LinearConstraint — SciPy v1.15.2 Manual (original) (raw)
scipy.optimize.
class scipy.optimize.LinearConstraint(A, lb=-inf, ub=inf, keep_feasible=False)[source]#
Linear constraint on the variables.
The constraint has the general inequality form:
Here the vector of independent variables x is passed as ndarray of shape (n,) and the matrix A has shape (m, n).
It is possible to use equal bounds to represent an equality constraint or infinite bounds to represent a one-sided constraint.
Parameters:
A{array_like, sparse matrix}, shape (m, n)
Matrix defining the constraint.
lb, ubdense array_like, optional
Lower and upper limits on the constraint. Each array must have the shape (m,) or be a scalar, in the latter case a bound will be the same for all components of the constraint. Use np.inf
with an appropriate sign to specify a one-sided constraint. Set components of lb and ub equal to represent an equality constraint. Note that you can mix constraints of different types: interval, one-sided or equality, by setting different components of_lb_ and ub as necessary. Defaults to lb = -np.inf
and ub = np.inf
(no limits).
keep_feasibledense array_like of bool, optional
Whether to keep the constraint components feasible throughout iterations. A single value set this property for all components. Default is False. Has no effect for equality constraints.
Methods
residual(x) | Calculate the residual between the constraint function and the limits |
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