2022
DOI: 10.3390/met12020298
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Machining Stability Categorization and Prediction Using Process Model Guided Machine Learning

Abstract: The time-domain dynamic process model is used to generate data and guides the stability criteria for machine learning, saving the experimental costs for a number of required data for the metal process. Fourier transformation of vibration data simulated using a dynamic process model generates the feature lists including multiple frequencies and amplitudes at each process condition. The feature lists for milling stability are analyzed for training the machine learning algorithm. The amplitude and frequency distr… Show more

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