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Multi-objective optimization of heavy-duty diesel engines under stationary conditions

机译:固定工况下重型柴油机的多目标优化

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New technological developments are helping to control contaminants in diesel engines but, as new degrees of freedom become available, the assessment of optimal values that combine to reduce different emissions has become a difficult task. This paper studies the feasibility of using artificial neural networks (ANNs) as models to be integrated in the optimization of diesel engine settings, with the objective of complying with the increasingly stringent emission regulations while also keeping, or even reducing, the fuel consumption. A large database of stationary engine tests covering a wide range of experimental conditions was used for the development of the ANN models. The optimization was developed within the frame of the European legislation for heavy duty diesel engines. Experimental validation of the optimized results was carried out and compared with the ANN predictions, showing a high level of accuracy, especially for fuel consumption and nitrogen oxides (NO.J.
机译:新技术的发展正在帮助控制柴油机中的污染物,但是,随着新的自由度的出现,结合减少不同排放物的最佳值的评估已成为一项艰巨的任务。本文研究了使用人工神经网络(ANN)作为模型集成到柴油机设置优化中的可行性,其目的是遵守日益严格的排放法规,同时还能保持甚至减少燃油消耗。 ANN模型的开发使用了涵盖广泛实验条件的大型固定式发动机测试数据库。优化是在重型柴油机的欧洲法规框架内进行的。对优化结果进行了实验验证,并与ANN预测进行了比较,显示出很高的准确性,特别是对于燃油消耗和氮氧化物(NO.J.

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