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/*
* Quadratic Programming Toolbox for Scilab using IPOPT library
* Authors :
Sai Kiran
Keyur Joshi
Iswarya
*/
#include "QuadNLP.hpp"
#include "IpIpoptData.hpp"
extern "C"{
#include <api_scilab.h>
#include <Scierror.h>
#include <BOOL.h>
#include <localization.h>
#include <sciprint.h>
double x_static,i, *op_obj_x = NULL,*op_obj_value = NULL;
using namespace Ipopt;
QuadNLP::~QuadNLP()
{
free(finalX_);
free(finalZl_);
free(finalZu_);}
//get NLP info such as number of variables,constraints,no.of elements in jacobian and hessian to allocate memory
bool QuadNLP::get_nlp_info(Index& n, Index& m, Index& nnz_jac_g, Index& nnz_h_lag, IndexStyleEnum& index_style){
n=numVars_; // Number of variables
m=numConstr_; // Number of constraints
nnz_jac_g = n*m; // No. of elements in Jacobian of constraints
nnz_h_lag = n*(n+1)/2; // No. of elements in lower traingle of Hessian of the Lagrangian.
index_style=C_STYLE; // Index style of matrices
return true;
}
//get variable and constraint bound info
bool QuadNLP::get_bounds_info(Index n, Number* x_l, Number* x_u, Index m, Number* g_l, Number* g_u){
unsigned int i;
for(i=0;i<n;i++){
x_l[i]=varLB_[i];
x_u[i]=varUB_[i];
}
for(i=0;i<m;i++){
g_l[i]=conLB_[i];
g_u[i]=conUB_[i];
}
return true;
}
//get value of objective function at vector x
bool QuadNLP::eval_f(Index n, const Number* x, bool new_x, Number& obj_value){
unsigned int i,j;
obj_value=0;
for (i=0;i<=n;i++){
for (j=0;j<=n;j++){
obj_value+=0.5*x[i]*x[j]*qMatrix_[n*i+j];
}
obj_value+=x[i]*lMatrix_[i];
}
return true;
}
//get value of gradient of objective function at vector x.
bool QuadNLP::eval_grad_f(Index n, const Number* x, bool new_x, Number* grad_f){
unsigned int i,j;
for(i=0;i<n;i++)
{
grad_f[i]=lMatrix_[i];
for(j=0;j<n;j++)
{
grad_f[i]+=(qMatrix_[n*i+j])*x[j];
}
}
return true;
}
//Get the values of constraints at vector x.
bool QuadNLP::eval_g(Index n, const Number* x, bool new_x, Index m, Number* g){
unsigned int i,j;
for(i=0;i<m;i++)
{
g[i]=0;
for(j=0;j<n;j++)
{
g[i]+=x[j]*conMatrix_[i+j*m];
}
}
return true;
}
// This method sets initial values for required vectors . For now we are assuming 0 to all values.
bool QuadNLP::get_starting_point(Index n, bool init_x, Number* x,
bool init_z, Number* z_L, Number* z_U,
Index m, bool init_lambda,
Number* lambda){
if (init_x == true){ //we need to set initial values for vector x
for (Index var=0;var<n;var++)
x[var]=varGuess_[var];//initialize with 0 or we can change.
}
if (init_z == true){ //we need to provide initial values for vector bound multipliers
for (Index var=0;var<n;++var){
z_L[var]=0.0; //initialize with 0 or we can change.
z_U[var]=0.0;//initialize with 0 or we can change.
}
}
if (init_lambda == true){ //we need to provide initial values for lambda values.
for (Index var=0;var<m;++var){
lambda[var]=0.0; //initialize with 0 or we can change.
}
}
return true;
}
/* Return either the sparsity structure of the Jacobian of the constraints, or the values for the Jacobian of the constraints at the point x.
*/
bool QuadNLP::eval_jac_g(Index n, const Number* x, bool new_x,
Index m, Index nele_jac, Index* iRow, Index *jCol,
Number* values){
//It asked for structure of jacobian.
if (values==NULL){ //Structure of jacobian (full structure)
int index=0;
for (int var=0;var<m;++var)//no. of constraints
for (int flag=0;flag<n;++flag){//no. of variables
iRow[index]=var;
jCol[index]=flag;
index++;
}
}
//It asked for values
else {
int index=0;
for (int var=0;var<m;++var)
for (int flag=0;flag<n;++flag)
values[index++]=conMatrix_[var+flag*m];
}
return true;
}
/*
* Return either the sparsity structure of the Hessian of the Lagrangian,
* or the values of the Hessian of the Lagrangian for the given values for
* x,lambda,obj_factor.
*/
bool QuadNLP::eval_h(Index n, const Number* x, bool new_x,
Number obj_factor, Index m, const Number* lambda,
bool new_lambda, Index nele_hess, Index* iRow,
Index* jCol, Number* values){
if (values==NULL){
Index idx=0;
for (Index row = 0; row < n; row++) {
for (Index col = 0; col <= row; col++) {
iRow[idx] = row;
jCol[idx] = col;
idx++;
}
}
}
else {
Index index=0;
for (Index row=0;row < n;++row){
for (Index col=0; col <= row; ++col){
values[index++]=obj_factor*(qMatrix_[n*row+col]);
}
}
}
return true;
}
void QuadNLP::finalize_solution(SolverReturn status,
Index n, const Number* x, const Number* z_L, const Number* z_U,
Index m, const Number* g, const Number* lambda, Number obj_value,
const IpoptData* ip_data,
IpoptCalculatedQuantities* ip_cq){
finalX_ = (double*)malloc(sizeof(double) * numVars_ * 1);
for (Index i=0; i<n; i++)
{
finalX_[i] = x[i];
}
finalZl_ = (double*)malloc(sizeof(double) * numVars_ * 1);
for (Index i=0; i<n; i++)
{
finalZl_[i] = z_L[i];
}
finalZu_ = (double*)malloc(sizeof(double) * numVars_ * 1);
for (Index i=0; i<n; i++)
{
finalZu_[i] = z_U[i];
}
finalLambda_ = (double*)malloc(sizeof(double) * numConstr_ * 1);
for (Index i=0; i<m; i++)
{
finalLambda_[i] = lambda[i];
}
iter_ = ip_data->iter_count();
finalObjVal_ = obj_value;
status_ = status;
}
const double * QuadNLP::getX()
{
return finalX_;
}
const double * QuadNLP::getZl()
{
return finalZl_;
}
const double * QuadNLP::getZu()
{
return finalZu_;
}
const double * QuadNLP::getLambda()
{
return finalLambda_;
}
double QuadNLP::getObjVal()
{
return finalObjVal_;
}
double QuadNLP::iterCount()
{
return (double)iter_;
}
int QuadNLP::returnStatus()
{
return status_;
}
}
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