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Optimal Additive Manufacuring of Composites

Project description

OAMC

This project aims to facilitate the optimal additive manufacturing of (continuous-fiber) composites (OAMC) by providing various path planning algorithms, which take loads and constraints into account.

The subpackage oamc.lpp is based on Garth Pearce's load path plotter but faster and more flexible; it supports tetrahedral and quadratic element types, for example. The generated load paths may be used to visualize and understand the transfer of loads through the structure, directly for 3D printing, or to initialize a gradient-based optimization algorithm.

This project is part of my bachelor's thesis FEA-Driven Fiber Path Optimization for Nonplanar FDM Printing with Sparse Continuous Fiber Reinforcement at TUM.

Conventions

Docstrings adhere to the NumPy style guide.

Node and element indices are converted from 1-based to 0-based indexing upon import.

Strains and stresses are stored in standard Voigt notation [X, Y, Z, YZ, XZ, XY] and engineering shear strain convention (twice the tensorial shear strains to keep the strain energy density consistent between vector and tensor notations). Utility functions may offer multiple shear strain conventions, but engineering is always the default.

Roadmap

  • Implement fiber path mirroring in CompositeModel.

  • Add option to import target fields from text files exported from Anys Mechanical (see Section Unrelated in the docs) in order to use all of Mechanical's possibilities. Works only if only one fiber placement iteration is needed.

  • Fix footnote numbers in docs.

  • Fix

    src/oamc/utils/polylines.py:26: RuntimeWarning: invalid value encountered in scalar divide return numpy.linalg.norm(numpy.cross(u, v)) / numpy.linalg.norm(u)
    

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