Combining Neural Networks and Genetic Algorithms to Predict and Reduce Diesel Engine Emissions
José M Alonso, Fernando Alvarruiz, José M Desantes, Leonor Hernández, Vicente Hernández, and Germán Moltó. Combining Neural Networks and Genetic Algorithms to Predict and Reduce Diesel Engine Emissions. IEEE Transactions on Evolutionary Computation, 11:46–55, 2 2007.
Download
Abstract
Diesel engines are fuel efficient which benefits the reduction of \rm CO_\2 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.
BibTeX Entry
@article{Molto2007cnn,
abstract = {Diesel engines are fuel efficient which benefits the reduction of \{rm CO\}_\{2\} 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.},
author = {José M Alonso and Fernando Alvarruiz and José M Desantes and Leonor Hernández and Vicente Hernández and Germán Moltó},
doi = {10.1109/TEVC.2006.876364},
issn = {1089-778X},
issue = {1},
journal = {IEEE Transactions on Evolutionary Computation},
month = {2},
pages = {46-55},
title = {Combining Neural Networks and Genetic Algorithms to Predict and Reduce Diesel Engine Emissions},
volume = {11},
url = {http://ieeexplore.ieee.org/lpdocs/epic03/wrapper.htm?arnumber=4079607},
year = {2007}
}