Diagnostic fault detection for internal combustion engines via norm based map projections

One proven technique for monitoring health of a sealed internal combustion engine is to analyze combustion pressure cycle curves of the individual cylinders. Most techniques that are available are either overly simplistic or rely on artificial intelligence based methodologies such as neural networks. While neural network based methods can be useful, there is normally no quantitatively hard way to determine how accurately a trained neural network represents the desired goal. For this reason, neural networks have little real acceptance by industrial communities that deal with critical applications. This paper describes a technique developed for detecting combustion pressure cycle related faults in diesel engines. This method has been developed at the Pennsylvania State Universities, Applied Research Laboratories, Complex Systems Monitoring and Automation Department and applied to a fully instrumented diesel engine test bed. The new methodology utilizes pressure curve information derived from reliable and relatively inexpensive optical fiber based pressure sensors. The technique outlined in this paper uses a combination of norm based and statistical methods to develop a fault analysis map for particular internal combustion engines. A fully instrumented diesel engine test bed allows for generation of training data sets consistent with actual engine operation. Results from this technique applied to test bed data not used during development of the map show results closely match seeded fault conditions.

[1]  Bruce A. Francis,et al.  Feedback Control Theory , 1992 .

[2]  Arun K. Sood,et al.  Engine Fault Analysis: Part II---Parameter Estimation Approach , 1985, IEEE Transactions on Industrial Electronics.

[3]  B. R. Long,et al.  Enhancing the process of diesel engine condition monitoring , 1996 .

[4]  John J. Moskwa,et al.  Nonlinear Diesel Engine Control and Cylinder Pressure Observation , 1995 .

[5]  N. Sharkey,et al.  Cylinder Pressures and Vibration in Internal Combustion Engine Condition Monitoring , 1999 .

[6]  Rolf H. Kuratle,et al.  Influencing Parameters and Error Sources During Indication on Internal Combustion Engines , 1992 .

[7]  John J. Moskwa,et al.  Cylinder pressure and combustion heat release estimation for SI engine diagnostics using nonlinear sliding observers , 1995, IEEE Trans. Control. Syst. Technol..

[8]  Piero Azzoni,et al.  Combustion Pressure Recovering in Spark Ignition Car Engines , 1990 .

[9]  Noel E. Sharkey,et al.  Acoustic emission, cylinder pressure and vibration: a multisensor approach to robust fault diagnosis , 2000, Proceedings of the IEEE-INNS-ENNS International Joint Conference on Neural Networks. IJCNN 2000. Neural Computing: New Challenges and Perspectives for the New Millennium.

[10]  W. Stuart Neill,et al.  Determination of Engine Cylinder Pressures from Crankshaft Speed Fluctuations , 1992 .

[11]  K. Reichard,et al.  Diagnostic fault detection for internal combustion engines via pressure curve reconstruction , 2003, 2003 IEEE Aerospace Conference Proceedings (Cat. No.03TH8652).