Title

Non-Constant Variance - Emission Modeling Methods For Offline Optimization And Calibration Of Engine Management Systems

Abstract

Calibrating the engine control unit to satisfy pollutant and performance objectives can be a challenging task. Due to the large number of variables and their interactive complexities, many firms apply design of experiment methods and modeling techniques to the acquired test data. This establishes a "black box" or "gray box" simulation model that predicts power and emissions as a function of the engine parameters. An offline optimization procedure on the fitted model(s) will identify the engine control strategy that best satisfies pollutant and performance objectives. A review of the literature reveals that the General Linear Modeling method and Neural Network modeling architectures are widely used in the development of "black box" or "gray box" simulation models. While Neural Network methods are "assumption free", the General Linear Model method is limited to those problems in which the errors, ε, are normally distributed and have constant variance, σ2. Using the Harley-Davidson 1450 CC 2-cylinder SI engine and Horiba Series 200 emissions analyzer equipment, this study provides evidence that the distribution and constant variance assumptions are not satisfied with HC, NOx, and CO data; as a result, the estimated regression coefficients obtained by the General Linear Model method are no longer minimum variance unbiased estimators. Thus, it is necessary to apply other modeling approaches to the problem.

Publication Date

9-16-2003

Publication Title

SAE Technical Papers

Number of Pages

-

Document Type

Article; Proceedings Paper

Personal Identifier

scopus

DOI Link

https://doi.org/10.4271/2003-32-0010

Socpus ID

85072355177 (Scopus)

Source API URL

https://api.elsevier.com/content/abstract/scopus_id/85072355177

This document is currently not available here.

Share

COinS