scipy.optimize.fsolve#
- scipy.optimize.fsolve(func, x0, args=(), fprime=None, full_output=0, col_deriv=0, xtol=1.49012e-08, maxfev=0, band=None, epsfcn=None, factor=100, diag=None)[source]#
Find the roots of a function.
Return the roots of the (non-linear) equations defined by
func(x) = 0given a starting estimate.- Parameters:
- funccallable
f(x, *args) A function that takes at least one (possibly vector) argument, and returns a value of the same length.
- x0ndarray
The starting estimate for the roots of
func(x) = 0.- argstuple, optional
Any extra arguments to func.
- fprimecallable
f(x, *args), optional A function to compute the Jacobian of func with derivatives across the rows. By default, the Jacobian will be estimated.
- full_outputbool, optional
If True, return optional outputs.
- col_derivbool, optional
Specify whether the Jacobian function computes derivatives down the columns (faster, because there is no transpose operation).
- xtolfloat, optional
The calculation will terminate if the relative error between two consecutive iterates is at most xtol.
- maxfevint, optional
The maximum number of calls to the function. If zero, then
100*(N+1)is the maximum where N is the number of elements in x0.- bandtuple, optional
If set to a two-sequence containing the number of sub- and super-diagonals within the band of the Jacobi matrix, the Jacobi matrix is considered banded (only for
fprime=None).- epsfcnfloat, optional
A suitable step length for the forward-difference approximation of the Jacobian (for
fprime=None). If epsfcn is less than the machine precision, it is assumed that the relative errors in the functions are of the order of the machine precision.- factorfloat, optional
A parameter determining the initial step bound (
factor * || diag * x||). Should be in the interval(0.1, 100).- diagsequence, optional
N positive entries that serve as a scale factors for the variables.
- funccallable
- Returns:
- xndarray
The solution (or the result of the last iteration for an unsuccessful call).
- infodictdict
A dictionary of optional outputs with the keys:
nfevnumber of function calls
njevnumber of Jacobian calls
fvecfunction evaluated at the output
fjacthe orthogonal matrix, q, produced by the QR factorization of the final approximate Jacobian matrix, stored column wise
rupper triangular matrix produced by QR factorization of the same matrix
qtfthe vector
(transpose(q) * fvec)
- ierint
An integer flag. Set to 1 if a solution was found, otherwise refer to mesg for more information.
- mesgstr
If no solution is found, mesg details the cause of failure.
See also
rootInterface to root finding algorithms for multivariate functions. See the
method='hybr'in particular.
Notes
fsolveis a wrapper around MINPACK’s hybrd and hybrj algorithms.Examples
Find a solution to the system of equations:
x0*cos(x1) = 4, x1*x0 - x1 = 5.>>> import numpy as np >>> from scipy.optimize import fsolve >>> def func(x): ... return [x[0] * np.cos(x[1]) - 4, ... x[1] * x[0] - x[1] - 5] >>> root = fsolve(func, [1, 1]) >>> root array([6.50409711, 0.90841421]) >>> np.isclose(func(root), [0.0, 0.0]) # func(root) should be almost 0.0. array([ True, True])