Machine Learning for Force Simulation and Material Identification
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Författare
Typ
Examensarbete för masterexamen
Master's Thesis
Master's Thesis
Modellbyggare
Tidskriftstitel
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Volymtitel
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Sammanfattning
Virtual product development using numerical simulations is crucial for heavy machinery
design. This research focuses on using machine learning models to increase
the efficiency of granular loading simulations. In addition, the machine learning
models are trained with data from a miniature wheel loader rig. The models predict
interaction forces and classify materials using sound and vibration data, offering a
robust alternative to vision-based methods in challenging conditions. To improve
transparency, interpretable models are compared with deep neural networks. The
conclusion is that force predictions made by a regression-based machine learning
model in particular show the most similarity to DEM-based force predictions. In
addition, nearly all models achieved a test accuracy of over 90% during particle
classification, with the perceptron and linear kernel SVM providing the highest accuracy
with the shortest training times. Lastly, a conclusion cannot be made as
to whether a deep or interpretable model is better suited for the force prediction
task. However, either feedback-based force generation is unsuitable or it has to be
tweaked more to produce better results.
Beskrivning
Ämne/nyckelord
ML, GRU, DEM, loader, granular, prediction, classification, particles, sound, force