Title :
The need for bias modelling in MVEM based estimators
Author :
Vasu, Jonathan ; Deb, A.K. ; Mukhopadhyay, S. ; Pattada, Kallappa
Abstract :
Mean Value Engine Models (MVEM) have been used extensively in automotive controls especially over the last 20 years. An MVEM was derived from a detailed Within-Cycle, Crank-Angle based Model (WCCM) that modelled the fluctuating cylinder combustion driven dynamics of a Spark Ignition engine. The model was designed for eventual use in a Fault Diagnoser built for an automobile engine system. While using this model in Extended Kalman Filter based estimators for fault residue generation, it was noted that the model suffered from biases that impaired the quality of estimation results. The biases were found to originate from the inherent simplifications associated with MVEMs. This led to an understanding of the limits of accuracy of a traditional MVEM model, the need for accurate bias modelling and the development of more robust estimators. Estimation results were found to improve after bias correction using Least-Square Support Vector Regressors.
Keywords :
Kalman filters; automobiles; fault diagnosis; internal combustion engines; least squares approximations; mechanical engineering computing; regression analysis; support vector machines; MVEM based estimators; automobile engine system; automotive controls; bias modelling; extended Kalman filter based estimators; fault diagnoser; fault residue generation; fluctuating cylinder combustion driven dynamics; least square support vector regressors; mean value engine models; spark ignition engine; within cycle crank angle based model; Engines; Manifolds; Mathematical model; Orifices; Polynomials; Temperature measurement;
Conference_Titel :
Modelling, Identification and Control (ICMIC), Proceedings of 2011 International Conference on
Conference_Location :
Shanghai
DOI :
10.1109/ICMIC.2011.5973699