def __init__(self): CoefficientData.__init__(self) self.name = "MEA" self.description = "Ethyl Alcohol (Ethanol)" self.reference = "Melinder2010" self.Tmin = -100 + 273.15 self.Tmax = 40 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.6 self.xid = self.ifrac_mass self.Tbase = 8.1578 + 273.15 self.xbase = 29.2361 / 100.0 coeffs = np.array( [[-19.41, 961.9, 4204, 0.4067, 1.474], [-0.0003668, -0.5222, 2.319, 0.0006775, -0.04745], [-0.00004005, -0.003281, -0.03042, 0.0000003105, 0.0004314], [0.000001524, 0.00001569, 0.000686, -0.00000002, -0.000003023], [-0.954, -1.433, -21.02, -0.005008, 0.01565], [-0.00001209, -0.01989, 0.4927, -0.00002377, -0.00004106], [0.000002877, 0.000187, -0.003072, -0.00000003216, -0.000005135], [ -0.00000004394, -0.0000009154, -0.0000569, 0.00000000008362, 0.00000007004 ], [-0.002648, -0.0226, -0.3714, 0.00002801, -0.0008435], [-0.0000003173, 0.0002281, -0.002335, 0.0000002669, 0.0000164], [ 0.000000008652, -0.00000008581, -0.0000196, -0.000000003606, -0.0000001091 ], [ -0.0000000003717, 0.000000004056, 0.0000007461, 0.00000000001552, -0.000000001967 ], [0.0003851, -0.000169, 0.01743, -0.00000002009, 0.000007552], [ 0.0000000134, 0.000008594, -0.0002969, -0.000000006813, -0.0000001118 ], [ -0.000000002091, -0.00000009607, 0.000001901, 0.0000000001429, 0.000000001899 ], [ -0.0000002858, 0.00001291, -0.00006292, -0.000000001506, 0.0000001529 ], [ 0.0000000009312, -0.000000159, 0.000005353, 0.0000000001167, -0.0000000009481 ], [ -0.000000167, -0.00000008318, -0.00000829, -0.00000000001653, -0.00000000413 ]]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "DEB" self.description = "Diethylbenzene mixture - Dowtherm J Dow Chemical Co." self.reference = "Melinder-BOOK-2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1076.5,-0.731182])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([999.729,2.87576])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([3.5503,-0.0566396,7.03331e-05])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0.000189132,-2.06364e-07])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "NaK" self.description = "Nitrate salt, heat transfer fluid based on 60% NaNO3 and 40% KNO3" self.reference = "Zavoico2001" self.Tmin = 300 + 273.15 self.Tmax = 600 + 273.15 self.TminPsat = self.Tmax self.Tbase = 273.15 #self.temperature.data = self.getTrange() #self.concentration.data = np.array([ 0 ]) # mass fraction self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL self.density.source = self.density.SOURCE_COEFFS self.density.coeffs = np.array([[2090],[-0.636]]) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.specific_heat.coeffs = np.array([[1443],[+0.172]]) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL self.conductivity.source = self.conductivity.SOURCE_COEFFS self.conductivity.coeffs = np.array([[0.443],[+1.9e-4]]) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_POLYNOMIAL self.viscosity.source = self.viscosity.SOURCE_COEFFS self.viscosity.coeffs = np.array([[22.714],[-0.120],[2.281 * 1e-4],[-1.474 * 1e-7]])/1e3
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "PMS1" self.description = "Polydimethylsiloxan 1. - Baysilone KT3" self.reference = "Melinder-BOOK-2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1172.35,-0.9025])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([1223.69,1.48417])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([6.36183,-0.0636352,7.51428e-05])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0.000207526,-2.84167e-07])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "NaK" self.description = "NitrateSalt" self.reference = "Solar Power Tower Design Basis Document, Alexis B. Zavoico, Sandia Labs, USA" self.Tmin = 300 + 273.15 self.Tmax = 600 + 273.15 self.TminPsat = self.Tmax self.Tbase = 273.15 #self.temperature.data = self.getTrange() #self.concentration.data = np.array([ 0 ]) # mass fraction self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL self.density.source = self.density.SOURCE_COEFFS self.density.coeffs = np.array([[2090],[-0.636]]) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.specific_heat.coeffs = np.array([[1443],[+0.172]]) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL self.conductivity.source = self.conductivity.SOURCE_COEFFS self.conductivity.coeffs = np.array([[0.443],[+1.9e-4]]) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_POLYNOMIAL self.viscosity.source = self.viscosity.SOURCE_COEFFS self.viscosity.coeffs = np.array([[22.714],[-0.120],[2.281 * 1e-4],[-1.474 * 1e-7]])/1e3
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "SAB" self.description = "Synthetic alkyl benzene - Marlotherm X" self.reference = "Melinder-BOOK-2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1102.34,-0.801667])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([1360.94,1.51667])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([5.21288,-0.0665792,8.5066e-05])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0.000208374,-2.61667e-07])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "HCB" self.description = "Hydrocarbon blend - Dynalene MV" self.reference = "Melinder-BOOK-2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1071.78,-0.772024])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([761.393,3.52976])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([7.16819,-0.0863212,0.000130604])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0.000203186,-2.3869e-07])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "HCM" self.description = "Hydrocarbon mixture - Gilotherm D12" self.reference = "Melinder2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.Tbase = 0.0 self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([971.725,-0.718788])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([844.023,4.31212])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([18.3237,-0.14706,0.000209096])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0000.153716,-1.51212e-04])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "HCM" self.description = "Hydrocarbon mixture (synthetic) - Therminol D12 (Gilotherm D12) Solutia" self.reference = "Melinder-BOOK-2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([971.725,-0.718788])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([844.023,4.31212])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([18.3237,-0.14706,0.000209096])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0.000153716,-1.51212e-07])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "TCO" self.description = "Terpene from citrus oils - d-Limonene" self.reference = "Melinder-BOOK-2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1071.02,-0.778166])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([223.775,5.2159])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([-3.47971,-0.0107031,1.14086e-06])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0.000174156,-1.85052e-07])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "HCB" self.description = "Hydrocarbon blend - Dynalene MV" self.reference = "Melinder2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.Tbase = 0.0 self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1071.78,-0.772024])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([761.393,3.52976])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([7.16819,-0.0863212,0.000130604])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0000.203186,-2.3869e-04])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "TCO" self.description = "Citrus oil terpene - d-Limonene" self.reference = "Melinder2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.Tbase = 0.0 self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1071.02,-0.778166])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([223.775,5.2159])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([-3.47971,-0.0107031,1.14086e-06])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0000.174156,-1.85052e-04])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "PMS2" self.description = "Polydimethylsiloxan 2 - Syltherm XLT" self.reference = "Melinder2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.Tbase = 0.0 self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1155.94,-1.02576])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([1153.55,2.10788])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([5.66926,-0.065582,8.09988e-05])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0000.172305,-2.11212e-04])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "SAB" self.description = "Synthetic alkyl benzene - Marlotherm X" self.reference = "Melinder2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.Tbase = 0.0 self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1102.34,-0.801667])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([1360.94,1.51667])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([5.21288,-0.0665792,8.5066e-05])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0000.208374,-2.61667e-04])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "PMS1" self.description = "Polydimethylsiloxan 1 - Baysilone KT3" self.reference = "Melinder2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.Tbase = 0.0 self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1172.35,-0.9025])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([1223.69,1.48417])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([6.36183,-0.0636352,7.51428e-05])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0000.207526,-2.84167e-04])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "DEB" self.description = "Diethylbenzene mixture - Dowtherm J" self.reference = "Melinder2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.Tbase = 0.0 self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1076.5,-0.731182])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([999.729,2.87576])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([3.5503,-0.0566396,7.03331e-05])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0000.189132,-2.06364e-04])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "HFE" self.description = "Hydrofluoroether - HFE-7100 3M Novec" self.reference = "Melinder-BOOK-2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1822.37,-0.918485])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([871.834,0.858788])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([-4.22878,-0.0114765,7.39823e-06])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([9.92958e-05,-8.33333e-08])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "HFE" self.description = "Hydrofluoroether - HFE-7100 3M Novec" self.reference = "Melinder2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.Tbase = 0.0 self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1822.37,-0.918485])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([871.834,0.858788])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([-4.22878,-0.0114765,7.39823e-06])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([9.92958e-01,-8.33333e-05])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) PureData.__init__(self) self.name = "PMS2" self.description = "Polydimethylsiloxan 2. - Syltherm XLT Dow Corning Co." self.reference = "Melinder-BOOK-2010" self.Tmin = -80.0 + 273.15 self.Tmax = 100.0 + 273.15 self.TminPsat = self.Tmax self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL _,_,self.density.coeffs = IncompressibleFitter.shapeArray(np.array([1155.94,-1.02576])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL _,_,self.specific_heat.coeffs = IncompressibleFitter.shapeArray(np.array([1153.55,2.10788])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL _,_,self.viscosity.coeffs = IncompressibleFitter.shapeArray(np.array([5.66926,-0.065582,8.09988e-05])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL _,_,self.conductivity.coeffs = IncompressibleFitter.shapeArray(np.array([0.000172305,-2.11212e-07])) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS
def __init__(self): CoefficientData.__init__(self) self.name = "MAM" self.description = "Ammonia (NH3)" self.reference = "Melinder2010" self.Tmin = -100 + 273.15 self.Tmax = 30 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.3 self.xid = self.ifrac_mass self.Tbase = -4.6490 + 273.15 self.xbase = 16.0784 / 100.0 coeffs = np.array( [[-25.76, 944.5, 4233, 0.4551, 0.9255], [-0.0001817, -0.2743, -1.618, 0.001673, -0.03439], [0.00001204, -0.003113, 0.0161, -0.000002214, 0.0003217], [ 0.0000005567, 0.000003349, 0.00001662, 0.0000001228, -0.000004544 ], [-2.385, -2.914, 1.145, -0.005216, 0.01327], [0.00002315, -0.02307, 0.02715, 0.000003544, 0.0001856], [0.0000001415, 0.0001341, 0.001072, 0.000001057, -0.00001646], [ -0.00000004244, -0.0000005151, -0.00005266, -0.00000003474, 0.0000003004 ], [-0.07636, 0.02262, -0.001965, 0.00008909, -0.0005979], [-0.00000229, 0.00006645, 0.003472, 0.000003526, -0.00002184], [ -0.000000262, -0.0000087, -0.00009051, -0.0000001782, 0.000001297 ], [ 0.0000000001786, 0.00000008999, 0.000002106, 0.000000001858, -0.00000001141 ], [-0.00261, -0.0006685, 0.002131, 0.000006807, -0.0001097], [ -0.000000376, -0.000001002, 0.00004117, -0.0000003394, 0.00000167 ], [ 0.0000000136, 0.0000003309, 0.0000004446, 0.000000008315, -0.00000003377 ], [-0.000073, 0.000001635, 0.0002136, -0.0000001898, 0.000003065], [ 0.00000003524, 0.0000004465, -0.00001354, 0.000000006304, -0.00000006166 ], [ -0.000001075, 0.0000006298, -0.000008551, -0.00000001361, 0.0000003244 ]]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MCA" self.description = "Calcium Chloride (CaCl2)" self.reference = "Melinder2010" self.Tmin = -100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.3 self.xid = self.ifrac_mass self.Tbase = 7.52570 + 273.15 self.xbase = 18.7414 / 100.0 coeffs = np.array( [[-16.21, 1171, 3133, 0.558, 0.8939], [-0.0001344, -0.1463, 2.81, 0.00146, -0.02647], [0.000005073, -0.001302, -0.01563, 0.0000003861, 0.0001718], [ -0.0000000482, -0.0001871, -0.00001233, 0.00000001307, -0.0000007918 ], [-1.555, 9.847, -44.8, -0.00115, 0.04389], [0.00002146, -0.02488, 0.03271, -0.00001008, 0.0002102], [-0.0000015, -0.000553, -0.001205, -0.0000000654, -0.0000008688], [ 0.00000002219, 0.00001665, 0.000009346, 0.0000000004728, -0.00000004353 ], [-0.05496, 0.03389, 0.9511, -0.00001784, 0.0009121], [0.0000009415, -0.002302, -0.005191, 0.0000003496, 0.000003993], [ 0.00000006185, 0.00003526, 0.0002282, -0.00000000484, 0.0000003785 ], [ -0.000000001723, 0.0000002788, -0.000000929, -0.0000000002011, -0.000000009979 ], [-0.002624, 0.001062, 0.01472, -0.0000004415, 0.000001963], [ -0.0000001082, 0.00006291, 0.0001615, -0.000000003462, -0.0000004892 ], [ 0.000000003036, 0.000001806, 0.000005073, 0.0000000003922, 0.00000000001526 ], [-0.0001726, 0.00002785, -0.001346, 0.00000004699, 0.0000002997], [ -0.000000004396, 0.000006423, -0.000009754, 0.0000000006179, -0.00000003631 ], [ -0.000004494, -0.000001811, -0.00006674, 0.000000002929, 0.00000003435 ]]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MLI" self.description = "Lithium Chloride (LiCl)" self.reference = "Melinder2010" self.Tmin = -100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.24 self.xid = self.ifrac_mass self.Tbase = 1.4895 + 273.15 self.xbase = 14.8000 / 100.0 coeffs = np.array([ [-23.29, 1088, 3383, 0.5362, 1.013], [0.0006555, -0.1772, 3.958, 0.001454, -0.03062], [-0.0001208, -0.002619, -0.0003035, -0.0000000326, 0.000294], [ 0.000002616, 0.000006209, -0.000003477, -0.0000000142, -0.000002719 ], [-3.051, 6.056, -50.36, -0.001855, 0.0392], [-0.0003972, -0.008588, 0.4415, -0.00001405, 0.00006246], [0.00003674, 0.0001567, -0.0002609, -0.000000005424, -0.000001752], [ -0.0000005569, -0.000001847, 0.000003651, 0.0000000009821, 0.00000008346 ], [-0.179, 0.02556, 0.6298, 0.00001017, 0.000332], [0.00001391, 0.00007194, -0.004384, 0.0000006821, 0.000000784], [ -0.000001997, -0.00001053, 0.0001039, -0.000000008674, -0.00000031 ], [ 0.00000002931, 0.00000009716, -0.000001076, 0.0000000001095, 0.00000001381 ], [-0.002917, 0.0009407, 0.04544, 0.0000007084, 0.000002206], [ 0.00000149, -0.000007253, -0.0008787, -0.00000007434, -0.0000006011 ], [ -0.00000006904, 0.0000003144, -0.000008457, 0.0000000006988, 0.000000004023 ], [0.0005715, -0.00008105, 0.002527, -0.0000001273, 0.000001745], [ 0.0000001186, 0.000001072, -0.0000358, -0.000000003058, -0.00000007094 ], [ 0.00002757, -0.000003974, 0.00004058, -0.000000009124, 0.00000006699 ] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MMG" self.description = "(MgCl2)" self.reference = "Melinder2010" self.Tmin = -100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.3 self.xid = self.ifrac_mass self.Tbase = 9.3163 + 273.15 self.xbase = 14.1327 / 100.0 coeffs = np.array( [[-15.12, 1124, 3365, 0.5461, 0.9573], [-0.0004843, -0.3072, 2.229, 0.001784, -0.03065], [0.00001113, -0.003295, -0.004627, -0.0000008171, 0.0001115], [ 0.0000001858, 0.00001015, 0.00009186, -0.00000006594, -0.000002923 ], [-1.885, 9.071, -52.22, -0.00273, 0.04968], [-0.00005461, -0.006513, 0.1162, -0.00001483, 0.0001559], [0.000003579, 0.00004664, 0.001249, 0.000000385, -0.00001796], [ -0.00000003999, 0.000002287, 0.000002421, -0.000000005556, 0.0000003051 ], [-0.05455, 0.02449, 0.6202, 0.000008675, -0.002722], [0.00001887, 0.00003574, 0.002337, -0.000001489, -0.00001753], [ -0.0000003171, 0.000004337, 0.0000724, -0.00000003882, 0.000002021 ], [ -0.000000006246, 0.0000006044, -0.000003613, 0.0000000009282, 0.00000002614 ], [-0.0007257, 0.003402, 0.01052, 0.0000008651, 0.00009351], [0.0000007588, -0.0001409, -0.000459, 0.0000001992, -0.000008353], [ -0.00000004102, 0.000001857, -0.00002477, -0.000000001196, 0.0000001901 ], [-0.0003208, 0.0003344, -0.001067, -0.0000004779, 0.00007364], [ -0.0000000492, -0.00000683, -0.0001048, 0.00000001797, -0.0000004014 ], [ -0.00001794, 0.000007239, -0.0000696, -0.00000002503, 0.000003717 ]]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MNA" self.description = "Sodium Chloride (NaCl)" self.reference = "Melinder2010" self.Tmin = -100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.23 self.xid = self.ifrac_mass self.Tbase = 12.6179 + 273.15 self.xbase = 13.3897 / 100.0 coeffs = np.array( [[-9.383, 1099, 3593, 0.5736, 0.4369], [-0.00002581, -0.3758, 1.669, 0.001595, -0.02666], [0.000001423, -0.002023, -0.02019, -0.0000004003, 0.0002035], [0, 0, 0, 0, 0], [-0.9039, 7.723, -32.48, -0.0009383, 0.02346], [0.000002578, -0.01426, -0.03331, -0.00001248, -0.00005368], [-0.00000003318, 0.0001535, -0.001164, 0.0000003353, 0.000002871], [0, 0, 0, 0, 0], [-0.02204, 0.02567, 0.6453, -0.00001057, 0.0004276], [0.0000001192, 0.0003994, -0.009314, 0.0000004158, -0.000004526], [ -0.000000008993, -0.000007281, 0.0002236, -0.00000002032, 0.0000001838 ], [0, 0, 0, 0, 0], [-0.0004827, 0.0001108, -0.01629, -0.0000004853, 0.000007386], [ -0.00000001467, 0.0000003522, 0.0007927, -0.00000001587, 0.0000005437 ], [0, 0, 0, 0, 0], [ 0.000002247, -0.00001686, 0.0002331, -0.000000004654, 0.0000004688 ], [0, 0, 0, 0, 0], [0, 0, 0, 0, 0]]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MMA" self.description = "Methyl Alcohol (Methanol)" self.reference = "Melinder-BOOK-2010" self.Tmin =-100 + 273.15 self.Tmax = 40 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.6 self.xid = self.ifrac_mass self.Tbase = 3.5359 + 273.15 self.xbase = 30.5128 / 100.0 coeffs = np.array([ [-26.29,958.1,3887,0.4175,1.153], [-0.000002575,-0.4151,7.201,0.0007271,-0.03866], [-0.000006732,-0.002261,-0.08979,0.0000002823,0.0002779], [0.000000163,0.0000002998,-0.000439,0.000000009718,-0.000001543], [-1.187,-1.391,-18.5,-0.004421,0.005448], [-0.00001609,-0.0151,0.2984,-0.00002952,0.0001008], [0.000000342,0.0001113,-0.001865,0.00000007336,-0.000002809], [0.0000000005687,-0.0000003264,-0.00001718,0.0000000004328,0.000000009811], [-0.01218,-0.01105,-0.03769,0.00002044,-0.0005552], [0.0000003865,0.0001828,-0.01196,0.0000003413,0.000008384], [0.000000008768,-0.000001641,0.00009801,-0.000000003665,-0.00000003997], [-0.0000000002095,0.0000000151,0.000000666,-0.00000000002791,-0.0000000003466], [-0.00006823,-0.0001208,-0.003776,0.0000002943,0.000003038], [0.00000002137,0.000002992,-0.00005611,-0.0000000009646,-0.00000007435], [-0.0000000004271,0.000000001455,-0.0000007811,0.00000000003174,0.0000000007442], [0.0000001297,0.000004927,-0.0001504,-0.0000000008666,0.00000006669], [-0.0000000005407,-0.0000001325,0.000007373,-0.0000000000004573,-0.0000000009105], [0.00000002363,-0.00000007727,0.000006433,-0.0000000002033,-0.0000000008472] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MMA" self.description = "Methyl Alcohol (Methanol) - aq" self.reference = "Melinder2010" self.Tmin =-100 + 273.15 self.Tmax = 40 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.6 self.xid = self.ifrac_mass self.Tbase = 3.5359 + 273.15 self.xbase = 30.5128 / 100.0 coeffs = np.array([ [-26.29,958.1,3887,0.4175,1.153], [-0.000002575,-0.4151,7.201,0.0007271,-0.03866], [-0.000006732,-0.002261,-0.08979,0.0000002823,0.0002779], [0.000000163,0.0000002998,-0.000439,0.000000009718,-0.000001543], [-1.187,-1.391,-18.5,-0.004421,0.005448], [-0.00001609,-0.0151,0.2984,-0.00002952,0.0001008], [0.000000342,0.0001113,-0.001865,0.00000007336,-0.000002809], [0.0000000005687,-0.0000003264,-0.00001718,0.0000000004328,0.000000009811], [-0.01218,-0.01105,-0.03769,0.00002044,-0.0005552], [0.0000003865,0.0001828,-0.01196,0.0000003413,0.000008384], [0.000000008768,-0.000001641,0.00009801,-0.000000003665,-0.00000003997], [-0.0000000002095,0.0000000151,0.000000666,-0.00000000002791,-0.0000000003466], [-0.00006823,-0.0001208,-0.003776,0.0000002943,0.000003038], [0.00000002137,0.000002992,-0.00005611,-0.0000000009646,-0.00000007435], [-0.0000000004271,0.000000001455,-0.0000007811,0.00000000003174,0.0000000007442], [0.0000001297,0.000004927,-0.0001504,-0.0000000008666,0.00000006669], [-0.0000000005407,-0.0000001325,0.000007373,-0.0000000000004573,-0.0000000009105], [0.00000002363,-0.00000007727,0.000006433,-0.0000000002033,-0.0000000008472] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MGL" self.description = "Glycerol" self.reference = "Melinder-BOOK-2010" self.Tmin =-100 + 273.15 self.Tmax = 40 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.6 self.xid = self.ifrac_mass self.Tbase = 8.9110 + 273.15 self.xbase = 36.1905 / 100.0 coeffs = np.array([ [-13,1093,3486,0.4532,1.52], [-0.0008638,-0.3624,3.766,0.0009782,-0.03729], [0.000006895,-0.002451,-0.0001222,-0.0000001196,0.0003572], [0.0000005229,0.00001547,0.00003219,-0.000000008778,-0.000003648], [-0.5742,2.74,-22.5,-0.003223,0.0445], [-0.000007991,-0.008373,0.1811,-0.00001951,-0.0002688], [-0.0000007515,0.00009596,0.0003766,0.0000001178,0.0000008876], [0.0000000171,-0.0000006999,-0.0000173,0.0000000001048,-0.00000002209], [-0.009119,0.004081,-0.03258,0.000005539,0.0003633], [0.000002973,0.00001808,0.0007249,-0.00000006878,-0.000004088], [0.000000002379,-0.0000008516,-0.00002133,-0.000000002587,0.00000006219], [-0.000000001237,0.00000001441,0.0000004907,0.00000000002262,0.0000000006331], [-0.0001641,-0.00004744,0.002922,-0.0000002073,0.000001069], [-0.000000005313,0.000001833,-0.00005346,-0.0000000002235,-0.0000001248], [0.0000000004546,-0.00000003077,0.00000023,-0.00000000001421,0.000000003019], [-0.000002408,-0.000001415,0.00002238,0.000000003,0.00000005729], [-0.000000001682,0.00000001863,-0.0000005383,0.0000000001604,-0.00000000178], [-0.000000007734,-0.000000006097,-0.0000005944,0.0000000002221,0.000000002116] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MKF" self.description = "Potassium Formate (CHKO2) - aq" self.reference = "Melinder2010" self.Tmin =-100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.48 self.xid = self.ifrac_mass self.Tbase = 5.89080 + 273.15 self.xbase = 29.1447 / 100.0 coeffs = np.array([ [-20.19,1189,3144,0.5253,0.8088], [-0.0001703,-0.3515,1.698,0.001241,-0.02556], [-0.000007478,-0.001918,-0.001303,-0.00000003799,0.0002195], [0.0000003761,0.00003132,0.00005177,-0.000000002951,-0.000001667], [-1.106,7.044,-29.94,-0.001972,0.01758], [-0.000004203,-0.00656,0.0229,-0.000006322,0.00008603], [-0.0000005737,0.00007018,0.000003898,0.00000002654,0.000002498], [0.00000001474,-0.000001459,0.000007391,-0.0000000007324,-0.00000003569], [-0.021,0.01889,0.2944,-0.00002596,-0.00008372], [-0.0000003802,0.0001034,-0.002482,-0.00000004693,-0.000001601], [0.00000006504,-0.000003889,0.000033,-0.000000004362,0.000000004815], [-0.000000001877,0.000000009225,-0.0000004871,0.00000000002899,-0.000000001861], [-0.0002638,-0.0002262,0.001161,-0.0000005062,-0.000001184], [0.00000004027,0.0000003692,0.00006758,-0.000000005229,-0.0000001331], [-0.0000000004789,0.00000006609,-0.000001277,0.0000000001035,-0.000000005489], [0.0000008327,0.00002368,-0.0001429,0.00000001501,0.000001088], [0.0000000009507,0.00000008766,0.0000009949,0.0000000005376,-0.000000007003], [0.00000006345,0.000001061,-0.000003221,0.0000000005562,0.00000003098] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MEA" self.description = "Ethyl Alcohol (Ethanol)" self.reference = "Melinder-BOOK-2010" self.Tmin =-100 + 273.15 self.Tmax = 40 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.6 self.xid = self.ifrac_mass self.Tbase = 8.1578 + 273.15 self.xbase = 29.2361 / 100.0 coeffs = np.array([ [-19.41,961.9,4204,0.4067,1.474], [-0.0003668,-0.5222,2.319,0.0006775,-0.04745], [-0.00004005,-0.003281,-0.03042,0.0000003105,0.0004314], [0.000001524,0.00001569,0.000686,-0.00000002,-0.000003023], [-0.954,-1.433,-21.02,-0.005008,0.01565], [-0.00001209,-0.01989,0.4927,-0.00002377,-0.00004106], [0.000002877,0.000187,-0.003072,-0.00000003216,-0.000005135], [-0.00000004394,-0.0000009154,-0.0000569,0.00000000008362,0.00000007004], [-0.002648,-0.0226,-0.3714,0.00002801,-0.0008435], [-0.0000003173,0.0002281,-0.002335,0.0000002669,0.0000164], [0.000000008652,-0.00000008581,-0.0000196,-0.000000003606,-0.0000001091], [-0.0000000003717,0.000000004056,0.0000007461,0.00000000001552,-0.000000001967], [0.0003851,-0.000169,0.01743,-0.00000002009,0.000007552], [0.0000000134,0.000008594,-0.0002969,-0.000000006813,-0.0000001118], [-0.000000002091,-0.00000009607,0.000001901,0.0000000001429,0.000000001899], [-0.0000002858,0.00001291,-0.00006292,-0.000000001506,0.0000001529], [0.0000000009312,-0.000000159,0.000005353,0.0000000001167,-0.0000000009481], [-0.000000167,-0.00000008318,-0.00000829,-0.00000000001653,-0.00000000413] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MKF" self.description = "Potassium Formate (CHKO2)" self.reference = "Melinder-BOOK-2010" self.Tmin =-100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.48 self.xid = self.ifrac_mass self.Tbase = 5.89080 + 273.15 self.xbase = 29.1447 / 100.0 coeffs = np.array([ [-20.19,1189,3144,0.5253,0.8088], [-0.0001703,-0.3515,1.698,0.001241,-0.02556], [-0.000007478,-0.001918,-0.001303,-0.00000003799,0.0002195], [0.0000003761,0.00003132,0.00005177,-0.000000002951,-0.000001667], [-1.106,7.044,-29.94,-0.001972,0.01758], [-0.000004203,-0.00656,0.0229,-0.000006322,0.00008603], [-0.0000005737,0.00007018,0.000003898,0.00000002654,0.000002498], [0.00000001474,-0.000001459,0.000007391,-0.0000000007324,-0.00000003569], [-0.021,0.01889,0.2944,-0.00002596,-0.00008372], [-0.0000003802,0.0001034,-0.002482,-0.00000004693,-0.000001601], [0.00000006504,-0.000003889,0.000033,-0.000000004362,0.000000004815], [-0.000000001877,0.000000009225,-0.0000004871,0.00000000002899,-0.000000001861], [-0.0002638,-0.0002262,0.001161,-0.0000005062,-0.000001184], [0.00000004027,0.0000003692,0.00006758,-0.000000005229,-0.0000001331], [-0.0000000004789,0.00000006609,-0.000001277,0.0000000001035,-0.000000005489], [0.0000008327,0.00002368,-0.0001429,0.00000001501,0.000001088], [0.0000000009507,0.00000008766,0.0000009949,0.0000000005376,-0.000000007003], [0.00000006345,0.000001061,-0.000003221,0.0000000005562,0.00000003098] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MNA" self.description = "Sodium Chloride (NaCl)" self.reference = "Melinder-BOOK-2010" self.Tmin =-100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.23 self.xid = self.ifrac_mass self.Tbase = 12.6179 + 273.15 self.xbase = 13.3897 / 100.0 coeffs = np.array([ [-9.383,1099,3593,0.5736,0.4369], [-0.00002581,-0.3758,1.669,0.001595,-0.02666], [0.000001423,-0.002023,-0.02019,-0.0000004003,0.0002035], [0,0,0,0,0], [-0.9039,7.723,-32.48,-0.0009383,0.02346], [0.000002578,-0.01426,-0.03331,-0.00001248,-0.00005368], [-0.00000003318,0.0001535,-0.001164,0.0000003353,0.000002871], [0,0,0,0,0], [-0.02204,0.02567,0.6453,-0.00001057,0.0004276], [0.0000001192,0.0003994,-0.009314,0.0000004158,-0.000004526], [-0.000000008993,-0.000007281,0.0002236,-0.00000002032,0.0000001838], [0,0,0,0,0], [-0.0004827,0.0001108,-0.01629,-0.0000004853,0.000007386], [-0.00000001467,0.0000003522,0.0007927,-0.00000001587,0.0000005437], [0,0,0,0,0], [0.000002247,-0.00001686,0.0002331,-0.000000004654,0.0000004688], [0,0,0,0,0], [0,0,0,0,0] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MCA" self.description = "Calcium Chloride (CaCl2)" self.reference = "Melinder-BOOK-2010" self.Tmin =-100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.3 self.xid = self.ifrac_mass self.Tbase = 7.52570 + 273.15 self.xbase = 18.7414 / 100.0 coeffs = np.array([ [-16.21,1171,3133,0.558,0.8939], [-0.0001344,-0.1463,2.81,0.00146,-0.02647], [0.000005073,-0.001302,-0.01563,0.0000003861,0.0001718], [-0.0000000482,-0.0001871,-0.00001233,0.00000001307,-0.0000007918], [-1.555,9.847,-44.8,-0.00115,0.04389], [0.00002146,-0.02488,0.03271,-0.00001008,0.0002102], [-0.0000015,-0.000553,-0.001205,-0.0000000654,-0.0000008688], [0.00000002219,0.00001665,0.000009346,0.0000000004728,-0.00000004353], [-0.05496,0.03389,0.9511,-0.00001784,0.0009121], [0.0000009415,-0.002302,-0.005191,0.0000003496,0.000003993], [0.00000006185,0.00003526,0.0002282,-0.00000000484,0.0000003785], [-0.000000001723,0.0000002788,-0.000000929,-0.0000000002011,-0.000000009979], [-0.002624,0.001062,0.01472,-0.0000004415,0.000001963], [-0.0000001082,0.00006291,0.0001615,-0.000000003462,-0.0000004892], [0.000000003036,0.000001806,0.000005073,0.0000000003922,0.00000000001526], [-0.0001726,0.00002785,-0.001346,0.00000004699,0.0000002997], [-0.000000004396,0.000006423,-0.000009754,0.0000000006179,-0.00000003631], [-0.000004494,-0.000001811,-0.00006674,0.000000002929,0.00000003435] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MGL" self.description = "Glycerol - aq" self.reference = "Melinder2010" self.Tmin =-100 + 273.15 self.Tmax = 40 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.6 self.xid = self.ifrac_mass self.Tbase = 8.9110 + 273.15 self.xbase = 36.1905 / 100.0 coeffs = np.array([ [-13,1093,3486,0.4532,1.52], [-0.0008638,-0.3624,3.766,0.0009782,-0.03729], [0.000006895,-0.002451,-0.0001222,-0.0000001196,0.0003572], [0.0000005229,0.00001547,0.00003219,-0.000000008778,-0.000003648], [-0.5742,2.74,-22.5,-0.003223,0.0445], [-0.000007991,-0.008373,0.1811,-0.00001951,-0.0002688], [-0.0000007515,0.00009596,0.0003766,0.0000001178,0.0000008876], [0.0000000171,-0.0000006999,-0.0000173,0.0000000001048,-0.00000002209], [-0.009119,0.004081,-0.03258,0.000005539,0.0003633], [0.000002973,0.00001808,0.0007249,-0.00000006878,-0.000004088], [0.000000002379,-0.0000008516,-0.00002133,-0.000000002587,0.00000006219], [-0.000000001237,0.00000001441,0.0000004907,0.00000000002262,0.0000000006331], [-0.0001641,-0.00004744,0.002922,-0.0000002073,0.000001069], [-0.000000005313,0.000001833,-0.00005346,-0.0000000002235,-0.0000001248], [0.0000000004546,-0.00000003077,0.00000023,-0.00000000001421,0.000000003019], [-0.000002408,-0.000001415,0.00002238,0.000000003,0.00000005729], [-0.000000001682,0.00000001863,-0.0000005383,0.0000000001604,-0.00000000178], [-0.000000007734,-0.000000006097,-0.0000005944,0.0000000002221,0.000000002116] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MKC" self.description = "Potassium Carbonate (K2CO3) - aq" self.reference = "Melinder2010" self.Tmin =-100 + 273.15 self.Tmax = 40 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.4 self.xid = self.ifrac_mass self.Tbase = 11.2422 + 273.15 self.xbase = 22.0833 / 100.0 coeffs = np.array([ [-10.3,1216,3217,0.5622,0.8063], [-0.0001575,-0.4114,1.492,0.001656,-0.02362], [0.000003598,-0.003383,-0.001539,0.000002108,0.0001851], [0.000000004324,0.0000299,-0.00003546,-0.00000004482,-0.000002372], [-0.7786,10.64,-37.33,-0.000892,0.03624], [0.00001112,-0.007614,-0.01775,0.000002031,-0.00001262], [-0.0000003479,0.00005214,0.0005416,-0.0000002616,-0.0000003022], [-0.000000001244,-0.0000008087,0.00000659,0.0000000007965,-0.000000007761], [-0.02766,0.04413,0.2023,-0.0000005233,0.0006659], [0.000001616,0.00007806,0.004553,-0.0000002962,-0.00001611], [-0.00000001681,-0.000001173,0.00003587,-0.000000009174,0.000000153], [0.00000000003847,0.00000005658,-0.0000003707,0.0000000001027,0.000000001061], [-0.0008226,-0.0001333,0.01971,-0.0000009283,0.00001077], [-0.00000004913,-0.000002381,0.0001367,-0.00000001814,-0.00000009796], [0.000000001395,0.0000001696,-0.000003667,0.0000000008767,0.00000000307], [-0.000002372,-0.00001246,0.0003405,-0.00000001011,-0.0000001097], [-0.000000002886,0.0000002708,-0.00001676,0.0000000008471,0.000000007825], [0.0000003251,0.0000002035,-0.00003488,0.000000001311,-0.000000008453] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MAM" self.description = "Ammonia (NH3)" self.reference = "Melinder-BOOK-2010" self.Tmin =-100 + 273.15 self.Tmax = 30 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.3 self.xid = self.ifrac_mass self.Tbase = -4.6490 + 273.15 self.xbase = 16.0784 / 100.0 coeffs = np.array([ [-25.76,944.5,4233,0.4551,0.9255], [-0.0001817,-0.2743,-1.618,0.001673,-0.03439], [0.00001204,-0.003113,0.0161,-0.000002214,0.0003217], [0.0000005567,0.000003349,0.00001662,0.0000001228,-0.000004544], [-2.385,-2.914,1.145,-0.005216,0.01327], [0.00002315,-0.02307,0.02715,0.000003544,0.0001856], [0.0000001415,0.0001341,0.001072,0.000001057,-0.00001646], [-0.00000004244,-0.0000005151,-0.00005266,-0.00000003474,0.0000003004], [-0.07636,0.02262,-0.001965,0.00008909,-0.0005979], [-0.00000229,0.00006645,0.003472,0.000003526,-0.00002184], [-0.000000262,-0.0000087,-0.00009051,-0.0000001782,0.000001297], [0.0000000001786,0.00000008999,0.000002106,0.000000001858,-0.00000001141], [-0.00261,-0.0006685,0.002131,0.000006807,-0.0001097], [-0.000000376,-0.000001002,0.00004117,-0.0000003394,0.00000167], [0.0000000136,0.0000003309,0.0000004446,0.000000008315,-0.00000003377], [-0.000073,0.000001635,0.0002136,-0.0000001898,0.000003065], [0.00000003524,0.0000004465,-0.00001354,0.000000006304,-0.00000006166], [-0.000001075,0.0000006298,-0.000008551,-0.00000001361,0.0000003244] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MKC" self.description = "Potassium Carbonate (K2CO3)" self.reference = "Melinder-BOOK-2010" self.Tmin =-100 + 273.15 self.Tmax = 40 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.4 self.xid = self.ifrac_mass self.Tbase = 11.2422 + 273.15 self.xbase = 22.0833 / 100.0 coeffs = np.array([ [-10.3,1216,3217,0.5622,0.8063], [-0.0001575,-0.4114,1.492,0.001656,-0.02362], [0.000003598,-0.003383,-0.001539,0.000002108,0.0001851], [0.000000004324,0.0000299,-0.00003546,-0.00000004482,-0.000002372], [-0.7786,10.64,-37.33,-0.000892,0.03624], [0.00001112,-0.007614,-0.01775,0.000002031,-0.00001262], [-0.0000003479,0.00005214,0.0005416,-0.0000002616,-0.0000003022], [-0.000000001244,-0.0000008087,0.00000659,0.0000000007965,-0.000000007761], [-0.02766,0.04413,0.2023,-0.0000005233,0.0006659], [0.000001616,0.00007806,0.004553,-0.0000002962,-0.00001611], [-0.00000001681,-0.000001173,0.00003587,-0.000000009174,0.000000153], [0.00000000003847,0.00000005658,-0.0000003707,0.0000000001027,0.000000001061], [-0.0008226,-0.0001333,0.01971,-0.0000009283,0.00001077], [-0.00000004913,-0.000002381,0.0001367,-0.00000001814,-0.00000009796], [0.000000001395,0.0000001696,-0.000003667,0.0000000008767,0.00000000307], [-0.000002372,-0.00001246,0.0003405,-0.00000001011,-0.0000001097], [-0.000000002886,0.0000002708,-0.00001676,0.0000000008471,0.000000007825], [0.0000003251,0.0000002035,-0.00003488,0.000000001311,-0.000000008453] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MPG" self.description = "Propylene Glycol - aq" self.reference = "Melinder2010" self.Tmin =-100 + 273.15 self.Tmax = 100 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.6 self.xid = self.ifrac_mass self.Tbase = 32.7083 + 273.15 self.xbase = 30.7031 / 100.0 coeffs = np.array([ [-13.25,1018,3882,0.4513,0.6837], [-0.0000382,-0.5406,2.699,0.0007955,-0.03045], [0.0000007865,-0.002666,-0.001659,0.00000003482,0.0002525], [-0.000000001733,0.00001347,-0.00001032,-0.000000005966,-0.000001399], [-0.6631,0.7604,-13.04,-0.004795,0.03328], [0.000006774,-0.00945,0.0507,-0.00001678,-0.0003984], [-0.00000006242,0.00005541,-0.00004752,0.00000008941,0.000004332], [-0.0000000007819,-0.0000001343,0.000001522,0.0000000001493,-0.0000000186], [-0.01094,-0.002498,-0.1598,0.00002076,0.00005453], [0.00000005332,0.000027,0.00009534,0.0000001563,-0.000000086], [-0.000000004169,-0.0000004018,0.00001167,-0.000000004615,-0.00000001593], [0.00000000003288,0.000000003376,-0.0000000487,0.000000000009897,-0.00000000004465], [-0.0002283,-0.000155,0.0003539,-0.00000009083,-0.0000039], [-0.00000001131,0.000002829,0.00003102,-0.000000002518,0.0000001054], [0.0000000001918,-0.000000007175,-0.000000295,0.00000000006543,-0.000000001589], [-0.000003409,-0.000001131,0.00005,-0.0000000005952,-0.00000001587], [0.00000000008035,-0.00000002221,-0.0000007135,-0.00000000003605,0.0000000004475], [0.00000001465,0.00000002342,-0.0000004959,0.00000000002104,0.000000003564] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MMG" self.description = "(MgCl2)" self.reference = "Melinder-BOOK-2010" self.Tmin =-100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.3 self.xid = self.ifrac_mass self.Tbase = 9.3163 + 273.15 self.xbase = 14.1327 / 100.0 coeffs = np.array([ [-15.12,1124,3365,0.5461,0.9573], [-0.0004843,-0.3072,2.229,0.001784,-0.03065], [0.00001113,-0.003295,-0.004627,-0.0000008171,0.0001115], [0.0000001858,0.00001015,0.00009186,-0.00000006594,-0.000002923], [-1.885,9.071,-52.22,-0.00273,0.04968], [-0.00005461,-0.006513,0.1162,-0.00001483,0.0001559], [0.000003579,0.00004664,0.001249,0.000000385,-0.00001796], [-0.00000003999,0.000002287,0.000002421,-0.000000005556,0.0000003051], [-0.05455,0.02449,0.6202,0.000008675,-0.002722], [0.00001887,0.00003574,0.002337,-0.000001489,-0.00001753], [-0.0000003171,0.000004337,0.0000724,-0.00000003882,0.000002021], [-0.000000006246,0.0000006044,-0.000003613,0.0000000009282,0.00000002614], [-0.0007257,0.003402,0.01052,0.0000008651,0.00009351], [0.0000007588,-0.0001409,-0.000459,0.0000001992,-0.000008353], [-0.00000004102,0.000001857,-0.00002477,-0.000000001196,0.0000001901], [-0.0003208,0.0003344,-0.001067,-0.0000004779,0.00007364], [-0.0000000492,-0.00000683,-0.0001048,0.00000001797,-0.0000004014], [-0.00001794,0.000007239,-0.0000696,-0.00000002503,0.000003717] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MEG" self.description = "Ethylene Glycol" self.reference = "Melinder-BOOK-2010" self.Tmin =-100 + 273.15 self.Tmax = 100 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.6 self.xid = self.ifrac_mass self.Tbase = 31.728 + 273.15 self.xbase = 30.8462 / 100.0 coeffs = np.array([ [-15.25,1034,3.737,0.472,0.4705], [-0.000001566,-0.4781,0.00293,0.0008903,-0.0255], [-0.0000002278,-0.002692,-0.000004675,-0.000001058,0.0001782], [0.000000002169,0.000004725,-0.00000001389,-0.000000002789,-0.0000007669], [-0.808,1.311,-0.01799,-0.004286,0.02471], [-0.000001339,-0.006876,0.0001046,-0.00001473,-0.0001171], [0.00000002047,0.00004805,-0.0000004147,0.0000001059,0.000001052], [-0.00000000002717,0.0000000169,0.0000000001847,-0.0000000001142,-0.00000001634], [-0.01334,0.0000749,-0.00009933,0.00001747,0.000003328], [0.00000006322,0.00007855,0.0000003516,0.00000006814,0.000001086], [0.0000000002373,-0.0000003995,0.000000005109,-0.000000003612,0.00000001051], [-0.000000000002183,0.000000004982,-0.00000000007138,0.000000000002365,-0.0000000006475], [-0.00007293,-0.0001062,0.00000261,0.00000003017,0.000001659], [0.000000001764,0.000001229,-0.000000001189,-0.000000002412,0.000000003157], [-0.00000000002442,-0.00000001153,-0.0000000001643,0.00000000004004,0.0000000004063], [0.000001006,-0.0000009623,0.00000001537,-0.000000001322,0.00000003089], [-0.00000000007662,-0.00000007211,-0.0000000004272,0.00000000002555,0.0000000001831], [0.00000000114,0.00000004891,-0.000000001618,0.00000000002678,-0.000000001865] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MKA" self.description = "Potassium Acetate (CH3CO2K)" self.reference = "Melinder-BOOK-2010" self.Tmin =-100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.45 self.xid = self.ifrac_mass self.Tbase = 6.7757 + 273.15 self.xbase = 25.6757 / 100.0 coeffs = np.array([ [-17.04,1138,3327,0.4958,1.042], [-0.0001082,-0.3565,1.806,0.00134,-0.03071], [0.000006892,-0.00202,-0.001766,0.00000006837,0.0002819], [-0.0000001397,0.000004205,0.00004357,0.000000002637,-0.00000219], [-1.228,5.796,-28.95,-0.002931,0.03405], [0.0000002302,-0.0079,0.04131,-0.00001477,-0.0001511], [-0.0000008711,0.00002753,0.0004429,0.00000004659,0.000001172], [0.00000002016,0.0000000514,0.00001125,0.0000000002886,-0.00000002379], [-0.03862,0.01306,0.04663,0.00001032,0.0005017], [0.000001565,0.00006845,0.0007775,-0.0000002396,-0.000007779], [0.000000007565,-0.00000113,0.00003463,-0.000000004352,0.00000009125], [-0.0000000003063,0.00000002433,-0.0000007261,-0.0000000000223,-0.000000001888], [-0.0004571,-0.001427,-0.001249,-0.0000002024,0.000005637], [-0.00000003734,0.0000008304,0.00005115,-0.000000005541,0.00000002534], [0.000000001268,0.00000001303,-0.000002987,0.00000000008984,0.000000001596], [0.00002969,0.000009353,0.0001659,-0.000000002371,-0.0000002922], [-0.000000002817,0.00000002322,-0.000005193,0.0000000005573,0.000000004601], [0.000000869,0.000002285,-0.0000004612,0.0000000005515,-0.00000000796] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MPG" self.description = "Propylene Glycol" self.reference = "Melinder-BOOK-2010" self.Tmin =-100 + 273.15 self.Tmax = 100 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.6 self.xid = self.ifrac_mass self.Tbase = 32.7083 + 273.15 self.xbase = 30.7031 / 100.0 coeffs = np.array([ [-13.25,1018,3882,0.4513,0.6837], [-0.0000382,-0.5406,2.699,0.0007955,-0.03045], [0.0000007865,-0.002666,-0.001659,0.00000003482,0.0002525], [-0.000000001733,0.00001347,-0.00001032,-0.000000005966,-0.000001399], [-0.6631,0.7604,-13.04,-0.004795,0.03328], [0.000006774,-0.00945,0.0507,-0.00001678,-0.0003984], [-0.00000006242,0.00005541,-0.00004752,0.00000008941,0.000004332], [-0.0000000007819,-0.0000001343,0.000001522,0.0000000001493,-0.0000000186], [-0.01094,-0.002498,-0.1598,0.00002076,0.00005453], [0.00000005332,0.000027,0.00009534,0.0000001563,-0.000000086], [-0.000000004169,-0.0000004018,0.00001167,-0.000000004615,-0.00000001593], [0.00000000003288,0.000000003376,-0.0000000487,0.000000000009897,-0.00000000004465], [-0.0002283,-0.000155,0.0003539,-0.00000009083,-0.0000039], [-0.00000001131,0.000002829,0.00003102,-0.000000002518,0.0000001054], [0.0000000001918,-0.000000007175,-0.000000295,0.00000000006543,-0.000000001589], [-0.000003409,-0.000001131,0.00005,-0.0000000005952,-0.00000001587], [0.00000000008035,-0.00000002221,-0.0000007135,-0.00000000003605,0.0000000004475], [0.00000001465,0.00000002342,-0.0000004959,0.00000000002104,0.000000003564] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MEG" self.description = "Ethylene Glycol - aq" self.reference = "Melinder2010" self.Tmin =-100 + 273.15 self.Tmax = 100 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.6 self.xid = self.ifrac_mass self.Tbase = 31.728 + 273.15 self.xbase = 30.8462 / 100.0 coeffs = np.array([ [-15.25,1034,3737,0.472,0.4705], [-0.000001566,-0.4781,2.93,0.0008903,-0.0255], [-0.0000002278,-0.002692,-0.004675,-0.000001058,0.0001782], [0.000000002169,0.000004725,-0.00001389,-0.000000002789,-0.0000007669], [-0.808,1.311,-17.99,-0.004286,0.02471], [-0.000001339,-0.006876,0.1046,-0.00001473,-0.0001171], [0.00000002047,0.00004805,-0.0004147,0.0000001059,0.000001052], [-0.00000000002717,0.0000000169,0.0000001847,-0.0000000001142,-0.00000001634], [-0.01334,0.0000749,-0.09933,0.00001747,0.000003328], [0.00000006322,0.00007855,0.0003516,0.00000006814,0.000001086], [0.0000000002373,-0.0000003995,0.000005109,-0.000000003612,0.00000001051], [-0.000000000002183,0.000000004982,-0.00000007138,0.000000000002365,-0.0000000006475], [-0.00007293,-0.0001062,0.00261,0.00000003017,0.000001659], [0.000000001764,0.000001229,-0.000001189,-0.000000002412,0.000000003157], [-0.00000000002442,-0.00000001153,-0.0000001643,0.00000000004004,0.0000000004063], [0.000001006,-0.0000009623,0.00001537,-0.000000001322,0.00000003089], [-0.00000000007662,-0.00000007211,-0.0000004272,0.00000000002555,0.0000000001831], [0.00000000114,0.00000004891,-0.000001618,0.00000000002678,-0.000000001865] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MKA" self.description = "Potassium Acetate (CH3CO2K) - aq" self.reference = "Melinder2010" self.Tmin =-100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.45 self.xid = self.ifrac_mass self.Tbase = 6.7757 + 273.15 self.xbase = 25.6757 / 100.0 coeffs = np.array([ [-17.04,1138,3327,0.4958,1.042], [-0.0001082,-0.3565,1.806,0.00134,-0.03071], [0.000006892,-0.00202,-0.001766,0.00000006837,0.0002819], [-0.0000001397,0.000004205,0.00004357,0.000000002637,-0.00000219], [-1.228,5.796,-28.95,-0.002931,0.03405], [0.0000002302,-0.0079,0.04131,-0.00001477,-0.0001511], [-0.0000008711,0.00002753,0.0004429,0.00000004659,0.000001172], [0.00000002016,0.0000000514,0.00001125,0.0000000002886,-0.00000002379], [-0.03862,0.01306,0.04663,0.00001032,0.0005017], [0.000001565,0.00006845,0.0007775,-0.0000002396,-0.000007779], [0.000000007565,-0.00000113,0.00003463,-0.000000004352,0.00000009125], [-0.0000000003063,0.00000002433,-0.0000007261,-0.0000000000223,-0.000000001888], [-0.0004571,-0.001427,-0.001249,-0.0000002024,0.000005637], [-0.00000003734,0.0000008304,0.00005115,-0.000000005541,0.00000002534], [0.000000001268,0.00000001303,-0.000002987,0.00000000008984,0.000000001596], [0.00002969,0.000009353,0.0001659,-0.000000002371,-0.0000002922], [-0.000000002817,0.00000002322,-0.000005193,0.0000000005573,0.000000004601], [0.000000869,0.000002285,-0.0000004612,0.0000000005515,-0.00000000796] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "MLI" self.description = "Lithium Chloride (LiCl)" self.reference = "Melinder-BOOK-2010" self.Tmin =-100.0 + 273.15 self.Tmax = 40.0 + 273.15 self.TminPsat = self.Tmax self.xmin = 0.0 self.xmax = 0.24 self.xid = self.ifrac_mass self.Tbase = 1.4895 + 273.15 self.xbase = 14.8000 / 100.0 coeffs = np.array([ [-23.29,1088,3383,0.5362,1.013], [0.0006555,-0.1772,3.958,0.001454,-0.03062], [-0.0001208,-0.002619,-0.0003035,-0.0000000326,0.000294], [0.000002616,0.000006209,-0.000003477,-0.0000000142,-0.000002719], [-3.051,6.056,-50.36,-0.001855,0.0392], [-0.0003972,-0.008588,0.4415,-0.00001405,0.00006246], [0.00003674,0.0001567,-0.0002609,-0.000000005424,-0.000001752], [-0.0000005569,-0.000001847,0.000003651,0.0000000009821,0.00000008346], [-0.179,0.02556,0.6298,0.00001017,0.000332], [0.00001391,0.00007194,-0.004384,0.0000006821,0.000000784], [-0.000001997,-0.00001053,0.0001039,-0.000000008674,-0.00000031], [0.00000002931,0.00000009716,-0.000001076,0.0000000001095,0.00000001381], [-0.002917,0.0009407,0.04544,0.0000007084,0.000002206], [0.00000149,-0.000007253,-0.0008787,-0.00000007434,-0.0000006011], [-0.00000006904,0.0000003144,-0.000008457,0.0000000006988,0.000000004023], [0.0005715,-0.00008105,0.002527,-0.0000001273,0.000001745], [0.0000001186,0.000001072,-0.0000358,-0.000000003058,-0.00000007094], [0.00002757,-0.000003974,0.00004058,-0.000000009124,0.00000006699] ]) self.setMelinderMatrix(coeffs)
def __init__(self): CoefficientData.__init__(self) self.name = "ExampleSecCool" self.description = "Methanol solution" #self.reference = "SecCool software" self.Tmax = 20 + 273.15 self.Tmin = -50 + 273.15 self.xmax = 0.5 self.xmin = 0.0 self.xid = self.ifrac_mass self.TminPsat = 20 + 273.15 self.Tbase = -4.48 + 273.15 self.xbase = 31.57 / 100.0 self.density.type = self.density.INCOMPRESSIBLE_POLYNOMIAL self.density.coeffs = self.convertSecCoolArray(np.array([ 960.24665800, -1.2903839100, -0.0161042520, -0.0001969888, 1.131559E-05, 9.181999E-08, -0.4020348270, -0.0162463989, 0.0001623301, 4.367343E-06, 1.199000E-08, -0.0025204776, 0.0001101514, -2.320217E-07, 7.794999E-08, 9.937483E-06, -1.346886E-06, 4.141999E-08])) self.specific_heat.type = self.specific_heat.INCOMPRESSIBLE_POLYNOMIAL self.specific_heat.coeffs = self.convertSecCoolArray(np.array([ 3822.9712300, -23.122409500, 0.0678775826, 0.0022413893, -0.0003045332, -4.758000E-06, 2.3501449500, 0.1788839410, 0.0006828000, 0.0002101166, -9.812000E-06, -0.0004724176, -0.0003317949, 0.0001002032, -5.306000E-06, 4.242194E-05, 2.347190E-05, -1.894000E-06])) self.conductivity.type = self.conductivity.INCOMPRESSIBLE_POLYNOMIAL self.conductivity.coeffs = self.convertSecCoolArray(np.array([ 0.4082066700, -0.0039816870, 1.583368E-05, -3.552049E-07, -9.884176E-10, 4.460000E-10, 0.0006629321, -2.686475E-05, 9.039150E-07, -2.128257E-08, -5.562000E-10, 3.685975E-07, 7.188416E-08, -1.041773E-08, 2.278001E-10, 4.703395E-08, 7.612361E-11, -2.734000E-10])) self.viscosity.type = self.viscosity.INCOMPRESSIBLE_EXPPOLYNOMIAL self.viscosity.coeffs = self.convertSecCoolArray(np.array([ 1.4725525500, 0.0022218998, -0.0004406139, 6.047984E-06, -1.954730E-07, -2.372000E-09, -0.0411841566, 0.0001784479, -3.564413E-06, 4.064671E-08, 1.915000E-08, 0.0002572862, -9.226343E-07, -2.178577E-08, -9.529999E-10, -1.699844E-06, -1.023552E-07, 4.482000E-09])) self.T_freeze.type = self.T_freeze.INCOMPRESSIBLE_POLYOFFSET self.T_freeze.coeffs = np.array([ 27.755555600/100.0, -22.973221700+273.15, -1.1040507200*100.0, -0.0120762281*100.0*100.0, -9.343458E-05*100.0*100.0*100.0]) self.density.source = self.density.SOURCE_COEFFS self.specific_heat.source = self.specific_heat.SOURCE_COEFFS self.conductivity.source = self.conductivity.SOURCE_COEFFS self.viscosity.source = self.viscosity.SOURCE_COEFFS self.T_freeze.source = self.T_freeze.SOURCE_COEFFS