Reduction of Transient Particulate Matter Spikes with Decision Tree Based Control


Autoria(s): Brahma, Indranil
Data(s)

01/05/2012

Resumo

Decision trees have been proposed as a basis for modifying table based injection to reduce transient particulate spikes during the turbocharger lag period. It has been shown that decision trees can detect particulate spikes in real time. In well calibrated electronically controlled diesel engines these spikes are narrow and are encompassed by a wider NOx spike. Decision trees have been shown to pinpoint the exact location of measured opacity spikes in real time thus enabling targeted PM reduction with near zero NOx penalty. A calibrated dimensional model has been used to demonstrate the possible reduction of particulate matter with targeted injection pressure pulses. Post injection strategy optimized for near stoichiometric combustion has been shown to provide additional benefits. Empirical models have been used to calculate emission tradeoffs over the entire FTP cycle. An empirical model based transient calibration has been used to demonstrate that such targeted transient modifiers are more beneficial at lower engine-out NOx levels.

Identificador

http://digitalcommons.bucknell.edu/fac_journ/496

Publicador

Bucknell Digital Commons

Fonte

Faculty Journal Articles

Palavras-Chave #Decision Trees #Artificial Intelligence #Smoke #Particulate Matter #Dynamic Operation #Engineering
Tipo

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