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Computational Mechanics

Welcome to Computational Mechanics.

This project is a collection of learning modules in engineering computations for undergraduate students. These materials are a combination of work from Prof. Ryan C. Cooper at the University of Connecticut Mechanical Engineering Department and the Engineering Computations Modules from Prof. Lorena A. Barba and doctoral student Natalia C. Clement at the George Washington University, Mechanical and Aerospace Engineering Department.

Each learning modules is made up of three or four lesson, written as a Jupyter notebooks. We address an area of application or skills in computing in each notebook and each module has an overall objective. We use Python as the programming language.

The overall goal of the course is learn to frame engineering problems as computational methods. Once we can communicate our engineering problems to Python code (or any other computer language) we can use standardized computational methods to solve those problems.

View the Summer 2021 syllabus $\leftarrow$ click here

  • Getting comfortable with Python

  • Quantifying error in computational methods

  • Describing and plotting data

  • Some statistics

  • Monte Carlo modelling

  • Creating functions that are physical models

  • Solving ordinary differential equations

  • Solving nonlinear equations

  • Define sets of equations as matrix algebra

  • Solve for multiple equations for multiple unknown variables

  • Continue creating functions that are physical models

  • Solve 1D and 2D partial differential equations with finite difference approximations

License

All content is under Creative Commons Attribution CC-BY 4.0, and all code is under BSD-3 clause. We are happy if you re-use the content in any way!

License License: CC BY 4.0

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