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Combining Neural Networks and Genetic Algorithms to Predict and Reduce Diesel Engine Emissions

机译:结合神经网络和遗传算法预测和减少柴油机排放

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摘要

Diesel engines are fuel efficient which benefits the reduction of CO2 released to the atmosphere compared with gasoline engines, but still result in negative environmental impact related to their emissions. As new degrees of freedom are created, due to advances in technology, the complicated processes of emission formation are difficult to assess. This paper studies the feasibility of using artificial neural networks (ANNs) in combination with genetic algorithms (GAs) to optimize the diesel engine settings. The objective of the optimization was to find settings that complied with the increasingly stringent emission regulations while also maintaining, or even reducing the fuel consumption. A large database of stationary engine tests, covering a wide range of experimental conditions was used for this analysis. The ANNs were used as a simulation tool, receiving as inputs the engine operating parameters, and producing as outputs the resulting emission levels and fuel consumption. The ANN outputs were then used to evaluate the objective function of the optimization process, which was performed with a GA approach. The combination of ANN and GA for the optimization of two different engine operating conditions was analyzed and important reductions in emissions and fuel consumption were reached, while also keeping the computational times low
机译:柴油发动机具有高燃料效率,与汽油发动机相比,有益于减少排放到大气中的二氧化碳,但仍会导致与排放有关的负面环境影响。随着新的自由度的产生,由于技术的进步,很难评估复杂的排放形成过程。本文研究了将人工神经网络(ANN)与遗传算法(GA)结合使用以优化柴油发动机设置的可行性。优化的目的是找到符合日益严格的排放法规的设置,同时还能保持甚至减少燃油消耗。该分析使用了涵盖固定试验条件的大型固定式发动机测试数据库。人工神经网络被用作模拟工具,接收发动机运行参数作为输入,并产生输出的排放水平和燃料消耗。然后,将人工神经网络的输出用于评估优化过程的目标函数,该过程是通过GA方法执行的。分析了ANN和GA的组合,以优化两种不同的发动机工况,并实现了排放量和燃油消耗的重大减少,同时保持了较低的计算时间

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