Physics-Informed Machine Learning model for Emission Prediction in Exhaust Aftertreatment Systems: Prediction of NOX, CO, HC and NH3 Emissions for Volvo Penta Off-Road Diesel Engines
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Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
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Sammanfattning
Modern industrial diesel engines rely on advanced exhaust aftertreatment systems
(EATS) to comply with increasingly stringent emission regulations such as EU Stage
V, reducing emissions of nitrogen oxides (NOx), hydrocarbons (HC), carbon monox
ide (CO), and ammonia slip (NH3). Among these systems, selective catalytic re
duction (SCR) plays a central role in NOx reduction through urea-based ammonia
dosing. However, SCR development, calibration, and catalyst sizing still depend
heavily on expensive and time-consuming physical engine and rig testing. This cre
ates a strong industrial need for reliable predictive models that can complement
physical testing through early-stage virtual evaluation.
This thesis investigates the use of physics-informed feature engineering combined
with machine learning for predicting system-out emissions in Volvo Penta off-road
diesel engine platforms. The objective is to develop a supervised regression frame
work capable of predicting system-out emissions based on engine-out conditions and
exhaust aftertreatment parameters, while improving robustness and physical inter
pretability compared to purely data-driven approaches. Particular focus is placed
on NOx and NH3 prediction, since these emissions are most strongly linked to SCR
behaviour and catalyst dynamics.
The study uses existing experimental test data from Volvo Penta engines in the D5
D13 platform range, representing industrial and off-road applications. Separate XG
Boost regression models were developed for each target variable using both directly
measured signals and derived physics-informed features related to SCR behaviour,
catalyst thermal conditions, flow dynamics, and ammonia availability. Model per
formance was evaluated using ShuffleSplit cross-validation together with validation
on unseen datasets, primarily using the coefficient of determination (R2) and Mean
Absolute Error (MAE).
The results show that physics-informed feature engineering improved both model ac
curacy and robustness compared to baseline models using only directly measured in
puts. The strongest improvements were observed for NOx prediction, where physics
informed features improved model accuracy and robustness across different operating
conditions and engine platforms. The final models also achieved strong predictive
performance for HC and CO, while NH3 prediction remained more challenging due
to the complexity of ammonia storage and slip behavior. Feature importance analy
sis further confirmed that the learned relationships were consistent with known SCR
physics, improving confidence in model interpretability and engineering relevance.
The developed framework demonstrates that physics-informed feature engineering
combined with machine learning can provide a practical and computationally effi
cient approach for EATS emission prediction. The results also show clear potential
for supporting early-stage virtual evaluation, SCR catalyst sizing, and aftertreat
ment system optimisation within industrial engine development.
Beskrivning
Ämne/nyckelord
Physics-informed machine learning, Exhaust aftertreatment systems, Selective Catalytic Reduction, XGBoost, NOx prediction, SCR sizing, Virtual testing, Volvo Penta
