2024
DOI: 10.1088/1402-4896/ad3c77
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Supplementation of deep neural networks with simplified physics-based features to increase accuracy of plate fundamental frequency predictions

Nicholus R Clinkinbeard,
Nicole N Hashemi

Abstract: To improve predictive machine learning-based models limited by sparse data, supplemental physics-related features are introduced into a deep neural network (DNN). While some approaches inject physics through differential equations or numerical simulation, improvements are possible using simplified relationships from engineering references. To evaluate this hypothesis, thin rectangular plates were simulated to generate training datasets. With plate dimensions and material properties as input features and fundam… Show more

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