class TestNFW(object): """ tests the Gaussian methods """ def setup(self): self.nfw = NFW() def test_function(self): x = np.array([1]) y = np.array([2]) Rs = 1. rho0 = 1 alpha_Rs = self.nfw._rho02alpha(rho0, Rs) values = self.nfw.function(x, y, Rs, alpha_Rs) npt.assert_almost_equal(values[0], 2.4764530888727556, decimal=5) x = np.array([0]) y = np.array([0]) Rs = 1. rho0 = 1 alpha_Rs = self.nfw._rho02alpha(rho0, Rs) values = self.nfw.function(x, y, Rs, alpha_Rs) npt.assert_almost_equal(values[0], 0, decimal=4) x = np.array([2,3,4]) y = np.array([1,1,1]) values = self.nfw.function(x, y, Rs, alpha_Rs) npt.assert_almost_equal(values[0], 2.4764530888727556, decimal=5) npt.assert_almost_equal(values[1], 3.5400250357511416, decimal=5) npt.assert_almost_equal(values[2], 4.5623722261790647, decimal=5) def test_derivatives(self): Rs = .1 alpha_Rs = 0.0122741127776 x_array = np.array([0.0, 0.00505050505,0.0101010101,0.0151515152,0.0202020202,0.0252525253, 0.0303030303,0.0353535354,0.0404040404,0.0454545455,0.0505050505,0.0555555556,0.0606060606,0.0656565657,0.0707070707,0.0757575758,0.0808080808,0.0858585859,0.0909090909,0.095959596,0.101010101,0.106060606, 0.111111111,0.116161616,0.121212121,0.126262626,0.131313131,0.136363636,0.141414141,0.146464646,0.151515152,0.156565657, 0.161616162,0.166666667,0.171717172,0.176767677,0.181818182,0.186868687,0.191919192,0.196969697,0.202020202,0.207070707,0.212121212,0.217171717,0.222222222,0.227272727,0.232323232,0.237373737,0.242424242,0.247474747,0.252525253,0.257575758,0.262626263,0.267676768,0.272727273,0.277777778,0.282828283, 0.287878788,0.292929293,0.297979798,0.303030303,0.308080808,0.313131313,0.318181818,0.323232323,0.328282828,0.333333333,0.338383838,0.343434343,0.348484848, 0.353535354,0.358585859,0.363636364,0.368686869,0.373737374,0.378787879,0.383838384,0.388888889,0.393939394,0.398989899,0.404040404,0.409090909, 0.414141414,0.419191919,0.424242424,0.429292929,0.434343434,0.439393939,0.444444444,0.449494949,0.454545455,0.45959596,0.464646465,0.46969697,0.474747475,0.47979798,0.484848485,0.48989899,0.494949495,0.5]) truth_alpha = np.array([0.0, 0.00321693283, 0.00505903212, 0.00640987376,0.00746125453,0.00830491158, 0.00899473755, 0.00956596353,0.0100431963,0.0104444157,0.0107831983,0.0110700554,0.0113132882,0.0115195584,0.0116942837,0.0118419208, 0.011966171,0.0120701346,0.012156428,0.0122272735,0.0122845699,0.0123299487,0.0123648177,0.0123903978,0.0124077515,0.0124178072,0.0124213787,0.0124191816,0.0124118471,0.0123999334,0.0123839353,0.0123642924,0.0123413964, 0.0123155966,0.0122872054,0.0122565027,0.0122237393,0.0121891409,0.0121529102,0.0121152302,0.0120762657,0.0120361656,0.0119950646,0.0119530846,0.0119103359,0.0118669186,0.0118229235,0.0117784329,0.0117335217, 0.011688258,0.0116427037,0.0115969149,0.0115509429,0.0115048343,0.0114586314,0.0114123729,0.011366094,0.0113198264,0.0112735995,0.0112274395,0.0111813706,0.0111354147, 0.0110895915,0.011043919,0.0109984136,0.01095309,0.0109079617,0.0108630406,0.0108183376,0.0107738625,0.010729624,0.01068563,0.0106418875,0.0105984026,0.0105551809,0.0105122271,0.0104695455,0.0104271398,0.010385013,0.0103431679,0.0103016067,0.0102603311, 0.0102193428,0.0101786427,0.0101382318,0.0100981105,0.0100582792,0.0100187377,0.00997948602,0.00994052364,0.00990184999, 0.00986346433, 0.00982536573,0.00978755314, 0.00975002537, 0.0097127811, 0.00967581893, 0.00963913734, 0.00960273473, 0.00956660941]) y_array = np.zeros_like(x_array) f_x, f_y = self.nfw.derivatives(x_array, y_array, Rs, alpha_Rs) #print(f_x/truth_alpha) for i in range(len(x_array)): npt.assert_almost_equal(f_x[i], truth_alpha[i], decimal=8) def test_hessian(self): x = np.array([1]) y = np.array([2]) Rs = 1. rho0 = 1 alpha_Rs = self.nfw._rho02alpha(rho0, Rs) f_xx, f_yy,f_xy = self.nfw.hessian(x, y, Rs, alpha_Rs) npt.assert_almost_equal(f_xx[0], 0.40855527280658294, decimal=5) npt.assert_almost_equal(f_yy[0], 0.037870368296371637, decimal=5) npt.assert_almost_equal(f_xy[0], -0.2471232696734742, decimal=5) x = np.array([1,3,4]) y = np.array([2,1,1]) values = self.nfw.hessian(x, y, Rs, alpha_Rs) npt.assert_almost_equal(values[0][0], 0.40855527280658294, decimal=5) npt.assert_almost_equal(values[1][0], 0.037870368296371637, decimal=5) npt.assert_almost_equal(values[2][0], -0.2471232696734742, decimal=5) npt.assert_almost_equal(values[0][1], -0.046377502475445781, decimal=5) npt.assert_almost_equal(values[1][1], 0.30577812878681554, decimal=5) npt.assert_almost_equal(values[2][1], -0.13205836172334798, decimal=5) def test_mass_3d_lens(self): R = 1 Rs = 3 alpha_Rs = 1 m_3d = self.nfw.mass_3d_lens(R, Rs, alpha_Rs) npt.assert_almost_equal(m_3d, 1.1573795105019022, decimal=8) def test_interpol(self): Rs = 3 alpha_Rs = 1 x = np.array([2, 3, 4]) y = np.array([1, 1, 1]) nfw = NFW(interpol=False) nfw_interp = NFW(interpol=True) nfw_interp_lookup = NFW(interpol=True, lookup=True) values = nfw.function(x, y, Rs, alpha_Rs) values_interp = nfw_interp.function(x, y, Rs, alpha_Rs) values_interp_lookup = nfw_interp_lookup.function(x, y, Rs, alpha_Rs) npt.assert_almost_equal(values, values_interp, decimal=4) npt.assert_almost_equal(values, values_interp_lookup, decimal=4) values = nfw.derivatives(x, y, Rs, alpha_Rs) values_interp = nfw_interp.derivatives(x, y, Rs, alpha_Rs) values_interp_lookup = nfw_interp_lookup.derivatives(x, y, Rs, alpha_Rs) npt.assert_almost_equal(values, values_interp, decimal=4) npt.assert_almost_equal(values, values_interp_lookup, decimal=4) values = nfw.hessian(x, y, Rs, alpha_Rs) values_interp = nfw_interp.hessian(x, y, Rs, alpha_Rs) values_interp_lookup = nfw_interp_lookup.hessian(x, y, Rs, alpha_Rs) npt.assert_almost_equal(values, values_interp, decimal=4) npt.assert_almost_equal(values, values_interp_lookup, decimal=4)
class NFW_ELLIPSE(LensProfileBase): """ this class contains functions concerning the NFW profile with an ellipticity defined in the potential parameterization of alpha_Rs and Rs is the same as for the spherical NFW profile from Glose & Kneib: https://cds.cern.ch/record/529584/files/0112138.pdf relation are: R_200 = c * Rs """ profile_name = 'NFW_ELLIPSE' param_names = ['Rs', 'alpha_Rs', 'e1', 'e2', 'center_x', 'center_y'] lower_limit_default = { 'Rs': 0, 'alpha_Rs': 0, 'e1': -0.5, 'e2': -0.5, 'center_x': -100, 'center_y': -100 } upper_limit_default = { 'Rs': 100, 'alpha_Rs': 10, 'e1': 0.5, 'e2': 0.5, 'center_x': 100, 'center_y': 100 } def __init__(self, interpol=False, num_interp_X=1000, max_interp_X=10): """ :param interpol: bool, if True, interpolates the functions F(), g() and h() :param num_interp_X: int (only considered if interpol=True), number of interpolation elements in units of r/r_s :param max_interp_X: float (only considered if interpol=True), maximum r/r_s value to be interpolated (returning zeros outside) """ self.nfw = NFW(interpol=interpol, num_interp_X=num_interp_X, max_interp_X=max_interp_X) self._diff = 0.0000000001 super(NFW_ELLIPSE, self).__init__() def function(self, x, y, Rs, alpha_Rs, e1, e2, center_x=0, center_y=0): """ returns elliptically distorted NFW lensing potential :param x: angular position (normally in units of arc seconds) :param y: angular position (normally in units of arc seconds) :param Rs: turn over point in the slope of the NFW profile in angular unit :param alpha_Rs: deflection (angular units) at projected Rs :param e1: eccentricity component in x-direction :param e2: eccentricity component in y-direction :param center_x: center of halo (in angular units) :param center_y: center of halo (in angular units) :return: lensing potential """ x_, y_ = param_util.transform_e1e2_square_average( x, y, e1, e2, center_x, center_y) R_ = np.sqrt(x_**2 + y_**2) rho0_input = self.nfw.alpha2rho0(alpha_Rs=alpha_Rs, Rs=Rs) if Rs < 0.0000001: Rs = 0.0000001 f_ = self.nfw.nfwPot(R_, Rs, rho0_input) return f_ def derivatives(self, x, y, Rs, alpha_Rs, e1, e2, center_x=0, center_y=0): """ returns df/dx and df/dy of the function, calculated as an elliptically distorted deflection angle of the spherical NFW profile :param x: angular position (normally in units of arc seconds) :param y: angular position (normally in units of arc seconds) :param Rs: turn over point in the slope of the NFW profile in angular unit :param alpha_Rs: deflection (angular units) at projected Rs :param e1: eccentricity component in x-direction :param e2: eccentricity component in y-direction :param center_x: center of halo (in angular units) :param center_y: center of halo (in angular units) :return: deflection in x-direction, deflection in y-direction """ x_, y_ = param_util.transform_e1e2_square_average( x, y, e1, e2, center_x, center_y) phi_G, q = param_util.ellipticity2phi_q(e1, e2) cos_phi = np.cos(phi_G) sin_phi = np.sin(phi_G) e = abs(1 - q) R_ = np.sqrt(x_**2 + y_**2) rho0_input = self.nfw.alpha2rho0(alpha_Rs=alpha_Rs, Rs=Rs) if Rs < 0.0000001: Rs = 0.0000001 f_x_prim, f_y_prim = self.nfw.nfwAlpha(R_, Rs, rho0_input, x_, y_) f_x_prim *= np.sqrt(1 - e) f_y_prim *= np.sqrt(1 + e) f_x = cos_phi * f_x_prim - sin_phi * f_y_prim f_y = sin_phi * f_x_prim + cos_phi * f_y_prim return f_x, f_y def hessian(self, x, y, Rs, alpha_Rs, e1, e2, center_x=0, center_y=0): """ returns Hessian matrix of function d^2f/dx^2, d^f/dy^2, d^2/dxdy the calculation is performed as a numerical differential from the deflection field. Analytical relations are possible :param x: angular position (normally in units of arc seconds) :param y: angular position (normally in units of arc seconds) :param Rs: turn over point in the slope of the NFW profile in angular unit :param alpha_Rs: deflection (angular units) at projected Rs :param e1: eccentricity component in x-direction :param e2: eccentricity component in y-direction :param center_x: center of halo (in angular units) :param center_y: center of halo (in angular units) :return: d^2f/dx^2, d^2/dxdy, d^2/dydx, d^f/dy^2 """ alpha_ra, alpha_dec = self.derivatives(x, y, Rs, alpha_Rs, e1, e2, center_x, center_y) diff = self._diff alpha_ra_dx, alpha_dec_dx = self.derivatives(x + diff, y, Rs, alpha_Rs, e1, e2, center_x, center_y) alpha_ra_dy, alpha_dec_dy = self.derivatives(x, y + diff, Rs, alpha_Rs, e1, e2, center_x, center_y) f_xx = (alpha_ra_dx - alpha_ra) / diff f_xy = (alpha_ra_dy - alpha_ra) / diff f_yx = (alpha_dec_dx - alpha_dec) / diff f_yy = (alpha_dec_dy - alpha_dec) / diff return f_xx, f_xy, f_yx, f_yy def mass_3d_lens(self, R, Rs, alpha_Rs, e1=1, e2=0): """ :param R: radius (in angular units) :param Rs: :param alpha_Rs: :param e1: :param e2: :return: """ return self.nfw.mass_3d_lens(R, Rs, alpha_Rs) def density_lens(self, r, Rs, alpha_Rs, e1=1, e2=0): """ computes the density at 3d radius r given lens model parameterization. The integral in the LOS projection of this quantity results in the convergence quantity. :param r: 3d radios :param Rs: turn-over radius of NFW profile :param alpha_Rs: deflection at Rs :return: density rho(r) """ return self.nfw.density_lens(r, Rs, alpha_Rs)
class TestNFWELLIPSE(object): """ tests the Gaussian methods """ def setup(self): self.nfw = NFW() self.nfw_cse = NFW_ELLIPSE_CSE(high_accuracy=True) self.nfw_cse_low_accuracy = NFW_ELLIPSE_CSE(high_accuracy=False) def test_function(self): x = np.linspace(0.01, 2, 10) y = np.zeros_like(x) kwargs = {'alpha_Rs': 2, 'Rs': 2, 'center_x': 0, 'center_y': 0} f_nfw = self.nfw.function(x, y, **kwargs) f_cse = self.nfw_cse.function(x, y, e1=0, e2=0, **kwargs) npt.assert_almost_equal(f_cse, f_nfw, decimal=5) f_cse_low = self.nfw_cse_low_accuracy.function(x, y, e1=0, e2=0, **kwargs) npt.assert_almost_equal(f_cse_low / f_nfw, 1, decimal=3) def test_derivatives(self): x = np.linspace(0.01, 2, 10) y = np.zeros_like(x) kwargs = {'alpha_Rs': 0.5, 'Rs': 2, 'center_x': 0, 'center_y': 0} f_x_nfw, f_y_nfw = self.nfw.derivatives(x, y, **kwargs) f_x_cse, f_y_cse = self.nfw_cse.derivatives(x, y, e1=0, e2=0, **kwargs) npt.assert_almost_equal(f_x_cse, f_x_nfw, decimal=5) npt.assert_almost_equal(f_y_cse, f_y_nfw, decimal=5) f_x_cse_low, f_y_cse_low = self.nfw_cse_low_accuracy.derivatives( x, y, e1=0, e2=0, **kwargs) npt.assert_almost_equal(f_x_cse_low / f_x_nfw, 1, decimal=2) npt.assert_almost_equal(f_y_cse_low, f_y_nfw, decimal=2) def test_hessian(self): x = np.linspace(0.01, 2, 10) y = np.zeros_like(x) kwargs = {'alpha_Rs': 0.5, 'Rs': 2, 'center_x': 0, 'center_y': 0} f_xx_nfw, f_xy_nfw, f_yx_nfw, f_yy_nfw = self.nfw.hessian( x, y, **kwargs) f_xx_cse, f_xy_cse, f_yx_cse, f_yy_cse = self.nfw_cse.hessian(x, y, e1=0, e2=0, **kwargs) npt.assert_almost_equal(f_xx_cse, f_xx_nfw, decimal=5) npt.assert_almost_equal(f_xy_cse, f_xy_nfw, decimal=5) npt.assert_almost_equal(f_yx_cse, f_yx_nfw, decimal=5) npt.assert_almost_equal(f_yy_cse, f_yy_nfw, decimal=5) f_xx_cse, f_xy_cse, f_yx_cse, f_yy_cse = self.nfw_cse_low_accuracy.hessian( x, y, e1=0, e2=0, **kwargs) npt.assert_almost_equal(f_xx_cse / f_xx_nfw, 1, decimal=1) npt.assert_almost_equal(f_xy_cse, f_xy_nfw, decimal=5) npt.assert_almost_equal(f_yx_cse, f_yx_nfw, decimal=5) npt.assert_almost_equal(f_yy_cse / f_yy_nfw, 1, decimal=1) def test_mass_3d_lens(self): R = 1 Rs = 3 alpha_Rs = 1 m_3d_nfw = self.nfw.mass_3d_lens(R, Rs, alpha_Rs) m_3d_cse = self.nfw_cse.mass_3d_lens(R, Rs, alpha_Rs) npt.assert_almost_equal(m_3d_nfw, m_3d_cse, decimal=8)