168 lines
4.8 KiB
C++
168 lines
4.8 KiB
C++
#include "gtest/gtest.h"
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#include "cantera/thermo/BinarySolutionTabulatedThermo.h"
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#include "cantera/thermo/ThermoFactory.h"
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namespace Cantera
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{
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class BinarySolutionTabulatedThermo_Test : public testing::Test
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{
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public:
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BinarySolutionTabulatedThermo_Test(){
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test_phase.reset(newPhase("../data/BinarySolutionTabulatedThermo.cti"));
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}
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void set_defect_X(const double x) {
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vector_fp moleFracs(2);
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moleFracs[0] = x;
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moleFracs[1] = 1-x;
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test_phase->setMoleFractions(&moleFracs[0]);
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}
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std::unique_ptr<ThermoPhase> test_phase;
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};
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TEST_F(BinarySolutionTabulatedThermo_Test,construct_from_cti)
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{
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BinarySolutionTabulatedThermo* BinarySolutionTabulatedThermo_phase = dynamic_cast<BinarySolutionTabulatedThermo*>(test_phase.get());
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EXPECT_TRUE(BinarySolutionTabulatedThermo_phase != NULL);
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}
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TEST_F(BinarySolutionTabulatedThermo_Test,interp_h)
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{
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test_phase->setState_TP(298.15, 101325.);
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// These expected results are purely a regression test
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const double expected_result[9] = {
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-1024991.831815,
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-1512199.970459,
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-2143625.893392,
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-2704188.166163,
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-2840293.936547,
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-1534983.231904,
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-1193196.003622,
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-1184444.702197,
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-1045348.216962,
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};
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double xmin = 0.10;
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double xmax = 0.75;
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int numSteps= 9;
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double dx = (xmax-xmin)/(numSteps-1);
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for (int i = 0; i < 9; ++i)
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{
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set_defect_X(xmin + i*dx);
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EXPECT_NEAR(expected_result[i], test_phase->enthalpy_mole(), 1.e-6);
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// enthalpy is temperature-independent in test data file (all species
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// use constant cp model with cp = 0)
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test_phase->setState_TP(310, 101325);
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EXPECT_NEAR(expected_result[i], test_phase->enthalpy_mole(), 1.e-6);
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}
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}
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TEST_F(BinarySolutionTabulatedThermo_Test,interp_s)
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{
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test_phase->setState_TP(298.15, 101325.);
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// These expected results are purely a regression test
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const double expected_result[9] = {
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3839.8896914480647,
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5260.8983334513332,
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5764.7097019695211,
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7786.429533070881,
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10411.474081913055,
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15276.785945165157,
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17900.243436157067,
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22085.482962782506,
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25989.144060372793
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};
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double xmin = 0.10;
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double xmax = 0.75;
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int numSteps= 9;
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double dx = (xmax-xmin)/(numSteps-1);
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for (int i = 0; i < numSteps; ++i)
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{
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set_defect_X(xmin + i*dx);
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EXPECT_NEAR(expected_result[i], test_phase->entropy_mole(), 1.e-6);
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// entropy is temperature-independent in test data file (all species use
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// constant cp model with cp = 0)
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test_phase->setState_TP(330.0, 101325);
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EXPECT_NEAR(expected_result[i], test_phase->entropy_mole(), 1.e-6);
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}
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}
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TEST_F(BinarySolutionTabulatedThermo_Test,chem_potentials)
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{
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test_phase->setState_TP(298.15,101325.);
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// These expected results are purely a regression test
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const double expected_result[9] = {
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-19347891.714810669,
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-14757822.388050893,
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-12593133.605195494,
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-12626837.865623865,
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-12131010.479908356,
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-10322881.86739888,
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- 9573869.8636945337,
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-10260863.826955771,
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-10579827.307551134
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};
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double xmin = 0.10;
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double xmax = 0.75;
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int numSteps= 9;
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double dx = (xmax-xmin)/(numSteps-1);
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vector_fp chemPotentials(2);
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for (int i = 0; i < numSteps; ++i)
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{
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set_defect_X(xmin + i*dx);
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test_phase->getChemPotentials(&chemPotentials[0]);
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EXPECT_NEAR(expected_result[i], chemPotentials[0], 1.e-6);
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}
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}
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TEST_F(BinarySolutionTabulatedThermo_Test,mole_fractions)
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{
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test_phase->setState_TP(298.15,101325.);
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double xmin = 0.10;
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double xmax = 0.75;
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int numSteps= 9;
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double dx = (xmax-xmin)/(numSteps-1);
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vector_fp molefracs(2);
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for (int i = 0; i < numSteps; ++i)
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{
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set_defect_X(xmin + i*dx);
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test_phase->getMoleFractions(&molefracs[0]);
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EXPECT_NEAR(xmin + i*dx, molefracs[0], 1.e-6);
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}
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}
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TEST_F(BinarySolutionTabulatedThermo_Test,partialMolarEntropies)
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{
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test_phase->setState_TP(298.15,101325.);
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// These expected results are purely a regression test
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const double expected_result[9] = {
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30514.752294683516,
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21514.841983025333,
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14848.02859501992,
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15965.482659621264,
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18272.567242414199,
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24453.517437971925,
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25299.003664716853,
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28474.69918493319,
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30810.094532734405
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};
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double xmin = 0.10;
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double xmax = 0.75;
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int numSteps= 9;
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double dx = (xmax-xmin)/(numSteps-1);
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vector_fp partialMolarEntropies(2);
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for (int i = 0; i < 9; ++i)
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{
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set_defect_X(xmin + i*dx);
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test_phase->getPartialMolarEntropies(&partialMolarEntropies[0]);
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EXPECT_NEAR(expected_result[i], partialMolarEntropies[0], 1.e-6);
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}
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}
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}
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