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105 lines
2.9 KiB
105 lines
2.9 KiB
from ._ufuncs import _lambertw
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def lambertw(z, k=0, tol=1e-8):
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r"""
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lambertw(z, k=0, tol=1e-8)
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Lambert W function.
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The Lambert W function `W(z)` is defined as the inverse function
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of ``w * exp(w)``. In other words, the value of ``W(z)`` is
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such that ``z = W(z) * exp(W(z))`` for any complex number
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``z``.
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The Lambert W function is a multivalued function with infinitely
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many branches. Each branch gives a separate solution of the
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equation ``z = w exp(w)``. Here, the branches are indexed by the
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integer `k`.
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Parameters
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----------
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z : array_like
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Input argument.
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k : int, optional
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Branch index.
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tol : float, optional
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Evaluation tolerance.
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Returns
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-------
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w : array
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`w` will have the same shape as `z`.
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Notes
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-----
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All branches are supported by `lambertw`:
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* ``lambertw(z)`` gives the principal solution (branch 0)
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* ``lambertw(z, k)`` gives the solution on branch `k`
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The Lambert W function has two partially real branches: the
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principal branch (`k = 0`) is real for real ``z > -1/e``, and the
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``k = -1`` branch is real for ``-1/e < z < 0``. All branches except
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``k = 0`` have a logarithmic singularity at ``z = 0``.
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**Possible issues**
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The evaluation can become inaccurate very close to the branch point
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at ``-1/e``. In some corner cases, `lambertw` might currently
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fail to converge, or can end up on the wrong branch.
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**Algorithm**
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Halley's iteration is used to invert ``w * exp(w)``, using a first-order
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asymptotic approximation (O(log(w)) or `O(w)`) as the initial estimate.
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The definition, implementation and choice of branches is based on [2]_.
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See Also
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--------
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wrightomega : the Wright Omega function
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References
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----------
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.. [1] https://en.wikipedia.org/wiki/Lambert_W_function
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.. [2] Corless et al, "On the Lambert W function", Adv. Comp. Math. 5
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(1996) 329-359.
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https://cs.uwaterloo.ca/research/tr/1993/03/W.pdf
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Examples
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--------
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The Lambert W function is the inverse of ``w exp(w)``:
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>>> from scipy.special import lambertw
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>>> w = lambertw(1)
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>>> w
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(0.56714329040978384+0j)
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>>> w * np.exp(w)
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(1.0+0j)
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Any branch gives a valid inverse:
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>>> w = lambertw(1, k=3)
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>>> w
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(-2.8535817554090377+17.113535539412148j)
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>>> w*np.exp(w)
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(1.0000000000000002+1.609823385706477e-15j)
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**Applications to equation-solving**
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The Lambert W function may be used to solve various kinds of
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equations, such as finding the value of the infinite power
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tower :math:`z^{z^{z^{\ldots}}}`:
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>>> def tower(z, n):
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... if n == 0:
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... return z
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... return z ** tower(z, n-1)
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...
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>>> tower(0.5, 100)
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0.641185744504986
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>>> -lambertw(-np.log(0.5)) / np.log(0.5)
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(0.64118574450498589+0j)
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"""
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return _lambertw(z, k, tol)
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