Physics-Informed Two-Stage Learning Framework for Engine Ignition Frequency and RPM Estimation
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Examensarbete för masterexamen
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Master's Thesis
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Accurate estimation of the ignition frequency (f0) of internal combustion engines is essential
for non-invasive rotational speed (RPM) monitoring and condition diagnosis. In practice,
domain shifts caused by sensor placement, vehicle-specific resonances, and environmental
noise can distort the harmonic structure of f0, leading to multiple plausible spectral peaks
within short analysis windows. A physics-informed, two-stage machine-learning framework
is developed to estimate the ignition frequency of four-stroke engines using synchronized
sound and vibration measurements. A nonlinear product signal (xprod(t) = xsound(t) xvib(t))
is introduced to emphasize ignition events jointly detected by both sensors, providing an additional
representation for joint analysis of ignition-related components. Features are extracted
from multiple signal representations, including the FFT, Envelope FFT, Cepstrum, Autocorrelation
(ACF), and Envelope–ACF, and combined into a unified feature space capturing
harmonic consistency, periodicity, and peak morphology.
The framework consists of two learning stages. Stage 1 classifies global engine characteristics,
including the cylinder count and ignition-frequency class. Stage 2 ranks local frequency
candidates using a LightGBM-based LambdaMART ranker to identify the ignition frequency
f0. Generalization performance is evaluated using Leave-One-Source-Out (LOSO) and Leave-
One-Vehicle-Out (LOVO) protocols.
Results show a mean LOSO accuracy of 95.5% for cylinder classification and a Top-1 accuracy
of 84% within a ±5 Hz tolerance for candidate ranking, with mean frequency errors
below 2 Hz (≈60 rpm). The model demonstrates consistent generalization behavior on unseen
vehicles, indicating robustness to domain shifts across sensors and operating conditions.
The proposed approach therefore provides an interpretable and practically applicable solution
for non-invasive RPM estimation and establishes a foundation for real-time diagnostic
applications on embedded automotive systems.
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ignition frequency, RPM estimation, multi-sensor fusion, harmonic analysis, machine learning, LambdaMART.
