Prediction of toxic compounds emissions in exhaust gases based on engine vibration and Bayesian optimized decision trees

MEASUREMENT(2024)

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Abstract
Emission control is vital for environmental and health protection. Traditional methods to assess toxic substance emissions from combustion engines are generally expensive and time-consuming. This paper proposes a new approach using indirect methods that predict emissions based on current engine operational parameters. The focus is on analyzing the engine's vibrational signal. Extensive research was conducted in a laboratory setting, using an diesel engine, fueled by various types of fuel. The study linked the spectral uncertainty of engine vibrations with the emission levels of toxic substances. A emission prediction model was developed, utilizing a decision tree system. This model's hyperparameters were finely tuned using Bayesian optimization techniques. The model for a single predictor in the form of spectral uncertainty already showed satisfactory accuracy in predicting the emission of several harmful substances (10%). However, supplementing it with a second predictor in the form of engine torque allows for even smaller errors (8%).
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Key words
Toxic compounds,Engine vibration analysis,Spectral uncertainty,Emission prediction,Decision trees
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