0.0.127
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@ -254,6 +254,8 @@ chern_number = guan.calculate_chern_number_for_square_lattice_with_wilson_loop_f
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k_array, berry_curvature_array = guan.calculate_berry_curvature_with_efficient_method(hamiltonian_function, k_min=-math.pi, k_max=math.pi, precision=100, print_show=0)
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k_array, berry_curvature_array = guan.calculate_berry_curvature_with_efficient_method_for_degenerate_case(hamiltonian_function, index_of_bands=[0, 1], k_min=-math.pi, k_max=math.pi, precision=100, print_show=0)
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k_array, berry_curvature_array = guan.calculate_berry_curvature_with_wilson_loop(hamiltonian_function, k_min=-math.pi, k_max=math.pi, precision_of_plaquettes=20, precision_of_wilson_loop=5, print_show=0)
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k_array, berry_curvature_array = guan.calculate_berry_curvature_with_wilson_loop_for_degenerate_case(hamiltonian_function, index_of_bands=[0, 1], k_min=-math.pi, k_max=math.pi, precision_of_plaquettes=20, precision_of_wilson_loop=5, print_show=0)
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@ -1,7 +1,7 @@
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[metadata]
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# replace with your username:
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name = guan
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version = 0.0.126
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version = 0.0.127
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author = guanjihuan
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author_email = guanjihuan@163.com
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description = An open source python package
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@ -1,6 +1,6 @@
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Metadata-Version: 2.1
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Name: guan
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Version: 0.0.126
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Version: 0.0.127
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Summary: An open source python package
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Home-page: https://py.guanjihuan.com
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Author: guanjihuan
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@ -2,7 +2,7 @@
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# With this package, you can calculate band structures, density of states, quantum transport and topological invariant of tight-binding models by invoking the functions you need. Other frequently used functions are also integrated in this package, such as file reading/writing, figure plotting, data processing.
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# The current version is guan-0.0.126, updated on August 28, 2022.
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# The current version is guan-0.0.127, updated on August 28, 2022.
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# Installation: pip install --upgrade guan
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@ -1755,6 +1755,76 @@ def calculate_berry_curvature_with_efficient_method(hamiltonian_function, k_min=
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i0 += 1
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return k_array, berry_curvature_array
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def calculate_berry_curvature_with_efficient_method_for_degenerate_case(hamiltonian_function, index_of_bands=[0, 1], k_min=-math.pi, k_max=math.pi, precision=100, print_show=0):
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delta = (k_max-k_min)/precision
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k_array = np.arange(k_min, k_max, delta)
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berry_curvature_array = np.zeros((k_array.shape[0], k_array.shape[0]), dtype=complex)
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i00 = 0
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for kx in np.arange(k_min, k_max, delta):
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if print_show == 1:
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print(kx)
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j00 = 0
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for ky in np.arange(k_min, k_max, delta):
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H = hamiltonian_function(kx, ky)
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eigenvalue, vector = np.linalg.eigh(H)
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H_delta_kx = hamiltonian_function(kx+delta, ky)
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eigenvalue, vector_delta_kx = np.linalg.eigh(H_delta_kx)
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H_delta_ky = hamiltonian_function(kx, ky+delta)
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eigenvalue, vector_delta_ky = np.linalg.eigh(H_delta_ky)
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H_delta_kx_ky = hamiltonian_function(kx+delta, ky+delta)
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eigenvalue, vector_delta_kx_ky = np.linalg.eigh(H_delta_kx_ky)
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dim = len(index_of_bands)
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det_value = 1
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# first dot
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dot_matrix = np.zeros((dim , dim), dtype=complex)
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i0 = 0
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for dim1 in index_of_bands:
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j0 = 0
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for dim2 in index_of_bands:
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dot_matrix[dim1, dim2] = np.dot(np.conj(vector[:, dim1]), vector_delta_kx[:, dim2])
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j0 += 1
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i0 += 1
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dot_matrix = np.linalg.det(dot_matrix)/abs(np.linalg.det(dot_matrix))
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det_value = det_value*dot_matrix
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# second dot
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dot_matrix = np.zeros((dim , dim), dtype=complex)
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i0 = 0
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for dim1 in index_of_bands:
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j0 = 0
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for dim2 in index_of_bands:
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dot_matrix[dim1, dim2] = np.dot(np.conj(vector_delta_kx[:, dim1]), vector_delta_kx_ky[:, dim2])
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j0 += 1
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i0 += 1
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dot_matrix = np.linalg.det(dot_matrix)/abs(np.linalg.det(dot_matrix))
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det_value = det_value*dot_matrix
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# third dot
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dot_matrix = np.zeros((dim , dim), dtype=complex)
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i0 = 0
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for dim1 in index_of_bands:
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j0 = 0
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for dim2 in index_of_bands:
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dot_matrix[dim1, dim2] = np.dot(np.conj(vector_delta_kx_ky[:, dim1]), vector_delta_ky[:, dim2])
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j0 += 1
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i0 += 1
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dot_matrix = np.linalg.det(dot_matrix)/abs(np.linalg.det(dot_matrix))
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det_value = det_value*dot_matrix
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# four dot
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dot_matrix = np.zeros((dim , dim), dtype=complex)
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i0 = 0
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for dim1 in index_of_bands:
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j0 = 0
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for dim2 in index_of_bands:
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dot_matrix[dim1, dim2] = np.dot(np.conj(vector_delta_ky[:, dim1]), vector[:, dim2])
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j0 += 1
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i0 += 1
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dot_matrix = np.linalg.det(dot_matrix)/abs(np.linalg.det(dot_matrix))
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det_value= det_value*dot_matrix
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berry_curvature = cmath.log(det_value)/delta/delta*1j
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berry_curvature_array[j00, i00] = berry_curvature
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j00 += 1
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i00 += 1
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return k_array, berry_curvature_array
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def calculate_berry_curvature_with_wilson_loop(hamiltonian_function, k_min=-math.pi, k_max=math.pi, precision_of_plaquettes=20, precision_of_wilson_loop=5, print_show=0):
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if np.array(hamiltonian_function(0, 0)).shape==():
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dim = 1
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