Model-based Adaptive Observers for Intake Leakage Detection in Diesel Engines

Abstract : This paper studies the problem of diesel engine diagnosis by means of model-based adaptive observers. The problem is motivated by the needs of garante high-performance engine behavior and in particular to respect the environmentally-based legislative regulations. The complexity of the intake systems of this type of engine makes this task particularly arduous and requires to constantly monitor and diagnose the engine operation. The development and application of two different nonlinear adaptive observers for intake leakage estimation is the goal of this work. The proposed model-based adaptive observers approach allows estimating a variable that is directly related to the presence of leakage, e.g., hole radius. Monitoring and diagnostic tasks, with this kind of approach, are straightforward. Two different approaches, whose main difference is on observer adaptation law structure are studied. One approach is based on fixed gains while the other method has variable gain. The paper also includes a comparative study of the two methods in simulations using advanced diesel engine professional simulator AMEsim.
keyword : DI observers
Document type :
Conference papers
Liste complète des métadonnées

Cited literature [17 references]  Display  Hide  Download

https://hal.archives-ouvertes.fr/hal-00438816
Contributor : Carlos Canudas de Wit <>
Submitted on : Saturday, June 13, 2009 - 4:24:34 PM
Last modification on : Thursday, February 7, 2019 - 2:48:51 PM
Document(s) archivé(s) le : Monday, October 15, 2012 - 12:21:25 PM

File

Intake_Fault_Detection_V6.pdf
Files produced by the author(s)

Identifiers

  • HAL Id : hal-00438816, version 2

Citation

Riccardo Ceccarelli, Carlos Canudas de Wit, Philippe Moulin, A. Sciarretta. Model-based Adaptive Observers for Intake Leakage Detection in Diesel Engines. American Control Conference (ACC 2009), Jun 2009, Saint Luis, Missouri, United States. pp.1128-1133. ⟨hal-00438816v2⟩

Share

Metrics

Record views

525

Files downloads

281