Abstract

Online monitoring of the lubrication and friction conditions in internal combustion engines can provide valuable information and thereby enables optimal maintenance actions to be undertaken to ensure safe and efficient operations. Acoustic emission (AE) has attracted significant attention in condition monitoring due to its high sensitivity to light defects on sliding surfaces. However, limited understanding of the AE mechanisms in fluid-lubricated conjunctions, such as piston rings and cylinder liners, confines the development of AE-based lubrication monitoring techniques. Therefore, this study focuses on developing new AE models and effective AE signal process methods in order to achieve accurate online lubrication monitoring. Based on the existing AE model for asperity–asperity collision (AAC), a new model for fluid–asperity shearing (FAS)-induced AE is proposed that will explain AE responses from the tribological conjunction of the piston ring and cylinder. These two AE models can then jointly demonstrate AE responses from the lubrication conjunction of engine ring–liner. In particular, FAS allows the observable AE responses in the middle of engine strokes to be characterised in association with engine speeds and lubricant viscosity. However, these AE components are relatively weak and noisy compared to others, with movements such as valve taring, fuel injection and combustions. To accurately extract these weaker AE’s for lubricant monitoring, an optimised wavelet packet transform (WPT) analysis is applied to the raw AE data from a running engine. This results in four distinctive narrow band indicators to describe the AE amplitude in the middle of an engine power stroke. Experimental evaluation shows the linear increasing trend of AE indicator with engine speeds allows a full separation of two baseline engine lubricants (CD-10W30 and CD-15W40), previously unused over a wide range of speeds. Moreover, the used oil can also be diagnosed by using the nonlinear and unstable behaviours of the indicator at various speeds. This model has demonstrated the high performance of using AE signals processed with the optimised WPT spectrum in monitoring the lubrication conditions between the ring and liner in IC engines.

Highlights

  • The lubricant plays a vital role in internal combustion engines to reduce the friction of moving parts and prevent abnormal wear

  • Acoustic emission (AE) monitoring towards the slider to disk test rigs revealed that the sliding speed, acceleration and load can affect the AE root mean square (RMS) values [14], whereas there is not a significant difference in AE signals between the smooth and textured surfaces [15]

  • Based on this fundamental understanding of the modelling of AE excitations due to asperity–asperity collision (AAC), a new AE model can be established by describing the dynamic effect of fluid–asperity shearing (FAS) that takes into account the dynamic bending deflections of asperities driven by the fluid shear forces

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Summary

Introduction

The lubricant plays a vital role in internal combustion engines to reduce the friction of moving parts and prevent abnormal wear. AE monitoring towards the slider to disk test rigs revealed that the sliding speed, acceleration and load can affect the AE root mean square (RMS) values [14], whereas there is not a significant difference in AE signals between the smooth and textured surfaces [15] These discoveries promote the investigations of AE monitoring on the friction and wear processes between piston rings and cylinder surfaces. Douglas et al [17] investigated the tribology of the piston ring and cylinder liner surfaces by performing a series of AE experiments on engines It proved that the RMS values of AE signals are related to asperity contacts between the ring pack and liner and found that it is possible to monitor the extreme condition of turning off the engine oil supply. The performance of the model and the indicator from WPT analysis is evaluated by differentiating between the different lubricating oils

Tribodynamic from theConjunction
Fluid–Asperity Shearing
General Characteristics of AE in the Time and Frequency Domains
Experimental
The frequencycharacteristic characteristic curve emission sensor
Tribological
AE 5Signals
Wavelet
Diagnosis of Lubrication Conditions
AE Differences between Two Baseline Oils
Conclusions
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