NAG Library Function Document
nag_zero_nonlin_eqns_deriv_1 (c05ubc)
1 Purpose
nag_zero_nonlin_eqns_deriv_1 (c05ubc) finds a solution of a system of nonlinear equations by a modification of the Powell hybrid method. You must provide the Jacobian.
2 Specification
#include <nag.h> |
#include <nagc05.h> |
void |
nag_zero_nonlin_eqns_deriv_1 (Integer n,
double x[],
double fvec[],
double fjac[],
Integer tdfjac,
double xtol,
Nag_User *comm,
NagError *fail) |
|
3 Description
The system of equations is defined as:
nag_zero_nonlin_eqns_deriv_1 (c05ubc) is based upon the MINPACK routine HYBRJ1 (see
Moré et al. (1980)). It chooses the correction at each step as a convex combination of the Newton and scaled gradient directions. Under reasonable conditions this guarantees global convergence for starting points far from the solution and a fast rate of convergence. The Jacobian is updated by the rank-1 method of Broyden. At the starting point the Jacobian is calculated, but it is not recalculated until the rank-1 method fails to produce satisfactory progress. For more details see
Powell (1970).
4 References
Moré J J, Garbow B S and Hillstrom K E (1980) User guide for MINPACK-1 Technical Report ANL-80-74 Argonne National Laboratory
Powell M J D (1970) A hybrid method for nonlinear algebraic equations Numerical Methods for Nonlinear Algebraic Equations (ed P Rabinowitz) Gordon and Breach
5 Arguments
- 1:
n – IntegerInput
On entry: , the number of equations.
Constraint:
.
- 2:
x[n] – doubleInput/Output
-
On entry: an initial guess at the solution vector.
On exit: the final estimate of the solution vector.
- 3:
fvec[n] – doubleOutput
-
On exit: the function values at the final point,
x.
- 4:
fjac[] – doubleOutput
-
On exit: the orthogonal matrix produced by the factorization of the final approximate Jacobian.
- 5:
tdfjac – IntegerInput
-
On entry: the stride separating matrix column elements in the array
fjac.
Constraint:
.
- 6:
f – function, supplied by the userExternal Function
-
Depending upon the value of
userflag,
f must either return the values of the functions
at a point
or return the Jacobian at
.
The specification of
f is:
- 1:
n – IntegerInput
-
On entry: , the number of equations.
- 2:
x[n] – const doubleInput
-
On entry: the components of the point at which the functions or the Jacobian must be evaluated.
- 3:
fvec[n] – doubleOutput
-
On exit: if
on entry,
fvec must contain the function values
(unless
userflag is set to a negative value by
f).
If
on entry,
fvec must not be changed.
- 4:
fjac[] – doubleOutput
-
On exit: if
on entry,
must contain the value of
at the point
, for
and
(unless
userflag is set to a negative value by
f).
If
on entry,
fjac must not be changed.
- 5:
tdfjac – IntegerInput
-
On entry: the stride separating matrix column elements in the array
fjac.
- 6:
userflag – Integer *Input/Output
-
On entry:
or
.
- fvec is to be updated.
- fjac is to be updated.
On exit: in general,
userflag should not be reset by
f. If, however, you wish to terminate execution (perhaps because some illegal point
x has been reached), then
userflag should be set to a negative integer. This value will be returned through
.
- 7:
comm – Nag_User *
-
Pointer to a structure of type Nag_User with the following member:
- p – Pointer
-
On entry/exit: the pointer
should be cast to the required type, e.g.,
struct user *s = (struct user *)comm → p, to obtain the original object's address with appropriate type. (See the argument
comm below.)
- 7:
xtol – doubleInput
-
On entry: the accuracy in
x to which the solution is required.
Suggested value:
the square root of the machine precision.
Constraint:
.
- 8:
comm – Nag_User *
-
Pointer to a structure of type Nag_User with the following member:
- p – Pointer
-
On entry/exit: the pointer
, of type Pointer, allows you to communicate information to and from
f(). You must declare an object of the required type, e.g., a structure, and its address assigned to the pointer
by means of a cast to Pointer in the calling program, e.g.,
comm.p = (Pointer)&s. The type pointer will be
void * with a C compiler that defines
void * and
char * otherwise.
- 9:
fail – NagError *Input/Output
-
The NAG error argument (see
Section 3.6 in the Essential Introduction).
6 Error Indicators and Warnings
- NE_2_INT_ARG_LT
-
On entry, while . These arguments must satisfy .
- NE_ALLOC_FAIL
-
Dynamic memory allocation failed.
- NE_INT_ARG_LE
-
On entry, .
Constraint: .
- NE_NO_IMPROVEMENT
-
The iteration is not making good progress.
This failure exit may indicate that the system does not have a zero, or that the solution is very close to the origin (see
Section 7). Otherwise, rerunning nag_zero_nonlin_eqns_deriv_1 (c05ubc) from a different starting point may avoid the region of difficulty.
- NE_REAL_ARG_LT
-
On entry,
xtol must not be less than 0.0:
.
- NE_TOO_MANY_FUNC_EVAL
-
There have been at least
evaluations of
f().
Consider restarting the calculation from the point held in
x.
- NE_USER_STOP
-
User requested termination, user flag value .
- NE_XTOL_TOO_SMALL
-
No further improvement in the solution is possible.
xtol is too small:
.
7 Accuracy
If
is the true solution, nag_zero_nonlin_eqns_deriv_1 (c05ubc) tries to ensure that
If this condition is satisfied with
, then the larger components of
have
significant decimal digits. There is a danger that the smaller components of
may have large relative errors, but the fast rate of convergence of nag_zero_nonlin_eqns_deriv_1 (c05ubc) usually avoids this possibility.
If
xtol is less than
machine precision and the above test is satisfied with the
machine precision in place of
xtol, then the function exits with
NE_XTOL_TOO_SMALL.
Note: this convergence test is based purely on relative error, and may not indicate convergence if the solution is very close to the origin.
The test assumes that the functions and the Jacobian are coded consistently and that the functions are reasonably well behaved. If these conditions are not satisfied, then nag_zero_nonlin_eqns_deriv_1 (c05ubc) may incorrectly indicate convergence. The coding of the Jacobian can be checked using
nag_check_derivs (c05zdc). If the Jacobian is coded correctly, then the validity of the answer can be checked by rerunning nag_zero_nonlin_eqns_deriv_1 (c05ubc) with a tighter tolerance.
8 Parallelism and Performance
Not applicable.
The time required by nag_zero_nonlin_eqns_deriv_1 (c05ubc) to solve a given problem depends on
, the behaviour of the functions, the accuracy requested and the starting point. The number of arithmetic operations executed by nag_zero_nonlin_eqns_deriv_1 (c05ubc) is about
to process each evaluation of the functions and about
to process each evaluation of the Jacobian. Unless
f can be evaluated quickly, the timing of nag_zero_nonlin_eqns_deriv_1 (c05ubc) will be strongly influenced by the time spent in
f.
Ideally the problem should be scaled so that, at the solution, the function values are of comparable magnitude.
10 Example
This example determines the values
which satisfy the tridiagonal equations:
10.1 Program Text
Program Text (c05ubce.c)
10.2 Program Data
None.
10.3 Program Results
Program Results (c05ubce.r)