4.5 Article

Nonlinear observer-based exhaust manifold pressure estimation and fault detection for gasoline engines with exhaust gas recirculation

期刊

INTERNATIONAL JOURNAL OF ENGINE RESEARCH
卷 22, 期 4, 页码 1377-1392

出版社

SAGE PUBLICATIONS LTD
DOI: 10.1177/1468087419882125

关键词

Gasoline engine; exhaust gas recirculation; observer; Lyapunov; global convergence; exhaust manifold pressure estimation; fault detection

资金

  1. Toyota Motor Corporation

向作者/读者索取更多资源

This article introduces a nonlinear observer-based method for estimating exhaust manifold pressure in gasoline engines with an exhaust gas recirculation system. The proposed observer is able to accurately estimate the pressure at arbitrary initial values, improving fault detection efficiency in the exhaust gas recirculation system.
This article presents a nonlinear observer-based method to estimate the exhaust manifold pressure for the gasoline engines equipped with an exhaust gas recirculation system. A dynamic model is designed to estimate the exhaust manifold pressure, which includes both the intake manifold and exhaust manifold dynamics focusing on gas mass flows. Based on the developed model, a nonlinear exhaust manifold pressure observer is proposed to replace the exhaust manifold pressure sensor, and the global convergence is analyzed by a constructed Lyapunov function and the physical meaning of the time-varying parameters. The experimental validations show that the observer-based exhaust manifold pressure estimator is able to converge to the real value at arbitrary initial value and estimates the exhaust manifold pressure accurately during both the steady-state and transient conditions. Finally, the proposed exhaust manifold pressure observer is applied into the fault detection problem for the exhaust gas recirculation system. The experimental validations show that the observer is able to be used to estimate the exhaust gas recirculation ratio and as an extra signal to assist to detect the faults of the exhaust gas recirculation system accurately.

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