Wiseman Siriro
Sustainability Assessment and Optimization of Aluminum Production for Electric Vehicle Manufacturing Using Life Cycle Assessment and Predictive Modeling.
Rel. Milena Salvo, Daniele Ugues, Cedric Courbon, Geir Ringen. Politecnico di Torino, Corso di laurea magistrale in Ingegneria Dei Materiali Per L'Industria 4.0, 2025
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Abstract
This thesis examines the application of deep learning for automatic machining feature recognition (MFR) from both clean and noisy CAD models, a crucial step in bridging the gap between design and manufacturing within an intelligent production pipeline. The traditional methods were limited and struggled when handling noisy, real-world data, creating a gap between idealised CAD environments and actual industrial applications. Also, recent deep learning approaches such as FeatureNet and Inception-based 3D CNN have demonstrated high accuracy on synthetic CAD data, but they rarely test robustness on noisy or scanned meshes, and this leaves a crucial gap. To address this, three voxel-based 3D convolutional neural networks were investigated: a FeatureNet-inspired model, a Pre-activated ResNet, and a lightweight InceptionLite architecture.
Experiments were conducted using synthetic CAD models and artificially noise-injected data, mimicking real-world datasets
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