def test_qdf(): from galpy.df import quasiisothermaldf from galpy.potential import MWPotential2014 from galpy.actionAngle import actionAngleStaeckel # Setup actionAngle instance for action calcs aAS= actionAngleStaeckel(pot=MWPotential2014,delta=0.45, c=True) # Quasi-iso df w/ hr=1/3, hsr/z=1, sr(1)=0.2, sz(1)=0.1 df= quasiisothermaldf(1./3.,0.2,0.1,1.,1.,aA=aAS, pot=MWPotential2014) # Evaluate DF w/ R,vR,vT,z,vz df(0.9,0.1,0.8,0.05,0.02) assert numpy.fabs(df(0.9,0.1,0.8,0.05,0.02)-numpy.array([ 123.57158928])) < 10.**-4., 'qdf does not behave as expected' # Evaluate DF w/ Orbit instance, return ln from galpy.orbit import Orbit df(Orbit([0.9,0.1,0.8,0.05,0.02]),log=True) assert numpy.fabs(df(Orbit([0.9,0.1,0.8,0.05,0.02]),log=True)-numpy.array([ 4.81682066])) < 10.**-4., 'qdf does not behave as expected' # Evaluate DF marginalized over vz df.pvRvT(0.1,0.9,0.9,0.05) assert numpy.fabs(df.pvRvT(0.1,0.9,0.9,0.05)-23.273310451852243) < 10.**-4., 'qdf does not behave as expected' # Evaluate DF marginalized over vR,vT df.pvz(0.02,0.9,0.05) assert numpy.fabs(df.pvz(0.02,0.9,0.05)-50.949586235238172) < 10.**-4., 'qdf does not behave as expected' # Calculate the density df.density(0.9,0.05) assert numpy.fabs(df.density(0.9,0.05)-12.73725936526167) < 10.**-4., 'qdf does not behave as expected' # Estimate the DF's actual density scale length at z=0 df.estimate_hr(0.9,0.) assert numpy.fabs(df.estimate_hr(0.9,0.)-0.322420336223) < 10.**-2., 'qdf does not behave as expected' # Estimate the DF's actual surface-density scale length df.estimate_hr(0.9,None) assert numpy.fabs(df.estimate_hr(0.9,None)-0.38059909132766462) < 10.**-4., 'qdf does not behave as expected' # Estimate the DF's density scale height df.estimate_hz(0.9,0.02) assert numpy.fabs(df.estimate_hz(0.9,0.02)-0.064836202345657207) < 10.**-4., 'qdf does not behave as expected' # Calculate the mean velocities df.meanvR(0.9,0.05), df.meanvT(0.9,0.05), df.meanvz(0.9,0.05) assert numpy.fabs(df.meanvR(0.9,0.05)-3.8432265354618213e-18) < 10.**-4., 'qdf does not behave as expected' assert numpy.fabs(df.meanvT(0.9,0.05)-0.90840425173325279) < 10.**-4., 'qdf does not behave as expected' assert numpy.fabs(df.meanvz(0.9,0.05)+4.3579787517991084e-19) < 10.**-4., 'qdf does not behave as expected' # Calculate the velocity dispersions from numpy import sqrt sqrt(df.sigmaR2(0.9,0.05)), sqrt(df.sigmaz2(0.9,0.05)) assert numpy.fabs(sqrt(df.sigmaR2(0.9,0.05))-0.22695537077102387) < 10.**-4., 'qdf does not behave as expected' assert numpy.fabs(sqrt(df.sigmaz2(0.9,0.05))-0.094215523962105044) < 10.**-4., 'qdf does not behave as expected' # Calculate the tilt of the velocity ellipsoid # 2017/10-28: CHANGED bc tilt now returns angle in rad, no longer in deg df.tilt(0.9,0.05) assert numpy.fabs(df.tilt(0.9,0.05)-2.5166061974413765/180.*numpy.pi) < 10.**-4., 'qdf does not behave as expected' # Calculate a higher-order moment of the velocity DF df.vmomentdensity(0.9,0.05,6.,2.,2.,gl=True) assert numpy.fabs(df.vmomentdensity(0.9,0.05,6.,2.,2.,gl=True)-0.0001591100892366438) < 10.**-4., 'qdf does not behave as expected' # Sample velocities at given R,z, check mean numpy.random.seed(1) vs= df.sampleV(0.9,0.05,n=500); mvt= numpy.mean(vs[:,1]) assert numpy.fabs(numpy.mean(vs[:,0])) < 0.05 # vR assert numpy.fabs(mvt-df.meanvT(0.9,0.05)) < 0.01 #vT assert numpy.fabs(numpy.mean(vs[:,2])) < 0.05 # vz return None
def test_qdf(): from galpy.df import quasiisothermaldf from galpy.potential import MWPotential2014 from galpy.actionAngle import actionAngleStaeckel # Setup actionAngle instance for action calcs aAS= actionAngleStaeckel(pot=MWPotential2014,delta=0.45, c=True) # Quasi-iso df w/ hr=1/3, hsr/z=1, sr(1)=0.2, sz(1)=0.1 df= quasiisothermaldf(1./3.,0.2,0.1,1.,1.,aA=aAS, pot=MWPotential2014) # Evaluate DF w/ R,vR,vT,z,vz df(0.9,0.1,0.8,0.05,0.02) assert numpy.fabs(df(0.9,0.1,0.8,0.05,0.02)-numpy.array([ 123.57158928])) < 10.**-4., 'qdf does not behave as expected' # Evaluate DF w/ Orbit instance, return ln from galpy.orbit import Orbit df(Orbit([0.9,0.1,0.8,0.05,0.02]),log=True) assert numpy.fabs(df(Orbit([0.9,0.1,0.8,0.05,0.02]),log=True)-numpy.array([ 4.81682066])) < 10.**-4., 'qdf does not behave as expected' # Evaluate DF marginalized over vz df.pvRvT(0.1,0.9,0.9,0.05) assert numpy.fabs(df.pvRvT(0.1,0.9,0.9,0.05)-23.273310451852243) < 10.**-4., 'qdf does not behave as expected' # Evaluate DF marginalized over vR,vT df.pvz(0.02,0.9,0.05) assert numpy.fabs(df.pvz(0.02,0.9,0.05)-50.949586235238172) < 10.**-4., 'qdf does not behave as expected' # Calculate the density df.density(0.9,0.05) assert numpy.fabs(df.density(0.9,0.05)-12.73725936526167) < 10.**-4., 'qdf does not behave as expected' # Estimate the DF's actual density scale length at z=0 df.estimate_hr(0.9,0.) assert numpy.fabs(df.estimate_hr(0.9,0.)-0.322420336223) < 10.**-2., 'qdf does not behave as expected' # Estimate the DF's actual surface-density scale length df.estimate_hr(0.9,None) assert numpy.fabs(df.estimate_hr(0.9,None)-0.38059909132766462) < 10.**-4., 'qdf does not behave as expected' # Estimate the DF's density scale height df.estimate_hz(0.9,0.02) assert numpy.fabs(df.estimate_hz(0.9,0.02)-0.064836202345657207) < 10.**-4., 'qdf does not behave as expected' # Calculate the mean velocities df.meanvR(0.9,0.05), df.meanvT(0.9,0.05), df.meanvz(0.9,0.05) assert numpy.fabs(df.meanvR(0.9,0.05)-3.8432265354618213e-18) < 10.**-4., 'qdf does not behave as expected' assert numpy.fabs(df.meanvT(0.9,0.05)-0.90840425173325279) < 10.**-4., 'qdf does not behave as expected' assert numpy.fabs(df.meanvz(0.9,0.05)+4.3579787517991084e-19) < 10.**-4., 'qdf does not behave as expected' # Calculate the velocity dispersions from numpy import sqrt sqrt(df.sigmaR2(0.9,0.05)), sqrt(df.sigmaz2(0.9,0.05)) assert numpy.fabs(sqrt(df.sigmaR2(0.9,0.05))-0.22695537077102387) < 10.**-4., 'qdf does not behave as expected' assert numpy.fabs(sqrt(df.sigmaz2(0.9,0.05))-0.094215523962105044) < 10.**-4., 'qdf does not behave as expected' # Calculate the tilt of the velocity ellipsoid df.tilt(0.9,0.05) assert numpy.fabs(df.tilt(0.9,0.05)-2.5166061974413765) < 10.**-4., 'qdf does not behave as expected' # Calculate a higher-order moment of the velocity DF df.vmomentdensity(0.9,0.05,6.,2.,2.,gl=True) assert numpy.fabs(df.vmomentdensity(0.9,0.05,6.,2.,2.,gl=True)-0.0001591100892366438) < 10.**-4., 'qdf does not behave as expected' # Sample velocities at given R,z, check mean numpy.random.seed(1) vs= df.sampleV(0.9,0.05,n=500); mvt= numpy.mean(vs[:,1]) assert numpy.fabs(numpy.mean(vs[:,0])) < 0.05 # vR assert numpy.fabs(mvt-df.meanvT(0.9,0.05)) < 0.01 #vT assert numpy.fabs(numpy.mean(vs[:,2])) < 0.05 # vz return None
def test_diskdf(): from galpy.df import dehnendf # Init. dehnendf w/ flat rot., hr=1/3, hs=1, and sr(1)=0.2 df = dehnendf(beta=0., profileParams=(1. / 3., 1.0, 0.2)) # Same, w/ correction factors to scale profiles dfc = dehnendf(beta=0., profileParams=(1. / 3., 1.0, 0.2), correct=True, niter=20) if True: # Log. diff. between scale and DF surf. dens. numpy.log(df.surfacemass(0.5) / df.targetSurfacemass(0.5)) assert numpy.fabs( numpy.log(df.surfacemass(0.5) / df.targetSurfacemass(0.5)) + 0.056954077791649592 ) < 10.**-4., 'diskdf does not behave as expected' # Same for corrected DF numpy.log(dfc.surfacemass(0.5) / dfc.targetSurfacemass(0.5)) assert numpy.fabs( numpy.log(dfc.surfacemass(0.5) / dfc.targetSurfacemass(0.5)) + 4.1440377205802041e-06 ) < 10.**-4., 'diskdf does not behave as expected' # Log. diff between scale and DF sr numpy.log(df.sigmaR2(0.5) / df.targetSigma2(0.5)) assert numpy.fabs( numpy.log(df.sigmaR2(0.5) / df.targetSigma2(0.5)) + 0.12786083001363127 ) < 10.**-4., 'diskdf does not behave as expected' # Same for corrected DF numpy.log(dfc.sigmaR2(0.5) / dfc.targetSigma2(0.5)) assert numpy.fabs( numpy.log(dfc.sigmaR2(0.5) / dfc.targetSigma2(0.5)) + 6.8065001252214986e-06 ) < 10.**-4., 'diskdf does not behave as expected' # Evaluate DF w/ R,vR,vT df(numpy.array([0.9, 0.1, 0.8])) assert numpy.fabs( df(numpy.array([0.9, 0.1, 0.8])) - numpy.array(0.1740247246180417) ) < 10.**-4., 'diskdf does not behave as expected' # Evaluate corrected DF w/ Orbit instance from galpy.orbit import Orbit dfc(Orbit([0.9, 0.1, 0.8])) assert numpy.fabs( dfc(Orbit([0.9, 0.1, 0.8])) - numpy.array(0.16834863725552207) ) < 10.**-4., 'diskdf does not behave as expected' # Calculate the mean velocities df.meanvR(0.9), df.meanvT(0.9) assert numpy.fabs( df.meanvR(0.9)) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(df.meanvT(0.9) - 0.91144428051168291 ) < 10.**-4., 'diskdf does not behave as expected' # Calculate the velocity dispersions numpy.sqrt(dfc.sigmaR2(0.9)), numpy.sqrt(dfc.sigmaT2(0.9)) assert numpy.fabs(numpy.sqrt(dfc.sigmaR2(0.9)) - 0.22103383792719539 ) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(numpy.sqrt(dfc.sigmaT2(0.9)) - 0.17613725303902811 ) < 10.**-4., 'diskdf does not behave as expected' # Calculate the skew of the velocity distribution df.skewvR(0.9), df.skewvT(0.9) assert numpy.fabs( df.skewvR(0.9)) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(df.skewvT(0.9) + 0.47331638366025863 ) < 10.**-4., 'diskdf does not behave as expected' # Calculate the kurtosis of the velocity distribution df.kurtosisvR(0.9), df.kurtosisvT(0.9) assert numpy.fabs(df.kurtosisvR(0.9) + 0.13561300880237059 ) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(df.kurtosisvT(0.9) - 0.12612702099300721 ) < 10.**-4., 'diskdf does not behave as expected' # Calculate a higher-order moment of the velocity DF df.vmomentsurfacemass(1., 6., 2.) / df.surfacemass(1.) assert numpy.fabs( df.vmomentsurfacemass(1., 6., 2.) / df.surfacemass(1.) - 0.00048953492205559054 ) < 10.**-4., 'diskdf does not behave as expected' # Calculate the Oort functions dfc.oortA(1.), dfc.oortB(1.), dfc.oortC(1.), dfc.oortK(1.) assert numpy.fabs(dfc.oortA(1.) - 0.40958989067012197 ) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(dfc.oortB(1.) + 0.49396172114486514 ) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs( dfc.oortC(1.)) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs( dfc.oortK(1.)) < 10.**-4., 'diskdf does not behave as expected' # Sample Orbits from the DF, returns list of Orbits numpy.random.seed(1) os = dfc.sample(n=100, returnOrbit=True, nphi=1) # check that these have the right mean radius = 2hr=2/3 rs = numpy.array([o.R() for o in os]) assert numpy.fabs(numpy.mean(rs) - 2. / 3.) < 0.1 # Sample vR and vT at given R, check their mean vrvt = dfc.sampleVRVT(0.7, n=500, target=True) vt = vrvt[:, 1] assert numpy.fabs(numpy.mean(vrvt[:, 0])) < 0.05 assert numpy.fabs(numpy.mean(vt) - dfc.meanvT(0.7)) < 0.01 # Sample Orbits along a given line-of-sight os = dfc.sampleLOS(45., n=1000) return None
def test_diskdf(): from galpy.df import dehnendf # Init. dehnendf w/ flat rot., hr=1/3, hs=1, and sr(1)=0.2 df= dehnendf(beta=0.,profileParams=(1./3.,1.0,0.2)) # Same, w/ correction factors to scale profiles dfc= dehnendf(beta=0.,profileParams=(1./3.,1.0,0.2), correct=True,niter=20) if True: # Log. diff. between scale and DF surf. dens. numpy.log(df.surfacemass(0.5)/df.targetSurfacemass(0.5)) assert numpy.fabs(numpy.log(df.surfacemass(0.5)/df.targetSurfacemass(0.5))+0.056954077791649592) < 10.**-4., 'diskdf does not behave as expected' # Same for corrected DF numpy.log(dfc.surfacemass(0.5)/dfc.targetSurfacemass(0.5)) assert numpy.fabs(numpy.log(dfc.surfacemass(0.5)/dfc.targetSurfacemass(0.5))+4.1440377205802041e-06) < 10.**-4., 'diskdf does not behave as expected' # Log. diff between scale and DF sr numpy.log(df.sigmaR2(0.5)/df.targetSigma2(0.5)) assert numpy.fabs(numpy.log(df.sigmaR2(0.5)/df.targetSigma2(0.5))+0.12786083001363127) < 10.**-4., 'diskdf does not behave as expected' # Same for corrected DF numpy.log(dfc.sigmaR2(0.5)/dfc.targetSigma2(0.5)) assert numpy.fabs(numpy.log(dfc.sigmaR2(0.5)/dfc.targetSigma2(0.5))+6.8065001252214986e-06) < 10.**-4., 'diskdf does not behave as expected' # Evaluate DF w/ R,vR,vT df(numpy.array([0.9,0.1,0.8])) assert numpy.fabs(df(numpy.array([0.9,0.1,0.8]))-numpy.array(0.1740247246180417)) < 10.**-4., 'diskdf does not behave as expected' # Evaluate corrected DF w/ Orbit instance from galpy.orbit import Orbit dfc(Orbit([0.9,0.1,0.8])) assert numpy.fabs(dfc(Orbit([0.9,0.1,0.8]))-numpy.array(0.16834863725552207)) < 10.**-4., 'diskdf does not behave as expected' # Calculate the mean velocities df.meanvR(0.9), df.meanvT(0.9) assert numpy.fabs(df.meanvR(0.9)) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(df.meanvT(0.9)-0.91144428051168291) < 10.**-4., 'diskdf does not behave as expected' # Calculate the velocity dispersions numpy.sqrt(dfc.sigmaR2(0.9)), numpy.sqrt(dfc.sigmaT2(0.9)) assert numpy.fabs(numpy.sqrt(dfc.sigmaR2(0.9))-0.22103383792719539) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(numpy.sqrt(dfc.sigmaT2(0.9))-0.17613725303902811) < 10.**-4., 'diskdf does not behave as expected' # Calculate the skew of the velocity distribution df.skewvR(0.9), df.skewvT(0.9) assert numpy.fabs(df.skewvR(0.9)) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(df.skewvT(0.9)+0.47331638366025863) < 10.**-4., 'diskdf does not behave as expected' # Calculate the kurtosis of the velocity distribution df.kurtosisvR(0.9), df.kurtosisvT(0.9) assert numpy.fabs(df.kurtosisvR(0.9)+0.13561300880237059) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(df.kurtosisvT(0.9)-0.12612702099300721) < 10.**-4., 'diskdf does not behave as expected' # Calculate a higher-order moment of the velocity DF df.vmomentsurfacemass(1.,6.,2.)/df.surfacemass(1.) assert numpy.fabs(df.vmomentsurfacemass(1.,6.,2.)/df.surfacemass(1.)-0.00048953492205559054) < 10.**-4., 'diskdf does not behave as expected' # Calculate the Oort functions dfc.oortA(1.), dfc.oortB(1.), dfc.oortC(1.), dfc.oortK(1.) assert numpy.fabs(dfc.oortA(1.)-0.40958989067012197) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(dfc.oortB(1.)+0.49396172114486514) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(dfc.oortC(1.)) < 10.**-4., 'diskdf does not behave as expected' assert numpy.fabs(dfc.oortK(1.)) < 10.**-4., 'diskdf does not behave as expected' # Sample Orbits from the DF, returns list of Orbits numpy.random.seed(1) os= dfc.sample(n=100,returnOrbit=True,nphi=1) # check that these have the right mean radius = 2hr=2/3 rs= numpy.array([o.R() for o in os]) assert numpy.fabs(numpy.mean(rs)-2./3.) < 0.1 # Sample vR and vT at given R, check their mean vrvt= dfc.sampleVRVT(0.7,n=500,target=True); vt= vrvt[:,1] assert numpy.fabs(numpy.mean(vrvt[:,0])) < 0.05 assert numpy.fabs(numpy.mean(vt)-dfc.meanvT(0.7)) < 0.01 # Sample Orbits along a given line-of-sight os= dfc.sampleLOS(45.,n=1000) return None