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Development of recurrent neural networks for virtual sensing of NOx emissions in internal combustion engines

Journal Article
2009-24-0110
ISSN: 1946-3952, e-ISSN: 1946-3960
Published September 13, 2009 by Consiglio Nazionale delle Ricerche in Italy
Development of recurrent neural networks for virtual sensing of NOx emissions in internal combustion engines
Sector:
Citation: Arsie, I., Pianese, C., and Sorrentino, M., "Development of recurrent neural networks for virtual sensing of NOx emissions in internal combustion engines," SAE Int. J. Fuels Lubr. 2(2):354-361, 2010, https://doi.org/10.4271/2009-24-0110.
Language: English

Abstract:

The paper focuses on the experimental identification and validation of recurrent neural networks (RNN) for virtual sensing of NO emissions in internal combustion engines (ICE). Suited training procedures and experimental tests are proposed to improve RNN precision and generalization in predicting NO formation dynamics. The reference Spark Ignition (SI) engine was tested by means of an integrated system of hardware and software tools for engine test automation and control strategies prototyping. A fast response analyzer was used to measure NO emissions at the exhaust valve. The accuracy of the developed RNN model is assessed by comparing simulated and experimental trajectories for a wide range of operating scenarios. The results evidence that RNN-based virtual NO sensor will offer significant opportunities for implementing on-board feedforward and feedback control strategies aimed at improving the performance of after-treatment devices.