Physics-informed symbolic regression for tool wear and remaining useful life predictions in manufacturing
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- @Article{Han:2025:jmsy,
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author = "Seulki Han and Utsav Awasthi and George M. Bollas",
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title = "Physics-informed symbolic regression for tool wear and
remaining useful life predictions in manufacturing",
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journal = "Journal of Manufacturing Systems",
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year = "2025",
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volume = "80",
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pages = "734--748",
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keywords = "genetic algorithms, genetic programming, Explainable
AI, Hybrid model, Surrogate model, Tool wear",
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ISSN = "0278-6125",
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URL = "
https://www.sciencedirect.com/science/article/pii/S0278612525000846",
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DOI = "
doi:10.1016/j.jmsy.2025.03.023",
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abstract = "Prognostics and Health Management (PHM) plays a
crucial role in enhancing the reliability and safety of
engineering systems. Recently, physics-informed machine
learning (PIML) methods have gained significant
attention for their ability to incorporate
domain-specific knowledge into data-driven models. This
paper proposes a novel approach that integrates
symbolic regression with recursive modelling to develop
a robust framework for PHM of dynamic processes. Our
framework was applied to a manufacturing process to
build a generic model for tool wear prognostics across
various machining scenarios. The proposed method
integrates domain knowledge of milling processes under
different conditions with recursive models using
symbolic regression to achieve accurate and robust tool
wear predictions. A recursive feature model and a
recursive tool wear model were developedto accurately
predict future tool wear, taking into consideration the
strong correlation between features extracted from
sensor signals and tool wear. The Genetic
Programming-based Toolbox for Identification of
Physical Systems (GPTIPS) was employed for symbolic
regression. The results illustrate that the proposed
framework can capture the dynamics of tool wear by
recursively updating predictions with new data and can
derive simple, interpretable mathematical expressions
that represent the physical characteristics of the tool
wear process. Benchmarking analysis demonstrated the
effectiveness of the proposed approach, achieving lower
root-mean-square error (RMSE) compared to other tool
wear prognostic models in the literature",
- }
Genetic Programming entries for
Seulki Han
Utsav Awasthi
George M Bollas
Citations