Classification of fuel type for predictive maintenance in marine and industrial engines using time series feature extraction based on hypothesis tests and automated machine learning
Journal article, 2025

Predictive maintenance in internal combustion engines can be enhanced by accurately identifying the fuel type based on data collected from sensors or electronic control units (ECUs). This paper presents a study that aims to predict the fuel type (HVO100 or EN590) using machine learning techniques, specifically based only on the engine's rotational speed. The rotational speed data of a heavy-duty 6-cylinder diesel engine is measured and downsampled to frequencies of 100, 1000, and 10,000 Hz. To extract relevant features from the time series data, hundreds of features are extracted using hypothesis tests via the tsfresh library. Subsequently, selected features are trained using Databricks' automated machine learning (AutoML) platform. The study explores the relationships between the number of features, downsampling frequency, and the choice of machine learning models. The results indicate that, under the current configuration, the best test F1 score of 0.995 is achieved using logistic regression with 20 features and a downsampling frequency of 10,000 Hz. The analysis of SHAP values and p-values revealed that components of the Fourier transform and wavelet transform of the rotational speed play crucial roles in distinguishing between the fuel types. It is our hypothesis that the differences observed in the frequency domain are related to variations in fuel characteristics. Overall, this study presents a simple, interpretable, and computationally cost-efficient machine learning solution for predicting fuel type in industrial engines. The findings demonstrate the potential of applying this approach in real-world production environments.

Author

Ning Guo

Marknad och event

Erik Jansson

Chalmers, Mathematical Sciences, Applied Mathematics and Statistics

Mattias Johansson

Ronny Lindgren

Andreas Nyman

Jonas Sjöblom

Chalmers, Mechanics and Maritime Sciences (M2), Energy Conversion and Propulsion Systems

Applications in Energy and Combustion Science

2666352X (eISSN)

Vol. 25 100440-

Adaptive Neural Controller for Future Renewable Fuels

Chalmers, 2020-01-01 -- 2021-12-31.

Neste Oy, 2020-01-01 -- 2021-12-31.

Mechanics and Maritime Sciences (M2), 2020-01-01 -- 2021-12-31.

Areas of Advance

Information and Communication Technology

Transport

Subject Categories (SSIF 2025)

Computer Sciences

Energy Engineering

Driving Forces

Innovation and entrepreneurship

DOI

10.1016/j.jaecs.2025.100440

More information

Created

12/17/2025