Finite difference solution of 2D Poisson equation. Can handle Dirichlet, Neumann and mixed boundary conditions.

Overview

Poisson-solver-2D

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Finite difference solution of 2D Poisson equation

Current version can handle Dirichlet, Neumann, and mixed (combination of Dirichlet and Neumann) boundary conditions:

(Dirichlet left boundary value)

(Dirichlet right boundary value)

(Dirichlet top boundary value)

(Dirichlet bottom boundary value)

(Dirichlet interior boundary value)

(Neumann left boundary value)

(Neumann right boundary value)

(Neumann left boundary value)

(Neumann right boundary value)

The boundary values themselves can be functions of (x,y).

Package requirements

  • NumPy
  • SciPy (sparse matrices, sparse linear algebra)

Version notes

  • version 1.3

    • It is now possible to apply Neumann and mixed boundary conditions
  • version 1.2

    • It is now possible to define arbitrary Dirichlet boundary points at the interior of the solution domain
  • version 1.1

    • Fixed a bug regarding the right-hand function
    • Figure size and font size adjusted
  • version 1.0 notes

    • Sparse matrix implementation. CSR format (Compressed sparse row matrix) matrix.

Sample Output

Dirichlet boundary conditions at outer walls

Solution of with boundary conditions is shown below:

Dirichlet boundary conditions at outer wall and inner regions

Solution of with boundary conditions is shown below:

Mixed boundary conditions (both Dirichlet and Neumann boundary conditions)

Solution of with boundary conditions (Dirichlet boundary condition on the left wall and in the region 1<x<1.4, -0.5<y<0.2. Neumann boundary conditions on the right, top and bottom walls.) is shown below:

References

Owner
Mohammad Asif Zaman
I am a post-doctoral scholar (Edward L. Ginzton Lab, Electrical Engineering) at Stanford University.
Mohammad Asif Zaman
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