选择偏好来选择最佳燃料混合物。使用额定输出为4.4 kW的单缸恒速直喷柴油发动机在不同负载条件下进行探索性分析。十个目标?考虑了制动器的热效率,最大压力上升率,NOx,CO2,CO,HC,烟气,废气温度,点火延迟和燃烧延迟。所提出的人工神经网络模型与遗传算法和ANP-TOPSIS的混合多准则决策技术相集成,以评估最佳混合。首先,开发了ANN模型来预测发动机的性能,燃烧和排放参数。多层感知网络用于输入和输出参数之间的非线性映射。确定了ANN模型的性能,并显示了该模型预测性能,排放和燃烧参数的效率,确定系数为0.9627。其次,基于预测的ANN输出参数,使用GA确定最佳负载和混合。第三,使用基于TOPSIS方法的方法从观察到的GA最佳参数中找到最佳混合物。

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