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fornberg(2020) weights based on hermite-based finite difference #501
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As per discussion earlier today with @ChrisRackauckas on slack, this PR extends
DiffEqOperators.calculate_weightsfunction to include recent algorithm of hermite-based finite difference weights by fornberg(2020)DiffEqOperators.calculate_weightsfunction..no changes here!)dfdx = trueto theDiffEqOperators.calculate_weightsfunction, thus, returning the weights/stencil for function values and weights/stencil for the first-derivative values of the function respectively.This algorithm uses same matrix of weights generated from fornberg(1988) algorithm to generate new set of weights.
Corresponding tests for both cases are added, and docstrings are also updated.
I do not yet know how to use these weights for MOL/discretisation and other boundary conditions functions etc, hence by default
calculate_weightsinvokes same classical fornberg algorithm . I will try to cover those next time.