Interested in learning how to solve partial differential equations with numerical methods and how to turn them into python codes? This course provides you with a basic introduction how to apply methods like the finite-difference method, the pseudospectral method, the linear and spectral element method to the 1D (or 2D) scalar wave equation. The mathematical derivation of the computational algorithm is accompanied by python codes embedded in Jupyter notebooks. In a unique setup you can see how the mathematical equations are transformed to a computer code and the results visualized. The emphasis is on illustrating the fundamental mathematical ingredients of the various numerical methods (e.g., Taylor series, Fourier series, differentiation, function interpolation, numerical integration) and how they compare. You will be provided with strategies how to ensure your solutions are correct, for example benchmarking with analytical solutions or convergence tests. The mathematical aspects are complemented by a basic introduction to wave physics, discretization, meshes, parallel programming, computing models.

Computers, Waves, Simulations: A Practical Introduction to Numerical Methods using Python

Computers, Waves, Simulations: A Practical Introduction to Numerical Methods using Python

Instructor: Heiner Igel
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391 reviews
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What you'll learn
How to solve a partial differential equation using the finite-difference, the pseudospectral, or the linear (spectral) finite-element method.
Understanding the limits of explicit space-time simulations due to the stability criterion and spatial and temporal sampling requirements.
Strategies how to plan and setup sophisticated simulation tasks.
Strategies how to avoid errors in simulation results.
Skills you'll gain
Tools you'll learn
Details to know

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Reviewed on Jul 16, 2020
Excellent course for people wishing to learn about different numerical approaches for wave propagation. Python Notebooks really add to the learning experience.
Reviewed on Oct 15, 2020
Thank you very much! This was an amazing and very clear course. I will use the python codes in my research when possible.
Reviewed on Jul 11, 2020
This is an excellent course as I have found. The instructor has taught us many important concepts including the detailed codes. I would love to join further courses from Prof. Igel.
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